Clinical Application of Machine Learning in Biomedical Engineering for the Early Detection of Neurological Disorders.

Journal: Annals of biomedical engineering
Published Date:

Abstract

Machine learning is increasingly recognized as a transformative tool in the diagnosis and prognosis of neurodevelopmental, neurodegenerative, and learning disorders. Through the analysis of complex patterns in speech and language, these models may offer important insights that can support and enhance clinical decision-making. This paper explores the potential of machine learning to detect a range of disorders and discusses its key advantages, limitations, and clinical integration.

Authors

  • Georgios P Georgiou
    Department of Languages and Literature, University of Nicosia, Nicosia, Cyprus. georgiou.georg@unic.ac.cy.

Keywords

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