Butner Joseph D, Dogra Prashant, Chung Caroline, Koay Eugene J, Welsh James W, Hong David S, Cristini Vittorio, Wang Zhihui
Department of Radiation Oncology, The University of Texas MD Anderson Cancer Center, Houston, TX 77030, USA.
Institute for Data Science in Oncology, The University of Texas MD Anderson Cancer Center, Houston, TX 77030, USA.
Res Sq. 2024 Mar 29:rs.3.rs-4151883. doi: 10.21203/rs.3.rs-4151883/v1.
We present a study where predictive mechanistic modeling is used in combination with deep learning methods to predict individual patient survival probabilities under immune checkpoint inhibitor (ICI) therapy. This hybrid approach enables prediction based on both measures that are calculable from mechanistic models (but may not be directly measurable in the clinic) and easily measurable quantities or characteristics (that are not always readily incorporated into predictive mechanistic models). The mechanistic model we have applied here can predict tumor response from CT or MRI imaging based on key mechanisms underlying checkpoint inhibitor therapy, and in the present work, its parameters were combined with readily-available clinical measures from 93 patients into a hybrid training set for a deep learning time-to-event predictive model. Analysis revealed that training an artificial neural network with both mechanistic modeling-derived and clinical measures achieved higher per-patient predictive accuracy based on event-time concordance, Brier score, and negative binomial log-likelihood-based criteria than when only mechanistic model-derived values or only clinical data were used. Feature importance analysis revealed that both clinical and model-derived parameters play prominent roles in neural network decision making, and in increasing prediction accuracy, further supporting the advantage of our hybrid approach. We anticipate that many existing mechanistic models may be hybridized with deep learning methods in a similar manner to improve predictive accuracy through addition of additional data that may not be readily implemented in mechanistic descriptions.
我们展示了一项研究,其中预测性机制建模与深度学习方法相结合,以预测免疫检查点抑制剂(ICI)治疗下个体患者的生存概率。这种混合方法能够基于可从机制模型计算得出(但在临床中可能无法直接测量)的指标以及易于测量的量或特征(这些特征并不总是容易纳入预测性机制模型)进行预测。我们在此应用的机制模型可以基于检查点抑制剂治疗的关键机制,从CT或MRI成像预测肿瘤反应,在本研究中,其参数与93例患者的现成临床指标相结合,形成一个用于深度学习事件时间预测模型的混合训练集。分析表明,与仅使用机制模型得出的值或仅使用临床数据相比,使用机制建模得出的指标和临床指标训练人工神经网络,基于事件时间一致性、Brier评分和基于负二项式对数似然的标准,实现了更高的个体患者预测准确性。特征重要性分析表明,临床参数和模型得出的参数在神经网络决策中都起着重要作用,并且在提高预测准确性方面,进一步支持了我们混合方法的优势。我们预计,许多现有的机制模型可能会以类似的方式与深度学习方法相结合,通过添加可能不易在机制描述中实现的额外数据来提高预测准确性。