High-accuracy morphological identification of bone marrow cells using deep learning-based Morphogo system

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作者
Zhanwu Lv
Xinyi Cao
Xinyi Jin
Shuangqing Xu
Huangling Deng
机构
[1] Guangzhou Kingmed Diagnostic Laboratory Group Co.,Bone Marrow Chamber
[2] Ltd.,Division of Medical Technology Development
[3] Hangzhou Zhiwei Information Technology Co.,undefined
[4] Ltd.,undefined
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Accurate identification and classification of bone marrow (BM) nucleated cell morphology are crucial for the diagnosis of hematological diseases. However, the subjective and time-consuming nature of manual identification by pathologists hinders prompt diagnosis and patient treatment. To address this issue, we developed Morphogo, a convolutional neural network-based system for morphological examination. Morphogo was trained using a vast dataset of over 2.8 million BM nucleated cell images. Its performance was evaluated using 508 BM cases that were categorized into five groups based on the degree of morphological abnormalities, comprising a total of 385,207 BM nucleated cells. The results demonstrated Morphogo’s ability to identify over 25 different types of BM nucleated cells, achieving a sensitivity of 80.95%, specificity of 99.48%, positive predictive value of 76.49%, negative predictive value of 99.44%, and an overall accuracy of 99.01%. In most groups, Morphogo cell analysis and Pathologists' proofreading showed high intragroup correlation coefficients for granulocytes, erythrocytes, lymphocytes, monocytes, and plasma cells. These findings further validate the practical applicability of the Morphogo system in clinical practice and emphasize its value in assisting pathologists in diagnosing blood disorders.
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