Skip to main content
Erschienen in: Health Economics Review 1/2016

Open Access 01.12.2015 | Review

Systematic review of health state utility values for economic evaluation of colorectal cancer

verfasst von: Kim Jeong, John Cairns

Erschienen in: Health Economics Review | Ausgabe 1/2016

Abstract

Cost-utility analyses undertaken to inform decision making regarding colorectal cancer (CRC) require a set of health state utility values (HSUVs) so that the time CRC patients spend in different health states can be aggregated into quality-adjusted life-years (QALY). This study reviews CRC-related HSUVs that could be used in economic evaluation and assesses their advantages and disadvantages with respect to valuation methods used and CRC clinical pathways. Fifty-seven potentially relevant studies were identified which collectively report 321 CRC-related HSUVs. HSUVs (even for similar health states) vary markedly and this adds to the uncertainty regarding estimates of cost-effectiveness. There are relatively few methodologically robust HSUVs that can be directly used in economic evaluations concerned with CRC. There is considerable scope to develop new HSUVs which improve on those currently available either by expanded collection of generic measures or by making greater use of condition-specific data, for example, using mapping algorithms.
Hinweise

Electronic supplementary material

The online version of this article (doi:10.​1186/​s13561-016-0115-5) contains supplementary material, which is available to authorized users.
Abkürzungen
AE
Adverse event
CRC
Colorectal cancer
EGFR
Epidermal growth factor receptor
EORTC
European Organisation for Research and Treatment of Cancer
FACT-G
Functional assessment of cancer therapy-general
FACT-C
Functional assessment of cancer therapy-cancer
HRQoL
Health-related quality of life
HSUV
Health state utility value
mCRC
Metastatic colorectal cancer
PBM
Preference-based measure
QLQ
Quality of life questionnaire
QALY
Quality-adjusted life-year
Q-TWiST
Quality-adjusted time without symptoms or toxicity
NICE
National Institute for Health and Care Excellence
SG
Standard gamble
TTO
Time trade-off
TWiST
Time without symptoms or toxicity
UK
United Kingdom
US
United States

Introduction

Colorectal cancer (CRC) is the third most commonly diagnosed cancer worldwide [1]. CRC was traditionally more common in the western world but some Asian countries have shown an increase in CRC incidence in recent years [2]. Economic evaluation to inform decision making regarding CRC requires a set of health state utility values (HSUVs) so that the time CRC patients spend in different health states can be aggregated into quality-adjusted life-years (QALYs).
There are four ways by which the required HSUVs can be empirically generated:
(1)
There are generic preference-based measures (PBM), such as the EQ-5D, SF-6D, 15D and the HUI3, where generic health states are valued using a tariff based on the preferences of the general public elicited using methods such as the time trade-off (TTO) and the standard gamble (SG).
 
(2)
An alternative approach is to identify a number of relevant cancer-specific health states (as opposed to using generic health state descriptions) and to value these health states directly, again using methods such as the TTO and the SG. In this case the valuations are potentially made by cancer patients themselves, health care professionals or the general public.
 
(3)
A variation on this second approach is to develop a preference-based algorithm with which a full range of cancer-specific health states can be valued. Two such measures, the EORTC-8D and the QLU-C10D, are based on items from the Quality of Life Questionnaire C30 (QLQ-C30).
 
(4)
Finally, a mapping algorithm can be used to transform cancer-specific data such as the EORTC QLQ-C30 and the Functional Assessment of Cancer Therapy-General (FACT-G) into generic PBMs.
 
This paper reviews CRC-related HSUVs that could be used in economic evaluations and assesses their advantages and disadvantages with reference to the valuation methods used and CRC clinical pathways.

Review

Methods

The literature was searched to identify CRC-related HSUVs for use in economic evaluation. MEDLINE, MEDLINE In-Process & Other Non-Indexed Citations, Embase (up to 30 October 2015) and Health Economic Evaluations Database (HEED, up to December 2014) were searched using the keywords colorectal cancer, health-related quality of life, QALY and economic evaluation. The search was restricted to studies in English. The search was broadened to include the National Institute for Health and Care Excellence (NICE) website (www.​nice.​org.​uk) to minimise the chance of missing relevant studies. Economic filters were used when searching for evidence on generalist databases, such as MEDLINE. A simplified search was undertaken without using economic filters, for evidence on economics databases such as HEED. A further search was run on non-economic databases, including MEDLINE, to capture studies that are relevant to mapping. Search strategies are reported in Appendix 1. Relevant conference abstracts were tracked for full journal publications. All search results were downloaded into EndNote and duplicates removed. Titles and abstracts were screened between two independent reviewers and full papers that did not meet the inclusion criteria were excluded. The study selection criteria are reported in Appendix 2. Studies were included if they contained CRC-related HSUVs which had not been previously reported, be they generic PBMs or directly valued CRC-related health state descriptions, or mapping to generic PBMs based on direct statistical association mapping.
Full text was acquired for the remaining studies (including those which had insufficient details, such as no abstract). All included studies were read and any disagreements were resolved by discussion between the two reviewers. Of the 285 papers identified as potentially relevant 228 were excluded because they did not report CRC-related HSUVs but presented psychometric validation studies without internal validation properties, the values were previously reported in other included studies, they involved unspecified or not clearly specified CRC-related health state utility values, or a primary mapping function was not reported.
A total of 57 studies were included in the reviews (see Additional file 1). The numerical summary of the search and selection process for the review is reported in Fig. 1.
Descriptive characteristics (year of publication, country of origin, intervention type, number and mean age of respondents) and methodological characteristics (what was the measure of value; how was the health state described and valued; who valued it; how the QALY was aggregated) were collected for the 57 studies [3]. Findings from selected studies are discussed in the following section.

Results

Of the 57 studies, eleven were set in the US [414], eight in the UK [1522], seven in the Netherlands [2329], five in Hong Kong [3034], four in Canada [3538], two each in Norway, Korea, Australia and Japan [3946] and other country settings included Spain, Germany, India, Malaysia, Singapore, Sweden and Turkey [4754]. Some studies did not report their settings or were multinational or multicentre studies [5560]. Studies were mostly published in the last 15–20 years and focussed narrowly on different interventions at specific stages of CRC. For example, the adverse events (AEs) of chemotherapy and survival (partial response) in metastatic CRC (mCRC) were the main condition of interest in several studies [14, 20, 36, 38, 44, 4850, 56, 58, 59]. HSUVs associated with rectal cancer have been reported [7, 18, 2325, 27, 52, 54].
The 57 studies included in this review reported a total of 368 CRC-related HSUVs. All reported HSUVs are summarised in Additional file 2.

Generic preference-based measures

Thirty-two studies collected health state information from CRC patients using generic PBMs, and have applied health state tariffs based on the preferences of the general public. These studies generally collect data from patients recruited to trials, usually several hundred patients and at multiple time points. The most widely reported generic PBM is the EQ-5D valued using the UK (TTO-derived) value set with some exceptions [28, 57, 58] followed by the SF-6D [6, 30, 33, 34, 37] and HUI3 [10, 11, 38].

Direct valuation of CRC health states

Fourteen studies directly valued CRC health states. Preferences have been elicited either using the TTO method with patients or a surrogate group [4, 5, 36, 44, 45, 4850] or SG [7, 8, 13, 20, 35]. Generally, these studies have involved fewer than 100 respondents. The participants have been drawn from CRC patients, health care professionals and the community or general population (non-patient, non-health care professional). Only one study recruited a sample entirely from the general population [44] and one entirely from CRC patients [8]. Mean utility values from health care professionals were lower than those from patients across health states [8, 12]. The remission health state was valued similarly by both groups, whereas the community group assigned lower values to adjuvant therapy-related AEs [4].

Preference-based condition-specific measures

Another approach has recently been developed which offers an alternative to using directly valued health states from the literature. The EORTC-8D is a cancer-specific PBM derived from the EORTC QLQ-C30 [61]. It utilises ten items from the thirty items of the QLQ-C30. A total of 85 EORTC-8D health states were valued by 350 members of the UK general public and these responses were then modelled to let any of the EORTC-8D states be valued. The QLU-C10D utilises twelve QLQ-C30 items to produce a ten dimensional measure [62]. However, to date this approach has not been used to value CRC health states.

Mapping

The absence of data on generic PBMs from most cancer trials has generated considerable interest in mapping algorithms, from cancer-specific measures such as the Functional Assessment of Cancer Therapy-General (FACT-G) and the EORTC QLQ-C30 to measures such as the EQ-5D and the SF-6D [63, 64]. While several studies have reported mapping algorithms in the cancer area [9, 30, 32, 37, 41, 42, 47], only one of the mapping algorithms was developed using responses from CRC patients [65] and only one study has reported HSUVs for different CRC-related health states based on an algorithm [31]. The mapping studies are summarised in Additional file 3.

HSUVs and the clinical pathway

For the purposes of estimating QALYs it is usually necessary to have information on HSUVs at several points along the clinical pathway. Evaluations of screening or diagnosis require valuations at the time of the intervention and subsequently following treatment.
CRC Screening-related HSUVs
Only one study has reported CRC-screening related HSUVs as presented in Table 1 [26].
Table 1
CRC screening- related HSUVs
Valuation methods used
HSUVs reported
Reference
EQ-5D
Negative FS after positive FIT 0.81
Positive FS after positive FIT 0.82
Kapidzic [26]
COL colonoscopy, CRC colorectal cancer, FIT faecal immunochemical test, FS flexible sigmoidoscopy, HSUVs health state utility values
Colostomy-related HSUVs
Sixteen colostomy-related HSUVs were reported from 4 studies [5, 8, 12, 35]. Disutility of 0.09 [8] and of 0.111 [12, 35] were reported among rectal cancer patients with colostomy compared with those without colostomy respectively. The utility of having a stoma among former CRC patients with a reversed colostomy was 0.20 lower compared with those currently have a stoma [12]. HSUVs related to having a colostomy (surgery) and no colostomy (radiotherapy) were measured using SG in the primary treatment for rectal cancer. People with a colostomy assigned a higher value than people without a colostomy [35]. The summary of colostomy-related HSUVs is presented in Table 2.
Table 2
Colostomy-related HSUVs
Valuation methods used
HSUVs reported
Reference
SG
With colostomy 0.915
Without colostomy 0.804
Boyda [35]
TTO
[20 years with CRC; 20 years with a colostomy]
Unscreened [0.80; 0.80]
Screened [0.80; 0.75]
Enrolled in a COL screening program [0.85; 0.79]
CRC patients [0.83; 0.90]
Dominitz [5]
EQ-5D
With stoma 0.836
Without stoma 0.870
Hamashima [40]
SF-6D
With stoma 0.69
Without stoma 0.73
Hornbrook [6]
SG
Stage II/III rectal cancer, permanent colostomy 0.50
Stage IV metastatic/unresectable disease without colostomy 0.25
State IV metastatic/unresectable disease with colostomy 0.25
Ness [8]
TTO
Currently with colostomy 0.84
Reversed colostomy 0.64
Community members 0.63
Smith [12]
EQ-5D
PRT and TME PS 0.823
TME PS 0.853
van den Brink [27]
SG
Stage II/III RC treated with resection, chemotherapy, radiation therapy and with permanent ostomy 0.50
Ness [8]
a Reported HSUVs are re-expressed on a 0–1 scale
COL colonoscopy, CRC colorectal cancer, HSUVs health state utility values; RC rectal cancer, SG standard gamble, TTO time trade-off, PRT preoperative radiotherapy, TME total mesorectal excision, PS permanent stoma
HSUVs and colorectal polyps
Wong and colleagues [30] reported two HSUVs using SF-6D for those individuals with low- and high-risk colorectal polyps (0.871 and 0.832 respectively).
HSUVs and rectal cancer
HSUVs for hypothetical health states related to therapy for locally recurrent rectal cancer were higher among rectal cancer patients than health care professionals when measured using SG [7].
Two sets of rectal cancer-related HSUVs were reported at different time points and at different levels of surgery using EQ-5D and TTO values assigned by the UK general public [66, 67]. However, no standard deviation of mean values was reported. Overall improved survival outweighed the disutility related to AEs of preoperative radiotherapy compared with surgery alone [18, 27]. A summary of rectal cancer-related HSUVs is presented in Table 3.
Table 3
Rectal cancer-related HSUVs
Valuation methods used
HSUVs reported
Reference
SG
Healthcare professionals; patients
Disease recurrence 0.69; 0.72
Surgical resection 0.69; 0.83
Pain and complications 0.50; 0.78
Miller [7]
EQ-5D
PRT + TME 0.70-0.86
Recurrent 0.67 (local) 0.70 (distant) 0.48 (local/distant)
TME 0.63-1.0
Recurrent 0.80 (local) 0.64 (distant) 0.45 (local/distant)
Van den Brink [27]a
EQ-5D
Mean EQ-5D (SD)
Baseline before TME 0.88 (0.15)
6 weeks after TME 0.85(0.18)
12 weeks after TME 0.87 (0.19)
26 weeks after TME 0.88 (0.17)
52 weeks after TME 0.86 (0.6)
Hompes [18]
a Ranges of reported HSUVs
HSUVs health state utility values, SD standard deviation, SG standard gamble, PRT preoperative radiotherapy, TME total mesorectal excision
HSUVs and AEs/treatments of CRC
Best et al. [4] elicited preferences for seven health states associated with stage III colon cancer and adjuvant chemotherapy using TTO among CRC patients and community members. The TTO values for mCRC obtained from CRC patients were higher than those obtained from the community members. Several CRC health states were measured among CRC patients in Finland and were valued using the UK TTO tariff [51].
Skin toxicity is a common AE related to epidermal growth factor receptor (EGFR) agents. Improved HSUVs related to an EGFR were demonstrated using HUI3 among mCRC patients when compared with best supportive care. Health-related quality of life (HRQL) was measured in mCRC patients and valued by the public [37]. Skin toxicity associated with mCRC treatments was reported to have little impact on HRQoL among mCRC patients [56, 58]. HSUVs obtained from patients with or without anti-EGFR treatment were applied to the duration of the AEs (days with grade 3 or higher AEs) and time without symptoms or toxicity (TWiST), and the differences were measured using a quality-adjusted time without symptoms of disease or toxicity of treatment (Q-TWiST) analysis [60]. Q-TWiST analysis was used to estimate utility values for three health states among CRC patients with liver metastasis undergoing hepatic resection [29].
HRQoL measured directly from patients is not always possible in mCRC; so around 30 carers were used a number of times as a proxy because terminally ill mCRC patients would have difficulties in understanding SG or TTO techniques [20, 36, 4850]. A summary of HSUVs associated with CRC treatments and AEs are presented in Table 4.
Table 4
HSUVs associated with CRC treatments and AEs
Reference
Valuation methods used
HSUVs
Bennett [56]
EQ-5D
1st line
Panitimumab + FOLFOX4 0.778; FOLFOX4 0.756
2nd line
Panitimumab + FOLFIRI 0.769; FOLFIRI 0.762
Best [4]
TTO
CRC patients/community members
Remission 0.83/0.82
adjuvant, no neuropathy 0.61/0.60
adjuvant, mild neuropathy 0.61/0.51
adjuvant, moderate neuropathy 0.53/0.46
adjuvant, severe neuropathy 0.48/0.34
metastatic, stable 0.40)/0.51
metastatic, progressive 0.37/0.21
Dranitsaris [48]b
TTO
FOLFOX + ‘new drug’ → FOLFIRI → BSC until death [2–33 months] 0.68-0.89
FOLFOX → FOLFIRI → BSC until death [2–32 months] 0.70-0.94
Dranitsaris [36]b
TTO
FOLFOX±’new drug’ → FOLFIRI → BSC until death [2–29 months] 0.67-0.83
FOLFOX → FOLFIRI → BSC until death [2–32 months] 0.72-0.91
Dranitsaris [48]b
TTO
FOLFOX + ‘new drug’ → FOLFIRI → BSC until death [2–29 months] 0.52-0.84
FOLFOX → FOLFIRI → BSC until death [2–32 months] 0.53-0.84
Dranitsaris [36]b
TTO
FOLFOX + ‘new drug’ → FOLFIRI → BSC until death [2–28 months] 0.44-0.72
FOLFOX → FOLFIRI → BSC until death [2–32 months] 0.44-0.71
Farkkila [51]
EQ-5D
Metastatic disease 0.820
Palliative care 0.643
Mittmann [38]b
HUI3
Cetuximab + BSC 0.71-0.77
BSC 0.66-0.71
Odom [58]
EQ-5D
Panitumumab plus BSC; BSC alone
Overall 0.72; 0.68
Wild-type KRAS 0.73; 0.68
Mutant KRAS 0.71; 0.68
Petrou [20]a
SG
Partial response 1.0
Stable disease 0.95
Progressive disease 0.575
Terminal disease 0.1
Shiroiwa [44]
TTO
XELOX without AEs 0.59
FOLFOX without AEs 0.53
Febrile neutropenia 0.39
Nausea/vomiting 0.38
Diarrhoea 0.42
Hand-foot syndrome 0.39
Fatigue 0.45
Peripheral neuropathy 0.45
Stomatitis 0.42
Wang [60]
EQ-5D
Panitumumab + BSC; BSC
TOX 0.6008; 0.4409
TWiST 0.7678; 0.6630
REL 0.6318; 0.6407
Wiering [29]
EQ-5D
Disease-free 0.78
non-curative 0.67
recurrence 0.74
recurrence with chemotherapy 0.82
Recurrent without chemotherapy 0.68
Ward [14]
EQ-VAS
Capecitabine and bevacizumab
Baseline 61.76 (SD 23.15)
Cycle 2 68.59 (SD 22.26) [p = 0.06]
End of study 66.54 (SD 23.18) [p = 0.29]
aReported HSUVs are re-expressed on a 0–1 scale
bRanges of reported HSUVs
AE adverse event, BSC best supportive care, FOLFOX Oxaliplatin + infusional 5 fluorouracil (5-FU), FOLFIRI Irinotecan + infusional 5 fluorouracil (5-FU), FOLFOX4 5-fluorouracil/folic acid and oxaliplatin, HSUVs health state utility values, KRAS Kirsten rat sarcoma viral oncogene, REL (relapse period until death or end of follow-up), SD standard deviation, SG Standard gamble, TOX days with ≥ grade 3 adverse events, TTO time trade-off, TWiST time without symptoms or toxicity, XELOX capecitabine plus oxaliplatin
Ness et al. [8] reported much lower HSUVs for mCRC than did other studies [10, 11]. People who previously underwent the removal of colorectal adenomas assigned a much lower value to mCRC of 0.25 [8] compared to CRC survivors 0.81 [10] and 0.85 [11]. CRC patients assigned relatively higher values to mCRC (0.820) and palliative care (0.643) compared to those who had no history of previous or current CRC [51]. Stable and progressive disease states were given a much higher value using SG by people who had colorectal adenomas removed [8] compared with those with CRC using TTO [4].
Of five studies reporting HSUVs of different CRC stages HSUVs were clustered ranging from 0.732–0.87 with an exception of one study 0.25–0.74 [8, 10, 11, 22, 33]. A summary of selected HSUVs in different CRC stages is presented in Table 5.
Table 5
HSUVs in CRC
Valuation methods used
Reported HSUVs
Reference
SG
Stage I 0.74
Stage II 0.74 (0.59a)
Stage III 0.67 (0.59a)
Stage IV 0.25
Ness [8]
HUI3
Stage I 0.84
Stage II 0.86
Stage III 0.85
Stage IV 0.84
Ramsey [10]
HUI3
Stage I 0.83
Stage II 0.86
Stage III 0.87
Stage IV 0.81
Ramsey [10]
EQ-5D
Dukes stage A + B 0.786b
Dukes stage C + D 0.806b
Wilson [22]a
Mapping from FACT-C to SF-6D
Stage I 0.831
Stage II 0.858
Stage III 0.817
Stage IV 0.732
Wong [30]
aRectal cancer; SG Standard gamble
bRe-expressed on a 0–1 scale
FACT-C functional assessment of cancer therapy-cancer

Discussion

There is no shortage of HSUVs available for those wishing to estimate the cost-effectiveness of diagnostic and treatment strategies with respect to CRC. Those assessing cost-effectiveness face a number of challenges: first, justifying their selection of values when there is no set of values that are clearly superior to all others, and second, negotiating trade-offs between the advantages and disadvantages of the available values.
This choice can be simplified where there is an agreed hierarchy regarding the appropriateness of different approaches to generating HSUVs. In order to aid resource allocation and decision making within a tax-funded healthcare system, economic evaluation needs population values for specific health states related to CRC. The preferences of the public are generally deemed appropriate when health services are largely paid for by taxpayers [59]. Some agencies when have a preference for generic PBMs being used to report the experience of patients in the trial from which the effectiveness of the treatment is being estimated when deciding whether or not to recommend a new treatment, or in the absence of such data similar measures reported in the literature would be used [68].
Researchers usually confront a series of trade-offs and must make judgements about the importance of having all HSUVs used in an economic evaluation come from the same source, or at least obtaining all the HSUVs using the same methods. The number of HSUVs required will in part depend on where in the clinical pathway the intervention being assessed is located. The earlier in the pathway, the larger the number of potentially relevant health states and the less likely it is that all the required HSUVs can come from a single study. Even with clear preferences over the type of measure and the source of values the decision over which values to use can be challenging since the ranking of methods or sources might change in particular circumstances. For example, trial data is not always to be preferred to observational data if the latter provide much larger numbers of observations and are more representative of patients in routine clinical practice. Also a directly collected generic PBM might not always be preferred to the same measure obtained through mapping, for example, if the latter allowed the valuation of a wider range of CRC-related health states. It is uncertain if HSUVs related to mCRC valued by CRC survivors are more relevant than those by health care professionals when making decisions. Also whether or not HSUVs for mCRC valued by early CRC patients are more reliable than those valued by patients with different types of metastatic cancer, has received little attention.
HSUVs have been measured by a surrogate group such as oncology nurses, pharmacists or other health care professionals [20, 36, 4850]. Despite limitations to the study design (such as small sample size or under-explored uncertainties) these HSUVs continue to be used in economic evaluation studies associated with CRC [20]. Subsequently, these uncertainties are inherited by the estimation of cost-effectiveness and of QALYs. Well-designed clinical studies continue to generate new evidence that is highly focussed on treatment effects with strong internal validity. Economic evaluation would be strengthened if health state data could be taken from the clinical studies that provide the estimates of effectiveness of treatment [69]. Further research which utilises data from patient-reported outcomes, population surveys, and cancer registry data in assessing HRQoL and HSUVs is recommended [70].
Given the absence of generic PBM data from many trials, existing mapping algorithms could be more fully utilised as an additional means of deriving HSUVs for economic evaluation of CRC, and also exploratory studies to derive HSUVs for colorectal cancer health states from EORTC QLQ-C30 data using the EORTC-8D or QLU-C10D are warranted.
Although there are a number of algorithms for mapping from cancer-specific scales to generic PBMs this approach has not been frequently reported with respect to CRC. Cancer-specific scales, such as the QLQ-C30, capture a number of clinical and domain-specific effects that might not be captured when using generic PBMs [68]. Mapping also has the advantage of producing QALYs measured using a familiar metric. However, any mapping inevitably introduces additional uncertainty to the QALY calculation and the cost-effectiveness estimation.
Important questions associated with HSUVs for the economic evaluation of CRC remain unanswered. What is the most accurate way of measuring and valuing HRQoL in CRC? Is it better to collect HRQoL data directly from a small number of CRC patients over a follow-up period [27]? The studies reviewed gave limited consideration to the best way to measure and value CRC health states.
This review highlights gaps in the evidence and opportunities for informative research. The most appropriate way to measure and value CRC-related health states should be studied. Developing a set of criteria for selecting the most appropriate HSUVs that fits the analyst’s purpose is encouraged. It is not known whether the mCRC-related HRQoL of CRC survivors is more representative than those derived from a small surrogate group. Also, whether mCRC-related HSUVs valued by early CRC patients are more appropriate than those valued by patients with different types of metastatic cancer for economic evaluation has been under-researched.

Conclusions

CRC-related HSUVs vary markedly between studies and across methods. Despite the number of HSUVs published, there is not a set of HSUVs that are methodologically robust with a full range of values for health states of interest appropriate for the use in economic evaluation of CRC. There is considerable scope for new HSUVs to be developed which improve on those currently available and consequently to produce better estimates of QALYs and cost-effectiveness in order to better inform resource allocation and healthcare decision making. In addition, the use of existing mapping algorithms to derive CRC-related HSUVs should be further explored.

Acknowledgements

KJ and JC are grateful for advice from Paul Levay in developing search strategies.

Funding

KJ and JC received no financial sponsorship for this work.

Authors’ contributions

KJ and JC have been involved in all stages of the literature search, sifting and review of studies, revising the manuscript critically for important intellectual content. KJ wrote draft manuscript. Both authors read and approved the final manuscript.

Competing interests

Kim Jeong (KJ) received no financial sponsorship for this work, and has no conflict of interest.
Professor John Cairns (JC) received no financial sponsorship for this work, and has no conflict of interest.
This article has not been published previously, is not under consideration for publication elsewhere, its publication is approved by all authors (KJ and JC) and tacitly by the responsible authorities where the work was carried out, and if accepted it will not be published elsewhere including electronically in the same form, in English or in any other language, without the written consent of the copyright-holder.
Open AccessThis article is distributed under the terms of the Creative Commons Attribution 4.0 International License (http://​creativecommons.​org/​licenses/​by/​4.​0/​), which permits unrestricted use, distribution, and reproduction in any medium, provided you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made.
Anhänge

Appendix 1. Search strategies

Appendix 1.1 Search strategy for MEDLINE

Database: Ovid MEDLINE(R), Ovid MEDLINE(R) In-Process & Other Non-Indexed Citations, Ovid MEDLINE(R) Daily and Ovid OLDMEDLINE(R) <1946 to Present>
Platform used: OvidSP.
Date run: 30 October 2015
Search Strategy:
1.
Economics/or exp "Costs and Cost Analysis"/or exp Economics, Hospital/or exp Economics, Medical/or Economics, Nursing/or Economics, Pharmaceutical/or Budgets/or exp Models, Economic/or Markov Chains/or Monte Carlo Method/or Decision Trees/
 
2.
(econom$ or cba or cea or cua or markov$ or (monte adj carlo) or (decision adj2 (tree$ or analys$)) or (cost or costs or costing$ or costly or costed) or (price$ or pricing$) or budget$ or expenditure$ or (value adj2 (money or monetary)) or (pharmacoeconomic$ or (pharmaco adj economic$))).ti,ab.
 
3.
1 or 2
 
4.
"Value of Life"/
 
5.
Quality-Adjusted Life Years/
 
6.
quality adjusted life year.tw.
 
7.
(qaly$ or qald$ or qale$ or qtime$).tw.
 
8.
disability adjusted life.tw.
 
9.
daly$.tw.
 
10.
Health Status Indicators/
 
11.
(sf36 or sf 36 or short form 36 or shortform 36 or sf thirtysix or sf thirty six or shortform thirtysix or shortform thirty six or short form thirtysix or short form thirty six).tw.
 
12.
(sf6 or sf 6 or short form 6 or shortform 6 or sf six or sfsix or shortform six or short form six).tw.
 
13.
(sf12 or sf 12 or short form 12 or shortform 12 or sf twelve or sftwelve or shortform twelve or short form twelve).tw.
 
14.
(sf16 or sf 16 or short form 16 or shortform 16 or sf sixteen or sfsixteen or shortform sixteen or short form sixteen).tw.
 
15.
(sf20 or sf 20 or short form 20 or shortform 20 or sf twenty or sftwenty or shortform twenty or short form twenty).tw.
 
16.
(euroqol or euro qol or eq5d or eq 5d).tw.
 
17.
(qol or hql or hqol or hrqol).tw.
 
18.
(hye or hyes).tw.
 
19.
health$ year$ equivalent$.tw.
 
20.
utilit$.tw.
 
21.
(hui or hui$1 or hui$2 or hui$3).tw.
 
22.
disutili$.tw.
 
23.
rosser.tw.
 
24.
quality of wellbeing.tw.
 
25.
quality of well-being.tw.
 
26.
qwb.tw.
 
27.
willingness to pay.tw.
 
28.
standard gamble$.tw.
 
29.
time trade off.tw.
 
30.
time tradeoff.tw.
 
31.
tto.tw.
 
32.
mapping.tw.
 
33.
mapped.tw.
 
34.
crosswalk.tw.
 
35.
transfer$ to utilit$.tw.
 
36.
or/4–35
 
37.
((colorectal or colon$ or rectal or rectum$) and (cancer$ or tumor$ or tumor$ or neoplasm$ or carcinoma$ or adenoma$)).tw.
 
38.
Colorectal Neoplasms/or Colonic Neoplasms/or rectal neoplasms/
 
39.
crc.tw.
 
40.
37 or 38 or 39
 
41.
36 and 40
 
42.
3 and 41
 
43.
limit 42 to humans
 

Appendix 1.2 Search strategy for mapping studies - MEDLINE

Database: Ovid MEDLINE(R) In-Process & Other Non-Indexed Citations, Ovid MEDLINE(R) Daily, Ovid MEDLINE(R) and Ovid OLDMEDLINE(R) <1946 to Present>
Platform used: OvidSP. Date run: 30 October 2015
Search Strategy:
1.
((colorectal or colon$ or rectal or rectum$) and (cancer$ or tumor$ or tumor$ or neoplasm$ or carcinoma$ or adenoma$)).tw.
 
2.
Colorectal Neoplasms/or Colonic Neoplasms/or rectal neoplasms/
 
3.
crc.tw.
 
4.
or/1–3
 
5.
mapping$.tw.
 
6.
mapped$.tw.
 
7.
(crosswalk$ or cross walk$).tw.
 
8.
transfer$ to utilit$.tw.
 
9.
(euroqol or euro qol or eq5d or eq 5d).tw.
 
10.
(sf36 or sf 36 or short form 36 or shortform 36 or sf thirtysix or sf36 or shortform thirtysix or shortform 36 or short form thirtysix or short form 36).tw.
 
11.
(sf6 or sf 6 or short form 6 or shortform 6 or sf six or sfsix or shortform six or short form six).tw.
 
12.
(sf12 or sf 12 or short form 12 or shortform 12 or sf 12 or sftwelve or shortform 12 or short form 12).tw.
 
13.
(sf16 or sf 16 or short form 16 or shortform 16 or sf 16 or sfsixteen or shortform 16 or short form 16).tw.
 
14.
(sf20 or sf 20 or short form 20 or shortform 20 or sf 20 or sftwenty or shortform 20 or short form 20).tw.
 
15.
or/5–14
 
16.
4 and 15
 
17.
limit 16 to humans
 
18.
remove duplicates from 17
 

Appendix 2. Study selection criteria

Studies were excluded if;
  • the title/abstract were irrelevant to HRQoL or CRC-related HSUVs
  • conference abstracts with no full publication
  • Psychometric validation studies or description of health states without interval properties rather than valuation of health states
  • values were previously reported in other included studies
  • unspecified/not clearly specified health states relating to CRC
  • primary mapping function is not reported in studies
Studies were included if;
  • CRC-related HSUVs which were had not been reported previously which were
    • preference-based generic measure such as EQ-5D, HUI3, and SF-6D
    • or directly valued health state descriptions
    • or mapping to generic preference-based measures based on direct statistical association mapping
Literatur
1.
Zurück zum Zitat Haggar FA, Boushey RP. Colorectal cancer epidemiology: incidence, mortality, survival, and risk factors. Clin Colon Rectal Surg. 2009;22(4):191–7.CrossRefPubMedPubMedCentral Haggar FA, Boushey RP. Colorectal cancer epidemiology: incidence, mortality, survival, and risk factors. Clin Colon Rectal Surg. 2009;22(4):191–7.CrossRefPubMedPubMedCentral
2.
Zurück zum Zitat Sung JJ, et al. Increasing incidence of colorectal cancer in Asia: implications for screening. Lancet Oncol. 2005;6(11):871–6.CrossRefPubMed Sung JJ, et al. Increasing incidence of colorectal cancer in Asia: implications for screening. Lancet Oncol. 2005;6(11):871–6.CrossRefPubMed
3.
Zurück zum Zitat Peasgood T, Ward SE, Brazier J. Health-state utility values in breast cancer. Expert Rev Pharmacoecon Outcomes Res. 2010;10(5):553–66.CrossRefPubMed Peasgood T, Ward SE, Brazier J. Health-state utility values in breast cancer. Expert Rev Pharmacoecon Outcomes Res. 2010;10(5):553–66.CrossRefPubMed
4.
Zurück zum Zitat Best JH, et al. Preference values associated with stage III colon cancer and adjuvant chemotherapy. Qual Life Res. 2010;19(3):391–400.CrossRefPubMed Best JH, et al. Preference values associated with stage III colon cancer and adjuvant chemotherapy. Qual Life Res. 2010;19(3):391–400.CrossRefPubMed
5.
Zurück zum Zitat Dominitz JA, Provenzale D. Patient preferences and quality of life associated with colorectal cancer screening. Am J Gastroenterol. 1997;92(12):2171–8.PubMed Dominitz JA, Provenzale D. Patient preferences and quality of life associated with colorectal cancer screening. Am J Gastroenterol. 1997;92(12):2171–8.PubMed
6.
Zurück zum Zitat Hornbrook MC, et al. Complications among colorectal cancer survivors: SF-6D preference-weighted quality of life scores. Med Care. 2011;49(3):321–6.CrossRefPubMedPubMedCentral Hornbrook MC, et al. Complications among colorectal cancer survivors: SF-6D preference-weighted quality of life scores. Med Care. 2011;49(3):321–6.CrossRefPubMedPubMedCentral
7.
Zurück zum Zitat Miller AR, et al. Quality of life and cost effectiveness analysis of therapy for locally recurrent rectal cancer. Dis Colon Rectum. 2000;43:1651–1703. Miller AR, et al. Quality of life and cost effectiveness analysis of therapy for locally recurrent rectal cancer. Dis Colon Rectum. 2000;43:1651–1703.
8.
Zurück zum Zitat Ness RM, et al. Utility valuations for outcome states of colorectal cancer. Am J Gastroenterol. 1999;94(6):1650–7.CrossRefPubMed Ness RM, et al. Utility valuations for outcome states of colorectal cancer. Am J Gastroenterol. 1999;94(6):1650–7.CrossRefPubMed
9.
Zurück zum Zitat Pickard AS, et al. Comparison of FACT- and EQ-5D-based utility scores in cancer. Value Health. 2012;15(2):305–11.CrossRefPubMed Pickard AS, et al. Comparison of FACT- and EQ-5D-based utility scores in cancer. Value Health. 2012;15(2):305–11.CrossRefPubMed
10.
Zurück zum Zitat Ramsey SD, et al. Quality of life in survivors of colorectal carcinoma. Cancer. 2000;88(6):1294–303.CrossRefPubMed Ramsey SD, et al. Quality of life in survivors of colorectal carcinoma. Cancer. 2000;88(6):1294–303.CrossRefPubMed
11.
Zurück zum Zitat Ramsey SD, et al. Quality of life in long term survivors of colorectal cancer. Am J Gastroenterol. 2002;97(5):1228–34.CrossRefPubMed Ramsey SD, et al. Quality of life in long term survivors of colorectal cancer. Am J Gastroenterol. 2002;97(5):1228–34.CrossRefPubMed
12.
Zurück zum Zitat Smith DM, et al. Misremembering colostomies? Former patients give lower utility ratings than do current patients. Health Psychol. 2006;25(6):688–95.CrossRefPubMed Smith DM, et al. Misremembering colostomies? Former patients give lower utility ratings than do current patients. Health Psychol. 2006;25(6):688–95.CrossRefPubMed
13.
Zurück zum Zitat Syngal S, et al. Benefits of colonoscopic surveillance and prophylactic colectomy in patients with hereditary nonpolyposis colorectal cancer mutations. Ann Intern Med. 1998;129(10):787–96.CrossRefPubMed Syngal S, et al. Benefits of colonoscopic surveillance and prophylactic colectomy in patients with hereditary nonpolyposis colorectal cancer mutations. Ann Intern Med. 1998;129(10):787–96.CrossRefPubMed
14.
Zurück zum Zitat Ward P, et al. Physical function and quality of life in frail and/or elderly patients with metastatic colorectal cancer treated with capecitabine and bevacizumab: an exploratory analysis. Journal of Geriatric Oncology. 2014;5(4):368–75.CrossRefPubMed Ward P, et al. Physical function and quality of life in frail and/or elderly patients with metastatic colorectal cancer treated with capecitabine and bevacizumab: an exploratory analysis. Journal of Geriatric Oncology. 2014;5(4):368–75.CrossRefPubMed
15.
Zurück zum Zitat Brown SR, et al. The impact of postoperative complications on long-term quality of life after curative colorectal cancer surgery. Ann Surg. 2014;259(5):916–23.CrossRefPubMed Brown SR, et al. The impact of postoperative complications on long-term quality of life after curative colorectal cancer surgery. Ann Surg. 2014;259(5):916–23.CrossRefPubMed
16.
Zurück zum Zitat Downing A, et al. Health-related quality of life after colorectal cancer in England: a patient-reported outcomes study of individuals 12 to 36 months after diagnosis. J Clin Oncol. 2015;33(6):616–24.CrossRefPubMed Downing A, et al. Health-related quality of life after colorectal cancer in England: a patient-reported outcomes study of individuals 12 to 36 months after diagnosis. J Clin Oncol. 2015;33(6):616–24.CrossRefPubMed
17.
Zurück zum Zitat Hall PS, et al. Costs of cancer care for use in economic evaluation: a UK analysis of patient-level routine health system data. Br J Cancer. 2015;112(5):948–56.CrossRefPubMedPubMedCentral Hall PS, et al. Costs of cancer care for use in economic evaluation: a UK analysis of patient-level routine health system data. Br J Cancer. 2015;112(5):948–56.CrossRefPubMedPubMedCentral
18.
Zurück zum Zitat Hompes R, et al. Evaluation of quality of life and function at 1 year after transanal endoscopic microsurgery. Colorectal Dis. 2015;17(2):O54–61.CrossRefPubMed Hompes R, et al. Evaluation of quality of life and function at 1 year after transanal endoscopic microsurgery. Colorectal Dis. 2015;17(2):O54–61.CrossRefPubMed
19.
Zurück zum Zitat Jordan J, et al. Laparoscopic versus open colorectal resection for cancer and polyps: A cost-effectiveness study. Clinico Economics and Outcomes Research. 2014;6:415–22. Jordan J, et al. Laparoscopic versus open colorectal resection for cancer and polyps: A cost-effectiveness study. Clinico Economics and Outcomes Research. 2014;6:415–22.
20.
Zurück zum Zitat Petrou S, Campbell N. Stabilisation in colorectal cancer. Int J Palliat Nurs. 1997;3(5):275. Petrou S, Campbell N. Stabilisation in colorectal cancer. Int J Palliat Nurs. 1997;3(5):275.
21.
Zurück zum Zitat Sharma A, et al. Predictors of early postoperative quality of life after elective resection for colorectal cancer. Ann Surg Oncol. 2007;14(12):3435–42.CrossRefPubMed Sharma A, et al. Predictors of early postoperative quality of life after elective resection for colorectal cancer. Ann Surg Oncol. 2007;14(12):3435–42.CrossRefPubMed
22.
Zurück zum Zitat Wilson TR, Alexander DJ, Kind P. Measurement of health-related quality of life in the early follow-up of colon and rectal cancer. Dis Colon Rectum. 2006;49(11):1692–702.CrossRefPubMed Wilson TR, Alexander DJ, Kind P. Measurement of health-related quality of life in the early follow-up of colon and rectal cancer. Dis Colon Rectum. 2006;49(11):1692–702.CrossRefPubMed
23.
Zurück zum Zitat Doornebosch PG, et al. Impact of transanal endoscopic microsurgery on functional outcome and quality of life. Int J Colorectal Dis. 2008;23(7):709–13.CrossRefPubMedPubMedCentral Doornebosch PG, et al. Impact of transanal endoscopic microsurgery on functional outcome and quality of life. Int J Colorectal Dis. 2008;23(7):709–13.CrossRefPubMedPubMedCentral
24.
Zurück zum Zitat Doornebosch PG, et al. Quality of life after transanal endoscopic microsurgery and total mesorectal excision in early rectal cancer. Colorectal Dis. 2007;9(6):553–8.CrossRefPubMed Doornebosch PG, et al. Quality of life after transanal endoscopic microsurgery and total mesorectal excision in early rectal cancer. Colorectal Dis. 2007;9(6):553–8.CrossRefPubMed
25.
Zurück zum Zitat Gosselink MP, et al. Quality of life after total mesorectal excision for rectal cancer. Colorectal Dis. 2006;8(1):15–22.CrossRefPubMed Gosselink MP, et al. Quality of life after total mesorectal excision for rectal cancer. Colorectal Dis. 2006;8(1):15–22.CrossRefPubMed
27.
Zurück zum Zitat van den Brink M, et al. Cost-utility analysis of preoperative radiotherapy in patients with rectal cancer undergoing total mesorectal excision: a study of the Dutch Colorectal Cancer Group. J Clin Oncol Off J Am Soc Clin Oncol. 2004;22(2):244–53.CrossRef van den Brink M, et al. Cost-utility analysis of preoperative radiotherapy in patients with rectal cancer undergoing total mesorectal excision: a study of the Dutch Colorectal Cancer Group. J Clin Oncol Off J Am Soc Clin Oncol. 2004;22(2):244–53.CrossRef
28.
Zurück zum Zitat Wiering B, et al. Added value of positron emission tomography imaging in the surgical treatment of colorectal liver metastases. Nucl Med Commun. 2010;31(11):938–44.CrossRefPubMed Wiering B, et al. Added value of positron emission tomography imaging in the surgical treatment of colorectal liver metastases. Nucl Med Commun. 2010;31(11):938–44.CrossRefPubMed
29.
Zurück zum Zitat Wiering B, et al. Long-term global quality of life in patients treated for colorectal liver metastases. Br J Surg. 2011;98(4):565–71. discussion 571–2.CrossRefPubMed Wiering B, et al. Long-term global quality of life in patients treated for colorectal liver metastases. Br J Surg. 2011;98(4):565–71. discussion 571–2.CrossRefPubMed
30.
Zurück zum Zitat Wong CK, et al. Clinical correlates of health preference and generic health-related quality of life in patients with colorectal neoplasms. PLoS ONE [Electronic Resource]. 2013b;8(3): e58341 Wong CK, et al. Clinical correlates of health preference and generic health-related quality of life in patients with colorectal neoplasms. PLoS ONE [Electronic Resource]. 2013b;8(3): e58341
31.
Zurück zum Zitat Wong CK, et al. Mapping the Functional Assessment of Cancer Therapy-general or -Colorectal to SF-6D in Chinese patients with colorectal neoplasm. Value Health. 2012;15(3):495–503.CrossRefPubMed Wong CK, et al. Mapping the Functional Assessment of Cancer Therapy-general or -Colorectal to SF-6D in Chinese patients with colorectal neoplasm. Value Health. 2012;15(3):495–503.CrossRefPubMed
32.
Zurück zum Zitat Wong CK, et al. Predicting SF-6D from the European Organization for Treatment and Research of Cancer Quality of Life Questionnaire scores in patients with colorectal cancer. Value Health. 2013a;16(2):373–84.CrossRefPubMed Wong CK, et al. Predicting SF-6D from the European Organization for Treatment and Research of Cancer Quality of Life Questionnaire scores in patients with colorectal cancer. Value Health. 2013a;16(2):373–84.CrossRefPubMed
33.
Zurück zum Zitat Wong CK, et al. Responsiveness was similar between direct and mapped SF-6D in colorectal cancer patients who declined. J Clin Epidemiol. 2014;67(2):219–27.CrossRefPubMed Wong CK, et al. Responsiveness was similar between direct and mapped SF-6D in colorectal cancer patients who declined. J Clin Epidemiol. 2014;67(2):219–27.CrossRefPubMed
34.
Zurück zum Zitat Yang Y, et al. Improving the mapping of condition-specific health-related quality of life onto SF-6D score. Qual Life Res Int J Qual Life Asp Treat Care Rehab. 2014;23(8):2343–53.CrossRef Yang Y, et al. Improving the mapping of condition-specific health-related quality of life onto SF-6D score. Qual Life Res Int J Qual Life Asp Treat Care Rehab. 2014;23(8):2343–53.CrossRef
35.
36.
Zurück zum Zitat Dranitsaris G, et al. The application of pharmacoeconomic modelling to estimate a value-based price for new cancer drugs. J Eval Clin Pract. 2012b;18(2):343–51.CrossRefPubMed Dranitsaris G, et al. The application of pharmacoeconomic modelling to estimate a value-based price for new cancer drugs. J Eval Clin Pract. 2012b;18(2):343–51.CrossRefPubMed
37.
Zurück zum Zitat Lee L, et al. Valuing postoperative recovery: validation of the SF-6D health-state utility. J Surg Res. 2013;184(1):108–14.CrossRefPubMed Lee L, et al. Valuing postoperative recovery: validation of the SF-6D health-state utility. J Surg Res. 2013;184(1):108–14.CrossRefPubMed
38.
Zurück zum Zitat Mittmann N, et al. Prospective cost-effectiveness analysis of cetuximab in metastatic colorectal cancer: Evaluation of national cancer institute of canada clinical trials group CO.17 Trial. J Natl Cancer Inst. 2009;101(17):1182–92.CrossRefPubMed Mittmann N, et al. Prospective cost-effectiveness analysis of cetuximab in metastatic colorectal cancer: Evaluation of national cancer institute of canada clinical trials group CO.17 Trial. J Natl Cancer Inst. 2009;101(17):1182–92.CrossRefPubMed
39.
Zurück zum Zitat Augestad K, et al. Cost-effectiveness and quality of life in surgeon versus general practitioner-organised colon cancer surveillance: a randomised controlled trial. BMJ Open. 2013;3(4):e002391.CrossRefPubMedPubMedCentral Augestad K, et al. Cost-effectiveness and quality of life in surgeon versus general practitioner-organised colon cancer surveillance: a randomised controlled trial. BMJ Open. 2013;3(4):e002391.CrossRefPubMedPubMedCentral
40.
Zurück zum Zitat Hamashima C. Long-term quality of life of postoperative rectal cancer patients. Journal of Gastroenterology & Hepatology. 2002;17(5):571–6.CrossRef Hamashima C. Long-term quality of life of postoperative rectal cancer patients. Journal of Gastroenterology & Hepatology. 2002;17(5):571–6.CrossRef
42.
Zurück zum Zitat Kim SH, et al. Deriving a mapping algorithm for converting SF-36 scores to EQ-5D utility score in a Korean population. Health Qual Life Outcomes. 2014;12:145.CrossRefPubMedPubMedCentral Kim SH, et al. Deriving a mapping algorithm for converting SF-36 scores to EQ-5D utility score in a Korean population. Health Qual Life Outcomes. 2014;12:145.CrossRefPubMedPubMedCentral
43.
Zurück zum Zitat Norum J, et al. Adjuvant chemotherapy (5-fluorouracil and levamisole) in Dukes' B and C colorectal carcinoma. A cost-effectiveness analysis. Ann Oncol. 1997;8(1):65–70.CrossRefPubMed Norum J, et al. Adjuvant chemotherapy (5-fluorouracil and levamisole) in Dukes' B and C colorectal carcinoma. A cost-effectiveness analysis. Ann Oncol. 1997;8(1):65–70.CrossRefPubMed
44.
Zurück zum Zitat Shiroiwa T, Fukuda T, Tsutani K. Cost-effectiveness analysis of XELOX for metastatic colorectal cancer based on the NO16966 and NO16967 trials. Br J Cancer. 2009;101(1):12–8.CrossRefPubMedPubMedCentral Shiroiwa T, Fukuda T, Tsutani K. Cost-effectiveness analysis of XELOX for metastatic colorectal cancer based on the NO16966 and NO16967 trials. Br J Cancer. 2009;101(1):12–8.CrossRefPubMedPubMedCentral
45.
Zurück zum Zitat Smith R, et al. A cost-utility approach to the use of 5-fluorouracil and levamisole as adjuvant chemotherapy for Dukes' C colonic carcinoma. Med J Aust. 1993;158:319–22.PubMed Smith R, et al. A cost-utility approach to the use of 5-fluorouracil and levamisole as adjuvant chemotherapy for Dukes' C colonic carcinoma. Med J Aust. 1993;158:319–22.PubMed
46.
Zurück zum Zitat Young CJ, et al. Improving Quality of Life for People with Incurable Large-Bowel Obstruction: Randomized Control Trial of Colonic Stent Insertion. Dis Colon Rectum. 2015;58(9):838–49.CrossRefPubMed Young CJ, et al. Improving Quality of Life for People with Incurable Large-Bowel Obstruction: Randomized Control Trial of Colonic Stent Insertion. Dis Colon Rectum. 2015;58(9):838–49.CrossRefPubMed
47.
Zurück zum Zitat Cheung YB, et al. Mapping the English and Chinese versions of the Functional Assessment of Cancer Therapy-General to the EQ-5D utility index. Value Health. 2009;12(2):371–6.CrossRefPubMed Cheung YB, et al. Mapping the English and Chinese versions of the Functional Assessment of Cancer Therapy-General to the EQ-5D utility index. Value Health. 2009;12(2):371–6.CrossRefPubMed
48.
Zurück zum Zitat Dranitsaris G, et al. A pharmacoeconomic modeling approach to estimate a value-based price for new oncology drugs in Europe. J Oncol Pharm Pract. 2012a;18(1):57–67.CrossRefPubMed Dranitsaris G, et al. A pharmacoeconomic modeling approach to estimate a value-based price for new oncology drugs in Europe. J Oncol Pharm Pract. 2012a;18(1):57–67.CrossRefPubMed
49.
Zurück zum Zitat Dranitsaris G, et al. Using pharmacoeconomic modelling to determine value-based pricing for new pharmaceuticals in Malaysia. Malaysian Journal of Medical Sciences. 2011b;18(4):31–42. Dranitsaris G, et al. Using pharmacoeconomic modelling to determine value-based pricing for new pharmaceuticals in Malaysia. Malaysian Journal of Medical Sciences. 2011b;18(4):31–42.
50.
Zurück zum Zitat Dranitsaris G, et al. Improving patient access to cancer drugs in India: Using economic modeling to estimate a more affordable drug cost based on measures of societal value. Int J Technol Assess Health Care. 2011a;27(1):23–30.CrossRefPubMed Dranitsaris G, et al. Improving patient access to cancer drugs in India: Using economic modeling to estimate a more affordable drug cost based on measures of societal value. Int J Technol Assess Health Care. 2011a;27(1):23–30.CrossRefPubMed
51.
Zurück zum Zitat Farkkila N, et al. Health-related quality of life in colorectal cancer. Colorectal Dis. 2013;15(5):e215–22.CrossRefPubMed Farkkila N, et al. Health-related quality of life in colorectal cancer. Colorectal Dis. 2013;15(5):e215–22.CrossRefPubMed
52.
Zurück zum Zitat Haapamaki MM, et al. Physical performance and quality of life after extended abdominoperineal excision of rectum and reconstruction of the pelvic floor with gluteus maximus flap. Dis Colon Rectum. 2011;54(1):101–6.CrossRefPubMed Haapamaki MM, et al. Physical performance and quality of life after extended abdominoperineal excision of rectum and reconstruction of the pelvic floor with gluteus maximus flap. Dis Colon Rectum. 2011;54(1):101–6.CrossRefPubMed
53.
Zurück zum Zitat Polat U, et al. Evaluation of quality of life and anxiety and depression levels in patients receiving chemotherapy for colorectal cancer: Impact of patient education before treatment initiation. Journal of Gastrointestinal Oncology. 2014;5(4):270–5.PubMedPubMedCentral Polat U, et al. Evaluation of quality of life and anxiety and depression levels in patients receiving chemotherapy for colorectal cancer: Impact of patient education before treatment initiation. Journal of Gastrointestinal Oncology. 2014;5(4):270–5.PubMedPubMedCentral
54.
Zurück zum Zitat Schwandner O. Sacral neuromodulation for fecal incontinence and "low anterior resection syndrome" following neoadjuvant therapy for rectal cancer. Int J Colorectal Dis. 2013;28(5):665–9.CrossRefPubMed Schwandner O. Sacral neuromodulation for fecal incontinence and "low anterior resection syndrome" following neoadjuvant therapy for rectal cancer. Int J Colorectal Dis. 2013;28(5):665–9.CrossRefPubMed
55.
Zurück zum Zitat Andersson J, et al. Health-related quality of life after laparoscopic and open surgery for rectal cancer in a randomized trial. Br J Surg. 2013;100(7):941–9.CrossRefPubMedPubMedCentral Andersson J, et al. Health-related quality of life after laparoscopic and open surgery for rectal cancer in a randomized trial. Br J Surg. 2013;100(7):941–9.CrossRefPubMedPubMedCentral
56.
Zurück zum Zitat Bennett L, et al. Health-related quality of life in patients with metastatic colorectal cancer treated with panitumumab in first- or second-line treatment. Br J Cancer. 2011;105(10):1495–502.CrossRefPubMedPubMedCentral Bennett L, et al. Health-related quality of life in patients with metastatic colorectal cancer treated with panitumumab in first- or second-line treatment. Br J Cancer. 2011;105(10):1495–502.CrossRefPubMedPubMedCentral
57.
Zurück zum Zitat Carter HE, et al. The cost effectiveness of bevacizumab when added to capecitabine, with or without mitomycin-C, in first line treatment of metastatic colorectal cancer: Results from the Australasian phase III MAX study. European Journal of Cancer (Oxford, England: 1990). 2014;50(3):535–43.CrossRef Carter HE, et al. The cost effectiveness of bevacizumab when added to capecitabine, with or without mitomycin-C, in first line treatment of metastatic colorectal cancer: Results from the Australasian phase III MAX study. European Journal of Cancer (Oxford, England: 1990). 2014;50(3):535–43.CrossRef
58.
Zurück zum Zitat Odom D, et al. Health-related quality of life and colorectal cancer-specific symptoms in patients with chemotherapy-refractory metastatic disease treated with panitumumab. Int J Colorectal Dis. 2011;26(2):173–81.CrossRefPubMed Odom D, et al. Health-related quality of life and colorectal cancer-specific symptoms in patients with chemotherapy-refractory metastatic disease treated with panitumumab. Int J Colorectal Dis. 2011;26(2):173–81.CrossRefPubMed
59.
Zurück zum Zitat Stein D, et al. Assessing health-state utility values in patients with metastatic colorectal cancer: a utility study in the United Kingdom and the Netherlands. Int J Colorectal Dis. 2014;29(10):1203–10.CrossRefPubMed Stein D, et al. Assessing health-state utility values in patients with metastatic colorectal cancer: a utility study in the United Kingdom and the Netherlands. Int J Colorectal Dis. 2014;29(10):1203–10.CrossRefPubMed
60.
Zurück zum Zitat Wang J, et al. A Q-TWiST analysis comparing panitumumab plus best supportive care (BSC) with BSC alone in patients with wild-type KRAS metastatic colorectal cancer. Br J Cancer. 2011;104(12):1848–53.CrossRefPubMedPubMedCentral Wang J, et al. A Q-TWiST analysis comparing panitumumab plus best supportive care (BSC) with BSC alone in patients with wild-type KRAS metastatic colorectal cancer. Br J Cancer. 2011;104(12):1848–53.CrossRefPubMedPubMedCentral
61.
Zurück zum Zitat Rowen D, et al. Deriving a preference-based measure for cancer using the EORTC QLQ-C30. Value Health. 2011;14(5):721–31.CrossRefPubMed Rowen D, et al. Deriving a preference-based measure for cancer using the EORTC QLQ-C30. Value Health. 2011;14(5):721–31.CrossRefPubMed
62.
Zurück zum Zitat Norman R, et al. Using a discrete choice experiment to value the QLU-C10D: feasibility and sensitivity to presentation format. Qual Life Res. 2016;25(3):637–49.CrossRefPubMed Norman R, et al. Using a discrete choice experiment to value the QLU-C10D: feasibility and sensitivity to presentation format. Qual Life Res. 2016;25(3):637–49.CrossRefPubMed
63.
Zurück zum Zitat Longworth L, et al. Use of generic and condition-specific measures of health-related quality of life in NICE decision-making: a systematic review, statistical modelling and survey. Health Technol Assess. 2014;18(9):1–224.CrossRefPubMedPubMedCentral Longworth L, et al. Use of generic and condition-specific measures of health-related quality of life in NICE decision-making: a systematic review, statistical modelling and survey. Health Technol Assess. 2014;18(9):1–224.CrossRefPubMedPubMedCentral
64.
Zurück zum Zitat McKenzie L, van der Pol M. Mapping the EORTC QLQ C-30 onto the EQ-5D instrument: the potential to estimate QALYs without generic preference data. Value Health. 2009;12(1):167–71.CrossRefPubMed McKenzie L, van der Pol M. Mapping the EORTC QLQ C-30 onto the EQ-5D instrument: the potential to estimate QALYs without generic preference data. Value Health. 2009;12(1):167–71.CrossRefPubMed
65.
66.
67.
Zurück zum Zitat Kind P, et al. Variations in population health status: results from a United Kingdom national questionnaire survey. BMJ. 1998;316(7133):736–41.CrossRefPubMedPubMedCentral Kind P, et al. Variations in population health status: results from a United Kingdom national questionnaire survey. BMJ. 1998;316(7133):736–41.CrossRefPubMedPubMedCentral
68.
Zurück zum Zitat NICE. Guide to the methods of technology appraisal 2013. 2013. Accessed 1 June 2013. NICE. Guide to the methods of technology appraisal 2013. 2013. Accessed 1 June 2013.
69.
Zurück zum Zitat Burke MJ, Sidhu R, George E. PCN158 - Utility Values Used in National Institute for Health and Care Excellence (NICE) Technology Appraisals of Medicines for 4 Metastatic Cancers. Value Health. 2013;16(7):A420.CrossRef Burke MJ, Sidhu R, George E. PCN158 - Utility Values Used in National Institute for Health and Care Excellence (NICE) Technology Appraisals of Medicines for 4 Metastatic Cancers. Value Health. 2013;16(7):A420.CrossRef
70.
Zurück zum Zitat Glaser AW, et al. Patient-reported outcomes of cancer survivors in England 1-5 years after diagnosis: a cross-sectional survey. BMJ Open. 2013;3:e002317. Glaser AW, et al. Patient-reported outcomes of cancer survivors in England 1-5 years after diagnosis: a cross-sectional survey. BMJ Open. 2013;3:e002317.
Metadaten
Titel
Systematic review of health state utility values for economic evaluation of colorectal cancer
verfasst von
Kim Jeong
John Cairns
Publikationsdatum
01.12.2015
Verlag
Springer Berlin Heidelberg
Erschienen in
Health Economics Review / Ausgabe 1/2016
Elektronische ISSN: 2191-1991
DOI
https://doi.org/10.1186/s13561-016-0115-5

Weitere Artikel der Ausgabe 1/2016

Health Economics Review 1/2016 Zur Ausgabe