Cargando…

Deep learning radiomics of ultrasonography: Identifying the risk of axillary non-sentinel lymph node involvement in primary breast cancer

BACKGROUND: Completion axillary lymph node dissection is overtreatment for patients with sentinel lymph node (SLN) metastasis in whom the metastatic risk of residual non-SLN (NSLN) is low. However, the National Comprehensive Cancer Network panel posits that none of the previous studies has successfu...

Descripción completa

Detalles Bibliográficos
Autores principales: Guo, Xu, Liu, Zhenyu, Sun, Caixia, Zhang, Lei, Wang, Ying, Li, Ziyao, Shi, Jiaxin, Wu, Tong, Cui, Hao, Zhang, Jing, Tian, Jie, Tian, Jiawei
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7519251/
https://www.ncbi.nlm.nih.gov/pubmed/32980697
http://dx.doi.org/10.1016/j.ebiom.2020.103018
_version_ 1783587542514270208
author Guo, Xu
Liu, Zhenyu
Sun, Caixia
Zhang, Lei
Wang, Ying
Li, Ziyao
Shi, Jiaxin
Wu, Tong
Cui, Hao
Zhang, Jing
Tian, Jie
Tian, Jiawei
author_facet Guo, Xu
Liu, Zhenyu
Sun, Caixia
Zhang, Lei
Wang, Ying
Li, Ziyao
Shi, Jiaxin
Wu, Tong
Cui, Hao
Zhang, Jing
Tian, Jie
Tian, Jiawei
author_sort Guo, Xu
collection PubMed
description BACKGROUND: Completion axillary lymph node dissection is overtreatment for patients with sentinel lymph node (SLN) metastasis in whom the metastatic risk of residual non-SLN (NSLN) is low. However, the National Comprehensive Cancer Network panel posits that none of the previous studies has successfully identified such subset patients. Here, we develop a multicentre deep learning radiomics of ultrasonography model (DLRU) to predict the risk of SLN and NSLN metastasis. METHODS: In total, 937 eligible breast cancer patients with ultrasound images were enrolled from two hospitals as the training set (n = 542) and independent test set (n = 395) respectively. Using the images, we developed and validated a prediction model combined with deep learning radiomics and axillary ultrasound to sequentially identify the metastatic risk of SLN and NSLN, thereby, classifying patients to relevant axillary management groups. FINDINGS: In the test set, the DLRU yields the best performance in identifying patients with metastatic disease in SLNs (sensitivity=98.4%, 95% CI 96.6–100) and NSLNs (sensitivity=98.4%, 95% CI 95.6–99.9). The DLRU also accurately stratifies patients without metastasis in SLN or NSLN into the corresponding low-risk (LR)-SLN and high-risk (HR)-SLN&LR-NSLN category with the negative predictive value of 97% (95% CI 94.2–100) and 91.7% (95% CI 88.8–97.9), respectively. Moreover, compared with the current clinical management, DLRU appropriately assigned 51% (39.6%/77.4%) of overtreated patients in the entire study cohort into the LR group, perhaps avoiding overtreatment. INTERPRETATION: The performance of the DLRU indicates that it may offer a simple preoperative tool to promote personalized axillary management of breast cancer. FUNDING: The National Nature Science Foundation of China; The National Outstanding Youth Science Fund Project of National Natural Science Foundation of China; The Scientific research project of Heilongjiang Health Committee; The Postgraduate Research &Practice Innovation Program of Harbin Medical University.
format Online
Article
Text
id pubmed-7519251
institution National Center for Biotechnology Information
language English
publishDate 2020
publisher Elsevier
record_format MEDLINE/PubMed
spelling pubmed-75192512020-09-30 Deep learning radiomics of ultrasonography: Identifying the risk of axillary non-sentinel lymph node involvement in primary breast cancer Guo, Xu Liu, Zhenyu Sun, Caixia Zhang, Lei Wang, Ying Li, Ziyao Shi, Jiaxin Wu, Tong Cui, Hao Zhang, Jing Tian, Jie Tian, Jiawei EBioMedicine Research paper BACKGROUND: Completion axillary lymph node dissection is overtreatment for patients with sentinel lymph node (SLN) metastasis in whom the metastatic risk of residual non-SLN (NSLN) is low. However, the National Comprehensive Cancer Network panel posits that none of the previous studies has successfully identified such subset patients. Here, we develop a multicentre deep learning radiomics of ultrasonography model (DLRU) to predict the risk of SLN and NSLN metastasis. METHODS: In total, 937 eligible breast cancer patients with ultrasound images were enrolled from two hospitals as the training set (n = 542) and independent test set (n = 395) respectively. Using the images, we developed and validated a prediction model combined with deep learning radiomics and axillary ultrasound to sequentially identify the metastatic risk of SLN and NSLN, thereby, classifying patients to relevant axillary management groups. FINDINGS: In the test set, the DLRU yields the best performance in identifying patients with metastatic disease in SLNs (sensitivity=98.4%, 95% CI 96.6–100) and NSLNs (sensitivity=98.4%, 95% CI 95.6–99.9). The DLRU also accurately stratifies patients without metastasis in SLN or NSLN into the corresponding low-risk (LR)-SLN and high-risk (HR)-SLN&LR-NSLN category with the negative predictive value of 97% (95% CI 94.2–100) and 91.7% (95% CI 88.8–97.9), respectively. Moreover, compared with the current clinical management, DLRU appropriately assigned 51% (39.6%/77.4%) of overtreated patients in the entire study cohort into the LR group, perhaps avoiding overtreatment. INTERPRETATION: The performance of the DLRU indicates that it may offer a simple preoperative tool to promote personalized axillary management of breast cancer. FUNDING: The National Nature Science Foundation of China; The National Outstanding Youth Science Fund Project of National Natural Science Foundation of China; The Scientific research project of Heilongjiang Health Committee; The Postgraduate Research &Practice Innovation Program of Harbin Medical University. Elsevier 2020-09-24 /pmc/articles/PMC7519251/ /pubmed/32980697 http://dx.doi.org/10.1016/j.ebiom.2020.103018 Text en © 2020 The Authors http://creativecommons.org/licenses/by-nc-nd/4.0/ This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Research paper
Guo, Xu
Liu, Zhenyu
Sun, Caixia
Zhang, Lei
Wang, Ying
Li, Ziyao
Shi, Jiaxin
Wu, Tong
Cui, Hao
Zhang, Jing
Tian, Jie
Tian, Jiawei
Deep learning radiomics of ultrasonography: Identifying the risk of axillary non-sentinel lymph node involvement in primary breast cancer
title Deep learning radiomics of ultrasonography: Identifying the risk of axillary non-sentinel lymph node involvement in primary breast cancer
title_full Deep learning radiomics of ultrasonography: Identifying the risk of axillary non-sentinel lymph node involvement in primary breast cancer
title_fullStr Deep learning radiomics of ultrasonography: Identifying the risk of axillary non-sentinel lymph node involvement in primary breast cancer
title_full_unstemmed Deep learning radiomics of ultrasonography: Identifying the risk of axillary non-sentinel lymph node involvement in primary breast cancer
title_short Deep learning radiomics of ultrasonography: Identifying the risk of axillary non-sentinel lymph node involvement in primary breast cancer
title_sort deep learning radiomics of ultrasonography: identifying the risk of axillary non-sentinel lymph node involvement in primary breast cancer
topic Research paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7519251/
https://www.ncbi.nlm.nih.gov/pubmed/32980697
http://dx.doi.org/10.1016/j.ebiom.2020.103018
work_keys_str_mv AT guoxu deeplearningradiomicsofultrasonographyidentifyingtheriskofaxillarynonsentinellymphnodeinvolvementinprimarybreastcancer
AT liuzhenyu deeplearningradiomicsofultrasonographyidentifyingtheriskofaxillarynonsentinellymphnodeinvolvementinprimarybreastcancer
AT suncaixia deeplearningradiomicsofultrasonographyidentifyingtheriskofaxillarynonsentinellymphnodeinvolvementinprimarybreastcancer
AT zhanglei deeplearningradiomicsofultrasonographyidentifyingtheriskofaxillarynonsentinellymphnodeinvolvementinprimarybreastcancer
AT wangying deeplearningradiomicsofultrasonographyidentifyingtheriskofaxillarynonsentinellymphnodeinvolvementinprimarybreastcancer
AT liziyao deeplearningradiomicsofultrasonographyidentifyingtheriskofaxillarynonsentinellymphnodeinvolvementinprimarybreastcancer
AT shijiaxin deeplearningradiomicsofultrasonographyidentifyingtheriskofaxillarynonsentinellymphnodeinvolvementinprimarybreastcancer
AT wutong deeplearningradiomicsofultrasonographyidentifyingtheriskofaxillarynonsentinellymphnodeinvolvementinprimarybreastcancer
AT cuihao deeplearningradiomicsofultrasonographyidentifyingtheriskofaxillarynonsentinellymphnodeinvolvementinprimarybreastcancer
AT zhangjing deeplearningradiomicsofultrasonographyidentifyingtheriskofaxillarynonsentinellymphnodeinvolvementinprimarybreastcancer
AT tianjie deeplearningradiomicsofultrasonographyidentifyingtheriskofaxillarynonsentinellymphnodeinvolvementinprimarybreastcancer
AT tianjiawei deeplearningradiomicsofultrasonographyidentifyingtheriskofaxillarynonsentinellymphnodeinvolvementinprimarybreastcancer