Ten years of image analysis and machine learning competitions in dementia
Esther E. Bron, Stefan Klein, Annika Reinke, Janne M. Papma, Lena, Maier-Hein, Daniel C. Alexander, Neil P. Oxtoby

TL;DR
Over the past decade, seven grand challenges in neuroimaging and machine learning for dementia have advanced algorithm development, but clinical adoption remains limited due to validation and generalizability issues.
Contribution
This paper reviews a decade of dementia-related machine learning challenges, highlighting their methodologies, results, and limitations for clinical translation.
Findings
High-performing algorithms use extensive data preprocessing and diverse features.
Challenges show limited overlap but similar validation methods.
Most algorithms are not yet used clinically despite strong performance.
Abstract
Machine learning methods exploiting multi-parametric biomarkers, especially based on neuroimaging, have huge potential to improve early diagnosis of dementia and to predict which individuals are at-risk of developing dementia. To benchmark algorithms in the field of machine learning and neuroimaging in dementia and assess their potential for use in clinical practice and clinical trials, seven grand challenges have been organized in the last decade. The seven grand challenges addressed questions related to screening, clinical status estimation, prediction and monitoring in (pre-clinical) dementia. There was little overlap in clinical questions, tasks and performance metrics. Whereas this aids providing insight on a broad range of questions, it also limits the validation of results across challenges. The validation process itself was mostly comparable between challenges, using similar…
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Taxonomy
TopicsDementia and Cognitive Impairment Research · Machine Learning in Healthcare
