Randomized controlled trials (RCTs) are considered as the gold standard for testing causal hypotheses in the clinical domain. However, the investigation of prognostic variables of patient outcome in a hypothesized cause-effect route is not feasible using standard statistical methods. Here, we propose a new automated causal inference method (AutoCI) built upon the invariant causal prediction (ICP) framework for the causal re-interpretation of clinical trial data. Compared to existing methods, we show that the proposed AutoCI allows to efficiently determine the causal variables with a clear differentiation on two real-world RCTs of endometrial cancer patients with mature outcome and extensive clinicopathological and molecular data. This is achieved via suppressing the causal probability of non-causal variables by a wide margin. In ablation studies, we further demonstrate that the assignment of causal probabilities by AutoCI remain consistent in the presence of confounders. In conclusion, these results confirm the robustness and feasibility of AutoCI for future applications in real-world clinical analysis.
翻译:在临床领域,随机控制试验被视为检验因果假设的黄金标准,然而,使用标准的统计方法,在假设大小因果效应路径对患者结果的预测变量进行调查是不可行的。在这里,我们提议基于因果重新解释临床试验数据的因果预测框架的新的自动因果推断法(AutoCI)。与现有方法相比,我们表明,拟议的AutoCI允许有效确定因果变量,对具有成熟结果和广泛的临床病理学及分子数据的非因果变量的两个真实世界的RCT进行明确区分。这是通过大范围抑制非因果变量的因果概率来实现的。在反通货膨胀研究中,我们进一步证明AutoCI对因果概率的划分在同源体的存在中仍然是一致的。最后,这些结果证实了AutoCI对现实临床分析的未来应用的可靠性和可行性。