English

Artificial Intelligence for Dementia Research Methods Optimization

Machine Learning 2023-03-06 v1 Quantitative Methods Applications Methodology

Abstract

Introduction: Machine learning (ML) has been extremely successful in identifying key features from high-dimensional datasets and executing complicated tasks with human expert levels of accuracy or greater. Methods: We summarize and critically evaluate current applications of ML in dementia research and highlight directions for future research. Results: We present an overview of ML algorithms most frequently used in dementia research and highlight future opportunities for the use of ML in clinical practice, experimental medicine, and clinical trials. We discuss issues of reproducibility, replicability and interpretability and how these impact the clinical applicability of dementia research. Finally, we give examples of how state-of-the-art methods, such as transfer learning, multi-task learning, and reinforcement learning, may be applied to overcome these issues and aid the translation of research to clinical practice in the future. Discussion: ML-based models hold great promise to advance our understanding of the underlying causes and pathological mechanisms of dementia.

Keywords

Cite

@article{arxiv.2303.01949,
  title  = {Artificial Intelligence for Dementia Research Methods Optimization},
  author = {Magda Bucholc and Charlotte James and Ahmad Al Khleifat and AmanPreet Badhwar and Natasha Clarke and Amir Dehsarvi and Christopher R. Madan and Sarah J. Marzi and Cameron Shand and Brian M. Schilder and Stefano Tamburin and Hanz M. Tantiangco and Ilianna Lourida and David J. Llewellyn and Janice M. Ranson},
  journal= {arXiv preprint arXiv:2303.01949},
  year   = {2023}
}

Comments

Magda Bucholc and Charlotte James joint first authors