LLM Reasoning 相关度: 7/10

Sequential Counterfactual Inference for Temporal Clinical Data: Addressing the Time Traveler Dilemma

Jingya Cheng, Alaleh Azhir, Jiazi Tian, Hossein Estiri
arXiv: 2602.21168v1 发布: 2026-02-24 更新: 2026-02-24

AI 摘要

提出Sequential Counterfactual Framework,解决时间序列临床数据反事实推断问题。

主要贡献

  • 提出Sequential Counterfactual Framework
  • 区分不可变和可控特征,考虑时间依赖性
  • 应用于COVID-19患者数据,识别cardiorenal cascade

方法论

建模干预随时间传播,通过区分immutable和controllable特征,进行序列反事实推断。

原文摘要

Counterfactual inference enables clinicians to ask "what if" questions about patient outcomes, but standard methods assume feature independence and simultaneous modifiability -- assumptions violated by longitudinal clinical data. We introduce the Sequential Counterfactual Framework, which respects temporal dependencies in electronic health records by distinguishing immutable features (chronic diagnoses) from controllable features (lab values) and modeling how interventions propagate through time. Applied to 2,723 COVID-19 patients (383 Long COVID heart failure cases, 2,340 matched controls), we demonstrate that 38-67% of patients with chronic conditions would require biologically impossible counterfactuals under naive methods. We identify a cardiorenal cascade (CKD -> AKI -> HF) with relative risks of 2.27 and 1.19 at each step, illustrating temporal propagation that sequential -- but not naive -- counterfactuals can capture. Our framework transforms counterfactual explanation from "what if this feature were different?" to "what if we had intervened earlier, and how would that propagate forward?" -- yielding clinically actionable insights grounded in biological plausibility.

标签

反事实推断 时间序列数据 临床数据 因果推断

arXiv 分类

cs.LG