دورية أكاديمية

Predicting disease severity in multiple sclerosis using multimodal data and machine learning.

التفاصيل البيبلوغرافية
العنوان: Predicting disease severity in multiple sclerosis using multimodal data and machine learning.
المؤلفون: Andorra, Magi, Freire, Ana, Zubizarreta, Irati, de Rosbo, Nicole Kerlero, Bos, Steffan D., Rinas, Melanie, Høgestøl, Einar A., de Rodez Benavent, Sigrid A., Berge, Tone, Brune-Ingebretse, Synne, Ivaldi, Federico, Cellerino, Maria, Pardini, Matteo, Vila, Gemma, Pulido-Valdeolivas, Irene, Martinez-Lapiscina, Elena H., Llufriu, Sara, Saiz, Albert, Blanco, Yolanda, Martinez-Heras, Eloy
المصدر: Journal of Neurology; Mar2024, Vol. 271 Issue 3, p1133-1149, 17p
مصطلحات موضوعية: MACHINE learning, MULTIPLE sclerosis, RANDOM forest algorithms, MONONUCLEAR leukocytes, OPTICAL coherence tomography, VENOUS insufficiency
مستخلص: Background: Multiple sclerosis patients would benefit from machine learning algorithms that integrates clinical, imaging and multimodal biomarkers to define the risk of disease activity. Methods: We have analysed a prospective multi-centric cohort of 322 MS patients and 98 healthy controls from four MS centres, collecting disability scales at baseline and 2 years later. Imaging data included brain MRI and optical coherence tomography, and omics included genotyping, cytomics and phosphoproteomic data from peripheral blood mononuclear cells. Predictors of clinical outcomes were searched using Random Forest algorithms. Assessment of the algorithm performance was conducted in an independent prospective cohort of 271 MS patients from a single centre. Results: We found algorithms for predicting confirmed disability accumulation for the different scales, no evidence of disease activity (NEDA), onset of immunotherapy and the escalation from low- to high-efficacy therapy with intermediate to high-accuracy. This accuracy was achieved for most of the predictors using clinical data alone or in combination with imaging data. Still, in some cases, the addition of omics data slightly increased algorithm performance. Accuracies were comparable in both cohorts. Conclusion: Combining clinical, imaging and omics data with machine learning helps identify MS patients at risk of disability worsening. [ABSTRACT FROM AUTHOR]
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قاعدة البيانات: Complementary Index
الوصف
تدمد:03405354
DOI:10.1007/s00415-023-12132-z