Bayesian networks are powerful statistical models to study the probabilistic relationships among set random variables with major applications in disease modeling and prediction. Here, we propose a continuous time Bayesian network with conditional dependencies, represented as Poisson regression, to model the impact of exogenous variables on the conditional dependencies of the network. We also propose an adaptive regularization method with an intuitive early stopping feature based on density based clustering for efficient learning of the structure and parameters of the proposed network. Using a dataset of patients with multiple chronic conditions extracted from electronic health records of the Department of Veterans Affairs we compare the performance of the proposed approach with some of the existing methods in the literature for both short-term (one-year ahead) and long-term (multi-year ahead) predictions. The proposed approach provides a sparse intuitive representation of the complex functional relationships between multiple chronic conditions. It also provides the capability of analyzing multiple disease trajectories over time given any combination of prior conditions.
翻译:贝叶斯网络是研究在疾病建模和预测中主要应用的既定随机变数之间概率关系的强大统计模型。在这里,我们建议采用以Poisson回归为代表的连续时间贝叶斯网络,以有条件的依附性为代表,对外来变数对网络的有条件依附性的影响进行建模。我们还建议采用适应性正规化方法,以基于密度的集群为基础进行直觉早期停止功能特征,从而有效了解拟议网络的结构和参数。我们利用从退伍军人事务部电子健康记录中提取的多种慢性病症患者数据集,我们比较了拟议方法的绩效和文献中现有的短期(未来一年)和长期(未来多年)预测方法中的某些方法。拟议方法对多种慢性病状况之间的复杂功能关系进行了细微的直觉描述。它还提供了分析不同时期的多重疾病轨迹的能力。