Machine Learning-Driven Prediction Models for Brodalumab Therapeutic Effect and Response Speed in Plaque Psoriasis.

Psoriasis (Auckl)

Department of Dermatology, Guangdong Provincial People's Hospital (Guangdong Academy of Medical Sciences), Southern Medical University, Guangzhou, 510080, People's Republic of China.

Published: August 2025


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Article Abstract

Purpose: Biologic therapies have transformed plaque psoriasis treatment, but patient responses remain variable, neces+sitating machine prediction model for personalized therapy.

Patients And Methods: Transcriptomic and clinical data from moderate-to-severe psoriatic patient biopsies were sourced from GSE117468. Differential gene analysis identified Brodalumab treatment-associated genes. Lasso regression selected response-related genes, and LightGBM was used to build machine learning models. Model robustness was assessed using five-fold cross-validation.

Results: Biopsies (n=491) from 116 patients' lesional (LS) and non-lesional (NL) tissues were analyzed, divided into Brodalumab (140 mg or 210 mg) and placebo groups. Responders were defined as achieving ≥75% improvement in Psoriasis Area and Severity Index at week 12. Lasso identified genes from classical psoriasis pathways (IL-17, PPAR signaling, HLA-D alleles) and novel targets (WIF1, SLC44A5, LOC441528, SAA1). Six LightGBM models were trained to predict 12-week treatment response and 4-week response speed using LS, NL, and combined (LS_&_NL) data. LS_&_NL models showed superior performance, achieving AUC-ROC values of 95.14% (140 mg) and 92.83% (210 mg) for 12-week response prediction and 98.70% (140 mg) and 97.51% (210 mg) for 4-week response speed prediction.

Conclusion: These models provide robust tools for predicting Brodalumab response, supporting precision medicine and optimizing resource allocation in plaque psoriasis management.

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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC12378525PMC
http://dx.doi.org/10.2147/PTT.S531925DOI Listing

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