Machine Learning and Deep Learning in Clinical Practice: Advancing Neurodegenerative Disease Diagnosis with Multimodal Markers.

Machine Learning and Deep Learning in Clinical Practice: Advancing Neurodegenerative Disease Diagnosis with Multimodal Markers.

Publication date: Dec 01, 2025

Neurodegenerative diseases, including Alzheimer’s disease, Parkinson’s disease, Huntington’s disease, and multiple sclerosis, present major global health challenges due to their progressive and incurable nature. Early and accurate diagnosis is critical to slow disease progression and optimize therapeutic interventions, yet conventional diagnostic approaches-such as neuroimaging, cerebrospinal fluid biomarker analysis, and clinical evaluation-are often inadequate at the prodromal stage. Recent advances in artificial intelligence, particularly machine learning (ML), have provided new opportunities for precision diagnosis and treatment in neurology, using large data and multimodal biomarkers. Applications of ML to data from neuroimaging, electrophysiology, behavioral functions, speech and handwriting analysis, and molecular biomarkers have shown promising improvements in diagnostic accuracy, patient classification, and therapeutic recommendations. However, significant challenges remain, including data heterogeneity, model interpretability, population diversity, and ethical concerns surrounding patients’ privacy. The purpose of this review is to examine current applications of ML in the diagnosis and management of neurodegenerative diseases through various data, highlight its strengths and limitations, and discuss future directions for using these approaches in clinical practice. We also outline emerging directions, including multimodal fusion with longitudinal data, federated and privacy-preserving learning, and the potential of explainable AI (XAI) and large language models (LLMs) in clinical decision support.

Concepts Keywords
Alzheimer Artificial intelligence
Biomarker Biomedical research
Global Deep learning
Neurodegenerative Machine learning
Remain Neurodegenerative diseases

Semantics

Type Source Name
disease MESH Neurodegenerative Disease
pathway REACTOME Neurodegenerative Diseases
disease MESH Alzheimer’s disease
disease MESH Parkinson’s disease
disease MESH Huntington’s disease
disease MESH multiple sclerosis
disease MESH prodromal stage

Original Article

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