Temporal Point Processes (TPPs) are widely used for modeling event sequences in various medical domains, such as disease onset prediction, progression analysis, and clinical decision support. Although TPPs effectively capture temporal dynamics, their lack of interpretability remains a critical challenge. Recent advancements have introduced interpretable TPPs. However, these methods fail to incorporate numerical features, thereby limiting their ability to generate precise predictions. To address this issue, we propose Hybrid-Rule Temporal Point Processes (HRTPP), a novel framework that integrates temporal logic rules with numerical features, improving both interpretability and predictive accuracy in event modeling. HRTPP comprises three key components: basic intensity for intrinsic event likelihood, rule-based intensity for structured temporal dependencies, and numerical feature intensity for dynamic probability modulation. To effectively discover valid rules, we introduce a two-phase rule mining strategy with Bayesian optimization. To evaluate our method, we establish a multi-criteria assessment framework, incorporating rule validity, model fitting, and temporal predictive accuracy. Experimental results on real-world medical datasets demonstrate that HRTPP outperforms state-of-the-art interpretable TPPs in terms of predictive performance and clinical interpretability. In case studies, the rules extracted by HRTPP explain the disease progression, offering valuable contributions to medical diagnosis.
翻译:时序点过程(TPPs)广泛应用于医疗领域的序列事件建模,如疾病发作预测、进展分析和临床决策支持。尽管TPPs能有效捕捉时序动态,但其可解释性不足仍是关键挑战。近期研究提出了可解释的TPPs,但这些方法未能纳入数值特征,限制了其生成精确预测的能力。为解决这一问题,我们提出混合规则时序点过程(HRTPP),该框架将时序逻辑规则与数值特征相结合,在提升事件建模可解释性的同时提高预测精度。HRTPP包含三个核心组件:表征事件固有可能性的基础强度函数、刻画结构化时序依赖的规则强度函数,以及实现动态概率调制的数值特征强度函数。为有效发现有效规则,我们提出采用贝叶斯优化的两阶段规则挖掘策略。为评估本方法,我们建立了包含规则有效性、模型拟合度和时序预测精度的多准则评估框架。在真实医疗数据集上的实验结果表明,HRTPP在预测性能和临床可解释性方面均优于当前最先进的可解释TPPs。在案例研究中,HRTPP提取的规则成功解释了疾病进展过程,为医疗诊断提供了有价值的参考。