Discovery of Generalizable TBI Phenotypes Using Multivariate Time-Series Clustering
- URL: http://arxiv.org/abs/2401.08002v2
- Date: Tue, 20 Aug 2024 22:12:44 GMT
- Title: Discovery of Generalizable TBI Phenotypes Using Multivariate Time-Series Clustering
- Authors: Hamid Ghaderi, Brandon Foreman, Chandan K. Reddy, Vignesh Subbian,
- Abstract summary: Our research addresses TBI phenotypes that consistently generalize across various settings and populations.
Our analysis revealed three generalizable TBI phenotypes (alpha, beta, and gamma)
Age is a significant determinant of TBI outcomes, with older cohorts recording higher mortality rates.
- Score: 9.959978441977011
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Traumatic Brain Injury (TBI) presents a broad spectrum of clinical presentations and outcomes due to its inherent heterogeneity, leading to diverse recovery trajectories and varied therapeutic responses. While many studies have delved into TBI phenotyping for distinct patient populations, identifying TBI phenotypes that consistently generalize across various settings and populations remains a critical research gap. Our research addresses this by employing multivariate time-series clustering to unveil TBI's dynamic intricates. Utilizing a self-supervised learning-based approach to clustering multivariate time-Series data with missing values (SLAC-Time), we analyzed both the research-centric TRACK-TBI and the real-world MIMIC-IV datasets. Remarkably, the optimal hyperparameters of SLAC-Time and the ideal number of clusters remained consistent across these datasets, underscoring SLAC-Time's stability across heterogeneous datasets. Our analysis revealed three generalizable TBI phenotypes ({\alpha}, \b{eta}, and {\gamma}), each exhibiting distinct non-temporal features during emergency department visits, and temporal feature profiles throughout ICU stays. Specifically, phenotype {\alpha} represents mild TBI with a remarkably consistent clinical presentation. In contrast, phenotype \b{eta} signifies severe TBI with diverse clinical manifestations, and phenotype {\gamma} represents a moderate TBI profile in terms of severity and clinical diversity. Age is a significant determinant of TBI outcomes, with older cohorts recording higher mortality rates. Importantly, while certain features varied by age, the core characteristics of TBI manifestations tied to each phenotype remain consistent across diverse populations.
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