A major issue in the clinical management of epilepsy is the unpredictability of seizures. Yet, traditional approaches to seizure forecasting and risk assessment in epilepsy rely heavily on raw seizure frequencies, which are a stochastic measurement of seizure risk. We consider a Bayesian non-homogeneous hidden Markov model for unsupervised clustering of zero-inflated seizure count data. The proposed model allows for a probabilistic estimate of the sequence of seizure risk states at the individual level. It also offers significant improvement over prior approaches by incorporating a variable selection prior for the identification of clinical covariates that drive seizure risk changes and accommodating highly granular data. For inference, we implement an efficient sampler that employs stochastic search and data augmentation techniques. We evaluate model performance on simulated seizure count data. We then demonstrate the clinical utility of the proposed model by analyzing daily seizure count data from 133 patients with Dravet syndrome collected through the Seizure Tracker TM system, a patient-reported electronic seizure diary. We report on the dynamics of seizure risk cycling, including validation of several known pharmacologic relationships. We also uncover novel findings characterizing the presence and volatility of risk states in Dravet syndrome, which may directly inform counseling to reduce the unpredictability of seizures for patients with this devastating cause of epilepsy.
翻译:癫痫临床管理的一个主要问题是癫痫病的不可预测性。然而,癫痫病的缉获预测和风险评估传统方法严重依赖原始缉获频率,这是对缉获风险的一种随机测量。我们认为巴伊西亚非同质隐蔽的Markov模型,用于对零膨胀的缉获计数数据进行不受监督的组合。拟议的模型允许对个人一级缉获风险状态的序列进行概率估计。还比以前的方法有了显著改进,在确定导致缉获风险变化和容纳高颗粒数据的临床共变变量之前采用了可变选择方法。为了推断,我们采用了高效的取样器,采用随机搜索和数据增强技术。我们评估模拟缉获计数数据模型的模型性能。然后我们通过分析通过缉获追踪仪TM系统收集的133名患有德拉维特综合症的病人的每日缉获计数数据,即病人报告的电子缉获日志。我们报告了缉获风险循环的动态,包括验证若干已知的药理学风险变化和高颗粒性数据。我们用高效的采样器来评估模型的性能变化性综合症。我们还能够直接了解这种不稳定性综合症的诊断。