Pham Trang, Tran Truyen, Phung Dinh, Venkatesh Svetha
Center for Pattern Recognition and Data Analytics, Deakin University Geelong, Australia.
Center for Pattern Recognition and Data Analytics, Deakin University Geelong, Australia.
J Biomed Inform. 2017 May;69:218-229. doi: 10.1016/j.jbi.2017.04.001. Epub 2017 Apr 12.
Personalized predictive medicine necessitates the modeling of patient illness and care processes, which inherently have long-term temporal dependencies. Healthcare observations, stored in electronic medical records are episodic and irregular in time. We introduce DeepCare, an end-to-end deep dynamic neural network that reads medical records, stores previous illness history, infers current illness states and predicts future medical outcomes. At the data level, DeepCare represents care episodes as vectors and models patient health state trajectories by the memory of historical records. Built on Long Short-Term Memory (LSTM), DeepCare introduces methods to handle irregularly timed events by moderating the forgetting and consolidation of memory. DeepCare also explicitly models medical interventions that change the course of illness and shape future medical risk. Moving up to the health state level, historical and present health states are then aggregated through multiscale temporal pooling, before passing through a neural network that estimates future outcomes. We demonstrate the efficacy of DeepCare for disease progression modeling, intervention recommendation, and future risk prediction. On two important cohorts with heavy social and economic burden - diabetes and mental health - the results show improved prediction accuracy.
个性化预测医学需要对患者疾病和护理过程进行建模,而这些过程本身具有长期的时间依赖性。存储在电子病历中的医疗观察数据在时间上是偶发性的且不规律。我们引入了DeepCare,这是一个端到端的深度动态神经网络,它读取医疗记录,存储先前的疾病历史,推断当前的疾病状态并预测未来的医疗结果。在数据层面,DeepCare将护理事件表示为向量,并通过对历史记录的记忆来建模患者健康状态轨迹。基于长短期记忆(LSTM),DeepCare引入了通过调节记忆的遗忘和巩固来处理时间不规律事件的方法。DeepCare还明确地对改变疾病进程和塑造未来医疗风险的医疗干预进行建模。上升到健康状态层面,历史和当前的健康状态随后通过多尺度时间池化进行聚合,然后通过一个估计未来结果的神经网络。我们证明了DeepCare在疾病进展建模、干预推荐和未来风险预测方面的有效性。在两个具有沉重社会和经济负担的重要队列——糖尿病和心理健康队列上,结果显示预测准确性有所提高。