Temporal Cross-Attention for Dynamic Embedding and Tokenization of Multimodal Electronic Health Records
arxiv(2024)
摘要
The breadth, scale, and temporal granularity of modern electronic health
records (EHR) systems offers great potential for estimating personalized and
contextual patient health trajectories using sequential deep learning. However,
learning useful representations of EHR data is challenging due to its high
dimensionality, sparsity, multimodality, irregular and variable-specific
recording frequency, and timestamp duplication when multiple measurements are
recorded simultaneously. Although recent efforts to fuse structured EHR and
unstructured clinical notes suggest the potential for more accurate prediction
of clinical outcomes, less focus has been placed on EHR embedding approaches
that directly address temporal EHR challenges by learning time-aware
representations from multimodal patient time series. In this paper, we
introduce a dynamic embedding and tokenization framework for precise
representation of multimodal clinical time series that combines novel methods
for encoding time and sequential position with temporal cross-attention. Our
embedding and tokenization framework, when integrated into a multitask
transformer classifier with sliding window attention, outperformed baseline
approaches on the exemplar task of predicting the occurrence of nine
postoperative complications of more than 120,000 major inpatient surgeries
using multimodal data from three hospitals and two academic health centers in
the United States.
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