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Assessing treatment switch among patients with multiple sclerosis: A machine learning approach.

Authors :
Li J
Huang Y
Hutton GJ
Aparasu RR
Source :
Exploratory research in clinical and social pharmacy [Explor Res Clin Soc Pharm] 2023 Jul 10; Vol. 11, pp. 100307. Date of Electronic Publication: 2023 Jul 10 (Print Publication: 2023).
Publication Year :
2023

Abstract

Background: Patients with multiple sclerosis (MS) frequently switch their Disease-Modifying Agents (DMA) for effectiveness and safety concerns. This study aimed to develop and compare the random forest (RF) machine learning (ML) model with the logistic regression (LR) model for predicting DMA switching among MS patients.<br />Methods: This retrospective longitudinal study used the TriNetX data from a federated electronic medical records (EMR) network. Between September 2010 and May 2017, adults (aged ≥18) MS patients with ≥1 DMA prescription were identified, and the earliest DMA date was assigned as the index date. Patients prescribed any DMAs different from their index DMAs were considered as treatment switch. . The RF and LR models were built with 72 baseline characteristics and trained with 70% of the randomly split data after up-sampling. Area Under the Curves (AUC), accuracy, recall, G-measure, and F-1 score were used to evaluate the model performance.<br />Results: In this study, 7258 MS patients with ≥1 DMA were identified. Within two years, 16% of MS patients switched to a different DMA. The RF model obtained significantly better discrimination than the LR model (AUC = 0.65 vs. 0.63, p  < 0.0001); however, the RF model had a similar predictive performance to the LR model with respect to F- and G-measures (RF: 72% and 73% vs. LR: 72% and 73%, respectively). The most influential features identified from the RF model were age, type of index medication, and year of index.<br />Conclusions: Compared to the LR model, RF performed better in predicting DMA switch in MS patients based on AUC measures; however, judged by F- and G-measures, the RF model performed similarly to LR. Further research is needed to understand the role of ML techniques in predicting treatment outcomes for the decision-making process to achieve optimal treatment goals.<br />Competing Interests: Dr. Aparasu has received research funding from Astellas Inc., Incyte Corp., Gilead, and Novartis Inc. for projects unrelated to the current work. Dr. Hutton reports grants from Biogen, Novartis, MedImmune, Hoffman-LaRoche, E.M.D. Serono, Sanofi, and personal fees from Novartis, Sanofi, Celgene outside the submitted work. The other authors declare no conflicts of interest for this article.<br /> (© 2023 The Author(s).)

Details

Language :
English
ISSN :
2667-2766
Volume :
11
Database :
MEDLINE
Journal :
Exploratory research in clinical and social pharmacy
Publication Type :
Academic Journal
Accession number :
37554927
Full Text :
https://doi.org/10.1016/j.rcsop.2023.100307