Electronic Health Records (EHRs) aggregate diverse information at the patient level, holding a trajectory representative of the evolution of the patient health status throughout time. Although this information provides context and can be leveraged by physicians to monitor patient health and make more accurate prognoses/diagnoses, patient records can contain information from very long time spans, which combined with the rapid generation rate of medical data makes clinical decision making more complex. Patient trajectory modelling can assist by exploring existing information in a scalable manner, and can contribute in augmenting health care quality by fostering preventive medicine practices. We propose a solution to model patient trajectories that combines different types of information and considers the temporal aspect of clinical data. This solution leverages two different architectures: one supporting flexible sets of input features, to convert patient admissions into dense representations; and a second exploring extracted admission representations in a recurrent-based architecture, where patient trajectories are processed in sub-sequences using a sliding window mechanism. The developed solution was evaluated on two different clinical outcomes, unexpected patient readmission and disease progression, using the publicly available MIMIC-III clinical database. The results obtained demonstrate the potential of the first architecture to model readmission and diagnoses prediction using single patient admissions. While information from clinical text did not show the discriminative power observed in other existing works, this may be explained by the need to fine-tune the clinicalBERT model. Finally, we demonstrate the potential of the sequence-based architecture using a sliding window mechanism to represent the input data, attaining comparable performances to other existing solutions.
翻译:病人健康记录(EHRs)在患者一级汇总了各种信息,显示病人健康状况的演变情况,并有一定的轨迹,尽管这一信息提供了背景,而且医生可以加以利用,以监测病人的健康状况,提供更准确的预测/诊断,但病人记录可以包含很长的时间跨度的信息,这些记录与快速生成的医疗数据相结合,使临床决策更加复杂。病人的轨迹建模可以通过以可缩放的方式探索现有信息,并通过促进预防性医疗实践,帮助提高保健窗口的质量。我们提出了一个模型病人轨迹的解决方案,将不同种类的信息结合起来,并考虑临床数据的可比较时间方面。这一解决方案利用了两种不同的结构:一套支持灵活的输入特征,将病人的入院率转换为密集的表;第二种探索在经常性结构中提取的入院位表,病人轨迹通过滑动的窗口机制在子后端处理。我们用两种不同的临床结果,即突发的病人阅读和疾病进展,利用公开的MIIC-III临床数据库,利用可比较的临床数据的时间方面。这一解决方案利用可公开的临床数据数据库,最终展示了现有诊断系统结构。