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Image analysis with deep learning to predict breast cancer grade, ER status, histologic subtype, and intrinsic subtype.

Publication ,  Journal Article
Couture, HD; Williams, LA; Geradts, J; Nyante, SJ; Butler, EN; Marron, JS; Perou, CM; Troester, MA; Niethammer, M
Published in: NPJ Breast Cancer
2018

RNA-based, multi-gene molecular assays are available and widely used for patients with ER-positive/HER2-negative breast cancers. However, RNA-based genomic tests can be costly and are not available in many countries. Methods for inferring molecular subtype from histologic images may identify patients most likely to benefit from further genomic testing. To identify patients who could benefit from molecular testing based on H&E stained histologic images, we developed an image analysis approach using deep learning. A training set of 571 breast tumors was used to create image-based classifiers for tumor grade, ER status, PAM50 intrinsic subtype, histologic subtype, and risk of recurrence score (ROR-PT). The resulting classifiers were applied to an independent test set (n = 288), and accuracy, sensitivity, and specificity of each was assessed on the test set. Histologic image analysis with deep learning distinguished low-intermediate vs. high tumor grade (82% accuracy), ER status (84% accuracy), Basal-like vs. non-Basal-like (77% accuracy), Ductal vs. Lobular (94% accuracy), and high vs. low-medium ROR-PT score (75% accuracy). Sampling considerations in the training set minimized bias in the test set. Incorrect classification of ER status was significantly more common for Luminal B tumors. These data provide proof of principle that molecular marker status, including a critical clinical biomarker (i.e., ER status), can be predicted with accuracy >75% based on H&E features. Image-based methods could be promising for identifying patients with a greater need for further genomic testing, or in place of classically scored variables typically accomplished using human-based scoring.

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Published In

NPJ Breast Cancer

DOI

ISSN

2374-4677

Publication Date

2018

Volume

4

Start / End Page

30

Location

United States

Related Subject Headings

  • 4202 Epidemiology
  • 3211 Oncology and carcinogenesis
  • 3202 Clinical sciences
 

Citation

APA
Chicago
ICMJE
MLA
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Couture, H. D., Williams, L. A., Geradts, J., Nyante, S. J., Butler, E. N., Marron, J. S., … Niethammer, M. (2018). Image analysis with deep learning to predict breast cancer grade, ER status, histologic subtype, and intrinsic subtype. NPJ Breast Cancer, 4, 30. https://doi.org/10.1038/s41523-018-0079-1
Couture, Heather D., Lindsay A. Williams, Joseph Geradts, Sarah J. Nyante, Ebonee N. Butler, J. S. Marron, Charles M. Perou, Melissa A. Troester, and Marc Niethammer. “Image analysis with deep learning to predict breast cancer grade, ER status, histologic subtype, and intrinsic subtype.NPJ Breast Cancer 4 (2018): 30. https://doi.org/10.1038/s41523-018-0079-1.
Couture HD, Williams LA, Geradts J, Nyante SJ, Butler EN, Marron JS, et al. Image analysis with deep learning to predict breast cancer grade, ER status, histologic subtype, and intrinsic subtype. NPJ Breast Cancer. 2018;4:30.
Couture, Heather D., et al. “Image analysis with deep learning to predict breast cancer grade, ER status, histologic subtype, and intrinsic subtype.NPJ Breast Cancer, vol. 4, 2018, p. 30. Pubmed, doi:10.1038/s41523-018-0079-1.
Couture HD, Williams LA, Geradts J, Nyante SJ, Butler EN, Marron JS, Perou CM, Troester MA, Niethammer M. Image analysis with deep learning to predict breast cancer grade, ER status, histologic subtype, and intrinsic subtype. NPJ Breast Cancer. 2018;4:30.

Published In

NPJ Breast Cancer

DOI

ISSN

2374-4677

Publication Date

2018

Volume

4

Start / End Page

30

Location

United States

Related Subject Headings

  • 4202 Epidemiology
  • 3211 Oncology and carcinogenesis
  • 3202 Clinical sciences