SPLGMar 14

The Taxonomies, Training, and Applications of Event Stream Modelling for Electronic Health Records

arXiv:2603.1400379.81 citationsh-index: 3
AI Analysis

It addresses the problem of inconsistent methodologies in AI for healthcare, which is incremental as it organizes existing research rather than introducing new techniques.

This review tackles the fragmentation in event stream modeling for electronic health records by establishing a unified definition and taxonomy, and it systematically reviews training strategies and applications to guide future healthcare model development.

The widespread adoption of electronic health records (EHRs) enables the acquisition of heterogeneous clinical data, spanning lab tests, vital signs, medications, and procedures, which offer transformative potential for artificial intelligence in healthcare. Although traditional modelling approaches have typically relied on multivariate time series, they often struggle to accommodate the inherent sparsity and irregularity of real-world clinical workflows. Consequently, research has shifted toward event stream representation, which treats patient records as continuous sequences, thereby preserving the precise temporal structure of the patient journey. However, the existing literature remains fragmented, characterised by inconsistent definitions, disparate modelling architectures, and varying training protocols. To address these gaps, this review establishes a unified definition of EHR event streams and introduces a novel taxonomy that categorises models based on their handling of event time, type, and value. We systematically review training strategies, ranging from supervised learning to self-supervised methods, and provide a comprehensive discussion of applications across clinical scenarios. Finally, we identify open critical challenges and future directions, with the aim of clarifying the current landscape and guiding the development of next-generation healthcare models.

Foundations

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