概率逻辑
计算机科学
机器学习
系列(地层学)
时间序列
随机微分方程
人工智能
噪音(视频)
贝叶斯定理
可扩展性
生成模型
贝叶斯概率
马尔可夫过程
微分方程
数据挖掘
常微分方程
概率相关模型
随机过程
人工神经网络
动力系统理论
数学优化
统计模型
数据建模
估计理论
潜变量
马尔可夫模型
马尔可夫链
差别隐私
差速器(机械装置)
概率分布
作者
Aslanimoghanloo, Muhammad,ElGazzar, Ahmed,van Gerven, Marcel
出处
期刊:Cornell University - arXiv
日期:2025-11-20
标识
DOI:10.48550/arxiv.2511.16427
摘要
Clinical time series data from electronic health records and medical registries offer unprecedented opportunities to understand patient trajectories and inform medical decision-making. However, leveraging such data presents significant challenges due to irregular sampling, complex latent physiology, and inherent uncertainties in both measurements and disease progression. To address these challenges, we propose a generative modeling framework based on latent neural stochastic differential equations (SDEs) that views clinical time series as discrete-time partial observations of an underlying controlled stochastic dynamical system. Our approach models latent dynamics via neural SDEs with modality-dependent emission models, while performing state estimation and parameter learning through variational inference. This formulation naturally handles irregularly sampled observations, learns complex non-linear interactions, and captures the stochasticity of disease progression and measurement noise within a unified scalable probabilistic framework. We validate the framework on two complementary tasks: (i) individual treatment effect estimation using a simulated pharmacokinetic-pharmacodynamic (PKPD) model of lung cancer, and (ii) probabilistic forecasting of physiological signals using real-world intensive care unit (ICU) data from 12,000 patients. Results show that our framework outperforms ordinary differential equation and long short-term memory baseline models in accuracy and uncertainty estimation. These results highlight its potential for enabling precise, uncertainty-aware predictions to support clinical decision-making.
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