ID | 116730 |
Title Alternative | DRMS for Patient-Level Lymph Node Status Classification
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Author |
Wang, Lu
Tokushima University
Song, Tian
Tokushima University
Tokushima University Educator and Researcher Directory
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Katayama, Takafumi
Tokushima University
Tokushima University Educator and Researcher Directory
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Jiang, Xiantao
Shanghai Maritime University
Shimamoto, Takashi
Tokushima University
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Leu, Jenq-Shiou
National Taiwan University of Science and Technology
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Keywords | Breast cancer metastases
histological lymph node sections
patient level analysis
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Content Type |
Journal Article
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Description | Generally, automatic diagnosis of the presence of metastases in lymph nodes has therapeutic implications for breast cancer patients. Detection and classification of breast cancer metastases have high clinical relevance, especially in whole-slide images of histological lymph node sections. Fast early detection leads to huge improvement of patient’s survival rate. However, currently pathologists mainly detect the metastases with microscopic assessments. This diagnosis procedure is extremely laborious and prone to inevitable missed diagnoses. Therefore, automated, accurate patient-level classification would hold great promise to reduce the pathologist’s workload while also reduce the subjectivity of diagnosis. In this paper, we provide a novel deep regional metastases segmentation (DRMS) framework for the patient-level lymph node status classification. First, a deep segmentation network (DSNet) is proposed to detect the regional metastases in patch-level. Then, we adopt the density-based spatial clustering of applications with noise (DBSCAN) to predict the whole metastases from individual slides. Finally, we determine patient-level pN-stages by aggregating each individual slide-level prediction. In combination with the above techniques, the framework can make better use of the multi-grained information in histological lymph node section of whole-slice images. Experiments on large-scale clinical datasets (e.g., CAMELYON17) demonstrate that our method delivers advanced performance and provides consistent and accurate metastasis detection in clinical trials.
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Journal Title |
IEEE Access
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ISSN | 21693536
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Publisher | IEEE
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Volume | 9
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Start Page | 129293
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End Page | 129302
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Published Date | 2021-09-15
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Rights | This work is licensed under a Creative Commons Attribution 4.0 License. For more information, see https://creativecommons.org/licenses/by/4.0/
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language |
eng
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departments |
Science and Technology
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