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Path R-CNN for Prostate Cancer Diagnosis and Gleason Grading of Histological Images.


ABSTRACT: Prostate cancer is the most common and second most deadly form of cancer in men in the United States. The classification of prostate cancers based on Gleason grading using histological images is important in risk assessment and treatment planning for patients. Here, we demonstrate a new region-based convolutional neural network framework for multi-task prediction using an epithelial network head and a grading network head. Compared with a single-task model, our multi-task model can provide complementary contextual information, which contributes to better performance. Our model is achieved a state-of-the-art performance in epithelial cells detection and Gleason grading tasks simultaneously. Using fivefold cross-validation, our model is achieved an epithelial cells detection accuracy of 99.07% with an average area under the curve of 0.998. As for Gleason grading, our model is obtained a mean intersection over union of 79.56% and an overall pixel accuracy of 89.40%.

SUBMITTER: Li W 

PROVIDER: S-EPMC6497079 | biostudies-literature | 2019 Apr

REPOSITORIES: biostudies-literature

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Path R-CNN for Prostate Cancer Diagnosis and Gleason Grading of Histological Images.

Li Wenyuan W   Li Jiayun J   Sarma Karthik V KV   Ho King Chung KC   Shen Shiwen S   Knudsen Beatrice S BS   Gertych Arkadiusz A   Arnold Corey W CW  

IEEE transactions on medical imaging 20181012 4


Prostate cancer is the most common and second most deadly form of cancer in men in the United States. The classification of prostate cancers based on Gleason grading using histological images is important in risk assessment and treatment planning for patients. Here, we demonstrate a new region-based convolutional neural network framework for multi-task prediction using an epithelial network head and a grading network head. Compared with a single-task model, our multi-task model can provide compl  ...[more]

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2010-03-31 | GSE15484 | GEO