“…The similar network architecture (same network design and same convolution filters) as in our previous WM brain age study was adopted. 15 In particular, the feature extractor consisted of 6 3D-convolutional layers falsetrueConv3D(32,-3px3,1,2)−Conv3D(64,-3px3,1,2)−Conv3D(128,-3px3,1,2) true−Conv3D(256,-3px3,-3px1,-3px2)−Conv3D(256,-3px3,-3px1,-3px2)−Conv3D(64,-3px3,-3px1,2) followed by a 2-layer multilayer perceptron with dimensions falsed−100−1, where falseConv3D(m, n, p, q) denoted a 3D convolutional layer with channel number falsem, kernel size …”