AI Article Synopsis

  • Identifying specific subphenotypes of infected patients is crucial for tailored treatment, but the effectiveness of different time series clustering algorithms in this context is not well understood.* -
  • The study analyzed data from over 20,000 patients using dynamic time warping and clustering algorithms to identify consistent patterns in vital signs, resulting in four distinct subphenotypes with varying clinical outcomes.* -
  • The findings indicate that different clustering methods (DTW-HC, DTW-PAM, and GBTM) yield similar results, highlighting the potential for personalized management strategies based on identified subphenotypes.*

Article Abstract

Objective: Severe infection can lead to organ dysfunction and sepsis. Identifying subphenotypes of infected patients is essential for personalized management. It is unknown how different time series clustering algorithms compare in identifying these subphenotypes.

Materials And Methods: Patients with suspected infection admitted between 2014 and 2019 to 4 hospitals in Emory healthcare were included, split into separate training and validation cohorts. Dynamic time warping (DTW) was applied to vital signs from the first 8 h of hospitalization, and hierarchical clustering (DTW-HC) and partition around medoids (DTW-PAM) were used to cluster patients into subphenotypes. DTW-HC, DTW-PAM, and a previously published group-based trajectory model (GBTM) were evaluated for agreement in subphenotype clusters, trajectory patterns, and subphenotype associations with clinical outcomes and treatment responses.

Results: There were 12 473 patients in training and 8256 patients in validation cohorts. DTW-HC, DTW-PAM, and GBTM models resulted in 4 consistent vitals trajectory patterns with significant agreement in clustering (71-80% agreement, P < .001): group A was hyperthermic, tachycardic, tachypneic, and hypotensive. Group B was hyperthermic, tachycardic, tachypneic, and hypertensive. Groups C and D had lower temperatures, heart rates, and respiratory rates, with group C normotensive and group D hypotensive. Group A had higher odds ratio of 30-day inpatient mortality (P < .01) and group D had significant mortality benefit from balanced crystalloids compared to saline (P < .01) in all 3 models.

Discussion: DTW- and GBTM-based clustering algorithms applied to vital signs in infected patients identified consistent subphenotypes with distinct clinical outcomes and treatment responses.

Conclusion: Time series clustering with distinct computational approaches demonstrate similar performance and significant agreement in the resulting subphenotypes.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10198539PMC
http://dx.doi.org/10.1093/jamia/ocad063DOI Listing

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