Assessment of Alzheimer-related pathologies of dementia using machine learning feature selection

被引:0
作者
Mohammed D. Rajab
Emmanuel Jammeh
Teruka Taketa
Carol Brayne
Fiona E. Matthews
Li Su
Paul G. Ince
Stephen B. Wharton
Dennis Wang
机构
[1] University of Sheffield,Sheffield Institute for Translational Neuroscience
[2] University of Sheffield,Department of Computer Science
[3] Cambridge Public Health,Population Health Sciences Institute
[4] Newcastle University,Department of Psychiatry
[5] University of Cambridge,undefined
[6] Singapore Institute for Clinical Sciences,undefined
[7] A*STAR,undefined
[8] National Heart and Lung Institute,undefined
[9] Imperial College London,undefined
来源
Alzheimer's Research & Therapy | / 15卷
关键词
Dementia; Alzheimer’s; Feature selection; Machine learning; Neuropathology; Beta-amyloid;
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摘要
Although a variety of brain lesions may contribute to the pathological assessment of dementia, the relationship of these lesions to dementia, how they interact and how to quantify them remains uncertain. Systematically assessing neuropathological measures by their degree of association with dementia may lead to better diagnostic systems and treatment targets. This study aims to apply machine learning approaches to feature selection in order to identify critical features of Alzheimer-related pathologies associated with dementia. We applied machine learning techniques for feature ranking and classification to objectively compare neuropathological features and their relationship to dementia status during life using a cohort (n=186) from the Cognitive Function and Ageing Study (CFAS). We first tested Alzheimer’s Disease and tau markers and then other neuropathologies associated with dementia. Seven feature ranking methods using different information criteria consistently ranked 22 out of the 34 neuropathology features for importance to dementia classification. Although highly correlated, Braak neurofibrillary tangle stage, beta-amyloid and cerebral amyloid angiopathy features were ranked the highest. The best-performing dementia classifier using the top eight neuropathological features achieved 79% sensitivity, 69% specificity and 75% precision. However, when assessing all seven classifiers and the 22 ranked features, a substantial proportion (40.4%) of dementia cases was consistently misclassified. These results highlight the benefits of using machine learning to identify critical indices of plaque, tangle and cerebral amyloid angiopathy burdens that may be useful for classifying dementia.
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