Huang Yibao, Zhu Qingqing, Xue Liru, Zhu Xiaoran, Chen Yingying, Wu Mingfu
Department of Gynecology, National Clinical Research Center for Obstetrical and Gynecological Diseases, Key Laboratory of Cancer Invasion and Metastasis, Ministry of Education, Tongji Hospital, Tongji Medical College, Huazhong University of Science and Technology, Wuhan, China.
Front Oncol. 2022 Mar 29;12:817250. doi: 10.3389/fonc.2022.817250. eCollection 2022.
The clinical benefit of neoadjuvant chemotherapy (NACT) before concurrent chemoradiotherapy (CCRT) vs. adjuvant chemotherapy after CCRT is debated. Non-response to platinum-based NACT is a major contributor to poor prognosis, but there is currently no reliable method for predicting the response to NACT (rNACT) in patients with locally advanced cervical cancer (LACC). In this study we developed a machine learning (ML)-assisted model to accurately predict rNACT. We retrospectively analyzed data on 636 patients diagnosed with stage IB2 to IIA2 cervical cancer at our hospital between January 1, 2010 and December 1, 2020. Five ML-assisted models were developed from candidate clinical features using 2-step estimation methods. Receiver operating characteristic curve (ROC), clinical impact curve, and decision curve analyses were performed to evaluate the robustness and clinical applicability of each model. A total of 30 candidate variables were ultimately included in the rNACT prediction model. The areas under the ROC curve of models constructed using the random forest classifier (RFC), support vector machine, eXtreme gradient boosting, artificial neural network, and decision tree ranged from 0.682 to 0.847. The RFC model had the highest predictive accuracy, which was achieved by incorporating inflammatory factors such as platelet-to-lymphocyte ratio, neutrophil-to-lymphocyte ratio, neutrophil-to-albumin ratio, and lymphocyte-to-monocyte ratio. These results demonstrate that the ML-based prediction model developed using the RFC can be used to identify LACC patients who are likely to respond to rNACT, which can guide treatment selection and improve clinical outcomes.
在同步放化疗(CCRT)之前进行新辅助化疗(NACT)与CCRT之后进行辅助化疗的临床获益存在争议。对铂类新辅助化疗无反应是预后不良的主要原因,但目前尚无可靠方法预测局部晚期宫颈癌(LACC)患者对新辅助化疗(rNACT)的反应。在本研究中,我们开发了一种机器学习(ML)辅助模型来准确预测rNACT。我们回顾性分析了2010年1月1日至2020年12月1日期间在我院诊断为IB2至IIA2期宫颈癌的636例患者的数据。使用两步估计方法从候选临床特征中开发了五个ML辅助模型。进行了受试者操作特征曲线(ROC)、临床影响曲线和决策曲线分析,以评估每个模型的稳健性和临床适用性。rNACT预测模型最终共纳入30个候选变量。使用随机森林分类器(RFC)、支持向量机、极限梯度提升、人工神经网络和决策树构建的模型的ROC曲线下面积在0.682至0.847之间。RFC模型具有最高的预测准确性,这是通过纳入诸如血小板与淋巴细胞比率、中性粒细胞与淋巴细胞比率、中性粒细胞与白蛋白比率以及淋巴细胞与单核细胞比率等炎症因子实现的。这些结果表明,使用RFC开发的基于ML的预测模型可用于识别可能对rNACT有反应的LACC患者,这可以指导治疗选择并改善临床结果。