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Risk Prediction Using Bayesian Networks: An Immunotherapy Case Study in Patients With Metastatic Renal Cell Carcinoma

机译:使用贝叶斯网络的风险预测:转移性肾细胞癌患者的免疫疗法案例研究

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PURPOSE To address the need for more accurate risk stratification models for cancer immuno-oncology, this study aimed to develop a machine-learned Bayesian network model (BNM) for predicting outcomes in patients with metastatic renal cell carcinoma (mRCC) being treated with immunotherapy.METHODS Patient-level data from the randomized, phase III CheckMate 025 clinical trial comparing nivolumab with everolimus for second-line treatment in patients with mRCC were used to develop the BNM. Outcomes of interest were overall survival (OS), all-cause adverse events, and treatment-related adverse events (TRAE) over 36 months after treatment initiation. External validation of the model's predictions for OS was conducted using data from select centers from the International Metastatic Renal Cell Carcinoma Database Consortium (IMDC).RESULTS Areas under the receiver operating characteristic curve (AUCs) for BNM-based classification of OS using baseline data were 0.74, 0.71, and 0.68 over months 12, 24, and 36, respectively. AUC for OS at 12 months increased to 0.86 when treatment response and progression status in year 1 were included as predictors; progression and response at 12 months were highly prognostic of all outcomes over the 36-month period. AUCs for adverse events and treatment-related adverse events were approximately 0.6 at 12 months but increased to approximately 0.7 by 36 months. Sensitivity analysis comparing the BNM with machine learning classifiers showed comparable performance. Test AUC on IMDC data for 12-month OS was 0.71 despite several variable imbalances. Notably, the BNM outperformed the IMDC risk score alone.CONCLUSION The validated BNM performed well at prediction using baseline data, particularly with the inclusion of response and progression at 12 months. Additionally, the results suggest that 12 months of follow-up data alone may be sufficient to inform long-term survival projections in patients with mRCC.
机译:目的是解决对癌症免疫肿瘤学更准确的风险分层模型的需求,本研究旨在开发机器学习的贝叶斯网络模型(BNM),以预测接受免疫疗法治疗的转移性肾细胞癌(MRCC)患者的结局。方法来自随机,III期检查对象的患者级数据025临床试验,将Nivolumab与依维莫司(Everolimus)进行了MRCC患者的二线治疗,用于开发BNM。感兴趣的结果是在治疗开始后的36个月内,总生存期(OS),全因不良事件和与治疗相关的不良事件(TRAE)。使用来自国际转移性肾细胞癌数据库联盟(IMDC)的精选中心的数据进行了对模型对OS的预测的外部验证。用于使用基于BNM的OS使用基线数据的基于BNM的OS分类的收集区域是基于基础的OS分类的区域在第12、24和36个月分别为0.74、0.71和0.68。当将治疗反应和第1年的进展状态作为预测因素时,AUC的AUC在12个月时增加到0.86;在整个36个月期间,在12个月时的进展和反应是所有结果的高度预后。不良事件的AUC和与治疗相关的不良事件在12个月时约为0.6,但在36个月内增加到约0.7。将BNM与机器学习分类器进行比较的灵敏度分析显示出可比的性能。尽管有几个可变的失衡,但对IMDC数据的AUC测试为12个月OS为0.71。值得注意的是,BNM的表现仅优于IMDC风险评分。判断经过验证的BNM在使用基线数据的预测下表现良好,尤其是在12个月时包含响应和进展的情况下。此外,结果表明,仅12个月的随访数据可能足以为MRCC患者的长期生存预测提供信息。

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