Causal Inference in Threshold Regression and the Neural Network Extension (TRNN)

IF 0.9 Q4 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
Stats Pub Date : 2023-04-28 DOI:10.3390/stats6020036
Yiming Chen, P. Smith, Mei-Ling Ting Lee
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引用次数: 0

Abstract

The first-hitting-time based model conceptualizes a random process for subjects’ latent health status. The time-to-event outcome is modeled as the first hitting time of the random process to a pre-specified threshold. Threshold regression with linear predictors has numerous benefits in causal survival analysis, such as the estimators’ collapsibility. We propose a neural network extension of the first-hitting-time based threshold regression model. With the flexibility of neural networks, the extended threshold regression model can efficiently capture complex relationships among predictors and underlying health processes while providing clinically meaningful interpretations, and also tackle the challenge of high-dimensional inputs. The proposed neural network extended threshold regression model can further be applied in causal survival analysis, such as performing as the Q-model in G-computation. More efficient causal estimations are expected given the algorithm’s robustness. Simulations were conducted to validate estimator collapsibility and threshold regression G-computation. The performance of the neural network extended threshold regression model is also illustrated by using simulated and real high-dimensional data from an observational study.
阈值回归与神经网络扩展(TRNN)中的因果推理
基于首击时间的模型将被试潜在健康状态的随机过程概念化。时间到事件的结果被建模为随机过程对预先指定阈值的第一次命中时间。具有线性预测因子的阈值回归在因果生存分析中有许多好处,例如估计量的可折叠性。我们提出了基于首击时间的阈值回归模型的神经网络扩展。利用神经网络的灵活性,扩展阈值回归模型可以有效地捕捉预测因子和潜在健康过程之间的复杂关系,同时提供有临床意义的解释,并解决高维输入的挑战。本文提出的神经网络扩展阈值回归模型可以进一步应用于因果生存分析,如在g计算中作为q模型。考虑到算法的鲁棒性,期望得到更有效的因果估计。通过仿真验证了估计器的可折叠性和阈值回归g计算。通过模拟和真实的高维观测数据,说明了神经网络扩展阈值回归模型的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
0.60
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0.00%
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审稿时长
7 weeks
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