Prediction of Postoperative Pathologic Risk Factors in Cervical Cancer Patients Treated with Radical Hysterectomy by Machine Learning

Zhengjie Ou & Dan Zhao et al. · 2022-12-06

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1Influential

Pretherapeutic serological parameters play a predictive role in pathologic risk factors (PRF), which correlate with treatment and prognosis in cervical cancer (CC). However, the method of pre-operative prediction to PRF is limited and the clinical availability of machine learning methods remains unknown in CC. Overall, 1260 early-stage CC patients treated with radical hysterectomy (RH) were randomly split into training and test cohorts. Six machine learning classifiers, including Gradient Boosting Machine, Support Vector Machine with Gaussian kernel, Random Forest, Conditional Random Forest, Naive Bayes, and Elastic Net, were used to derive diagnostic information from nine clinical factors and 75 parameters readily available from pretreatment peripheral blood tests. The best results were obtained by RF in deep stromal infiltration prediction with an accuracy of 70.8% and AUC of 0.767. The highest accuracy and AUC for predicting lymphatic metastasis with Cforest were 64.3% and 0.620, respectively. The highest accuracy of prediction for lymphavascular space invasion with EN was 59.7% and the AUC was 0.628. Blood markers, including D-dimer and uric acid, were associated with PRF. Machine learning methods can provide critical diagnostic prediction on PRF in CC before surgical intervention. The use of predictive algorithms may facilitate individualized treatment options through diagnostic stratification.

TL;DR

Machine learning methods can provide critical diagnostic prediction on PRF in CC before surgical intervention and the use of predictive algorithms may facilitate individualized treatment options through diagnostic stratification.

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Authors
Zhengjie Ou, Wei Mao, Lihua Tan, Yanli Yang, Shuanghuan Liu, Yanan Zhang, Bin Li, Dan Zhao
Funding
National Natural Science Foundation of China Grant 62176267National Natural Science Foundation of China Grant 2021-ZJ-922National Natural Science Foundation of China Grant 2021-I2M-C&T-B-048National Natural Science Foundation of China Grant LC2021A10National Natural Science Foundation of China Grant 2022-2-4026Natural Science Foundation of Qinghai Province Grant 62176267Natural Science Foundation of Qinghai Province Grant 2021-ZJ-922Natural Science Foundation of Qinghai Province Grant 2021-I2M-C&T-B-048Natural Science Foundation of Qinghai Province Grant LC2021A10Natural Science Foundation of Qinghai Province Grant 2022-2-4026CAMS Innovation Fund for Medical Sciences Grant 62176267CAMS Innovation Fund for Medical Sciences Grant 2021-ZJ-922CAMS Innovation Fund for Medical Sciences Grant 2021-I2M-C&T-B-048CAMS Innovation Fund for Medical Sciences Grant LC2021A10CAMS Innovation Fund for Medical Sciences Grant 2022-2-4026Beijing Hope Run Special Fund of Cancer Foundation of China Grant 62176267Beijing Hope Run Special Fund of Cancer Foundation of China Grant 2021-ZJ-922Beijing Hope Run Special Fund of Cancer Foundation of China Grant 2021-I2M-C&T-B-048Beijing Hope Run Special Fund of Cancer Foundation of China Grant LC2021A10Beijing Hope Run Special Fund of Cancer Foundation of China Grant 2022-2-4026Capital’s Funds for Health Improvement and Research Grant 62176267Capital’s Funds for Health Improvement and Research Grant 2021-ZJ-922Capital’s Funds for Health Improvement and Research Grant 2021-I2M-C&T-B-048Capital’s Funds for Health Improvement and Research Grant LC2021A10Capital's Funds for Health Improvement and Research Grant 2022-2-4026