4.7 Article

Accurate and reproducible invasive breast cancer detection in whole-slide images: A Deep Learning approach for quantifying tumor extent

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SCIENTIFIC REPORTS
卷 7, 期 -, 页码 -

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NATURE PORTFOLIO
DOI: 10.1038/srep46450

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资金

  1. DGI-Unillanos [1225-569-34920, 02132013, C03-F02-35-2015]
  2. Administrative Department of Science, Technology and Innovation of Colombia (Colciencias) [528/2011]
  3. National Cancer Institute of the National Institutes of Health [1U24CA199374-01, R01CA202752-01A1, R01CA208236-01A1, R21CA179327-01]
  4. National Institute of Diabetes and Digestive and Kidney Diseases [R21CA195152-01, R01DK098503-02]
  5. National Center for Research Resources [1 C06 RR12463-01]
  6. Prostate Cancer Synergistic Idea Development Award [PC120857]
  7. DOD Lung Cancer Idea Development New Investigator Award [LC130463]
  8. DOD Prostate Cancer Idea Development Award
  9. DOD Peer Reviewed Cancer Research Program [W81XWH-16-1-0329]
  10. Cleveland Clinic the Wallace H. Coulter Foundation Program in the Department of Biomedical Engineering at Case Western Reserve University
  11. NVIDIA

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With the increasing ability to routinely and rapidly digitize whole slide images with slide scanners, there has been interest in developing computerized image analysis algorithms for automated detection of disease extent from digital pathology images. The manual identification of presence and extent of breast cancer by a pathologist is critical for patient management for tumor staging and assessing treatment response. However, this process is tedious and subject to inter- and intra-reader variability. For computerized methods to be useful as decision support tools, they need to be resilient to data acquired from different sources, different staining and cutting protocols and different scanners. The objective of this study was to evaluate the accuracy and robustness of a deep learning-based method to automatically identify the extent of invasive tumor on digitized images. Here, we present a new method that employs a convolutional neural network for detecting presence of invasive tumor on whole slide images. Our approach involves training the classifier on nearly 400 exemplars from multiple different sites, and scanners, and then independently validating on almost 200 cases from The Cancer Genome Atlas. Our approach yielded a Dice coefficient of 75.86%, a positive predictive value of 71.62% and a negative predictive value of 96.77% in terms of pixel-by-pixel evaluation compared to manually annotated regions of invasive ductal carcinoma.

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