A Predictive Model for Pathologic Complete Response in Breast Cancer Patients Treated with Neoadjuvant Chemotherapy Using Machine Learning

Isaac Kim, Kwanbum Lee, Seung Ah Lee, Yeon-Hee Park, S. K. Kim
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引用次数: 0

Abstract

Background: In patients with breast cancer after Neoadjuvant Chemotherapy (NAC), pathological Complete Response (pCR) was associated with better long-term outcomes. We here attempted to predict pCR using machine learning. Patients and Methods: From 2008 to 2017, 1308 breast cancer patients underwent NAC before surgery, of whom 377 patients underwent Cancer SCANTM for gene data. Of 377, 238 were analyzed here, with 139 excluded due to incomplete medical data. Results: The pCR (-) vs. (+) group had 200 vs. 38 patients. In our predictive model with gene data, the Area Under the Curve (AUC) of the Receiver Operating Characteristic (ROC) curve was 0.909 and accuracy was 0.875. In another model without gene data, the AUC of ROC curve was 0.743 and accuracy was 0.800. We also conducted internal validation with 72 patients undergoing NAC and Cancer SCANTM during July 2017 and April 2018. When we applied a 0.4 threshold value, accuracy was 0.806 and 0.778 in the predictive model with vs. without gene profiles, respectively. Conclusion: The present predictive model may be a useful and easy-to-access tool for pCR-prediction in breast cancer patients treated with NAC.
癌症新辅助化疗患者病理完全反应的机器学习预测模型
背景:在癌症新辅助化疗(NAC)后的患者中,病理学完全反应(pCR)与更好的长期结果相关。我们在这里尝试使用机器学习来预测pCR。患者和方法:从2008年到2017年,1308名癌症患者在手术前接受了NAC,其中377名患者接受了癌症SCATM基因数据。在377238人中,有139人因医疗数据不完整而被排除在外。结果:pCR(-)组与(+)组分别有200例和38例患者。在我们的基因数据预测模型中,受试者工作特征(ROC)曲线的曲线下面积(AUC)为0.909,准确度为0.875。在另一个没有基因数据的模型中,ROC曲线的AUC为0.743,准确度为0.800。我们还在2017年7月和2018年4月对72名接受NAC和癌症SCANTM的患者进行了内部验证。当我们应用0.4阈值时,在有基因图谱和无基因图谱的预测模型中,准确度分别为0.806和0.778。结论:本预测模型可能是一种有用且易于处理的工具,可用于癌症NAC患者的pCR预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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