Skip to main content
Erschienen in: Alzheimer's Research & Therapy 1/2020

Open Access 01.12.2020 | Review

Health-related quality of life in people with predementia Alzheimer’s disease, mild cognitive impairment or dementia measured with preference-based instruments: a systematic literature review

verfasst von: Filipa Landeiro, Seher Mughal, Katie Walsh, Elsbeth Nye, Jasmine Morton, Harriet Williams, Isaac Ghinai, Yovanna Castro, José Leal, Nia Roberts, Helena Wace, Ron Handels, Pascal Lecomte, Anders Gustavsson, Emilse Roncancio-Diaz, Mark Belger, Gurleen S. Jhuti, Jacoline C. Bouvy, Michele H. Potashman, Antje Tockhorn-Heidenreich, Alastair M. Gray, on behalf of the ROADMAP consortium

Erschienen in: Alzheimer's Research & Therapy | Ausgabe 1/2020

Abstract

Background

Obtaining reliable estimates of the health-related quality of life (HR-QoL) of people with predementia Alzheimer’s disease [AD] (preclinical or prodromal AD), mild cognitive impairment (MCI) and dementia is essential for economic evaluations of related health interventions.

Aims

To provide an overview of which quality of life instruments are being used to assess HR-QoL in people with predementia AD, MCI or dementia; and, to summarise their reported HR-QoL levels at each stage of the disease and by type of respondent.

Methods

We systematically searched for and reviewed eligible studies published between January 1990 and the end of April 2017 which reported HR-QoL for people with predementia AD, MCI or dementia. We only included instruments which are preference-based, allowing index scores/utility values to be attached to each health state they describe based on preferences obtained from population surveys. Summary results were presented by respondent type (self or proxy), type of instrument, geographical location and, where possible, stage of disease.
Health state utility values derived using the EuroQoL 5-Dimensions (EQ-5D) were meta-analysed by pooling reported results across all studies by disease severity (MCI, mild, mild to moderate, moderate, severe dementia, not specified) and by respondent (person with dementia, carer, general public, not specified), using a fixed-effects approach.

Results

We identified 61 studies which reported HR-QoL for people with MCI or dementia using preference-based instruments, of which 48 used the EQ-5D. Thirty-six studies reported HR-QoL for mild and/or moderate disease severities, and 12 studies reported utility values for MCI.
We found systematic differences between self-rated and proxy-rated HR-QoL, with proxy-rated utility valued being significantly lower in more severe disease states.

Conclusions

A substantial literature now exists quantifying the impact of dementia on HR-QoL using preference-based measures, giving researchers and modellers a firmer basis on which to select appropriate utility values when estimating the effectiveness and cost-effectiveness of interventions in this area. Further research is required on HR-QoL of people with preclinical and prodromal AD and MCI, possible differences by type of dementia, the effects of comorbidities, study setting and the informal caregiver’s own HR-QoL, including any effect of that on their proxy-ratings.
Hinweise

Supplementary information

The online version contains supplementary material available at https://​doi.​org/​10.​1186/​s13195-020-00723-1.

Publisher’s Note

Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Abkürzungen
AD
Alzheimer’s disease
ADL
Activities of daily living
CDR
Clinical Dementia Rating
CI
Confidence interval
DLB
Dementia with Lewy bodies
EQ-5D
EuroQoL 5-Dimensions
HR-QoL
Health-related quality of life
HUI
Health Utilities Index
MCI
Mild cognitive impairment
MMSE
Mini-Mental State Examination
PRISMA
Preferred Reporting Items for Systematic Reviews and Meta-Analyses
ROADMAP
Real world Outcomes across the Alzheimer’s Disease spectrum for better care: Multi-modal data Access Platform
T2DM
Type 2 diabetes mellitus
VD
Vascular dementia

Background

Dementia is a progressive neurodegenerative syndrome characterised by cognitive, behavioural and functional decline [1]. It culminates in memory loss, communication problems, reasoning difficulties, personality changes and deterioration in ability to carry out activities of daily living (ADL) [1]. Alzheimer’s disease (AD) is the most common cause of dementia, estimated to account for approximately 60% of cases; other types of dementia include vascular dementia (VD) (constituting approximately 20% of cases), dementia with Lewy bodies (DLB) and frontotemporal dementia [14]. There are also mixed forms of dementia where different aetiologies co-exist and symptoms, risk factors and pathophysiology overlap [3, 57]. Moreover, our understanding of the development of disease prior to the dementia stage is changing, particularly the spectrum of Alzheimer’s disease (AD), with increased focus on early identification and intervention in patients in the predementia AD (prodromal and preclinical AD) stages [8]. Patients with predementia AD exhibit biochemical or pathophysiological evidence of AD but are either asymptomatic (preclinical AD) or demonstrate symptoms that are insufficiently severe for a clinical dementia diagnosis (prodromal AD) [9]. Mild cognitive impairment (MCI) is another parallel classification of a disease stage prior to the development of dementia and may include patients with AD as well as other underlying causes of symptoms. For other dementing disorders, it is not yet possible to assess the full span of the disease given the lack of biomarkers, with the exception of carriers of pathogenic mutations. For the purpose of this study, we refer to predementia AD, MCI and dementia, thereby including all stages of disease, regardless of aetiology. As yet, there is no cure for dementia, and progression over time remains inexorable, with the majority of cases occurring in older age [10, 11]. In 2015, dementia was estimated to affect 4.7–7.6% of all those aged over 60 years worldwide [12], and the total number of people with dementia worldwide is projected to reach 131 million by 2050 [12]. The financial impact of dementia is also enormous, with an estimated worldwide cost of US $818 billion in 2015 [13]. In addition, dementia carries a complex humanistic burden that, although more difficult to quantify, can significantly impact on the health-related quality of life (HR-QoL) of patients and their carers [14].
HR-QoL reflects a person’s perception of how a health condition affects their physical, social, mental and emotional well-being as well as their functional ability to perform everyday tasks [15, 16]. It is a multidimensional construct that can be measured using generic or disease-specific HR-QoL instruments [17]. Generic HR-QoL measures are designed to measure general health status across all diseases and health problems, whilst disease-specific HR-QoL measures are designed for use in particular disease areas. These generic and disease-specific instruments can be further subdivided into preference-based, which allow a summary index score or utility value to be derived for the different health states they describe using preference weights obtained usually from the general public, or non-preference-based measures, where responses may be scored and summed, but the strength of preference for different states is not included. Generic preference-based measures are preferred for economic analyses such as cost-utility analyses, as they provide valuations of different health states and permit comparisons across different disease areas. Therefore, understanding the HR-QoL of people living with predementia AD, MCI and dementia is essential for the accurate evaluation of health interventions from an economic perspective, especially when future health interventions are likely to focus on treating patients in the earlier stages of the disease [8].
The aims of this systematic literature review and meta-analysis are twofold: to provide an overview of the different preference-based instruments being used to assess HR-QoL in people with predementia AD, MCI or dementia; and, to summarise their reported HR-QoL levels at each stage of the disease and by type of respondent.
This study forms part of the ROADMAP (Real world Outcomes across the Alzheimer’s Disease spectrum for better care: Multi-modal data Access Platform) project [18].

Methodology

Search strategy, selection criteria and quality assessment

This systematic literature review followed the reporting guidelines of the PRISMA (Preferred Reporting Items for Systematic Reviews and Meta-Analyses) statement [19]. The protocol was registered with the PROSPERO international prospective register of systematic reviews (registration number CRD42017071416) and published in BMJ Open [20].
We included any study reporting utility values for adult populations that have either predementia AD, MCI or dementia, irrespective of the type and stage of the disease. We considered utility values reported using both general and disease-specific questionnaires. We did not apply any language or geographic restrictions.
Further details of the search strategy (including the search terms used and results yielded), study participants, study designs and quality assessment of the studies included in this review are freely available online in the protocol [20]; see also Additional file 1: Appendix 1.

Outcomes of interest

The outcomes of interest for this systematic literature review were the self- or proxy-rated health utility values for people with either predementia AD, MCI or dementia. A detailed description of the instruments used to measure HR-QoL is provided in Table S1 (see Additional file 1: Appendix 2). Wherever possible, utilities were detailed by stage of disease (see Additional file 1: Appendix 1 – section 1.1) in an attempt to understand how they evolve throughout disease progression.
The scales used to measure disease severity related to cognitive abilities or global assessment are described in Additional file 1: Appendix 3.

Analysis of data

Results were summarised using descriptive statistics. Where data were missing, study authors were contacted. We also extracted and presented data for each study on utilities according to the respondent (self or proxy), the type of instrument used to measure HR-QoL, the geographical location and, where possible, the stage of disease. These are the results we recommend are used in economic evaluations of new health technologies.
A meta-analysis was undertaken for utilities derived using the EuroQoL 5-Dimensions (EQ-5D). The utility values obtained from other tools were not considered in the meta-analysis as the literature reports significant differences in terms of utility values obtained using different preference-based instruments for the same sample [21]. The meta-analysis was conducted by pooling utility values across all studies by disease severity (MCI, mild, mild to moderate, moderate and severe dementia; not specified) and by respondent (person with dementia, carer, general public; not specified) using a fixed-effects approach [22, 23]. The weights used were the inverse variance of the utilities reported in each study. Only studies for which standard deviations or standard errors for the mean utility were provided, or could be estimated, were included in this analysis. In interventional studies, only the baseline utility values were used, as the focus of this systematic literature review was not on the effects of interventions. Where a study presented utility values for the same population with multiple estimates based on more than one country-specific value set, only one estimate was considered. The utility value used was the one obtained using the value set for the country from which the participants were recruited.
All calculations were carried out in Stata 13 (StataCorp LLC, TX, USA), and forest plots were created using R version 3.4.2.

Results

Results of the literature review

The results of the literature review are summarised in the PRISMA flow diagram (Fig. 1). In total, 61 studies were included. A detailed summary of the characteristics of these studies can be found in Table S2 (see Additional file 1: Appendix 4).
All types of dementia were included in this systematic literature review; however, 29 of the 61 studies reported information solely for individuals with AD. The most commonly used HR-QoL measure was the EQ-5D (n = 48); five used the Health Utility Index Mark 2 (HUI-2), seven used HUI-3 and one used both HUI-2 and HUI-3. Other HR-QoL measures used were the Quality of Well-Being scale (n = 4), 15D (n = 1), DEMQOL (n = 11) and the Clinical Dementia Rating (CDR)-Time Trade-Off (n = 1). In total, only 39 studies reported HR-QoL by disease severity, although 51 studies used one (n = 38) or multiple (n = 13) instruments intended for measurement of disease severity. The instrument most commonly used to characterise disease severity was the Mini-Mental State Examination (MMSE), which was included in 31 of the 61 studies; 13 studies used the CDR-Global (CDR-G) and five each used the Alzheimer’s Disease Assessment Scale-Cognitive Subscale and the Global Deterioration Scale. Nine studies combined two or more of the above scales. Mild to moderate disease severity was reported most commonly (36 studies included either one or both severities), with 21 and 12 of the 36 reporting utility values for severe dementia and MCI, respectively. Seven of the 36 studies assessed at least four disease stages, including MCI.
Of the 61 included studies, 11 reported self-rated HR-QoL only and 27 reported caregiver proxy-rated HR-QoL only; 16 reported both self-rated HR-QoL and caregiver proxy-rated HR-QoL. Of the 43 studies that used caregiver HR-QoL proxy ratings, 39 used informal caregivers and eight used professional caregivers, with some studies using both informal and professional caregivers. Four of 61 studies concerned direct elicitation of utility values using the general public as a proxy, one of which used expert raters—physicians, nurses and other clinical and research staff attending the winter business meeting of the Alzheimer’s Disease Cooperative Study as well as student raters from Columbia University School of Public Health—to generate utility values. Three of 61 studies did not specify who rated the HR-QoL.
Table 1 presents the utility values for HR-QoL for people with MCI or dementia by type of instrument, respondent and country, and Appendix 5 (see Additional file 1) provides a detailed description of the results.
Table 1
Health state values for individuals with MCI or dementia by health-related quality-of-life instrument, respondent and country
Study
Time point
Country
Study design
Setting
Self-rated mean (SD)
Proxy-rated mean (SD)
n
MCI
Mild
Mod.
Mild–mod.
Sev.
NS
n
MCI
Mild
Mod.
Mild–mod.
Sev.
NS
EQ-5D
 Davis 2017
BL – I
CA
RCT
Comm
35
 
0.82 (0.07)
    
32
 
0.83 (0.06)
    
 Davis 2017
BL – C
CA
RCT
Comm
35
 
0.80 (0.11)
    
31
 
0.80 (0.14)
    
 Fang 2016
CA pw
CA
CS
NS
216
 
0.84*
0.82 (0.38)
          
 Fang 2016
UK pw
CA
CS
NS
216
 
0.85 (0.11)
0.81 (0.56)
          
 Jönsson 2006
Mean of BL, 6 mo, 12 mo
SE, DK, FI, NO
CO
Mixed
272
0.84
0.85
0.73
0.83
0.78
 
272
0.7
0.65
0.51
0.52
0.4
 
 Naglie 2011b
BL
CA
CS
Comm
370
0.89 (0.12)
0.87 (0.13)
0.92 (0.11)
 
0.87 (0.16)
        
 Naglie 2011a
BL
CA
CS
Comm
       
412
0.82 (0.16)
0.80 (0.16)
0.76 (0.17)
 
0.68 (0.22)
 
 Naglie 2006
BL
CA
CS
Mixed
60
   
0.86*
  
60
   
0.62*
  
 Oremus 2014
US value set
CA
CS
Mixed
216
 
0.89 (0.10)
0.82 (0.41)
          
 Oremus 2014
CA set
CA
CS
Mixed
216
 
0.82 (0.07)
0.77 (0.34)
          
 Oremus 2016
BL
CA
CS
Gen pub
       
48P
 
0.65 (0.18)
0.51 (0.4)
 
0.25 (0.22)
 
 Tarride 2011
BL
CA
Obs
Gen pub
       
430
  
0.64 (0.19)
   
 Xie 2012
BL
CA
Obs
Gen pub
       
100P
 
0.74 (0.12)
0.62 (0.16)
 
0.45 (0.19)
 
 Hessmann 2016
BL
DE
CS
Mixed
395
0.72 (0.28)
0.68 (0.30)
0.71 (0.32)
 
0.50 (0.40)
 
395
0.75 (0.30)
0.61 (0.33)
0.41 (0.34)
 
0.21 (0.27)
 
 Kunz 2010
BL
DE
CO
Comm
333
 
0.69*
0.58*
   
333
 
0.60*
0.46*
   
 Makai 2014
BL
DE
CS
Institute
       
95F
     
0.52 (0.34)
 Menn 2012
BL – I1
DE
CRCT
Comm
       
109
   
0.59 (0.31)
  
 Menn 2012
BL – I2
DE
CRCT
Comm
       
110
   
0.51 (0.32)
  
 Menn 2012
BL – C
DE
CRCT
Comm
       
171
   
0.53 (0.29)
  
 Wimo 2013
All countries BL
DE, GB, FR
CS
Comm
       
1497
 
0.71 (0.79)
0.64 (0.49)
 
0.51 (0.59)
 
 Bhattacharya 2010
BL
DK
CS
Comm
321
 
0.86 (0.16)
    
321
 
0.73 (0.15)
    
 Hoffman 2016
BL – I
DK
RCT
Comm
107
 
0.93 (0.10)
    
107
 
0.88 (0.12)
    
 Hoffman 2016
BL – C
DK
RCT
Comm
93
 
0.93 (0.09)
    
93
 
0.86 (0.11)
    
 Diaz-Redondo 2014
BL
ES
CS
Institute
       
525
 
0.50 (0.40)
0.30 (0.40)
 
0.00 (0.30)
 
 Garre-Olmo 2017
BL
ES
CS
NS
       
343
 
0.70 (0.10)
0.50 (0.20)
 
0.30 (0.20)
 
 Léon-Salas 2015
BL
ES
CS
Institute
       
475
     
0.09 (0.37)
 Lopez-Bastida 2006
BL
ES
CS
Comm
       
237
 
0.52*
0.30*
 
0.12*
 
 Olazarán 2012
Nursing home pts
ES
CO
Institute
       
153
    
0.06 (0.33)
 
 Olazarán 2012
Daycare pts
ES
CO
Comm
       
27
    
0.20 (0.33)
 
 Sarabia-Cobo 2017
BL
ES
CS
Institute
       
217F
 
0.71 (0.14)
0.62 (0.31)
 
0.31 (0.17)
 
 Coucill 2001
BL
GB
CS
Comm
64
     
0.80*
       
 Bryan 2005
Informal CG
GB
CS
Comm
       
64
 
0.57 (0.29)
0.61 (0.29)
   
 Bryan 2005
Professional CG
GB
CS
Comm
       
64F
 
0.72 (0.22)
0.69 (0.24)
   
 Knapp 2016
BL – I1
GB
RCT
Comm
       
73
    
0.57 (0.28)
 
 Knapp 2016
BL – I2
GB
RCT
Comm
       
73
    
0.55 (0.28)
 
 Knapp 2016
BL – I3
GB
RCT
Comm
       
76
    
0.59 (0.27)
 
 Knapp 2016
BL – I4
GB
RCT
Comm
       
73
    
0.55 (0.29)
 
 Mulhern 2013
BL
GB
CS
Comm
71
     
0.85 (0.14)
71
     
0.78 (0.19)
 Orgeta 2015
BL
GB
OB
Comm
478
 
0.79 (0.22)
0.72 (0.23)
   
478
 
0.63 (0.27)
0.52 (0.27)
   
 Selwood 2005
FU (Thorgrimsen 2003)
GB
CO
Mixed
40
     
0.88*
       
 Sheehan 2012
BL
GB
CS
Mixed
109
     
0.71 (0.35)
106
     
0.30 (0.42)
 Woods 2012
BL – I
GB
pRCT
Comm
268
   
0.75 (0.25)
  
268
   
0.57 (0.29)
  
 Woods 2012
BL – C
GB
pRCT
Comm
219
   
0.76 (0.26)
  
219
   
0.60 (0.27)
  
 Thorgrimsen 2003
BL
GB
CS
Mixed
60
     
0.80 (0.30)
       
 Trigg 2015
BL
GB
CO
Mixed
70
     
0.81 (0.22)
145
     
0.70 (0.29)
 Érsek 2010
BL
HU
CS
Comm
       
74
0.53 (0.33)
0.56 (0.28)
0.29 (0.32)
 
0.19 (0.31)
 
 Sakakibara 2015
BL – G1
JP
NRCT
NS
       
43
     
0.58 (0.19)
 Sakakibara 2015
BL – G2
JP
NRCT
NS
       
45
     
0.55 (0.21)
 Sakakibara 2015
BL – G3
JP
NRCT
NS
       
51
     
0.51 (0.24)
 Sakakibara 2015
BL – G4
JP
NRCT
NS
       
51
     
0.48 (0.24)
 Schiffczyk 2010
BL
DE
CO
Comm
137
     
0.15
137
     
0.002*
 Yamanaka 2013
BL – I
JP
RCT
Institute
26
   
0.74 (0.05)
  
26F
   
0.62 (0.04)
  
 Yamanaka 2013
BL – C
JP
RCT
Institute
30
   
0.81 (0.04)
  
30F
   
0.59 (0.04)
  
 Koekkoek 2015
BL
NL
CS
Comm
57
0.73 (0.30)
            
 MacNeil Vroomen 2015
BL – I1
NL
NRCT
Comm
234
     
0.82 (0.20)
234
     
0.74 (0.20)
 MacNeil Vroomen 2015
BL – I2
NL
NRCT
Comm
214
     
0.79 (0.20)
214
     
0.71 (0.30)
 MacNeil Vroomen 2015
BL – C
NL
NRCT
Comm
73
     
0.83 (0.20)
73
     
0.74 (0.20)
 Meeuwsen 2013
BL – I
NL
RCT
Comm
87
   
0.85 (0.18)
         
 Meeuwsen 2013
BL – C
NL
RCT
Comm
88
   
0.85 (0.17)
         
 van de Ven 2013
BL – I
NL
CRCT
Institute
73
     
0.39 (0.03)
       
 van de Ven 2013
BL – C
NL
CRCT
Institute
119
     
0.44 (0.02)
       
 Wolfs 2008
BL – I
NL
CRCT
Comm
       
137
     
0.54 (0.33)
 Wolfs 2008
BL – C
NL
CRCT
Comm
       
93
     
0.54 (0.30)
 Winter 2011
With depr
RU
CS
NS
85
     
0.35 (0.18)
       
 Winter 2011
Without depr
RU
CS
NS
13
     
0.48 (0.18)
       
 Mesterton 2010
BL
SE
CS
Mixed
       
233§
 
0.64*
0.39*
 
0.24*
 
 Boström 2007
People with DLB
SE, FI, NO
CS
Mixed
34
     
0.38 (0.38)
34
     
0.24 (0.30)
 Boström 2007
People with AD
SE, FI, NO
CS
Mixed
34
     
0.87 (0.17)
34
     
0.56 (0.29)
 Kuo 2010
BL – C
TW
CS
Comm
       
89
     
0.55*
 Kuo 2010
BL – I
TW
CS
Institute
       
51
     
0.32*
 Karlawish 2008b
BL
US
CS
Comm
93
0.78 (0.26)
0.8 (0.23)
0.89 (0.13)
          
 Karlawish 2008a
BL
US
CS
Comm
       
100
0.72 (0.20)
0.63 (0.25)
0.60 (0.23)
   
HUI-2
 Lam 2010
AD pts
CA
RB
Institute
       
4094
     
0.23*
 Lam 2010
Other dementia pts
CA
RB
Institute
       
12,452
     
0.24*
 Goldfeld 2012
Non-dying in last 90 d
US
CO
Institute
       
142F
    
0.18 (0.06)
 
 Goldfeld 2012
Dying in last 90 d
US
CO
Institute
       
177F
    
0.16 (0.06)
 
 Kavirajan 2009
BL
US
CO
Mixed
       
408
     
0.54 (0.23)
 Leon 2000
CAMCs
US
CS
Comm
       
204
 
0.69 (0.16)
0.53 (0.18)
 
0.36 (0.16)
 
 Leon 2000
CMCOs
US
CS
Comm
       
150
 
0.67 (0.15)
0.56 (0.16)
 
0.38 (0.17)
 
 Leon 2000
RALFs
US
CS
Institute
       
161F
 
0.74 (0.13)
0.56 (0.16)
 
0.35 (0.15)
 
 Leon 2000
NHs
US
CS
Institute
       
164F
 
0.71 (0.16)
0.48 (0.18)
 
0.31 (0.12)
 
 Karlawish 2008b
BL
US
CS
Comm
93
0.89 (0.13)
0.85 (0.19)
0.92 (0.11)
          
 Karlawish 2008a
BL
US
CS
Comm
       
100
0.76 (0.16)
0.70 (0.20)
0.71 (0.17)
   
HUI-3
 Naglie 2011a
BL
CA
CS
Comm
       
412
0.48 (0.27)
0.36 (0.27)
0.31 (0.26)
 
0.16 (0.24)
 
 Naglie 2006
BL
CA
CS
Mixed
60
   
0.73*
  
60
   
0.23*
  
 Ikeda 2001
Inpts
JP
CS
Mixed
       
17F
    
0.04 (0.20)
 
 Ikeda 2001
Outpts
JP
CS
Mixed
       
78
 
0.33 (0.23)
0.16 (0.29)
 
0.02 (0.25)
 
 Lacey 2015
Pooled dataset
US, CA, DE, AT
RCT
Comm
       
2204
0.54 (0.25)
0.51 (0.25)
0.41 (0.23)
   
 Neumann 2000
By disease stage
US
CS
Mixed
       
679
0.47 (0.24)
0.39 (0.24)
0.19 (0.20)
 
0.06 (0.17)
 
 Miller 2008
BL
US
CO
Comm
       
421
     
0.18 (0.25)
 Kavirajan 2009
BL
US
CO
Mixed
       
408
     
0.17 (0.31)
 McLaughlin 2010
By disease stage
US + Europe
CS
NS
       
166
 
0.49 (0.26)
0.29 (0.25)
   
QWB
 Naglie 2011b
BL
CA
CS
Comm
370
0.63 (0.15)
0.61 (0.15)
0.65 (0.16)
 
0.65 (0.18)
        
 Naglie 2011a
BL
CA
CS
Comm
       
412
0.56 (0.17)
0.50 (0.15)
0.46 (0.17)
 
0.39 (0.17)
 
 Naglie 2006
BL
CA
CS
Mixed
60
   
0.60*
  
60
   
0.42*
  
 Kerner 1998
BL
US
CO
Comm
       
159
     
0.51 (0.06)
15D
 Suominen 2015
BL – I
FI
RCT
Comm
40
     
0.76 (0.11)
       
 Suominen 2015
BL – C
FI
RCT
Comm
38
     
0.77 (0.14)
       
CDR
 Sano 1999
Expert raters
US
CS
NS
       
41
 
0.67 (0.32)
  
0.31 (0.27)
 
 Sano 1999
Student raters
US
CS
NS
       
13
 
0.58 (0.23)
  
0.29 (0.21)
 
DEMQOL
 D’Amico 2016
BL – I
GB
RCT
Mixed
       
30
     
0.67 (0.14)
 D’Amico 2016
BL – C
GB
RCT
Mixed
       
22
     
0.71 (0.15)
Refer to Additional file 1 for the full details of each study cited
AD Alzheimer’s disease, AT Austria, BL baseline, C control, CA Canada, CAMC community academic/medical centres, CDR Clinical Dementia Rating, CG caregiver, CMCO community managed care organisations, CO cohort, Comm community setting, CRCT cluster randomised controlled trial, CS cross-sectional, d days, DE Germany, depr depression, DK Denmark, DLB dementia with Lewy bodies, EQ-5D EuroQol-5 Dimensions, ES Spain, F formal caregiver, FI Finland, FR France, FU follow-up, G group, GB Great Britain, Gen pub general public, HR-QoL health-related quality of life, HU Hungary, HUI Health Utilities Index, I intervention, I1 intervention 1, I2 intervention 2, I3 intervention 3, I4 intervention 4, inpts inpatients, JP Japan, MCI mild cognitive impairment, mo month(s), mod. moderate, NH nursing home, NL Netherlands, NO Norway, NRCT non-randomised controlled trial, NS not specified, Obs observational study, outpts outpatients, P member of the general public, pRCT pragmatic randomised controlled trial, pts. patients, pw preference weights, QWB Quality of Well-Being scale, RALF residential assisted-living facility, RB register-based study, RCT randomised controlled trial, RU Russia, SD standard deviation, SE Sweden, Sev. severe, TW Taiwan, UK United Kingdom, US United States of America
*SD not provided
Median
Does not specify whether the quality of life was self-rated or proxy-rated
§Does not specify whether the proxy was an informal or formal caregiver
The 15D may also be completed during an interview with the subject or their proxy

Comparison of utility values based on self- versus proxy rating for studies using the EQ-5D

We conducted a meta-analysis of the utility values reported in studies using the EQ-5D by respondent. Overall, the number of studies reporting self-rated utilities decreased as disease severity increased (Table 1). In patients with later-stage disease, the number of studies reporting self-rated utilities was lower than those reporting proxy-rated utilities (Table 1).
When EQ-5D-derived utility values were pooled by disease severity (Fig. 2), there was no statistically significant difference between self-rated and proxy-rated values for patients with MCI (difference in weighted means − 0.06, P = 0.17). However, as disease severity increased, the difference between self-rated and proxy-rated utilities also increased. People with severe dementia still indicated having high utilities (weighted mean 0.82; 95% confidence interval [CI] 0.64–1.00), whereas proxies indicated that the patients’ utilities were low (weighted mean 0.36; 95% CI 0.18–0.53). These results demonstrated a statistically significant difference in utility values of − 0.46 for people with severe dementia (P < 0.01), but the difference was only significant from mild dementia onwards.

Discussion

Summary of the main findings

Understanding the HR-QoL of people living with predementia AD, MCI and dementia is essential for the accurate evaluation of health interventions from an economic perspective. This systematic review identified 61 studies assessing the HR-QoL of people with MCI or dementia using preference-based utility measures. Of these, 39 reported utility values according to disease severity, with seven including at least four stages of dementia, including MCI. This attempt to capture HR-QoL across the entire span of the disease, with particular focus on preclinical and prodromal AD and MCI, responds to a gap in the current literature that needs to be addressed given that new disease-modifying treatments are expected to act in the earlier stages of the disease. Overall, the studies identified in this review demonstrated heterogenous HR-QoL utility data, likely because of a combination of factors. This review identified a number of these factors, as discussed in the following sections, including measures used to define disease severity, measures used to assess HR-QoL, underlying disease (both causes of dementia or cognitive impairment and comorbidities), clinical and geographical setting, choice of respondent and other methodological differences.

Instruments used to assess HR-QoL

A variety of instruments were used to measure disease severity, with widespread variation in the reference ranges adopted to define each severity stage. The most commonly used measure of disease severity was the MMSE, which only assesses cognition, and the CDR-G, which reflects both cognitive and functional assessment with inputs from the clinician in the overall score. HR-QoL was assessed using a wide range of preference-based measures. As the domains and scoring and utility valuations vary between HR-QoL instruments, direct comparison of results can be difficult. This heterogeneity could be observed when several HR-QoL instruments were used on the same sample and obtained different utility values [21]. The choice of instrument could therefore result in different quality-adjusted life-years and incremental cost-effectiveness ratios and so have the potential to influence important decision-making processes. In this review, the most commonly used HR-QoL instrument was the EQ-5D. It is short and easy to administer, making it attractive for use in populations with attention difficulties, such as those with dementia [24]. It demonstrates good feasibility, reliability and validity in dementia [16] and is the HR-QoL instrument of choice recommended by the UK National Institute for Health and Care Excellence [1] for use in economic evaluations. The widespread use of the EQ-5D permitted the results to be meta-analysed according to disease severity stage, thus providing a better insight into HR-QoL across the disease continuum.
However, the EQ-5D predominantly assesses functional and emotional impairments. Lack of a specific cognitive domain may explain why, compared with the HUI, the EQ-5D detects less marked differences between mild and severe cognitive impairment [25]. In addition, the EQ-5D is a generic HR-QoL tool that has not been specifically designed for patients with dementia. Indeed, most HR-QoL instruments used in the studies identified in this review were generic rather than disease specific. It can be argued that generic instruments produce less targeted results than those produced by instruments specifically designed to cover more relevant aspects of a disease. However, a recently published study by Ratcliffe et al. [26] compared generic EQ-5D-5L results with those from the dementia-specific DEMQOL-U and DEMQOL-U-Proxy instruments when calculating HR-QoL in an Australian residential care setting. Results suggested that, although both tools captured specific aspects of the disease and thus complemented each other, the EQ-5D was a more suitable instrument in this setting as it was more strongly correlated to function.

Potential explanations for observed differences in HR-QoL

A systematic review and meta-regression analysis by Li et al. [21] suggested that, even when using the same HR-QoL instrument, utilities can vary significantly across different samples. This suggests that covariates such as study methodology, study setting, country and patient characteristics can influence utility values. Type of dementia included in the study, for example, might influence reported HR-QoL, as might other demographic factors and disease symptoms beyond the scope of this review. Jönsson et al. [25] found, for example, that when caregivers lived with patients, patients reported higher baseline utility scores, and Schiffczyk et al. found that the rate of cognitive decline over time was associated with reduced utilities. If patient-level data are available to researchers and these covariates have been recorded, such differences can be controlled for, but often neither of these conditions holds.
Although ROADMAP primarily focuses on AD, this review included all types of dementia because of the possibility of overlap and diagnostic uncertainty between dementia types. Lam et al. reported utilities separately for patients with AD and patients with “dementia not AD”. Although not directly compared, the HUI-2 utility values were 0.23 and 0.24, respectively. The sample size for patients with AD in this study was also much smaller than that for patients with other dementia types, contradicting literature reports that AD accounts for the majority of dementia cases. It is likely that misdiagnosis or misreporting means the “dementia not AD” population did actually include a mixture of patients with and without AD, resulting in quite similar scores. Different types of dementia may have different effects on HR-QoL. For example, Boström et al. reported that patients with DLB had significantly lower utility values than those diagnosed with AD when both self and proxy rated (P < 0.0001), and additional research is needed to compare the impact of the several different types of dementia on HR-QoL.
Differences in HR-QoL between studies can also be caused by factors such as comorbidities. Winter et al. found that the presence of depressive symptoms reduced utility by 14% in patients with AD and VD (P < 0.01), with an overall utility for patients with depression of 0.35 and for those without depression of 0.48. In a population restricted to hospital inpatients, Sheehan et al. found significantly lower utilities in those with self-reported depression (P = 0.001) and in patients with instrumental ADL impairment (P = 0.020), though this was only the case when using the Quality of Life – Alzheimer’s Disease scale. Interestingly, this study reported that self-reported EQ-5D utility values were also significantly associated with carer stress (P = 0.002). Koekkoek et al. reported that patients with type 2 diabetes mellitus (T2DM) were twice as likely to develop cognitive impairment as those without and therefore compared HR-QoL in individuals with T2DM and cognitive impairment with that for individuals with T2DM but no cognitive impairment. Unfortunately, as utilities were not compared between those with and without T2DM, it is difficult to determine the extent to which T2DM itself impacts on HR-QoL.
More research is also required on the effect of study setting on HR-QoL. Olazarán et al. identified no significant difference in utilities between patients with severe dementia in institutions and the community, but Kuo et al. found that individuals in the community had significantly higher utility than those in institutions, who were typically older, were more frequently widowed, had an increased number of chronic medical conditions and were restricted in their functional independence. Hessman et al. also found significantly higher HR-QoL for patients at home than for those living in nursing homes.
Utility values may also be influenced by the perspective from which patient HR-QoL is rated. Overall, this review found that HR-QoL was most often reported by patients and their informal caregivers. We did not observe a significant difference between self-rated and caregiver proxy-rated utility values for people with MCI. However, beyond the MCI stage of the disease, self-rated utilities were significantly higher than caregiver proxy-rated utilities, with an increasing difference in more severe stages of dementia. A recent study by Easton et al. [27] identified a similar trend. HR-QoL is a subjective construct that should ideally be reported by the individual directly affected. However, studies on the validity of self-reported HR-QoL measurement instruments are contradictory, with some arguing that patients with dementia are capable of providing their own self-ratings and Vogel et al. [28] and Schiffczyk et al. suggesting that patients provide over-optimistic reports of HR-QoL. The disparities between patient and caregiver scores in mild dementia could be explained by differences in insight into the effect of the disease, adaptation of patients to their condition or censoring bias as patients become increasingly unable to complete HR-QoL questionnaires with progressing disease [25]. Alternatively, caregivers may be experiencing increasing emotional, physical and financial pressures as dementia symptoms emerge. This may decrease their own utility, which could in turn influence their perception of patient HR-QoL. Schiffczyk et al. demonstrated that proxies with depression rate patient HR-QoL worse and report more behavioural and functional impairments than do those without depression. The impact of caregiver HR-QoL on their ratings of the HR-QoL of people with dementia is underresearched and deserves future consideration. This might be a more important factor in informal than in professional carers. Bryan et al. investigated the differences between the utilities reported by different proxies and found that informal carers, who were often spouses living with affected individuals, rated patient HR-QoL significantly worse than clinicians did. Overall, proxy utility data should be interpreted cautiously and not be assumed to provide a direct substitute for patient self-assessment, even when disease severity means that patients are no longer able to meaningfully assess their own HR-QoL [24, 29].
Another potential element of studies that might affect the HR-QoL findings is the choice of preference weight data. Ideally, preference weights for the calculation of utilities should be derived from the population of the country being studied. In a study of patients with AD in Canada, Oremus et al. found significantly higher mean utility values with USA than with Canadian preference weights (0.87 vs 0.81; P < 0.0001). On the other hand, Fang et al. demonstrated no significant difference in mean self-rated utility values (P = 0.63) when comparing Canadian and UK preference weights to rate HR-QoL for Canadian patients and their caregivers. These differences must be considered when interpreting the findings of the meta-analysis.

Overall completeness and quality of evidence

Our review identified 12 studies that reported mean utility values but not by disease severity. The results of these studies are included in Figure S1F (see Additional file 1: Appendix 5), reporting mean utility for all patients, but they are unlikely to contribute with useful information to disease models, as they provide no information regarding the patient’s location on the disease spectrum. Furthermore, in this group of studies, the self-rated weighted mean is lower than that from studies reporting each of the separate severity stages of dementia, including severe dementia. This was mainly due to the low overall utility values reported in the studies by Boström et al., van de Ven et al. and Winter et al. The severity of the dementia included in the study by van de Ven et al. was unclear, though the utilities may also have been affected by inclusion only of patients living in residential or nursing homes. The low self-rated utilities of 0.38 in the study by Boström et al. for patients with DLB also impacted the low overall average, whereas Winter et al. stated that 15.3% of individuals in their study had severe dementia and 84.7% had moderate dementia. However, given the sparse information provided, it is difficult to compare the findings of these studies with those of other studies reporting utilities by disease severity. Future studies should focus on providing utility values by disease severity.
The majority of the studies, when assessed using the Effective Public Health Practice Project quality assessment tool, were considered to produce strong/moderate evidence. However, the tool itself rates observational studies as weak in the study design parameter, which affects most of the studies in this review, as only ten were randomised trials. Nevertheless, non-randomised studies may provide more generalisable HR-QoL evidence than some randomised controlled trial populations when parameterising economic models.

Strengths and limitations of the systematic review

Overall, the strength of this study lies in the fact that it is a comprehensive systematic review of the literature. It used rigorous screening techniques to ensure inclusion of all relevant articles and included studies published in several languages to produce globally relevant results. It builds on the study by Shearer et al. [14] by summarising the current instruments used to measure HR-QoL and describing instruments available to measure disease severity. However, it goes further by summarising utility values according to the stage of disease, with the specific inclusion of MCI as well as mild, moderate and severe dementia.
This review has some limitations. Our meta-analysis pooled utility values by disease severity and respondent using fixed effects. Given the heterogeneity across studies, it would have been useful to perform the meta-analysis using random effects, but the small sample sizes precluded this. Also, the data were pooled across all countries despite the acknowledged differences in country-specific value sets, but, again—given the limited number of studies by country—it was not possible to take this variability into account. The meta-analysis did not differentiate between different types of dementia, which will also have increased heterogeneity across the study results. However, 29 of the 61 studies focussed only on AD, so this group will represent the majority of observations, even in studies including all types of dementia. As described, differences were mainly observed between DLB and AD. A systematic review reported DLB as accounting for approximately 4.2% of all dementia cases in the community and approximately 6.3% of cases in secondary care [30], and this is reflected in the sample of patients included in studies examining all types of dementia. Another limitation is that we were unable to differentiate between settings in the meta-analysis, but such differences were described in the narrative synthesis.

Conclusions

In summary, future studies should systematically report the different types of dementia included, and levels of disease severity should be clearly documented and cut-offs defined and justified. Study setting should be stated, and it should be clear who the respondent is. As there is no current consensus on whether self- or proxy-rated HR-QoL is more appropriate, studies should ideally report both. Meanwhile, and notwithstanding the identified gaps in the literature, our systematic review has demonstrated that a substantial literature now exists quantifying the impact of dementia on HR-QoL using preference-based measures. Our results should give researchers and modellers a firmer basis on which to select appropriate utility values when estimating the effectiveness and cost-effectiveness of interventions in this area.
We identified several gaps in the literature that should be addressed. We found limited data on HR-QoL in the MCI stage and no data on HR-QoL in the preclinical and prodromal AD stages, largely because identifying patients in this stage of disease is challenging. Additional studies on preclinical and prodromal AD with biomarker support are needed to understand the impact of AD on HR-QoL in these stages of the disease. All studies investigating HR-QoL in predementia AD, MCI or dementia must report where patients are on the disease spectrum in order to provide results useful for economic evaluations. Ideally, instruments measuring disease severity should also be validated for use in all stages of the disease, including preclinical and prodromal AD, and should incorporate assessment of more than one symptom domain with consistent pre-specified cut-off points. Despite widespread use of the EQ-5D, more research is still needed to compare generic and disease-specific HR-QoL instruments to fully justify the use of a generic rather than a disease-specific tool. It is also important that the impact of informal and formal caregiver HR-QoL on their rating of the patient HR-QoL is better understood so as to improve the interpretation of results. Additionally, research is required to compare the impact of the different types of dementia, comorbidities and study setting on HR-QoL and the impact of informal caregiver HR-QoL.

Acknowledgements

The authors would like to acknowledge Dr Sarah Birch and Karen Goa (Rx Communications, Mold, UK) for medical writing assistance with the preparation of this manuscript, funded by Eli Lilly and Company.
Ethical approval was not required because all work was carried out using previously published studies.
Not applicable

Competing interests

YC is an employee of F. Hoffmann-La Roche Ltd. RH has received grants from ROADMAP (IMI2; public–private collaboration; 2016–2019); consulting fees from Piramal, Roche and Eisai; and grants from Horizon 2020, JPND Joint Programming Neurodegenerative Disease Research, IMI Innovative Medicines Initiative, and national, European and patient charity funding organisations and private–public collaborations (ZonMw Netherlands, Alzheimer Netherlands, Dutch Flutemetamol Study, Alzheimer Research UK, Swedish National study on Aging and Care, European Brain Council). PL is employed by, owns stock in and has stock options in Novartis Pharma AG. AG is a partner of Quantify Research, providing consultancy services to pharmaceutical companies and other private and public organisations and institutions. AG’s contribution to ROADMAP was on behalf of Roche Pharmaceuticals. ERD is an employee of GE Healthcare. MB is an employee of and owns stock in Eli Lilly and Company Limited. GSJ is an employee of F. Hoffmann-La Roche Ltd. MHP is an employee of Biogen and owns stock in Biogen. She owns stock in a variety of companies that at times include other pharmaceutical and healthcare-related companies. ATH is an employee of and owns stock in Eli Lilly and Company Limited. FL, SM, KW, EN, JM, HW, IG, JL, NR, HW, JCB and AMG declare that they have no competing interests.
Open AccessThis article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://​creativecommons.​org/​licenses/​by/​4.​0/​. The Creative Commons Public Domain Dedication waiver (http://​creativecommons.​org/​publicdomain/​zero/​1.​0/​) applies to the data made available in this article, unless otherwise stated in a credit line to the data.

Publisher’s Note

Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Literatur
2.
Zurück zum Zitat Kalaria RN, Maestre GE, Arizaga R, Friedland RP, Galasko D, Hall K, et al. Alzheimer's disease and vascular dementia in developing countries: prevalence, management, and risk factors. Lancet Neurol. 2008;7:812–26.CrossRef Kalaria RN, Maestre GE, Arizaga R, Friedland RP, Galasko D, Hall K, et al. Alzheimer's disease and vascular dementia in developing countries: prevalence, management, and risk factors. Lancet Neurol. 2008;7:812–26.CrossRef
3.
Zurück zum Zitat Rizzi L, Rosset I, Roriz-Cruz M. Global epidemiology of dementia: Alzheimer’s and vascular types. Biomed Res Int. 2014;2014:908915.CrossRef Rizzi L, Rosset I, Roriz-Cruz M. Global epidemiology of dementia: Alzheimer’s and vascular types. Biomed Res Int. 2014;2014:908915.CrossRef
4.
Zurück zum Zitat Lobo A, Launer LJ, Fratiglioni L, Andersen K, Di Carlo A, Breteler MM, et al. Prevalence of dementia and major subtypes in Europe: a collaborative study of population-based cohorts. Neurologic Diseases in the Elderly Research Group. Neurology. 2000;54:S4–9.CrossRef Lobo A, Launer LJ, Fratiglioni L, Andersen K, Di Carlo A, Breteler MM, et al. Prevalence of dementia and major subtypes in Europe: a collaborative study of population-based cohorts. Neurologic Diseases in the Elderly Research Group. Neurology. 2000;54:S4–9.CrossRef
5.
Zurück zum Zitat Custodio N, Montesinos R, Lira D, Herrera-Perez E, Bardales Y, Valeriano-Lorenzo L. Mixed dementia: a review of the evidence. Dement Neuropsychol. 2017;11(4):364–70.CrossRef Custodio N, Montesinos R, Lira D, Herrera-Perez E, Bardales Y, Valeriano-Lorenzo L. Mixed dementia: a review of the evidence. Dement Neuropsychol. 2017;11(4):364–70.CrossRef
6.
Zurück zum Zitat Kalaria R. Similarities between Alzheimer's disease and vascular dementia. J Neurol Sci. 2002;203-204:29–34.CrossRef Kalaria R. Similarities between Alzheimer's disease and vascular dementia. J Neurol Sci. 2002;203-204:29–34.CrossRef
7.
Zurück zum Zitat Savva GM, Wharton SG, Ince PG, Forster G, Matthews FE, Brayne C, et al. Age, neuropathology, and dementia. N Engl J Med. 2009;360(22):2302–9.CrossRef Savva GM, Wharton SG, Ince PG, Forster G, Matthews FE, Brayne C, et al. Age, neuropathology, and dementia. N Engl J Med. 2009;360(22):2302–9.CrossRef
8.
Zurück zum Zitat Chertkow H, Feldman HH, Jacova C, Massoud F. Definitions of dementia and predementia states in Alzheimer’s disease and vascular cognitive impairment: consensus from the Canadian conference on diagnosis of dementia. Alzheimer Res Ther. 2013;5(Suppl 1):S2.CrossRef Chertkow H, Feldman HH, Jacova C, Massoud F. Definitions of dementia and predementia states in Alzheimer’s disease and vascular cognitive impairment: consensus from the Canadian conference on diagnosis of dementia. Alzheimer Res Ther. 2013;5(Suppl 1):S2.CrossRef
9.
Zurück zum Zitat Dubois B, Hample H, Feldman HH, Scheltens P, Aisen P, Andrieu S, et al. Preclinical Alzheimer’s disease: definition, natural history, and diagnostic criteria. Alzheimers Dement. 2016;12(3):292–323.CrossRef Dubois B, Hample H, Feldman HH, Scheltens P, Aisen P, Andrieu S, et al. Preclinical Alzheimer’s disease: definition, natural history, and diagnostic criteria. Alzheimers Dement. 2016;12(3):292–323.CrossRef
10.
Zurück zum Zitat Thalhauser CJ, Komarova NL. Alzheimer’s disease: rapid and slow progression. J R Soc Interface. 2012;9:119–26.CrossRef Thalhauser CJ, Komarova NL. Alzheimer’s disease: rapid and slow progression. J R Soc Interface. 2012;9:119–26.CrossRef
11.
Zurück zum Zitat Karlawish J, Jack CR Jr, Rocca WA, Snyder HM, Carrillo MC. Alzheimer’s disease: the next frontier. Special report 2017. Alzheimers Dement. 2017;13:374–80.CrossRef Karlawish J, Jack CR Jr, Rocca WA, Snyder HM, Carrillo MC. Alzheimer’s disease: the next frontier. Special report 2017. Alzheimers Dement. 2017;13:374–80.CrossRef
13.
Zurück zum Zitat Wimo A, Guerchet M, Ali GC, Wu YT, Prina AM, Winblad B, et al. The worldwide costs of dementia 2015 and comparisons with 2010. Alzheimers Dement. 2017;13:1–7.CrossRef Wimo A, Guerchet M, Ali GC, Wu YT, Prina AM, Winblad B, et al. The worldwide costs of dementia 2015 and comparisons with 2010. Alzheimers Dement. 2017;13:1–7.CrossRef
14.
Zurück zum Zitat Shearer J, Green C, Ritchie CW, Zajicek JP. Health state values for use in the economic evaluation of treatments for Alzheimer’s disease. Drugs Aging. 2012;29:31–43.CrossRef Shearer J, Green C, Ritchie CW, Zajicek JP. Health state values for use in the economic evaluation of treatments for Alzheimer’s disease. Drugs Aging. 2012;29:31–43.CrossRef
15.
Zurück zum Zitat Karimi M, Brazier J. Health, health-related quality of life, and quality of life: what is the difference? Pharmacoeconomics. 2016;34:645–9.CrossRef Karimi M, Brazier J. Health, health-related quality of life, and quality of life: what is the difference? Pharmacoeconomics. 2016;34:645–9.CrossRef
16.
Zurück zum Zitat Anderson RT, Aaronson NK, Bullinger M, McBee WL. A review of the progress towards developing health-related quality-of-life instruments for international clinical studies and outcomes research. Pharmacoeconomics. 1996;10:336–55.CrossRef Anderson RT, Aaronson NK, Bullinger M, McBee WL. A review of the progress towards developing health-related quality-of-life instruments for international clinical studies and outcomes research. Pharmacoeconomics. 1996;10:336–55.CrossRef
17.
Zurück zum Zitat Lin X-J, Lin IM, Fan S-Y. Methodological issues in measuring health-related quality of life. Tzu Chi Med J. 2013;5:8–12.CrossRef Lin X-J, Lin IM, Fan S-Y. Methodological issues in measuring health-related quality of life. Tzu Chi Med J. 2013;5:8–12.CrossRef
18.
Zurück zum Zitat Gallacher J, de Reydet de Vulpillieres F, Amzal B, Angehrn Z, Bexelius C, Bintener C, et al., and the ROADMAP Consortium. Challenges for optimizing real-world evidence in Alzheimer’s disease: the ROADMAP project. J Alzheimers Dis 2019;67:495–501. Gallacher J, de Reydet de Vulpillieres F, Amzal B, Angehrn Z, Bexelius C, Bintener C, et al., and the ROADMAP Consortium. Challenges for optimizing real-world evidence in Alzheimer’s disease: the ROADMAP project. J Alzheimers Dis 2019;67:495–501.
19.
Zurück zum Zitat Moher D, Liberati A, Tetzlaff J, Altman DG, The PRISMA Group. Preferred reporting items for systematic reviews and meta-analyses: the PRISMA statement. PLoS Med. 2008;6:e1000097.CrossRef Moher D, Liberati A, Tetzlaff J, Altman DG, The PRISMA Group. Preferred reporting items for systematic reviews and meta-analyses: the PRISMA statement. PLoS Med. 2008;6:e1000097.CrossRef
20.
Zurück zum Zitat Landeiro F, Walsh K, Ghinai I, Mughal S, Nye E, Wace H, et al. Measuring quality of life of people with predementia and dementia and their caregivers: a systematic review protocol. BMJ Open. 2018;8:e019082.CrossRef Landeiro F, Walsh K, Ghinai I, Mughal S, Nye E, Wace H, et al. Measuring quality of life of people with predementia and dementia and their caregivers: a systematic review protocol. BMJ Open. 2018;8:e019082.CrossRef
21.
Zurück zum Zitat Li L, Nguyen KH, Comans T, Scuffham P, et al. Utility-based instruments for people with dementia: a systematic review and meta-regression analysis. Value Health. 2018;21:471–81.CrossRef Li L, Nguyen KH, Comans T, Scuffham P, et al. Utility-based instruments for people with dementia: a systematic review and meta-regression analysis. Value Health. 2018;21:471–81.CrossRef
22.
Zurück zum Zitat Riley RD, Higgins JPT, Deeks JJ. Interpretation of random effects meta-analyses. BMJ. 2011;342:d549.CrossRef Riley RD, Higgins JPT, Deeks JJ. Interpretation of random effects meta-analyses. BMJ. 2011;342:d549.CrossRef
23.
Zurück zum Zitat Rice K, Higgins JP, Lumley T. A re-evaluation of fixed effect(s) meta-analysis. J R Stat Soc A. 2018;181:205–27.CrossRef Rice K, Higgins JP, Lumley T. A re-evaluation of fixed effect(s) meta-analysis. J R Stat Soc A. 2018;181:205–27.CrossRef
24.
Zurück zum Zitat Hounsome N, Orrell M, Edwards RT. EQ-5D as a quality of life measure in people with dementia and their carers: evidence and key issues. Value Health. 2011;14:390–9.CrossRef Hounsome N, Orrell M, Edwards RT. EQ-5D as a quality of life measure in people with dementia and their carers: evidence and key issues. Value Health. 2011;14:390–9.CrossRef
25.
Zurück zum Zitat Jönsson L, Andreasen N, Kilander L, Soininen H, Waldemar G, Nygaard H, et al. Patient- and proxy-reported utility in Alzheimer disease using the EuroQoL. Alzheimer Dis Assoc Disord. 2006;20:49–55.CrossRef Jönsson L, Andreasen N, Kilander L, Soininen H, Waldemar G, Nygaard H, et al. Patient- and proxy-reported utility in Alzheimer disease using the EuroQoL. Alzheimer Dis Assoc Disord. 2006;20:49–55.CrossRef
26.
Zurück zum Zitat Ratcliffe J, Flint T, Easton T, Killington M, Cameron I, Davies O, et al. An empirical comparison of the EQ-5D-5L, DEMQOL-U and DEMQOL-Proxy-U in a post-hospitalisation population of frail older people living in residential aged care. Appl Health Econ Health Policy. 2017;15:399.CrossRef Ratcliffe J, Flint T, Easton T, Killington M, Cameron I, Davies O, et al. An empirical comparison of the EQ-5D-5L, DEMQOL-U and DEMQOL-Proxy-U in a post-hospitalisation population of frail older people living in residential aged care. Appl Health Econ Health Policy. 2017;15:399.CrossRef
27.
Zurück zum Zitat Easton T, Milte R, Crotty M, Ratcliffe J. An empirical comparison of the measurement properties of the EQ-5D-5L, DEMQOL-U and DEMQOL-Proxy-U for older people in residential care. Qual Life Res. 2018;27:1283–94.CrossRef Easton T, Milte R, Crotty M, Ratcliffe J. An empirical comparison of the measurement properties of the EQ-5D-5L, DEMQOL-U and DEMQOL-Proxy-U for older people in residential care. Qual Life Res. 2018;27:1283–94.CrossRef
28.
Zurück zum Zitat Vogel A, Stokholm J, Gade A, Andersen BB, Hejl AM, Waldemar G. Awareness of deficits in mild cognitive impairment and Alzheimer’s disease: do MCI patients have impaired insight? Dement Geriatr Cogn Disord. 2004;17(3):181–7.CrossRef Vogel A, Stokholm J, Gade A, Andersen BB, Hejl AM, Waldemar G. Awareness of deficits in mild cognitive impairment and Alzheimer’s disease: do MCI patients have impaired insight? Dement Geriatr Cogn Disord. 2004;17(3):181–7.CrossRef
29.
Zurück zum Zitat Arons AM, Krabbe PF, Schölzel-Dorenbos CJ, van der Wilt GJ, Rikkert MGO. Quality of life in dementia: a study on proxy bias. BMC Med Res Methodol. 2013;13:110.CrossRef Arons AM, Krabbe PF, Schölzel-Dorenbos CJ, van der Wilt GJ, Rikkert MGO. Quality of life in dementia: a study on proxy bias. BMC Med Res Methodol. 2013;13:110.CrossRef
30.
Zurück zum Zitat Vann Jones SA, O'Brien JT. The prevalence and incidence of dementia with Lewy bodies: a systematic review of population and clinical studies. Psychol Med. 2013;44:673–83.CrossRef Vann Jones SA, O'Brien JT. The prevalence and incidence of dementia with Lewy bodies: a systematic review of population and clinical studies. Psychol Med. 2013;44:673–83.CrossRef
Metadaten
Titel
Health-related quality of life in people with predementia Alzheimer’s disease, mild cognitive impairment or dementia measured with preference-based instruments: a systematic literature review
verfasst von
Filipa Landeiro
Seher Mughal
Katie Walsh
Elsbeth Nye
Jasmine Morton
Harriet Williams
Isaac Ghinai
Yovanna Castro
José Leal
Nia Roberts
Helena Wace
Ron Handels
Pascal Lecomte
Anders Gustavsson
Emilse Roncancio-Diaz
Mark Belger
Gurleen S. Jhuti
Jacoline C. Bouvy
Michele H. Potashman
Antje Tockhorn-Heidenreich
Alastair M. Gray
on behalf of the ROADMAP consortium
Publikationsdatum
01.12.2020
Verlag
BioMed Central
Erschienen in
Alzheimer's Research & Therapy / Ausgabe 1/2020
Elektronische ISSN: 1758-9193
DOI
https://doi.org/10.1186/s13195-020-00723-1

Weitere Artikel der Ausgabe 1/2020

Alzheimer's Research & Therapy 1/2020 Zur Ausgabe

Leitlinien kompakt für die Neurologie

Mit medbee Pocketcards sicher entscheiden.

Seit 2022 gehört die medbee GmbH zum Springer Medizin Verlag

Sozialer Aufstieg verringert Demenzgefahr

24.05.2024 Demenz Nachrichten

Ein hohes soziales Niveau ist mit die beste Versicherung gegen eine Demenz. Noch geringer ist das Demenzrisiko für Menschen, die sozial aufsteigen: Sie gewinnen fast zwei demenzfreie Lebensjahre. Umgekehrt steigt die Demenzgefahr beim sozialen Abstieg.

Hirnblutung unter DOAK und VKA ähnlich bedrohlich

17.05.2024 Direkte orale Antikoagulanzien Nachrichten

Kommt es zu einer nichttraumatischen Hirnblutung, spielt es keine große Rolle, ob die Betroffenen zuvor direkt wirksame orale Antikoagulanzien oder Marcumar bekommen haben: Die Prognose ist ähnlich schlecht.

Was nützt die Kraniektomie bei schwerer tiefer Hirnblutung?

17.05.2024 Hirnblutung Nachrichten

Eine Studie zum Nutzen der druckentlastenden Kraniektomie nach schwerer tiefer supratentorieller Hirnblutung deutet einen Nutzen der Operation an. Für überlebende Patienten ist das dennoch nur eine bedingt gute Nachricht.

Thrombektomie auch bei großen Infarkten von Vorteil

16.05.2024 Ischämischer Schlaganfall Nachrichten

Auch ein sehr ausgedehnter ischämischer Schlaganfall scheint an sich kein Grund zu sein, von einer mechanischen Thrombektomie abzusehen. Dafür spricht die LASTE-Studie, an der Patienten und Patientinnen mit einem ASPECTS von maximal 5 beteiligt waren.

Update Neurologie

Bestellen Sie unseren Fach-Newsletter und bleiben Sie gut informiert.