Identifying acute illness phenotypes via deep temporal interpolation and clustering network on physiologic signatures
Yuanfang Ren, Yanjun Li, Tyler J. Loftus, Jeremy Balch, Kenneth L., Abbott, Shounak Datta, Matthew M. Ruppert, Ziyuan Guan, Benjamin Shickel,, Parisa Rashidi, Tezcan Ozrazgat-Baslanti, Azra Bihorac

TL;DR
This study develops a deep learning clustering method to identify four distinct acute illness phenotypes from early vital sign data, which correlate with different outcomes and could aid early clinical decision-making.
Contribution
The paper introduces a novel deep temporal interpolation and clustering network that extracts meaningful phenotypes from sparse, irregular vital sign data within six hours of hospital admission.
Findings
Four distinct patient phenotypes with different outcomes were identified.
Phenotypes showed unique associations with biomarkers and clinical trajectories.
Clustering results provided insights beyond traditional acuity assessments.
Abstract
Initial hours of hospital admission impact clinical trajectory, but early clinical decisions often suffer due to data paucity. With clustering analysis for vital signs within six hours of admission, patient phenotypes with distinct pathophysiological signatures and outcomes may support early clinical decisions. We created a single-center, longitudinal EHR dataset for 75,762 adults admitted to a tertiary care center for 6+ hours. We proposed a deep temporal interpolation and clustering network to extract latent representations from sparse, irregularly sampled vital sign data and derived distinct patient phenotypes in a training cohort (n=41,502). Model and hyper-parameters were chosen based on a validation cohort (n=17,415). Test cohort (n=16,845) was used to analyze reproducibility and correlation with biomarkers. The training, validation, and testing cohorts had similar distributions…
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Taxonomy
TopicsMachine Learning in Healthcare · Sepsis Diagnosis and Treatment
