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  1. RePhyChem
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  3. Journal Article
Please use this identifier to cite or link to this item: https://dspace.ffh.bg.ac.rs/handle/123456789/2523
Title: Application of machine learning in migraine classification: a call for study design standardization and global collaboration
Authors: Petrušić, Igor 
Messina, Roberta
Pellesi, Lanfranco
Azorin, David Garcia
Chiang, Chia-Chun
Pietra, Adriana Della
Ha, Woo-Seok
Labastida-Ramirez, Alejandro
Onan, Dilara
Ornello, Raffaele
Raffaelli, Bianca
Rubio-Beltran, Eloisa
Ruscheweyh, Ruth
Tana, Claudio
Vuralli, Doga
Waliszewska-Prosół, Marta
Wang, Wei
Wells-Gatnik, William David
Martelletti, Paolo
Raggi, Alberto
Keywords: Artificial intelligence;Classification algorithms;Deep learning;Migraine types;Neuroimaging;Support vector machine
Issue Date: 2-Oct-2025
Project: Ministry of Science, Technological Development and Innovation, Republic of Serbia
Journal: The journal of headache and pain
Abstract: 
Migraine is a complex neurological disorder with diverse clinical phenotypes and a multifaceted pathophysiology, which poses substantial challenges for accurate diagnosis, subtype differentiation, and biomarker discovery. Machine learning (ML) techniques have emerged as promising tools for classifying migraine patients and uncovering the underlying neurobiological mechanisms that differentiate migraine types and subtypes. This systematic review identifies current ML classification models for migraine types and subtypes, evaluating the quality, reproducibility, and clinical utility of published studies. The findings demonstrate that current ML models, particularly support vector machines and linear discriminant analysis, can accurately classify migraine patients based on structural and functional neuroimaging features with accuracies ranging from 75 to 98%. However, quality assessment revealed significant methodological heterogeneity across studies, including inconsistent reporting of model performance, insufficient patient phenotyping, small and imbalanced datasets, and limited external validation. These limitations hinder the global generalizability and reproducibility of these studies. We propose a roadmap for future research emphasizing well-characterized clinical subgrouping, standardized data acquisition and feature engineering protocols, transparency in model development and reporting, and collaborative multicentric designs to enable large-scale validation. Furthermore, this review stresses the importance of incorporating real-world phenotypic data, such as treatment response, comorbidities, and digital phenotyping metrics, to enrich ML models and support the transition toward precision medicine in migraine care. Ultimately, this review highlights the urgent need for methodological rigor in migraine ML classification studies to bridge the gap between experimental success and clinical applicability.
URI: https://dspace.ffh.bg.ac.rs/handle/123456789/2523
ISSN: 11292369
DOI: 10.1186/s10194-025-02134-9
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University of Belgrade
Faculty of Physical Chemistry
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11158 Belgrade 118
PAC 105305
SERBIA
University of Belgrade Faculty of Physical Chemistry