Literature DB >> 22185216

A comparison of analytic hierarchy process and conjoint analysis methods in assessing treatment alternatives for stroke rehabilitation.

Maarten J Ijzerman1, Janine A van Til, John F P Bridges.   

Abstract

BACKGROUND: With growing emphasis on patient involvement in health technology assessment, there is a need for scientific methods that formally elicit patient preferences. Analytic hierarchy process (AHP) and conjoint analysis (CA) are two established scientific methods - albeit with very different objectives.
OBJECTIVE: The objective of this study was to compare the performance of AHP and CA in eliciting patient preferences for treatment alternatives for stroke rehabilitation.
METHODS: Five competing treatments for drop-foot impairment in stroke were identified. One survey, including the AHP and CA questions, was sent to 142 patients, resulting in 89 patients for final analysis (response rate 63%). Standard software was used to calculate attribute weights from both AHP and CA. Performance weights for the treatments were obtained from an expert panel using AHP. Subsequently, the mean predicted preference for each of the five treatments was calculated using the AHP and CA weights. Differences were tested using non-parametric tests. Furthermore, all treatments were rank ordered for each individual patient, using the AHP and CA weights.
RESULTS: Important attributes in both AHP and CA were the clinical outcome (0.3 in AHP and 0.33 in CA) and risk of complications (about 0.2 in both AHP and CA). Main differences between the methods were found for the attributes 'impact of treatment' (0.06 for AHP and 0.28 for two combined attributes in CA) and 'cosmetics and comfort' (0.28 for two combined attributes in AHP and 0.05 for CA). On a group level, the most preferred treatments were soft tissue surgery (STS) and orthopedic shoes (OS). However, STS was most preferred using AHP weights versus OS using CA weights (p < 0.001). This difference was even more obvious when interpreting the individual treatment ranks. Nearly all patients preferred STS according to the AHP predictions, while >50% of the patients chose OS instead of STS, as most preferred treatment using CA weights.
CONCLUSION: While we found differences between AHP and CA, these differences were most likely caused by the labeling of the attributes and the elicitation of performance judgments. CA scenarios are built using the level descriptions, and hence provide realistic treatment scenarios. In AHP, patients only compared less concrete attributes such as 'impact of treatment.' This led to less realistic choices, and thus overestimation of the preference for the surgical scenarios. Several recommendations are given on how to use AHP and CA in assessing patient preferences.

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Year:  2012        PMID: 22185216     DOI: 10.2165/11587140-000000000-00000

Source DB:  PubMed          Journal:  Patient        ISSN: 1178-1653            Impact factor:   3.883


  20 in total

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Review 6.  The comparative evaluation of expanded national immunization policies in Korea using an analytic hierarchy process.

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  18 in total

Review 1.  A descriptive review on methods to prioritize outcomes in a health care context.

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Review 2.  Integration of PKPD relationships into benefit-risk analysis.

Authors:  Francesco Bellanti; Rob C van Wijk; Meindert Danhof; Oscar Della Pasqua
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3.  Preferences of psychiatric practitioners for core symptoms of major depressive disorder: a hidden conjoint analysis.

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4.  Feasibility of Measuring Preferences for Chemotherapy Among Early-Stage Breast Cancer Survivors Using a Direct Rank Ordering Multicriteria Decision Analysis Versus a Time Trade-Off.

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5.  Diagnosis of periprosthetic joint infection in Medicare patients: multicriteria decision analysis.

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Journal:  Patient       Date:  2012       Impact factor: 3.883

Review 7.  Discrete choice experiments in health economics: a review of the literature.

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8.  Assessing the Importance of Treatment Goals in Patients with Psoriasis: Analytic Hierarchy Process vs. Likert Scales.

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9.  How Well Can Analytic Hierarchy Process be Used to Elicit Individual Preferences? Insights from a Survey in Patients Suffering from Age-Related Macular Degeneration.

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10.  User needs elicitation via analytic hierarchy process (AHP). A case study on a Computed Tomography (CT) scanner.

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