Machine learning for predicting pathological complete response in patients with locally advanced rectal cancer after neoadjuvant chemoradiotherapy

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作者
Chun-Ming Huang
Ming-Yii Huang
Ching-Wen Huang
Hsiang-Lin Tsai
Wei-Chih Su
Wei-Chiao Chang
Jaw-Yuan Wang
Hon-Yi Shi
机构
[1] Kaohsiung Medical University Hospital,Department of Radiation Oncology
[2] Kaohsiung Medical University,Department of Radiation Oncology, Faculty of Medicine, College of Medicine
[3] Kaohsiung Municipal Ta-Tung Hospital,Department of Radiation Oncology
[4] Kaohsiung Medical University,Graduate Institute of Medicine, College of Medicine
[5] Kaohsiung Medical University,Center for Cancer Research
[6] Kaohsiung Medical University,Division of Colorectal Surgery, Department of Surgery
[7] Kaohsiung Medical University Hospital,Department of Surgery, Faculty of Medicine, College of Medicine
[8] Kaohsiung Medical University,Graduate Institute of Clinical Medicine, College of Medicine
[9] Kaohsiung Medical University,School of Pharmacy
[10] Kaohsiung Medical University,Department of Healthcare Administration and Medical Informatics
[11] Taipei Medical University,Department of Business Management
[12] Kaohsiung Medical University,Deoartment of Medical Research
[13] National Sun Yat-Sen University,Department of Medical Research
[14] Kaohsiung Medical University Hospital,undefined
[15] China Medical University Hospital,undefined
[16] China Medical University,undefined
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摘要
For patients with locally advanced rectal cancer (LARC), achieving a pathological complete response (pCR) after neoadjuvant chemoradiotherapy (CRT) provides them with the optimal prognosis. However, no reliable prediction model is presently available. We evaluated the performance of an artificial neural network (ANN) model in pCR prediction in patients with LARC. Predictive accuracy was compared between the ANN, k-nearest neighbor (KNN), support vector machine (SVM), naïve Bayes classifier (NBC), and multiple logistic regression (MLR) models. Data from two hundred seventy patients with LARC were used to compare the efficacy of the forecasting models. We trained the model with an estimation data set and evaluated model performance with a validation data set. The ANN model significantly outperformed the KNN, SVM, NBC, and MLR models in pCR prediction. Our results revealed that the post-CRT carcinoembryonic antigen is the most influential pCR predictor, followed by intervals between CRT and surgery, chemotherapy regimens, clinical nodal stage, and clinical tumor stage. The ANN model was a more accurate pCR predictor than other conventional prediction models. The predictors of pCR can be used to identify which patients with LARC can benefit from watch-and-wait approaches.
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