4.7 Article

Deep learning for bone marrow cell detection and classification on whole-slide images

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MEDICAL IMAGE ANALYSIS
卷 75, 期 -, 页码 -

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ELSEVIER
DOI: 10.1016/j.media.2021.102270

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Hematopathology; Whole-slide image; Bone marrow differential cell count; Deep learning

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This study developed an efficient and fully automatic hierarchical deep learning framework for bone marrow nucleated differential count (NDC) whole-slide image (WSI) analysis. The framework includes rapid localization, cell identification, and result integration steps, achieving high recall and accuracy in cell counting with superior performance compared to existing benchmark methods.
Bone marrow (BM) examination is an essential step in both diagnosing and managing numerous hematologic disorders. BM nucleated differential count (NDC) analysis, as part of BM examination, holds the most fundamental and crucial information. However, there are many challenges to perform automated BM NDC analysis on whole-slide images (WSIs), including large dimensions of data to process, complicated cell types with subtle differences. To the authors best knowledge, this is the first study on fully automatic BM NDC using WSIs with 40x objective magnification, which can replace traditional manual counting relying on light microscopy via oil-immersion 100x objective lens with a total 10 0 0x magnification. In this study, we develop an efficient and fully automatic hierarchical deep learning framework for BM NDC WSI analysis in seconds. The proposed hierarchical framework consists of (1) a deep learning model for rapid localization of BM particles and cellular trails generating regions of interest (ROI) for further analysis, (2) a patch-based deep learning model for cell identification of 16 cell types, including megakaryocytes, mitotic cells, and four stages of erythroblasts which have not been demonstrated in previous studies before, and (3) a fast stitching model for integrating patch-based results and producing final outputs. In evaluation, the proposed method is firstly tested on a dataset with a total of 12,426 annotated cells using cross validation, achieving high recall and accuracy of 0.905 +/- 0.078 and 0.989 +/- 0.006, respectively, and taking only 44 seconds to perform BM NDC analysis for a WSI. To further examine the generalizability of our model, we conduct an evaluation on the second independent dataset with a total of 3005 cells, and the results show that the proposed method also obtains high recall and accuracy of 0.842 and 0.988, respectively. In comparison with the existing small-image-based benchmark methods, the proposed method demonstrates superior performance in recall, accuracy and computational time. (c) 2021 Elsevier B.V. All rights reserved.

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