Authors
Stefan Klöppel, Cynthia M Stonnington, Josephine Barnes, Frederick Chen, Carlton Chu, Catriona D Good, Irina Mader, L Anne Mitchell, Ameet C Patel, Catherine C Roberts, Nick C Fox, Clifford R Jack Jr, John Ashburner, Richard SJ Frackowiak
Publication date
2008/11/1
Journal
Brain
Volume
131
Issue
11
Pages
2969-2974
Publisher
Oxford University Press
Description
There has been recent interest in the application of machine learning techniques to neuroimaging-based diagnosis. These methods promise fully automated, standard PC-based clinical decisions, unbiased by variable radiological expertise. We recently used support vector machines (SVMs) to separate sporadic Alzheimer's disease from normal ageing and from fronto-temporal lobar degeneration (FTLD). In this study, we compare the results to those obtained by radiologists. A binary diagnostic classification was made by six radiologists with different levels of experience on the same scans and information that had been previously analysed with SVM. SVMs correctly classified 95% (sensitivity/specificity: 95/95) of sporadic Alzheimer's disease and controls into their respective groups. Radiologists correctly classified 65–95% (median 89%; sensitivity/specificity: 88/90) of scans. SVM correctly classified another …
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