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Predictive Modeling of Survival and Toxicity in Patients With Hepatocellular Carcinoma After Radiotherapy

机译:放射治疗后肝细胞癌患者的生存和毒性的预测模型

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PURPOSE To stratify patients and aid clinical decision making, we developed machine learning models to predict treatment failure and radiation-induced toxicities after radiotherapy (RT) in patients with hepatocellular carcinoma across institutions. MATERIALS AND METHODS The models were developed using linear and nonlinear algorithms, predicting survival, nonlocal failure, radiation-induced liver disease, and lymphopenia from baseline patient and treatment parameters. The models were trained on 207 patients from Massachusetts General Hospital. Performance was quantified using Harrell's c-index, area under the curve (AUC), and accuracy in high-risk populations. Models' structures were optimized in a nested cross-validation approach to prevent overfitting. A study analysis plan was registered before external validation using 143 patients from MD Anderson Cancer Center. Clinical utility was assessed using net-benefit analysis. RESULTS The survival model stratified high-risk versus low-risk patients well in the external validation cohort (c-index = 0.75), better than existing risk scores. Predictions of 1-year survival and nonlocal failure were excellent (external AUC = 0.74 and 0.80, respectively), especially in the high-risk group (accuracy > 90%). Cause-of-death analysis showed differential modes of treatment failure in these cohorts and indicated that these models could be used to stratify RT patients for liver-sparing treatment regimen or combination approaches with systemic agents. Predictions of liver disease and lymphopenia were good but less robust (external AUC = 0.68 and 0.7, respectively), suggesting the need for more comprehensive consideration of dosimetry and better predictive biomarkers. The liver disease model showed excellent accuracy in the high-risk group (92%) and revealed possible interactions of platelet count with initial liver function. CONCLUSION Machine learning approaches can provide reliable outcome predictions in patients with hepatocellular carcinoma after RT in diverse cohorts across institutions. The excellent performance, particularly in high-risk patients, suggests novel strategies for patient stratification and treatment selection.
机译:目的是分层患者并帮助临床决策,我们开发了机器学习模型,以预测放射疗法(RT)在跨机构肝细胞癌患者的放射疗法(RT)后毒性的毒性。材料和方法是使用线性和非线性算法开发的,可预测生存率,非局部性衰竭,辐射诱导的肝病以及基线患者和治疗参数的淋巴细胞减少症。这些模型接受了来自马萨诸塞州综合医院的207名患者的培训。使用Harrell的C-Index,曲线下的区域(AUC)和高风险人群的准确性来量化性能。在嵌套的交叉验证方法中优化了模型的结构,以防止过度拟合。使用MD Anderson癌症中心的143名患者在外部验证之前进行了研究分析计划。使用Net-Benefit分析评估临床实用性。结果在外部验证队列中,生存模型分层高危患者(C-指数= 0.75),优于现有风险评分。 1年生存和非局部失败的预测非常好(外部AUC = 0.74和0.80),尤其是在高危组中(精度> 90%)。死亡原因分析显示这些队列中治疗失败的差异模式,并表明这些模型可用于对RT患者进行分层肝脏治疗方案或与全身性药物的组合方法。肝病和淋巴细胞减少症的预测良好,但较不健壮(外部AUC = 0.68和0.7),这表明需要更全面地考虑剂量法和更好的预测性生物标志物。肝病模型在高危组中表现出极好的精度(92%),并揭示了血小板计数与初始肝功能的可能相互作用。结论机器学习方法可以为RT在各机构的各种队列中的RT后提供可靠的结果预测。出色的表现,特别是在高危患者中,提出了患者分层和治疗选择的新策略。

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