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Prediction of Pathological Complete Response after Neoadjuvant Chemotherapy for breast cancer using ensemble machine learning

机译:使用集合机器学习预测乳腺癌对乳腺癌进行的病理完全应答

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Neoadjuvant Chemotherapy is administered intravenously during the treatment of breast cancer. Prior to surgery, doctors recommend chemotherapy to shrink the large size of an invasive tumor. This research work proposes a Deux Machine Learning framework, implementing a double ensemble of Machine Learning algorithms for building an optimized and efficient solution to predict a complete pathological response of patients after Neoadjuvant Chemotherapy. Unlike algorithms which focus on the accuracy of prediction, the performance of the Deux Machine Learning framework is measured using a multi criteria decision-making technique known as weighted simple additive weighting (WSAW). The WSAW comprehensive performance score is calculated by considering ten evaluation metrics, namely, Accuracy, Mean Absolute Error, Root Mean Square Error, TP Rate, FP Rate, Precision, Recall, F-Measure, MCC, and ROC. The results are validated using the k-fold cross validation technique, achieving an accuracy of 99.08%. When the performance of the proposed framework is compared with the performance of state-of-the-art classifiers such as SVM and random forest, the results are quite promising. With the growing trend of the applications of Artificial Intelligence in Cancer research, Machine Learning has an important future in prognostication and decision-making.
机译:在治疗乳腺癌期间静脉内施用Neoadjuvant化疗。在手术前,医生建议化疗将大尺寸的侵入性肿瘤缩小。该研究工作提出了DEUX机器学习框架,实现了机器学习算法的双合并,用于建立优化和有效的解决方案,以预测新辅助化疗后患者的完全病理响应。与专注于预测精度的算法不同,使用称为加权简单添加剂(WSAW)的多标准决策技术来测量DEUX机器学习框架的性能。通过考虑十个评估指标,即精度,平均绝对误差,TP速率,FP速率,精度,召回,F测量,MCC和ROC来计算WSAW综合性能分数。使用k折交叉验证技术验证结果,实现了99.08%的准确性。当提出框架的性能与诸如SVM和随机林等最先进的分类器的性能进行比较时,结果非常有前景。随着人工智能在癌症研究中的应用越来越趋势,机器学习具有预后和决策的重要未来。

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