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research article
External validation of a clinical prediction model in multiple sclerosis
Authors
Talal M. Al-Harbi
Raed A. Alroughani
+15 more
Ayşe Altintaş
Cavit Boz
Jihad Said Inshasi
Tomas Kalincik
Rana Karabudak
Samia J. Khoury
Charles B. Malpas
Nahid Moradi
Nevin Mohieldin Shalaby
Sifat Sharmin
Vahid Shaygannejad
Aysun Soysal
Murat Terzi
Recai Türkoǧlu
Bassem I. Yamout
Publication date
30 November 2022
Publisher
SAGE Publications Ltd
Doi
Abstract
Background: Timely initiation of disease modifying therapy is crucial for managing multiple sclerosis (MS). Objective: We aimed to validate a previously published predictive model of individual treatment response using a non-overlapping cohort from the Middle East. Methods: We interrogated the MSBase registry for patients who were not included in the initial model development. These patients had relapsing MS or clinically isolated syndrome, a recorded date of disease onset, disability and dates of disease modifying therapy, with sufficient follow-up pre- and post-baseline. Baseline was the visit at which a new disease modifying therapy was initiated, and which served as the start of the predicted period. The original models were used to translate clinical information into three principal components and to predict probability of relapses, disability worsening or improvement, conversion to secondary progressive MS and treatment discontinuation as well as changes in the area under disability-time curve (ΔAUC). Prediction accuracy was assessed using the criteria published previously. Results: The models performed well for predicting the risk of disability worsening and improvement (accuracy: 81%–96%) and performed moderately well for predicting the risk of relapses (accuracy: 73%–91%). The predictions for ΔAUC and risk of treatment discontinuation were suboptimal (accuracy < 44%). Accuracy for predicting the risk of conversion to secondary progressive MS ranged from 50% to 98%. Conclusion: The previously published models are generalisable to patients with a broad range of baseline characteristics in different geographic regions. © The Author(s), 2022
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Last time updated on 29/02/2024