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Understanding machine learning applications in dementia research and clinical practice: a review for biomedical scientists and clinicians

  • Yihan Wang
  • , Shu Liu
  • , Alanna G. Spiteri
  • , Andrew Liem Hieu Huynh
  • , Chenyin Chu
  • , Colin L. Masters
  • , Benjamin Goudey
  • , Yijun Pan
  • , Liang Jin

Research output: Contribution to journalReview ArticleResearchpeer-review

Abstract

Several (inter)national longitudinal dementia observational datasets encompassing demographic information, neuroimaging, biomarkers, neuropsychological evaluations, and muti-omics data, have ushered in a new era of potential for integrating machine learning (ML) into dementia research and clinical practice. ML, with its proficiency in handling multi-modal and high-dimensional data, has emerged as an innovative technique to facilitate early diagnosis, differential diagnosis, and to predict onset and progression of mild cognitive impairment and dementia. In this review, we evaluate current and potential applications of ML, including its history in dementia research, how it compares to traditional statistics, the types of datasets it uses and the general workflow. Moreover, we identify the technical barriers and challenges of ML implementations in clinical practice. Overall, this review provides a comprehensive understanding of ML with non-technical explanations for broader accessibility to biomedical scientists and clinicians.

Original languageEnglish
Article number175
Number of pages21
JournalAlzheimer's Research & Therapy
Volume16
Issue number1
DOIs
Publication statusPublished - 1 Aug 2024
Externally publishedYes

Keywords

  • Alzheimer’s dementia
  • Alzheimer’s disease
  • Dementia subtyping
  • Diagnosis
  • Disease progression
  • Machine learning

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