Cargando…
An Applicable Machine Learning Model Based on Preoperative Examinations Predicts Histology, Stage, and Grade for Endometrial Cancer
PURPOSE: To build a machine learning model to predict histology (type I and type II), stage, and grade preoperatively for endometrial carcinoma to quickly give a diagnosis and assist in improving the accuracy of the diagnosis, which can help patients receive timely, appropriate, and effective treatm...
Autores principales: | , , , , , , , , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Frontiers Media S.A.
2022
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9196302/ https://www.ncbi.nlm.nih.gov/pubmed/35712473 http://dx.doi.org/10.3389/fonc.2022.904597 |
_version_ | 1784727156846231552 |
---|---|
author | Feng, Ying Wang, Zhixiang Xiao, Meizhu Li, Jinfeng Su, Yuan Delvoux, Bert Zhang, Zhen Dekker, Andre Xanthoulea, Sofia Zhang, Zhiqiang Traverso, Alberto Romano, Andrea Zhang, Zhenyu Liu, Chongdong Gao, Huiqiao Wang, Shuzhen Qian, Linxue |
author_facet | Feng, Ying Wang, Zhixiang Xiao, Meizhu Li, Jinfeng Su, Yuan Delvoux, Bert Zhang, Zhen Dekker, Andre Xanthoulea, Sofia Zhang, Zhiqiang Traverso, Alberto Romano, Andrea Zhang, Zhenyu Liu, Chongdong Gao, Huiqiao Wang, Shuzhen Qian, Linxue |
author_sort | Feng, Ying |
collection | PubMed |
description | PURPOSE: To build a machine learning model to predict histology (type I and type II), stage, and grade preoperatively for endometrial carcinoma to quickly give a diagnosis and assist in improving the accuracy of the diagnosis, which can help patients receive timely, appropriate, and effective treatment. MATERIALS AND METHODS: This study used a retrospective database of preoperative examinations (tumor markers, imaging, diagnostic curettage, etc.) in patients with endometrial carcinoma. Three algorithms (random forest, logistic regression, and deep neural network) were used to build models. The AUC and accuracy were calculated. Furthermore, the performance of machine learning models, doctors’ prediction, and doctors with the assistance of models were compared. RESULTS: A total of 329 patients were included in this study with 16 features (age, BMI, stage, grade, histology, etc.). A random forest algorithm had the highest AUC and Accuracy. For histology prediction, AUC and accuracy was 0.69 (95% CI=0.67-0.70) and 0.81 (95%CI=0.79-0.82). For stage they were 0.66 (95% CI=0.64-0.69) and 0.63 (95% CI=0.61-0.65) and for differentiation grade 0.64 (95% CI=0.63-0.65) and 0.43 (95% CI=0.41-0.44). The average accuracy of doctors for histology, stage, and grade was 0.86 (with AI) and 0.79 (without AI), 0.64 and 0.53, 0.5 and 0.45, respectively. The accuracy of doctors’ prediction with AI was higher than that of Random Forest alone and doctors’ prediction without AI. CONCLUSION: A random forest model can predict histology, stage, and grade of endometrial cancer preoperatively and can help doctors in obtaining a better diagnosis and predictive results. |
format | Online Article Text |
id | pubmed-9196302 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2022 |
publisher | Frontiers Media S.A. |
record_format | MEDLINE/PubMed |
spelling | pubmed-91963022022-06-15 An Applicable Machine Learning Model Based on Preoperative Examinations Predicts Histology, Stage, and Grade for Endometrial Cancer Feng, Ying Wang, Zhixiang Xiao, Meizhu Li, Jinfeng Su, Yuan Delvoux, Bert Zhang, Zhen Dekker, Andre Xanthoulea, Sofia Zhang, Zhiqiang Traverso, Alberto Romano, Andrea Zhang, Zhenyu Liu, Chongdong Gao, Huiqiao Wang, Shuzhen Qian, Linxue Front Oncol Oncology PURPOSE: To build a machine learning model to predict histology (type I and type II), stage, and grade preoperatively for endometrial carcinoma to quickly give a diagnosis and assist in improving the accuracy of the diagnosis, which can help patients receive timely, appropriate, and effective treatment. MATERIALS AND METHODS: This study used a retrospective database of preoperative examinations (tumor markers, imaging, diagnostic curettage, etc.) in patients with endometrial carcinoma. Three algorithms (random forest, logistic regression, and deep neural network) were used to build models. The AUC and accuracy were calculated. Furthermore, the performance of machine learning models, doctors’ prediction, and doctors with the assistance of models were compared. RESULTS: A total of 329 patients were included in this study with 16 features (age, BMI, stage, grade, histology, etc.). A random forest algorithm had the highest AUC and Accuracy. For histology prediction, AUC and accuracy was 0.69 (95% CI=0.67-0.70) and 0.81 (95%CI=0.79-0.82). For stage they were 0.66 (95% CI=0.64-0.69) and 0.63 (95% CI=0.61-0.65) and for differentiation grade 0.64 (95% CI=0.63-0.65) and 0.43 (95% CI=0.41-0.44). The average accuracy of doctors for histology, stage, and grade was 0.86 (with AI) and 0.79 (without AI), 0.64 and 0.53, 0.5 and 0.45, respectively. The accuracy of doctors’ prediction with AI was higher than that of Random Forest alone and doctors’ prediction without AI. CONCLUSION: A random forest model can predict histology, stage, and grade of endometrial cancer preoperatively and can help doctors in obtaining a better diagnosis and predictive results. Frontiers Media S.A. 2022-05-30 /pmc/articles/PMC9196302/ /pubmed/35712473 http://dx.doi.org/10.3389/fonc.2022.904597 Text en Copyright © 2022 Feng, Wang, Xiao, Li, Su, Delvoux, Zhang, Dekker, Xanthoulea, Zhang, Traverso, Romano, Zhang, Liu, Gao, Wang and Qian https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms. |
spellingShingle | Oncology Feng, Ying Wang, Zhixiang Xiao, Meizhu Li, Jinfeng Su, Yuan Delvoux, Bert Zhang, Zhen Dekker, Andre Xanthoulea, Sofia Zhang, Zhiqiang Traverso, Alberto Romano, Andrea Zhang, Zhenyu Liu, Chongdong Gao, Huiqiao Wang, Shuzhen Qian, Linxue An Applicable Machine Learning Model Based on Preoperative Examinations Predicts Histology, Stage, and Grade for Endometrial Cancer |
title | An Applicable Machine Learning Model Based on Preoperative Examinations Predicts Histology, Stage, and Grade for Endometrial Cancer |
title_full | An Applicable Machine Learning Model Based on Preoperative Examinations Predicts Histology, Stage, and Grade for Endometrial Cancer |
title_fullStr | An Applicable Machine Learning Model Based on Preoperative Examinations Predicts Histology, Stage, and Grade for Endometrial Cancer |
title_full_unstemmed | An Applicable Machine Learning Model Based on Preoperative Examinations Predicts Histology, Stage, and Grade for Endometrial Cancer |
title_short | An Applicable Machine Learning Model Based on Preoperative Examinations Predicts Histology, Stage, and Grade for Endometrial Cancer |
title_sort | applicable machine learning model based on preoperative examinations predicts histology, stage, and grade for endometrial cancer |
topic | Oncology |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9196302/ https://www.ncbi.nlm.nih.gov/pubmed/35712473 http://dx.doi.org/10.3389/fonc.2022.904597 |
work_keys_str_mv | AT fengying anapplicablemachinelearningmodelbasedonpreoperativeexaminationspredictshistologystageandgradeforendometrialcancer AT wangzhixiang anapplicablemachinelearningmodelbasedonpreoperativeexaminationspredictshistologystageandgradeforendometrialcancer AT xiaomeizhu anapplicablemachinelearningmodelbasedonpreoperativeexaminationspredictshistologystageandgradeforendometrialcancer AT lijinfeng anapplicablemachinelearningmodelbasedonpreoperativeexaminationspredictshistologystageandgradeforendometrialcancer AT suyuan anapplicablemachinelearningmodelbasedonpreoperativeexaminationspredictshistologystageandgradeforendometrialcancer AT delvouxbert anapplicablemachinelearningmodelbasedonpreoperativeexaminationspredictshistologystageandgradeforendometrialcancer AT zhangzhen anapplicablemachinelearningmodelbasedonpreoperativeexaminationspredictshistologystageandgradeforendometrialcancer AT dekkerandre anapplicablemachinelearningmodelbasedonpreoperativeexaminationspredictshistologystageandgradeforendometrialcancer AT xanthouleasofia anapplicablemachinelearningmodelbasedonpreoperativeexaminationspredictshistologystageandgradeforendometrialcancer AT zhangzhiqiang anapplicablemachinelearningmodelbasedonpreoperativeexaminationspredictshistologystageandgradeforendometrialcancer AT traversoalberto anapplicablemachinelearningmodelbasedonpreoperativeexaminationspredictshistologystageandgradeforendometrialcancer AT romanoandrea anapplicablemachinelearningmodelbasedonpreoperativeexaminationspredictshistologystageandgradeforendometrialcancer AT zhangzhenyu anapplicablemachinelearningmodelbasedonpreoperativeexaminationspredictshistologystageandgradeforendometrialcancer AT liuchongdong anapplicablemachinelearningmodelbasedonpreoperativeexaminationspredictshistologystageandgradeforendometrialcancer AT gaohuiqiao anapplicablemachinelearningmodelbasedonpreoperativeexaminationspredictshistologystageandgradeforendometrialcancer AT wangshuzhen anapplicablemachinelearningmodelbasedonpreoperativeexaminationspredictshistologystageandgradeforendometrialcancer AT qianlinxue anapplicablemachinelearningmodelbasedonpreoperativeexaminationspredictshistologystageandgradeforendometrialcancer AT fengying applicablemachinelearningmodelbasedonpreoperativeexaminationspredictshistologystageandgradeforendometrialcancer AT wangzhixiang applicablemachinelearningmodelbasedonpreoperativeexaminationspredictshistologystageandgradeforendometrialcancer AT xiaomeizhu applicablemachinelearningmodelbasedonpreoperativeexaminationspredictshistologystageandgradeforendometrialcancer AT lijinfeng applicablemachinelearningmodelbasedonpreoperativeexaminationspredictshistologystageandgradeforendometrialcancer AT suyuan applicablemachinelearningmodelbasedonpreoperativeexaminationspredictshistologystageandgradeforendometrialcancer AT delvouxbert applicablemachinelearningmodelbasedonpreoperativeexaminationspredictshistologystageandgradeforendometrialcancer AT zhangzhen applicablemachinelearningmodelbasedonpreoperativeexaminationspredictshistologystageandgradeforendometrialcancer AT dekkerandre applicablemachinelearningmodelbasedonpreoperativeexaminationspredictshistologystageandgradeforendometrialcancer AT xanthouleasofia applicablemachinelearningmodelbasedonpreoperativeexaminationspredictshistologystageandgradeforendometrialcancer AT zhangzhiqiang applicablemachinelearningmodelbasedonpreoperativeexaminationspredictshistologystageandgradeforendometrialcancer AT traversoalberto applicablemachinelearningmodelbasedonpreoperativeexaminationspredictshistologystageandgradeforendometrialcancer AT romanoandrea applicablemachinelearningmodelbasedonpreoperativeexaminationspredictshistologystageandgradeforendometrialcancer AT zhangzhenyu applicablemachinelearningmodelbasedonpreoperativeexaminationspredictshistologystageandgradeforendometrialcancer AT liuchongdong applicablemachinelearningmodelbasedonpreoperativeexaminationspredictshistologystageandgradeforendometrialcancer AT gaohuiqiao applicablemachinelearningmodelbasedonpreoperativeexaminationspredictshistologystageandgradeforendometrialcancer AT wangshuzhen applicablemachinelearningmodelbasedonpreoperativeexaminationspredictshistologystageandgradeforendometrialcancer AT qianlinxue applicablemachinelearningmodelbasedonpreoperativeexaminationspredictshistologystageandgradeforendometrialcancer |