The invention discloses a multi-
modal cerebral apoplexy
lesion segmentation method based on
small sample learning, and the method comprises the steps: obtaining an original brain training sample which comprises a multi-
modal CT medical image and an
annotation image, and the original training sample comprises CT, CBF, CBV, MTT, TMax and ischemic cerebral apoplexy
lesion tags; the method comprises the following steps: preprocessing a multi-
modal medical image, carrying out image augmentation through
modes of
image deformation, image scaling, generative adversarial and the like, and expanding a
small sample image
data set; registering the multi-modal image after data augmentation, taking a
reference image as a CT image, and performing pixel-
level fusion on the multi-modal image after registration; and the fused multi-modal image data is transmitted to a segmentation network constructed based on Transform to carry out
image segmentation. The invention further discloses a
system using the method. According to the method, the influence on a medical image data segmentation task caused by insufficient data samples is improved, more focus image information is obtained through multi-modal
image fusion, and the accuracy of
image segmentation is improved.