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Construct Validity of the Dutch Version of the 12-Item Partners in Health Scale: Measuring Patient Self-Management Behaviour and Knowledge in Patients with Chronic Obstructive Pulmonary Disease

  • Anke Lenferink ,

    a.lenferink@mst.nl

    Affiliations Department of Pulmonary Medicine, Medisch Spectrum Twente, Enschede, The Netherlands, Department of Research Methodology, Measurement, and Data-Analysis, Faculty of Behavioural, Management and Social sciences, University of Twente, Enschede, The Netherlands, School of Medicine, Flinders University, Adelaide, South Australia, Australia

  • Tanja Effing,

    Affiliations School of Medicine, Flinders University, Adelaide, South Australia, Australia, Department of Respiratory Medicine, Repatriation General Hospital, Adelaide, South Australia, Australia

  • Peter Harvey,

    Affiliation Flinders Human Behaviour and Health Research Unit, Flinders University, Adelaide, Australia

  • Malcolm Battersby,

    Affiliation Flinders Human Behaviour and Health Research Unit, Flinders University, Adelaide, Australia

  • Peter Frith,

    Affiliations School of Medicine, Flinders University, Adelaide, South Australia, Australia, Department of Respiratory Medicine, Repatriation General Hospital, Adelaide, South Australia, Australia

  • Wendy van Beurden,

    Affiliation Department of Pulmonary Medicine, Medisch Spectrum Twente, Enschede, The Netherlands

  • Job van der Palen,

    Affiliations Department of Pulmonary Medicine, Medisch Spectrum Twente, Enschede, The Netherlands, Department of Research Methodology, Measurement, and Data-Analysis, Faculty of Behavioural, Management and Social sciences, University of Twente, Enschede, The Netherlands

  • Muirne C. S. Paap

    Affiliation Centre for Educational Measurement at the University of Oslo (CEMO), Faculty of Educational Sciences, University of Oslo, Oslo, Norway

Abstract

Objective

The 12-item Partners in Health scale (PIH) was developed in Australia to measure self-management behaviour and knowledge in patients with chronic diseases, and has undergone several changes. Our aim was to assess the construct validity and reliability of the latest PIH version in Dutch COPD patients.

Methods

The 12 items of the PIH, scored on a self-rated 9-point Likert scale, are used to calculate total and subscale scores (knowledge; coping; recognition and management of symptoms; and adherence to treatment). We used forward-backward translation of the latest version of the Australian PIH to define a Dutch PIH (PIH(Du)). Mokken Scale Analysis and common Factor Analysis were performed on data from a Dutch COPD sample to investigate the psychometric properties of the Dutch PIH; and to determine whether the four-subscale solution previously found for the original Australian PIH could be replicated for the Dutch PIH.

Results

Two subscales were found for the Dutch PIH data (n = 118); 1) knowledge and coping; 2) recognition and management of symptoms, adherence to treatment. The correlation between the two Dutch subscales was 0.43. The lower-bound of the reliability of the total scale equalled 0.84. Factor analysis indicated that the first two factors explained a larger percentage of common variance (39.4% and 19.9%) than could be expected when using random data (17.5% and 15.1%).

Conclusion

We recommend using two PIH subscale scores when assessing self-management in Dutch COPD patients. Our results did not support the four-subscale structure as previously reported for the original Australian PIH.

Introduction

Self-management interventions aim to improve the health behaviour and self-management skills of patients with chronic and complex health conditions in order to improve the physical health and well-being of these patients [1,2]. Problem solving, decision making, resource utilisation, forming patient-provider partnerships, and patient-tailored action planning are essential parts of self-management [2]. As patient self-management skills develop, increased confidence in their own health management becomes a powerful factor in inducing and sustaining behaviours that provide perceived benefits [2,3]. This is especially important in patients with Chronic Obstructive Pulmonary Disease (COPD) who are responsible for their day-to-day disease management [2]. COPD self-management interventions aim to e.g., instil the confidence to recognise COPD exacerbations [1] and to take appropriate actions when COPD symptoms deteriorate. The most recent Cochrane review regarding COPD self-management interventions showed that COPD self-management interventions are associated with improved health-related quality of life (HRQoL), a reduction in the number of hospitalisations, and improved dyspnoea [4]. In COPD patients, assessments have traditionally involved objective parameters (e.g., lung function). More recently, patient-reported outcomes (PROs) have become increasingly popular. Using PROs, it is not only possible to evaluate outcomes such as COPD-specific HRQoL [5] (e.g., St. George’s Respiratory Questionnaire (SGRQ)) [6] and COPD self-efficacy [7], but also perceived health outcomes. Little is known, however, about perceived health outcomes such as self-management behaviour and knowledge in COPD patients.

To facilitate the measurement of self-management behaviour and self-management knowledge of patients with chronic diseases the 12-item Partners in Health scale (PIH) was developed by an Australian research group [8]. The Australian 12-item PIH was intended to provide a first step of assessing a patient’s self-management in developing a collaborative patient-clinician self-management care plan. It was designed to assist patients with chronic and complex conditions in learning how to participate more effectively in the management of their condition and to improve their self-management skills, because previous research indicated that providing coordinated care for people with chronic conditions was predominantly based on their self-management capabilities rather than on the severity and/or complexity of their illness [9]. The Australian 12-item PIH was therefore introduced as a generic self-rated clinical PRO tool suitable for: 1) assessing the effects of self-management interventions in populations with different chronic conditions; 2) comparing populations; and 3) determining changes in patient self-management knowledge and behaviour over time [8]. Subsequently, it was found to be a valid measure of patient competency in relation to the self-management of their chronic conditions [8]. Four subscales were reported based on Principal Component Analysis (PCA): knowledge, coping, recognition and management of symptoms, and adherence to treatment [8]. Hitherto, the Australian PIH has been successfully used to evaluate (self-) management strategies for chronic disease prevention and management [10]. In addition, the PIH has also been used as a screening tool to identify patients who would most benefit from a self-management care plan [11]. The PIH has been translated into Spanish and validated among healthcare users (patients with diabetes, hypertension and cancer) of primary care in Mexico [12]. Three subscales were reported for the Spanish PIH based on exploratory factor analysis (FA) [12].

Having greater insight into COPD patient behaviour and knowledge would facilitate the identification of key COPD self-management skills that could be improved. This could help inform further improvement of patient-tailored COPD self-management interventions and may reduce the high disease burden, hospitalisations and healthcare cost in COPD patients [13,14]. The PIH has, however, not been validated for use in patients with COPD nor has it been validated in the Dutch language. The aim of the current study was, therefore, to assess the construct validity and reliability of a Dutch translation of the latest PIH version in Dutch patients with COPD. More specifically, we assessed the underlying dimensionality of the Dutch PIH using data from a Dutch COPD sample participating in the COPE-III self-management intervention study [15] to determine whether the same four-subscale solution of self-management for the original Australian PIH as proposed by Petkov et al. [8] could be found for the Dutch PIH.

Materials and Methods

Measures

Partners in Health scale.

The original PIH consists of 12 items (PIHv1), scored on a self-rated 9-point Likert scale with 0 indicating the worst and 8 the best possible patient self-management [8]. Both a total sum score and four subscale scores can be calculated for the PIHv1: knowledge (items 1, 2, 4, 8); coping (items 10–12); recognition and management of symptoms (items 6, 7, 9); adherence to treatment (items 3, 5). Reliability (estimated using Cronbach’s Alpha) equalled 0.82 for the total scale [8]. The 12-item PIHv1 is based on six key principles essential for effective self-management that were transformed into 12 items assessing how well persons were self-managing. It was revised by splitting two double-barrelled items into two questions each; for instance emotional and social impacts of the condition(s) became items 10 and 11 in PIHv2. The resulting 14-item PIH version was used clinically for several years and was also included in a RCT aimed at improving patient self-management competencies [16]. After a national project to determine a consensus definition of self-management the 14-item PIH was further revised [17], which allowed the number of items to be reduced and the time to administer and score the tool minimized, balanced against retention of items that were clinically relevant. Therefore, item 5 from PIHv1 (‘arranging and attend appointments’) was changed into item 6 ‘attend appointments’ in PIHv2. Two questions on monitoring and managing symptoms (item 6 and 8) were removed from PIHv1. In addition, an item on ability to access culturally appropriate services was added (item 5). The result was the current 12-item PIHv2 from which the Dutch version was derived. A copy of PIHv2 can be obtained from Flinders University, Australia.

Development of the Dutch PIH.

For use in a Dutch speaking population the PIHv2 was translated into Dutch then back-translated into English by an independent translator (guidelines Guillemin et al. [18,19]). A Dutch PIHv2 (PIH(Du)) was defined (see S1 Table) and pre-tested in a qualitative evaluation with a small group of Dutch COPD patients who did not participate in the COPE-III self-management study [15], which is an ongoing RCT regarding self-management in COPD patients with comorbidities. Sampling of patients for the qualitative evaluation was continued until saturation of information was achieved. Comments on the wording, layout of the 9-point Likert scale, and issues encountered during the self-administration process were collected using the three-step test interview (TSTI) [20]. Respondents completed the PIH and concurrently verbalised their thoughts (‘think aloud technique’). Subsequently, they answered probes about terms or phrases in the PIH. A predefined cognitive testing protocol [21] was used for this second step. The third step elicited experiences and opinions of patients [20,21]. Non-verbal communications were documented and all verbalisations were audio recorded for further analysis. Data from the TSTI were analysed using content analysis approach [22], in which coding categories are derived directly from the text data.

Patients

We used baseline data from Dutch COPD patients with comorbidities participating in the COPE-III study for the psychometric analyses [15]. The patient eligibility criteria have been previously described [15] and can be summarised as follows: a clinical diagnosis of COPD [23]; clinically stable at the time of inclusion; at least one clinically relevant comorbidity (ischemic heart disease, heart failure, diabetes, anxiety and/or depression); at least three COPD exacerbations and/or one hospitalisation for respiratory problems in the two years preceding study entry; and adequate Dutch language proficiency. All procedures performed in the current study were in accordance with the ethical standards of the institutional and/or national research committee and with the 1964 Helsinki declaration and its later amendments or comparable ethical standards. The study protocol was approved by the Medical Ethical Committee at Medisch Spectrum Twente and by the Southern Adelaide Clinical Human Research Ethics Committee. The study is registered in the public Australian New Zealand Clinical Trials Registry (ACTRN12612000514808). Written informed consent was obtained from all individual participants prior to participation in this study.

Statistical analyses

Descriptive statistics were calculated using SPSS v20.0 [24]. Both scale structure and item properties were analysed. The analytic strategy was defined prior to viewing the dataset. Following Paap et al. (2015) [25], we used two complementary statistical methods to evaluate the dimensionality of the PIH(Du): 1) Mokken Scale Analysis (MSA; a non-parametric technique); and 2) common FA.

In recent years, MSA has increased in popularity in health research [2631]. MSA identifies scales that allow an ordering of individuals on an underlying scale using unweighted sum scores [32,33]. In order to ascertain which items co-vary and form a scale, scalability coefficients are calculated on three levels: item-pairs (Hij), items (Hi), and scale (H). H is based on Hi and reflects the degree to which the scale can be used to reliably order persons on the latent trait using their sum score. A scale is considered acceptable if 0.3≤H<0.4, good if 0.4≤H<0.5, and strong if H≥0.5 [32,33]. MSA can be used in both a confirmatory and exploratory manner. The exploratory procedure follows a bottom-up, iterative approach. First, a start set of items is identified in one of two ways: 1) the item pair with the highest Hij value is chosen (default), or 2) the researcher specifies the start set manually. Subsequently, the relationship (in terms of H coefficients) of each remaining item with the start set is evaluated one item at a time. At each step, the item that maximises H is added, but only if a) it has a positive relationship (in terms of Hij) with the set of items in the current scale, and b) adding the item results in an Hi value higher than a predefined user-specified constant c (typically 0.3). When no more items can be added, a second subscale is formed. The procedure stops when no items are left, or when no other items can be assigned to subscales anymore. For more detailed information on MSA, we refer to Paap et al. (2013; online supplement [25]). MSA was applied using the R [34] package Mokken [35]. We ran the exploratory analysis several times in a row, each time increasing the lower bound scalability coefficient c [33]. The outcomes indicate whether the data set is one-dimensional or multidimensional [33].

We used Parallel Analysis (PA) based on Minimum Rank Factor Analysis (MRFA); this method will be abbreviated as PA-MRFA [36]. MRFA is a common FA method that allows one to find the “most-unidimensional” solution [37]. In PA-MRFA, for each factor the empirical value of the proportion of explained common variance (ECV) is compared to corresponding factors ECV derived from random data [36]. The random data are generated based on the sample size of the real data assuming independence among items [38]. Typically, a large number of random datasets are generated, resulting in a sampling distribution of ECV-values for each factor. To determine the optimal number of factors, for each successive factor the observed ECV can be compared to the mean or the 95th percentile of the sampling distribution associated with the respective factor. We used the software package FACTOR [39] to perform the PA-MRFA analyses. We used the standard configuration for PA-MRFA: 500 random correlation matrices were generated based on “random permutation of sample values” [36]. Usually, it is advised to use polychoric correlation-based common FA in the case of ordinal data (with five or fewer answering categories). Although the PIH items were scored with nine response options (eligible to be treated as continuous), we had to collapse categories for all items prior to the analyses, in order to ensure adequate coverage (at least 10–15 observations per item-category combination). Polychoric correlation based models would, therefore, be more appropriate. However, they are known to be more prone to convergence issues when small sample sizes are involved. It was therefore decided to run two sets of analyses; one based on polychoric correlations and one based on Pearson correlations. The 95th percentile threshold was used for the polychoric analysis and the mean threshold for the Pearson analysis [36]. Since both sets of models converged and resulted in similar factor solutions, we will only report the findings based on the polychoric correlations. An oblique factor rotation (Promin) was used to facilitate interpretation of the factors [40].

Results

Qualitative evaluation of the PIH(Du)

Qualitative data were gathered during interviews with four Dutch COPD patients. In general, the instructions were found to be clear and patients indicated that the PIH(Du) was a proper, readable, synoptic, complete and clear instrument. Critical notes were: use of long sentences; information on a time period that fits with the completion of the instrument was lacking; and it could be more COPD-specific. In addition, more specific comments on the individual items and the clarity of wordings were provided for the items 5–12 (see Table 1). Patients’ suggestions for improvements were, for instance, adding a definition of a ‘healthcare professional’ and ‘blood glucoses level’. Other suggestions were: delete ‘culture, value and beliefs’ from item 5 (“You could leave out the last part of this question (culture, values and beliefs)”); add ‘life style’ and rephrase item 9; and split item 12 into different items for the different healthy life styles (e.g., ‘I manage to live a healthy life with no smoking’, ‘I manage to live a healthy life with moderate alcohol use’). The horizontal axis of the 9-point Likert scale was found acceptable and familiar (“This is quite similar to what they ask in connection with the pain threshold”). However, patients also indicated that a PIH(Du) item score of zero (lowest possible self-management) will most likely only be used by patients with an end-stage disease. Suggested improvements for the 9-point Likert scale were using fewer response options and visualising response options (“You could use it like a traffic light”).

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Table 1. Results of the qualitative evaluation of the 12-item PIH(Du) in four Dutch COPD patients.

https://doi.org/10.1371/journal.pone.0161595.t001

Patient characteristics

Patient characteristics for the Dutch COPD sample used for psychometric analysis can be found in Table 2. The PIH(Du) (see S2 Table) was completed by 118 COPD patients (65.3% male, mean age 67.6, 19.5% smoker) diagnosed with at least one clinically relevant comorbidity (71.2% cardiovascular disease, 40.7% diabetes, 19.5% anxiety, 16.9% depression).

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Table 2. Characteristics of Dutch COPD patients with comorbidities who completed the 12-item Dutch Partners in Health scale.

https://doi.org/10.1371/journal.pone.0161595.t002

Dimensionality and reliability analyses

Running exploratory MSA indicated a two-dimensional pattern for the PIH(Du) (see Table 3). The two PIH(Du) subscales were tentatively labelled as: 1) knowledge and coping (items 1, 2, 8–12) and 2) recognition and management of symptoms, adherence to treatment (items 3–7). The H-values of the two subscales based on the Dutch data were good (0.43, subscale 1) and acceptable (0.38, subscale 2). The correlation between the two subscales was 0.43. The lower-bound of the reliability (estimated using Cronbach’s Alpha) for the total scale equalled 0.84. Cronbach’s Alpha was 0.80 and 0.72 for the PIH(Du) subscales 1 and 2, respectively.

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Table 3. Scale solutions for the 12-item Dutch Partners in Health scale.

https://doi.org/10.1371/journal.pone.0161595.t003

The factor analyses resulted in a very similar scale solution to the MSA analyses (see Table 3). The polychoric correlations matrix can be found in Table 4. The first two factors explained a larger percentage of common variance (39.4% and 19.9% for factor 1 and 2, respectively) than could be expected when using random data (see Table 5). The estimated correlation between the factors extracted from the Dutch data was 0.41. The factor analyses for the two PIH(Du) subscales showed that the newly added item 5 showed similar factor loadings for both subscales; 0.39 for subscale 1 and 0.48 for subscale 2 (see Table 6).

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Table 4. Polychoric correlations matrix for the 12-item Dutch Partners in Health scale.

https://doi.org/10.1371/journal.pone.0161595.t004

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Table 5. Results of Minimum Rank Factor Analysis Dutch Partners in Health scale.

https://doi.org/10.1371/journal.pone.0161595.t005

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Table 6. Factor loadings of the Dutch Partners in Health scale based on Minimum Rank Factor Analysis.

https://doi.org/10.1371/journal.pone.0161595.t006

Discussion

Our dimensionality analyses showed a two-subscale solution for the PIH(Du): 1) knowledge and coping; 2) recognition and management of symptoms, adherence to treatment. Our results therefore did not support the four-subscale structure as previously reported for the original Australian PIH [8]. It is of interest that a Spanish version of the PIH was found to have a three-subscale solution [12].

Several possible explanations have been put forward to account for different findings in factorial solutions across studies: differences in statistical methods and target populations, sample size, number of items per factor, number of factors in the model, and the size of the communalities (proportion of the variance of an item that is accounted for by the common factors in the model) [31,41,42]. At the time of the original Australian PIH development [8], its dimensionality was evaluated by using a two-stage procedure: an exploratory PCA (data reduction technique to group items into a set of new variables) and a confirmatory common FA (a mathematical model to estimate the relationship between items and latent variables [43]) was subsequently used to “validate” the structure identified by the exploratory analysis. However, PCA and common FA will only produce similar results under very specific circumstances [38]. We favoured using exploratory IRT and common FA models over PCA in this study, because they are suitable for ordinal data [44] and result in meaningful scales (e.g., Borsboom et al. [45]). It is unclear which exploratory FA was performed for the Spanish PIH validation [12]. We were therefore unable to compare our results with the three-subscale solution for the Spanish PIH.

The MRFA criteria used in our study require less interpretation in determining dimensionality and allows one to find the “most-unidimensional” solution [37], in comparison with conclusions based on a PCA. Petkov et al. used a Cattell’s Scree plot [46] as a graphical representation of the eigenvalues and suggested a cut-off of three components as defined by the ‘elbow’. This choice is somewhat arbitrary and the plot can be interpreted in different ways, since the slope has flattened from two components onwards and, therefore, the cut-off point could also be at two or one component. It has been shown that the Scree test has a tendency to overestimate the number of subscales [47] and it should be used and interpreted with care. Kaiser’s criterion to retain factors with eigenvalues greater than one for interpretation is the best known and most utilised method in practice [48]. Despite its simplicity, though, this method may also lead to arbitrary decisions and be inefficient in determining the number of subscales [48].

There is no consensus about a decision rule for the minimal sample size requirements in dimensionality analyses. In the current study, our sample size of 118 COPD patients is of a small to moderate size, with a correlation between the two PIH(Du) subscales of 0.43 and H-values of 0.43 and 0.38. According to the guidelines of Straat et al. (2014) [49] the sample size should be 50 to 250 to obtain 90 to 99% correct item assignment and adequate to good Per Element Accuracy in MSA. For MSA analyses the required minimal sample size is mainly dependent on the correlations between the latent variables and the H-values of the items [49]. Based on the correlations and H-values we found in the current study, our sample size should be sufficient to obtain 94–99% correct item assignment [49]. For FA the minimally required sample size depends on a complex interplay of many aspects, e.g., the estimated factor loadings and communalities [50]. When communalities are high, sample size tends to have less influence on the quality of factor solutions compared to when communalities are low [50]. In case of relatively low communalities, a larger sample size and number of items per factor are needed to obtain stable results in FA [41]. Conversely, in case of a relatively small sample size, a higher number of items per factor (≥ 4 items per factor [42]), a small number of factors and moderate to high communalities are needed to estimate a model that will give a good representation of the population factors [41]. Since the factorial solutions we found consist of a small number of well-identified factors with moderate to high communalities, we feel confident that our low-dimensional solutions for the PIH(Du) will be easy to replicate.

Cross-cultural differences and adjustments made after publication of the original PIH may also have contributed to the discrepancy in dimensionality between the original Australian PIH and the PIH(Du). For instance, item 5 (‘dealing with health professionals to get services that fit with culture, values and beliefs’), which is unique to the PIHv2, was difficult to interpret for Dutch patients and most patients felt the item was not applicable to them. In addition, item 5 showed high factor loadings on both of the Dutch subscales, making it difficult to assign the item to either scale. We therefore suggest removing this item. Item 10 (‘manage the effect of health condition(s) on emotional wellbeing’) has recently been added by the PIH authors in an attempt to show the psychological/emotional impact of the disease(s). Their clinical experiences so far suggest that the item is powerful in ‘breaking open the case’ to uncover factors that can interfere with self-management. However, this item was poorly-received by patients completing the PIH(Du); patients indicated the item was too lengthy, the formulation too complex and it was unclear what the reference time period was. We therefore suggest specifying a recall period in the PIH.

Differences in heterogeneity between the Australian and Dutch samples may also have contributed to the difference in the number of subscales found. Studies on other self-report instruments, such as the SCL-90, have indicated that the number of dimensions found can be related to for example disease severity [31]. Whereas the original Australian PIH was completed by patients with different kinds of chronic diseases, including respiratory problems, the PIH(Du) was administered exclusively to COPD patients, albeit with comorbidities and different COPD severity scores. Patients may provide different responses if multiple chronic conditions are present. For instance, ‘health condition(s)’, as used in the items 1, 2, 4, 9, 10 and 11 from the PIH(Du) is a broad definition and can be interpreted in different ways. Patients completing the PIH may only have considered those health conditions for which they have recently experienced symptom deterioration. Therefore, when multiple chronic conditions are present, the specific contribution and effects of each chronic condition cannot be assessed by the PIH scores. However, PIH scores were developed to enable assessment of the knowledge and behaviour of patients in general to improve self-management interventions.

Based on our findings, we feel confident that the PIH is a useful tool in assessing self-management behaviour and knowledge in COPD patients, but we do recommend some minor changes to the instrument. Obviously, the PIH requires translation if used in other than the source language, which is often the case in international research [5153]. However, when, besides translation, other changes are made over time to further improve measurement instruments, this may negatively impact its interpretation for use in research or clinical practice. First, with regard to changes made to the Australian PIH version, clear guidelines are needed before translation and validation of the instrument for use in other settings and countries can be continued. Second, we recommend introducing a recall period. Third, we suggest avoiding the use of terms with multiple meanings and composite items (e.g., it is difficult to respond unequivocally to the question ‘‘I take medications or carry out the treatments” if patients do take their medication, but do not carry out the treatments as asked by the doctor). Furthermore, none of the Dutch patients used all nine response options. Simplifying the PIH by using fewer response options could therefore be considered, although any such change would of course require re-validation.

As a next step in our validation process, we plan to investigate the clinical relevance of the two-subscale solution by assessing the ability of both subscale scores to discriminate between patients who received benefit from the COPD self-management intervention (e.g. better self-treatment adherence, higher quality of life scores, fewer hospitalisations and fewer exacerbation days) and those who did not, and who demonstrated a poor self-management capacity. We will also assess the associations between the subscale scores and e.g. quality of life. In addition, we have planned to assess the responsiveness of the PIH, and whether response shift occurs in COPD patients. A study by Harvey and colleagues showed that self-reported Australian PIH scores improved significantly over time when patients with chronic diseases were involved in peer-led self-management education programs [54]. Their results indicated that patients had improved understanding of their condition and the ability to manage and deal with their symptoms resulting in a positive effect on self-management skills, confidence and health-related behaviour [54]. Our ongoing RCT regarding self-management in COPD patients [15] will allow us to assess the responsiveness of the PIH in more detail.

Conclusion

This is the first time that a translated Dutch PIH was validated in a sample of Dutch COPD patients. Our findings indicate that most items are well-received by patients and show favourable psychometric properties. We recommend making minor changes and refinements. More importantly, however, there is need for (international) consensus on a final version of the PIH which can be validated in several settings and populations. Nevertheless, the PIH shows great promise to facilitate the identification of self-management skills needing improvement in COPD patients with other comorbid conditions. PIH scores could be used to tailor COPD self-management interventions to the patient’s needs and capabilities, facilitating appropriate self-management of COPD exacerbations and a reduction of hospitalisations. For use in Dutch COPD patients, we recommend using two PIH subscale scores when assessing self-management knowledge and behaviour. More research is needed to evaluate whether this two-subscale solution is optimal for other populations as well.

Supporting Information

S1 Table. Dutch translated 12-item Partners in Health scale (PIH(Du)).

https://doi.org/10.1371/journal.pone.0161595.s001

(PDF)

S2 Table. Observed scores of the Dutch 12-item Partners in Health scale (PIH(Du)).

https://doi.org/10.1371/journal.pone.0161595.s002

(PDF)

Acknowledgments

We would like to thank the COPD patients who participated in this study. We would also like to thank Talencentrum Maastricht University for the Dutch translation of the PIH. We thank Mitzi Paap, Bachelor of Arts in English language and culture, for translating the citations of patients, and helpful discussions. This study was supported by the Lung Foundation Netherlands (grant number 3.4.11.061).

Author Contributions

  1. Conceptualization: AL TE PH MB PF JP MP.
  2. Data curation: AL.
  3. Formal analysis: AL MP.
  4. Funding acquisition: TE JP.
  5. Investigation: AL TE PH MB PF WB JP MP.
  6. Methodology: AL TE JP MP.
  7. Project administration: AL TE JP.
  8. Resources: AL WB.
  9. Supervision: TE JP MP.
  10. Validation: AL MP.
  11. Writing – original draft: AL TE PH MB PF WB JP MP.
  12. Writing – review & editing: AL TE PH MB PF WB JP MP.

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