Abstract
Deep learning has great potential for imaging classification by extracting low to high-level features. Our aim was to train a convolutional neural network (CNN) with single T2-weighted FLAIR sequence to classify different cognitive performances in patients with subcortical ischemic vascular disease (SIVD). In total, 217 patients with SIVD [including 52 with vascular dementia (VaD), 82 with vascular mild cognitive impairment (VaMCI), and 83 with non-cognitive impairment (NCI)] and 46 matched healthy controls (HCs) underwent MRI scans and neuropsychological assessments. 2D and 3D CNNs were trained to classify VaD, VaMCI, NCI, and HCs based on FLAIR data. For 3D-based model, the loss curves of the training set approached 0.017 after about 20 epochs, while the curves of the testing set maintained at about 0.114. The accuracy of training set and testing set reached 99.7 and 96.9% after about 30 and 35 epochs, respectively. However, the accuracy of the 2D-based model was only around 70%, which performed significantly worse than 3D-based model. This experiment suggests that deep learning is a powerful and convenient method to classify different cognitive performances in SIVD by extracting the shift and scale invariant features of neuroimaging data with single FLAIR sequence. 3D-CNN is superior to 2D-CNN which involves clinical evaluation with MRI multiplanar reformation or volume scanning.
Highlights
As the population keeps aging, the social and family burden of cognitive impairment has been gradually increasing (Sun et al, 2011)
Classification of Subcortical vascular cognitive impairment (SVCI) Using T2-fluid attenuated inversion recovery sequences (FLAIR) and 3D-convolutional neural network (CNN). Both the aging of the population and the high incidence of subcortical ischemic vascular disease (SIVD) in aging subjects led to projections of major growth in the numbers of patients with SVCI over the 30 years (Gorelick et al, 2011)
217 subjects with SIVD were recruited from patients admitted to the Neurology Department of Renji Hospital from July 2012 to January 2018. 46 matched healthy controls (HCs) were recruited from the community through advertising
Summary
As the population keeps aging, the social and family burden of cognitive impairment has been gradually increasing (Sun et al, 2011). Subcortical vascular cognitive impairment (SVCI) is the most common form of VCI caused by subcortical ischemic vascular disease (SIVD) with various signs in MRI, including lacunar infarction, white matter hyperintensities (WMH) ( termed white matter lesions or leukoaraiosis), prominent perivascular spaces, cerebral microbleeds, and atrophy. These MRI signs have been recognized as the reflection of major pathologies underlying vascular dementia (VaD) and important causes of age-related cognitive decline (Pantoni, 2010; Roh and Lee, 2014). More efficient and convenient methods are required to identify the subgroup of SVCI who rapidly decline
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