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Estimating EQ-5D utilities based on the Short-Form Long Term Conditions Questionnaire (LTCQ-8). | LitMetric

AI Article Synopsis

  • The study developed a mapping algorithm to estimate EuroQoL 5 Dimension (EQ-5D) utilities from responses to the Long-Term Conditions Questionnaire (LTCQ), aiming to enhance its use in evaluating integrated care initiatives.
  • Data was collected from three studies, combining 1334 responses, of which 1001 were used for estimation and 333 for internal validation; various models were tested to find the most accurate method for predicting EQ-5D utilities.
  • The best-performing model was a two-part Ordinary Least Squares (OLS) model, which achieved low error rates in estimating EQ-5D utilities, indicating that the LTCQ can now produce utility values for economic analyses.

Article Abstract

Purpose: The aim of this work was to develop a mapping algorithm for estimating EuroQoL 5 Dimension (EQ-5D) utilities from responses to the Long-Term Conditions Questionnaire (LTCQ), thus increasing LTCQ's potential as a comprehensive outcome measure for evaluating integrated care initiatives.

Methods: We combined data from three studies to give a total sample of 1334 responses. In each of the three datasets, we randomly selected 75% of the sample and combined the selected random samples to generate the estimation dataset, which consisted of 1001 patients. The unselected 25% observations from each dataset were combined to generate an internal validation dataset of 333 patients. We used direct mapping models by regressing responses to the LTCQ-8 directly onto EQ-5D-5L and EQ-5D-3L utilities as well as response (or indirect) mapping to predict the response level that patients selected for each of the five EQ-5D-5L domains. Several models were proposed and compared on mean squared error and mean absolute error.

Results: A two-part model with OLS was the best performing based on the mean squared error (0.038) and mean absolute error (0.147) when estimating the EQ-5D-5L utilities. A multinomial response mapping model using LTCQ-8 responses was used to predict EQ-5D-5L responses levels.

Conclusions: This study provides a mapping algorithm for estimating EQ-5D utilities from LTCQ responses. The results from this study can help broaden the applicability of the LTCQ by producing utility values for use in economic analyses.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC7427949PMC
http://dx.doi.org/10.1186/s12955-020-01506-wDOI Listing

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