2021
DOI: 10.1155/2021/4954854
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Towards the Segmentation and Classification of White Blood Cell Cancer Using Hybrid Mask-Recurrent Neural Network and Transfer Learning

Abstract: Inside the bone marrow, plasma cells are created, and they are a type of white blood cells. They are made from B lymphocytes. Antigens are produced by plasma cells to combat bacteria and viruses and prevent inflammation and illness. Multiple myeloma is a plasma cell cancer that starts in the bone marrow and causes the formation of abnormal plasma cells. Multiple myeloma is firmly identified by examining bone marrow samples under a microscope for myeloma cells. To diagnose myeloma cells, pathologists have to be… Show more

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Cited by 4 publications
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“…Cucun Very Angkoso et al [8], Previously, intended an automated WBC nucleus segmentation method based on color-based segmentation using active contour model where the effectiveness of RGB, HSV, YC B C R, CieLab, and grayscale was analyzed, and the accuracy and specificity was found to be 99.38 % and 97.92 % respectively. A computer-aided method for identifying and distinguishing myeloma cells in bone marrow blurs was proposed by Sumit Kumar Das et al [11], where for recognition Mask-Recurrent CNN was used, and for detection Efficient Net B3 was used. The Mask RCNN mAP (Detection) score was obtained to be 93 % and the Classification accuracy was 94.68 %.…”
Section: Literature Reviewmentioning
confidence: 99%
“…Cucun Very Angkoso et al [8], Previously, intended an automated WBC nucleus segmentation method based on color-based segmentation using active contour model where the effectiveness of RGB, HSV, YC B C R, CieLab, and grayscale was analyzed, and the accuracy and specificity was found to be 99.38 % and 97.92 % respectively. A computer-aided method for identifying and distinguishing myeloma cells in bone marrow blurs was proposed by Sumit Kumar Das et al [11], where for recognition Mask-Recurrent CNN was used, and for detection Efficient Net B3 was used. The Mask RCNN mAP (Detection) score was obtained to be 93 % and the Classification accuracy was 94.68 %.…”
Section: Literature Reviewmentioning
confidence: 99%