Zhu Enzhao, Wang Jiayi, Jing Qi, Shi Weizhong, Xu Ziqin, Ai Pu, Chen Zhihao, Dai Zhihao, Shan Dan, Ai Zisheng
School of Medicine, Tongji University, Shanghai, China.
Department of Anesthesiology and Perioperative Medicine, Shanghai Fourth People's Hospital, School of Medicine, Tongji University, Shanghai, China.
Front Med (Lausanne). 2024 May 9;11:1330907. doi: 10.3389/fmed.2024.1330907. eCollection 2024.
There is a lack of individualized evidence on surgical choices for glioblastoma (GBM) patients.
This study aimed to make individualized treatment recommendations for patients with GBM and to determine the importance of demographic and tumor characteristic variables in the selection of extent of resection.
We proposed Balanced Decision Ensembles (BDE) to make survival predictions and individualized treatment recommendations. We developed several DL models to counterfactually predict the individual treatment effect (ITE) of patients with GBM. We divided the patients into the recommended (Rec.) and anti-recommended groups based on whether their actual treatment was consistent with the model recommendation.
The BDE achieved the best recommendation effects (difference in restricted mean survival time (dRMST): 5.90; 95% confidence interval (CI), 4.40-7.39; hazard ratio (HR): 0.71; 95% CI, 0.65-0.77), followed by BITES and DeepSurv. Inverse probability treatment weighting (IPTW)-adjusted HR, IPTW-adjusted OR, natural direct effect, and control direct effect demonstrated better survival outcomes of the Rec. group.
The ITE calculation method is crucial, as it may result in better or worse recommendations. Furthermore, the significant protective effects of machine recommendations on survival time and mortality indicate the superiority of the model for application in patients with GBM. Overall, the model identifies patients with tumors located in the right and left frontal and middle temporal lobes, as well as those with larger tumor sizes, as optimal candidates for SpTR.
胶质母细胞瘤(GBM)患者手术选择方面缺乏个体化证据。
本研究旨在为GBM患者制定个体化治疗建议,并确定人口统计学和肿瘤特征变量在切除范围选择中的重要性。
我们提出平衡决策集成(BDE)方法来进行生存预测和个体化治疗建议。我们开发了几种深度学习模型来反事实预测GBM患者的个体治疗效果(ITE)。我们根据患者的实际治疗是否与模型建议一致,将患者分为推荐组和反推荐组。
BDE取得了最佳推荐效果(受限平均生存时间差异(dRMST):5.90;95%置信区间(CI),4.40 - 7.39;风险比(HR):0.71;95%CI,0.65 - 0.77),其次是BITES和DeepSurv。逆概率处理加权(IPTW)调整后的HR、IPTW调整后的OR、自然直接效应和对照直接效应显示推荐组有更好的生存结果。
ITE计算方法至关重要,因为它可能导致更好或更差的推荐。此外,机器推荐对生存时间和死亡率的显著保护作用表明该模型在GBM患者应用中的优越性。总体而言,该模型将位于左右额叶和颞中叶的肿瘤患者以及肿瘤体积较大的患者识别为扩大肿瘤切除(SpTR)的最佳候选者。