Deep Learning-Based Psoriasis Assessment: Harnessing Clinical Trial Imaging for Accurate Psoriasis Area Severity Index Prediction

被引:2
|
作者
Xing Y. [1 ]
Zhong S. [1 ]
Aronson S.L. [1 ]
Rausa F.M. [1 ]
Webster D.E. [1 ]
Crouthamel M.H. [1 ]
Wang L. [1 ]
机构
[1] AbbVie, North Chicago, IL
关键词
Accurate PASI prediction; Clinical trial imaging; Deep convolutional neural network; Deep learning; Psoriasis assessment;
D O I
10.1159/000536499
中图分类号
学科分类号
摘要
Introduction: Image-based machine learning holds great promise for facilitating clinical care; however, the datasets often used for model training differ from the interventional clinical trial-based findings frequently used to inform treatment guidelines. Here, we draw on longitudinal imaging of psoriasis patients undergoing treatment in the Ultima 2 clinical trial (NCT02684357), including 2,700 body images with psoriasis area severity index (PASI) annotations by uniformly trained dermatologists. Methods: An imageprocessing workflow integrating clinical photos of multiple body regions into one model pipeline was developed, which we refer to as the "One-Step PASI"framework due to its simultaneous body detection, lesion detection, and lesion severity classification. Group-stratified cross-validation was performed with 145 deep convolutional neural network models combined in an ensemble learning architecture. Results: The highest-performing model demonstrated a mean absolute error of 3.3, Lin's concordance correlation coefficient of 0.86, and Pearson correlation coefficient of 0.90 across a wide range of PASI scores comprising disease classifications of clear skin, mild, and moderate-to-severe disease. Within-person, time-series analysis of model performance demonstrated that PASI predictions closely tracked the trajectory of physician scores from severe to clear skin without systematically over-or underestimating PASI scores or percent changes from baseline. Conclusion: This study demonstrates the potential of image processing and deep learning to translate otherwise inaccessible clinical trial data into accurate, extensible machine learning models to assess therapeutic efficacy. © 2024 The Author(s). Published by S. Karger AG, Basel.
引用
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页码:13 / 21
页数:8
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