Cargando…

Identification of lymph node metastasis in pre‐operation cervical cancer patients by weakly supervised deep learning from histopathological whole‐slide biopsy images

BACKGROUND: Lymph node metastasis (LNM) significantly impacts the prognosis of individuals diagnosed with cervical cancer, as it is closely linked to disease recurrence and mortality, thereby impacting therapeutic schedule choices for patients. However, accurately predicting LNM prior to treatment r...

Descripción completa

Detalles Bibliográficos
Autores principales: Liu, Qingqing, Jiang, Nan, Hao, Yiping, Hao, Chunyan, Wang, Wei, Bian, Tingting, Wang, Xiaohong, Li, Hua, zhang, Yan, Kang, Yanjun, Xie, Fengxiang, Li, Yawen, Jiang, XuJi, Feng, Yuan, Mao, Zhonghao, Wang, Qi, Gao, Qun, Zhang, Wenjing, Cui, Baoxia, Dong, Taotao
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10523985/
https://www.ncbi.nlm.nih.gov/pubmed/37559500
http://dx.doi.org/10.1002/cam4.6437
_version_ 1785110657375404032
author Liu, Qingqing
Jiang, Nan
Hao, Yiping
Hao, Chunyan
Wang, Wei
Bian, Tingting
Wang, Xiaohong
Li, Hua
zhang, Yan
Kang, Yanjun
Xie, Fengxiang
Li, Yawen
Jiang, XuJi
Feng, Yuan
Mao, Zhonghao
Wang, Qi
Gao, Qun
Zhang, Wenjing
Cui, Baoxia
Dong, Taotao
author_facet Liu, Qingqing
Jiang, Nan
Hao, Yiping
Hao, Chunyan
Wang, Wei
Bian, Tingting
Wang, Xiaohong
Li, Hua
zhang, Yan
Kang, Yanjun
Xie, Fengxiang
Li, Yawen
Jiang, XuJi
Feng, Yuan
Mao, Zhonghao
Wang, Qi
Gao, Qun
Zhang, Wenjing
Cui, Baoxia
Dong, Taotao
author_sort Liu, Qingqing
collection PubMed
description BACKGROUND: Lymph node metastasis (LNM) significantly impacts the prognosis of individuals diagnosed with cervical cancer, as it is closely linked to disease recurrence and mortality, thereby impacting therapeutic schedule choices for patients. However, accurately predicting LNM prior to treatment remains challenging. Consequently, this study seeks to utilize digital pathological features extracted from histopathological slides of primary cervical cancer patients to preoperatively predict the presence of LNM. METHODS: A deep learning (DL) model was trained using the Vision transformer (ViT) and recurrent neural network (RNN) frameworks to predict LNM. This prediction was based on the analysis of 554 histopathological whole‐slide images (WSIs) obtained from Qilu Hospital of Shandong University. To validate the model's performance, an external test was conducted using 336 WSIs from four other hospitals. Additionally, the efficiency of the DL model was evaluated using 190 cervical biopsies WSIs in a prospective set. RESULTS: In the internal test set, our DL model achieved an area under the curve (AUC) of 0.919, with sensitivity and specificity values of 0.923 and 0.905, respectively, and an accuracy (ACC) of 0.909. The performance of the DL model remained strong in the external test set. In the prospective cohort, the AUC was 0.91, and the ACC was 0.895. Additionally, the DL model exhibited higher accuracy compared to imaging examination in the evaluation of LNM. By utilizing the transformer visualization method, we generated a heatmap that illustrates the local pathological features in primary lesions relevant to LNM. CONCLUSION: DL‐based image analysis has demonstrated efficiency in predicting LNM in early operable cervical cancer through the utilization of biopsies WSI. This approach has the potential to enhance therapeutic decision‐making for patients diagnosed with cervical cancer.
format Online
Article
Text
id pubmed-10523985
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher John Wiley and Sons Inc.
record_format MEDLINE/PubMed
spelling pubmed-105239852023-09-28 Identification of lymph node metastasis in pre‐operation cervical cancer patients by weakly supervised deep learning from histopathological whole‐slide biopsy images Liu, Qingqing Jiang, Nan Hao, Yiping Hao, Chunyan Wang, Wei Bian, Tingting Wang, Xiaohong Li, Hua zhang, Yan Kang, Yanjun Xie, Fengxiang Li, Yawen Jiang, XuJi Feng, Yuan Mao, Zhonghao Wang, Qi Gao, Qun Zhang, Wenjing Cui, Baoxia Dong, Taotao Cancer Med RESEARCH ARTICLES BACKGROUND: Lymph node metastasis (LNM) significantly impacts the prognosis of individuals diagnosed with cervical cancer, as it is closely linked to disease recurrence and mortality, thereby impacting therapeutic schedule choices for patients. However, accurately predicting LNM prior to treatment remains challenging. Consequently, this study seeks to utilize digital pathological features extracted from histopathological slides of primary cervical cancer patients to preoperatively predict the presence of LNM. METHODS: A deep learning (DL) model was trained using the Vision transformer (ViT) and recurrent neural network (RNN) frameworks to predict LNM. This prediction was based on the analysis of 554 histopathological whole‐slide images (WSIs) obtained from Qilu Hospital of Shandong University. To validate the model's performance, an external test was conducted using 336 WSIs from four other hospitals. Additionally, the efficiency of the DL model was evaluated using 190 cervical biopsies WSIs in a prospective set. RESULTS: In the internal test set, our DL model achieved an area under the curve (AUC) of 0.919, with sensitivity and specificity values of 0.923 and 0.905, respectively, and an accuracy (ACC) of 0.909. The performance of the DL model remained strong in the external test set. In the prospective cohort, the AUC was 0.91, and the ACC was 0.895. Additionally, the DL model exhibited higher accuracy compared to imaging examination in the evaluation of LNM. By utilizing the transformer visualization method, we generated a heatmap that illustrates the local pathological features in primary lesions relevant to LNM. CONCLUSION: DL‐based image analysis has demonstrated efficiency in predicting LNM in early operable cervical cancer through the utilization of biopsies WSI. This approach has the potential to enhance therapeutic decision‐making for patients diagnosed with cervical cancer. John Wiley and Sons Inc. 2023-08-10 /pmc/articles/PMC10523985/ /pubmed/37559500 http://dx.doi.org/10.1002/cam4.6437 Text en © 2023 The Authors. Cancer Medicine published by John Wiley & Sons Ltd. https://creativecommons.org/licenses/by/4.0/This is an open access article under the terms of the http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited.
spellingShingle RESEARCH ARTICLES
Liu, Qingqing
Jiang, Nan
Hao, Yiping
Hao, Chunyan
Wang, Wei
Bian, Tingting
Wang, Xiaohong
Li, Hua
zhang, Yan
Kang, Yanjun
Xie, Fengxiang
Li, Yawen
Jiang, XuJi
Feng, Yuan
Mao, Zhonghao
Wang, Qi
Gao, Qun
Zhang, Wenjing
Cui, Baoxia
Dong, Taotao
Identification of lymph node metastasis in pre‐operation cervical cancer patients by weakly supervised deep learning from histopathological whole‐slide biopsy images
title Identification of lymph node metastasis in pre‐operation cervical cancer patients by weakly supervised deep learning from histopathological whole‐slide biopsy images
title_full Identification of lymph node metastasis in pre‐operation cervical cancer patients by weakly supervised deep learning from histopathological whole‐slide biopsy images
title_fullStr Identification of lymph node metastasis in pre‐operation cervical cancer patients by weakly supervised deep learning from histopathological whole‐slide biopsy images
title_full_unstemmed Identification of lymph node metastasis in pre‐operation cervical cancer patients by weakly supervised deep learning from histopathological whole‐slide biopsy images
title_short Identification of lymph node metastasis in pre‐operation cervical cancer patients by weakly supervised deep learning from histopathological whole‐slide biopsy images
title_sort identification of lymph node metastasis in pre‐operation cervical cancer patients by weakly supervised deep learning from histopathological whole‐slide biopsy images
topic RESEARCH ARTICLES
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10523985/
https://www.ncbi.nlm.nih.gov/pubmed/37559500
http://dx.doi.org/10.1002/cam4.6437
work_keys_str_mv AT liuqingqing identificationoflymphnodemetastasisinpreoperationcervicalcancerpatientsbyweaklysuperviseddeeplearningfromhistopathologicalwholeslidebiopsyimages
AT jiangnan identificationoflymphnodemetastasisinpreoperationcervicalcancerpatientsbyweaklysuperviseddeeplearningfromhistopathologicalwholeslidebiopsyimages
AT haoyiping identificationoflymphnodemetastasisinpreoperationcervicalcancerpatientsbyweaklysuperviseddeeplearningfromhistopathologicalwholeslidebiopsyimages
AT haochunyan identificationoflymphnodemetastasisinpreoperationcervicalcancerpatientsbyweaklysuperviseddeeplearningfromhistopathologicalwholeslidebiopsyimages
AT wangwei identificationoflymphnodemetastasisinpreoperationcervicalcancerpatientsbyweaklysuperviseddeeplearningfromhistopathologicalwholeslidebiopsyimages
AT biantingting identificationoflymphnodemetastasisinpreoperationcervicalcancerpatientsbyweaklysuperviseddeeplearningfromhistopathologicalwholeslidebiopsyimages
AT wangxiaohong identificationoflymphnodemetastasisinpreoperationcervicalcancerpatientsbyweaklysuperviseddeeplearningfromhistopathologicalwholeslidebiopsyimages
AT lihua identificationoflymphnodemetastasisinpreoperationcervicalcancerpatientsbyweaklysuperviseddeeplearningfromhistopathologicalwholeslidebiopsyimages
AT zhangyan identificationoflymphnodemetastasisinpreoperationcervicalcancerpatientsbyweaklysuperviseddeeplearningfromhistopathologicalwholeslidebiopsyimages
AT kangyanjun identificationoflymphnodemetastasisinpreoperationcervicalcancerpatientsbyweaklysuperviseddeeplearningfromhistopathologicalwholeslidebiopsyimages
AT xiefengxiang identificationoflymphnodemetastasisinpreoperationcervicalcancerpatientsbyweaklysuperviseddeeplearningfromhistopathologicalwholeslidebiopsyimages
AT liyawen identificationoflymphnodemetastasisinpreoperationcervicalcancerpatientsbyweaklysuperviseddeeplearningfromhistopathologicalwholeslidebiopsyimages
AT jiangxuji identificationoflymphnodemetastasisinpreoperationcervicalcancerpatientsbyweaklysuperviseddeeplearningfromhistopathologicalwholeslidebiopsyimages
AT fengyuan identificationoflymphnodemetastasisinpreoperationcervicalcancerpatientsbyweaklysuperviseddeeplearningfromhistopathologicalwholeslidebiopsyimages
AT maozhonghao identificationoflymphnodemetastasisinpreoperationcervicalcancerpatientsbyweaklysuperviseddeeplearningfromhistopathologicalwholeslidebiopsyimages
AT wangqi identificationoflymphnodemetastasisinpreoperationcervicalcancerpatientsbyweaklysuperviseddeeplearningfromhistopathologicalwholeslidebiopsyimages
AT gaoqun identificationoflymphnodemetastasisinpreoperationcervicalcancerpatientsbyweaklysuperviseddeeplearningfromhistopathologicalwholeslidebiopsyimages
AT zhangwenjing identificationoflymphnodemetastasisinpreoperationcervicalcancerpatientsbyweaklysuperviseddeeplearningfromhistopathologicalwholeslidebiopsyimages
AT cuibaoxia identificationoflymphnodemetastasisinpreoperationcervicalcancerpatientsbyweaklysuperviseddeeplearningfromhistopathologicalwholeslidebiopsyimages
AT dongtaotao identificationoflymphnodemetastasisinpreoperationcervicalcancerpatientsbyweaklysuperviseddeeplearningfromhistopathologicalwholeslidebiopsyimages