Deep learning from HE slides predicts the clinical benefit from adjuvant chemotherapy in hormone receptor-positive breast cancer patients
Abstract We hypothesized that a deep-learning algorithm using HE images might be capable of predicting the benefits of adjuvant chemotherapy in cancer patients. HE slides were retrospectively collected from 1343 de-identified breast cancer patients at the Samsung Medical Center and used to develop t...
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doaj-2b0c21c7490746a88438ccd2e45960e72021-09-05T11:31:16ZengNature Publishing GroupScientific Reports2045-23222021-08-011111910.1038/s41598-021-96855-xDeep learning from HE slides predicts the clinical benefit from adjuvant chemotherapy in hormone receptor-positive breast cancer patientsSoo Youn Cho0Jeong Hoon Lee1Jai Min Ryu2Jeong Eon Lee3Eun Yoon Cho4Chang Ho Ahn5Kyunghyun Paeng6Inwan Yoo7Chan-Young Ock8Sang Yong Song9Department of Pathology and Translational Genomics, Samsung Medical Center, Sungkyunkwan University School of MedicineLunit Inc.Division of Breast Surgery, Department of Surgery, Samsung Medical Center, Sungkyunkwan University School of MedicineDivision of Breast Surgery, Department of Surgery, Samsung Medical Center, Sungkyunkwan University School of MedicineDepartment of Pathology and Translational Genomics, Samsung Medical Center, Sungkyunkwan University School of MedicineLunit Inc.Lunit Inc.Lunit Inc.Lunit Inc.Department of Pathology and Translational Genomics, Samsung Medical Center, Sungkyunkwan University School of MedicineAbstract We hypothesized that a deep-learning algorithm using HE images might be capable of predicting the benefits of adjuvant chemotherapy in cancer patients. HE slides were retrospectively collected from 1343 de-identified breast cancer patients at the Samsung Medical Center and used to develop the Lunit SCOPE algorithm. Lunit SCOPE was trained to predict the recurrence using the 21-gene assay (Oncotype DX) and histological parameters. The risk prediction model predicted the Oncotype DX score > 25 and the recurrence survival of the prognosis validation cohort and TCGA cohorts. The most important predictive variable was the mitotic cells in the cancer epithelium. Of the 363 patients who did not receive adjuvant therapy, 104 predicted high risk had a significantly lower survival rate. The top-300 genes highly correlated with the predicted risk were enriched for cell cycle, nuclear division, and cell division. From the Oncotype DX genes, the predicted risk was positively correlated with proliferation-associated genes and negatively correlated with prognostic genes from the estrogen category. An integrative analysis using Lunit SCOPE predicted the risk of cancer recurrence and the early-stage hormone receptor-positive breast cancer patients who would benefit from adjuvant chemotherapy.https://doi.org/10.1038/s41598-021-96855-x |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Soo Youn Cho Jeong Hoon Lee Jai Min Ryu Jeong Eon Lee Eun Yoon Cho Chang Ho Ahn Kyunghyun Paeng Inwan Yoo Chan-Young Ock Sang Yong Song |
spellingShingle |
Soo Youn Cho Jeong Hoon Lee Jai Min Ryu Jeong Eon Lee Eun Yoon Cho Chang Ho Ahn Kyunghyun Paeng Inwan Yoo Chan-Young Ock Sang Yong Song Deep learning from HE slides predicts the clinical benefit from adjuvant chemotherapy in hormone receptor-positive breast cancer patients Scientific Reports |
author_facet |
Soo Youn Cho Jeong Hoon Lee Jai Min Ryu Jeong Eon Lee Eun Yoon Cho Chang Ho Ahn Kyunghyun Paeng Inwan Yoo Chan-Young Ock Sang Yong Song |
author_sort |
Soo Youn Cho |
title |
Deep learning from HE slides predicts the clinical benefit from adjuvant chemotherapy in hormone receptor-positive breast cancer patients |
title_short |
Deep learning from HE slides predicts the clinical benefit from adjuvant chemotherapy in hormone receptor-positive breast cancer patients |
title_full |
Deep learning from HE slides predicts the clinical benefit from adjuvant chemotherapy in hormone receptor-positive breast cancer patients |
title_fullStr |
Deep learning from HE slides predicts the clinical benefit from adjuvant chemotherapy in hormone receptor-positive breast cancer patients |
title_full_unstemmed |
Deep learning from HE slides predicts the clinical benefit from adjuvant chemotherapy in hormone receptor-positive breast cancer patients |
title_sort |
deep learning from he slides predicts the clinical benefit from adjuvant chemotherapy in hormone receptor-positive breast cancer patients |
publisher |
Nature Publishing Group |
series |
Scientific Reports |
issn |
2045-2322 |
publishDate |
2021-08-01 |
description |
Abstract We hypothesized that a deep-learning algorithm using HE images might be capable of predicting the benefits of adjuvant chemotherapy in cancer patients. HE slides were retrospectively collected from 1343 de-identified breast cancer patients at the Samsung Medical Center and used to develop the Lunit SCOPE algorithm. Lunit SCOPE was trained to predict the recurrence using the 21-gene assay (Oncotype DX) and histological parameters. The risk prediction model predicted the Oncotype DX score > 25 and the recurrence survival of the prognosis validation cohort and TCGA cohorts. The most important predictive variable was the mitotic cells in the cancer epithelium. Of the 363 patients who did not receive adjuvant therapy, 104 predicted high risk had a significantly lower survival rate. The top-300 genes highly correlated with the predicted risk were enriched for cell cycle, nuclear division, and cell division. From the Oncotype DX genes, the predicted risk was positively correlated with proliferation-associated genes and negatively correlated with prognostic genes from the estrogen category. An integrative analysis using Lunit SCOPE predicted the risk of cancer recurrence and the early-stage hormone receptor-positive breast cancer patients who would benefit from adjuvant chemotherapy. |
url |
https://doi.org/10.1038/s41598-021-96855-x |
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