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Main Authors: Vazifehdan, Mahin, Bosoni, Pietro, Pala, Daniele, Tavazzi, Eleonora, Bergamaschi, Roberto, Bellazzi, Riccardo, Dagliati, Arianna
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2501.12927
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author Vazifehdan, Mahin
Bosoni, Pietro
Pala, Daniele
Tavazzi, Eleonora
Bergamaschi, Roberto
Bellazzi, Riccardo
Dagliati, Arianna
author_facet Vazifehdan, Mahin
Bosoni, Pietro
Pala, Daniele
Tavazzi, Eleonora
Bergamaschi, Roberto
Bellazzi, Riccardo
Dagliati, Arianna
contents Multiple Sclerosis (MS) is a chronic disease characterized by progressive or alternate impairment of neurological functions (motor, sensory, visual, and cognitive). Predicting disease progression with a probabilistic and time-dependent approach might help in suggesting interventions that can delay the progression of the disease. However, extracting informative knowledge from irregularly collected longitudinal data is difficult, and missing data pose significant challenges. MS progression is measured through the Expanded Disability Status Scale (EDSS), which quantifies and monitors disability in MS over time. EDSS assesses impairment in eight functional systems (FS). Frequently, only the EDSS score assigned by clinicians is reported, while FS sub-scores are missing. Imputing these scores might be useful, especially to stratify patients according to their phenotype assessed over the disease progression. This study aimed at i) exploring different methodologies for imputing missing FS sub-scores, and ii) predicting the EDSS score using complete clinical data. Results show that Exponential Weighted Moving Average achieved the lowest error rate in the missing data imputation task; furthermore, the combination of Classification and Regression Trees for the imputation and SVM for the prediction task obtained the best accuracy.
format Preprint
id arxiv_https___arxiv_org_abs_2501_12927
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Longitudinal Missing Data Imputation for Predicting Disability Stage of Patients with Multiple Sclerosis
Vazifehdan, Mahin
Bosoni, Pietro
Pala, Daniele
Tavazzi, Eleonora
Bergamaschi, Roberto
Bellazzi, Riccardo
Dagliati, Arianna
Machine Learning
Multiple Sclerosis (MS) is a chronic disease characterized by progressive or alternate impairment of neurological functions (motor, sensory, visual, and cognitive). Predicting disease progression with a probabilistic and time-dependent approach might help in suggesting interventions that can delay the progression of the disease. However, extracting informative knowledge from irregularly collected longitudinal data is difficult, and missing data pose significant challenges. MS progression is measured through the Expanded Disability Status Scale (EDSS), which quantifies and monitors disability in MS over time. EDSS assesses impairment in eight functional systems (FS). Frequently, only the EDSS score assigned by clinicians is reported, while FS sub-scores are missing. Imputing these scores might be useful, especially to stratify patients according to their phenotype assessed over the disease progression. This study aimed at i) exploring different methodologies for imputing missing FS sub-scores, and ii) predicting the EDSS score using complete clinical data. Results show that Exponential Weighted Moving Average achieved the lowest error rate in the missing data imputation task; furthermore, the combination of Classification and Regression Trees for the imputation and SVM for the prediction task obtained the best accuracy.
title Longitudinal Missing Data Imputation for Predicting Disability Stage of Patients with Multiple Sclerosis
topic Machine Learning
url https://arxiv.org/abs/2501.12927