Literature DB >> 34994603

Training, Validation, and Test of Deep Learning Models for Classification of Receptor Expressions in Breast Cancers From Mammograms.

Daiju Ueda1, Akira Yamamoto1, Tsutomu Takashima2, Naoyoshi Onoda2, Satoru Noda2, Shinichiro Kashiwagi2, Tamami Morisaki2, Takashi Honjo1, Akitoshi Shimazaki1, Yukio Miki1.   

Abstract

PURPOSE: The molecular subtype of breast cancer is an important component of establishing the appropriate treatment strategy. In clinical practice, molecular subtypes are determined by receptor expressions. In this study, we developed a model using deep learning to determine receptor expressions from mammograms.
METHODS: A developing data set and a test data set were generated from mammograms from the affected side of patients who were pathologically diagnosed with breast cancer from January 2006 through December 2016 and from January 2017 through December 2017, respectively. The developing data sets were used to train and validate the DL-based model with five-fold cross-validation for classifying expression of estrogen receptor (ER), progesterone receptor (PgR), and human epidermal growth factor receptor 2-neu (HER2). The area under the curves (AUCs) for each receptor were evaluated with the independent test data set.
RESULTS: The developing data set and the test data set included 1,448 images (997 ER-positive and 386 ER-negative, 641 PgR-positive and 695 PgR-negative, and 220 HER2-enriched and 1,109 non-HER2-enriched) and 225 images (176 ER-positive and 40 ER-negative, 101 PgR-positive and 117 PgR-negative, and 53 HER2-enriched and 165 non-HER2-enriched), respectively. The AUC of ER-positive or -negative in the test data set was 0.67 (0.58-0.76), the AUC of PgR-positive or -negative was 0.61 (0.53-0.68), and the AUC of HER2-enriched or non-HER2-enriched was 0.75 (0.68-0.82).
CONCLUSION: The DL-based model effectively classified the receptor expressions from the mammograms. Applying the DL-based model to predict breast cancer classification with a noninvasive approach would have additive value to patients.

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Year:  2021        PMID: 34994603     DOI: 10.1200/PO.20.00176

Source DB:  PubMed          Journal:  JCO Precis Oncol        ISSN: 2473-4284


  1 in total

1.  Development and validation of a deep learning model for detection of breast cancers in mammography from multi-institutional datasets.

Authors:  Daiju Ueda; Akira Yamamoto; Naoyoshi Onoda; Tsutomu Takashima; Satoru Noda; Shinichiro Kashiwagi; Tamami Morisaki; Shinya Fukumoto; Masatsugu Shiba; Mina Morimura; Taro Shimono; Ken Kageyama; Hiroyuki Tatekawa; Kazuki Murai; Takashi Honjo; Akitoshi Shimazaki; Daijiro Kabata; Yukio Miki
Journal:  PLoS One       Date:  2022-03-24       Impact factor: 3.240

  1 in total

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