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Decoding pain: uncovering the factors that affect the performance of neuroimaging-based pain models

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Title
Decoding pain: uncovering the factors that affect the performance of neuroimaging-based pain models
Author(s)
Dong Hee Lee; Sungwoo Lee; Choong-Wan Woo
Publication Date
2025-02
Journal
Pain, v.166, no.2, pp.360 - 375
Publisher
Lippincott Williams and Wilkins
Abstract
Neuroimaging-based pain biomarkers, when combined with machine learning techniques, have demonstrated potential in decoding pain intensity and diagnosing clinical pain conditions. However, a systematic evaluation of how different modeling options affect model performance remains unexplored. This study presents the results from a comprehensive literature survey and benchmark analysis. We conducted a survey of 57 previously published articles that included neuroimaging-based predictive modeling of pain, comparing classification and prediction performance based on the following modeling variables-the levels of data, spatial scales, idiographic vs population models, and sample sizes. The findings revealed a preference for population-level modeling with brain-wide features, aligning with the goal of clinical translation of neuroimaging biomarkers. However, a systematic evaluation of the influence of different modeling options was hindered by a limited number of independent test results. This prompted us to conduct benchmark analyses using a locally collected functional magnetic resonance imaging dataset (N 5 124) involving an experimental thermal pain task. The results demonstrated that data levels, spatial scales, and sample sizes significantly impact model performance. Specifically, incorporating more pain-related brain regions, increasing sample sizes, and averaging less data during training and more data during testing improved performance. These findings offer useful guidance for developing neuroimaging-based biomarkers, underscoring the importance of strategic selection of modeling approaches to build better-performing neuroimaging pain biomarkers. However, the generalizability of these findings to clinical pain requires further investigation. Copyright © 2024 The Author(s).
URI
https://pr.ibs.re.kr/handle/8788114/16141
DOI
10.1097/j.pain.0000000000003392
ISSN
0304-3959
Appears in Collections:
Center for Neuroscience Imaging Research (뇌과학 이미징 연구단) > 1. Journal Papers (저널논문)
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