Takayuki KatsukiKohei MiyaguchiAkira KosekiToshiya IwamoriRyosuke YanagiyaAtsushi Suzuki
We address the problem of predicting when a disease will develop, i.e., medical event time (MET), from a patient's electronic health record (EHR). The MET of non-communicable diseases like diabetes is highly correlated to cumulative health conditions, more specifically, how much time the patient spent with specific health conditions in the past. The common time-series representation is indirect in extracting such information from EHR because it focuses on detailed dependencies between values in successive observations, not cumulative information. We propose a novel data representation for EHR called cumulative stay-time representation (CTR), which directly models such cumulative health conditions. We derive a trainable construction of CTR based on neural networks that has the flexibility to fit the target data and scalability to handle high-dimensional EHR. Numerical experiments using synthetic and real-world datasets demonstrate that CTR alone achieves a high prediction performance, and it enhances the performance of existing models when combined with them.
Tong RuanLiqi LeiYangming ZhouJie ZhaiLe ZhangPing HeJu Gao
Liang LiangJue HouHajime UnoKelly ChoYanyuan MaTianxi Cai
Yu-Kai LinHsinchun ChenRandall A. BrownShu-Hsing LiHung-Jen Yang
Robert MoskovitchFernanda PolubriaginofAviram WeissPatrick RyanNicholas P. Tatonetti