Morphological diagnosis of hematologic malignancy using feature fusion-based deep convolutional neural network

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作者
D. P. Yadav
Deepak Kumar
Anand Singh Jalal
Ankit Kumar
Kamred Udham Singh
Mohd Asif Shah
机构
[1] G.L.A. University,Department of Computer Engineering and Applications
[2] NIT Meghalaya,Department of Computer Science
[3] Graphic Era Hill University,School of Computing
[4] Kebri Dehar University,Division of Research and Development
[5] Woxsen University,Research Fellow
[6] Lovely Professional University,undefined
[7] INTI International University,undefined
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Leukemia is a cancer of white blood cells characterized by immature lymphocytes. Due to blood cancer, many people die every year. Hence, the early detection of these blast cells is necessary for avoiding blood cancer. A novel deep convolutional neural network (CNN) 3SNet that has depth-wise convolution blocks to reduce the computation costs has been developed to aid the diagnosis of leukemia cells. The proposed method includes three inputs to the deep CNN model. These inputs are grayscale and their corresponding histogram of gradient (HOG) and local binary pattern (LBP) images. The HOG image finds the local shape, and the LBP image describes the leukaemia cell's texture pattern. The suggested model was trained and tested with images from the AML-Cytomorphology_LMU dataset. The mean average precision (MAP) for the cell with less than 100 images in the dataset was 84%, whereas for cells with more than 100 images in the dataset was 93.83%. In addition, the ROC curve area for these cells is more than 98%. This confirmed proposed model could be an adjunct tool to provide a second opinion to a doctor.
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