TCKAN:A Novel Integrated Network Model for Predicting Mortality Risk in Sepsis Patients
Fanglin Dong

TL;DR
TCKAN is a new integrated network model that combines multiple data types to improve mortality risk prediction in sepsis patients, outperforming existing methods in accuracy and robustness.
Contribution
Introduces TCKAN, a novel multi-modal data integration model that enhances sepsis mortality prediction by combining temporal, constant, and ICD data within a single framework.
Findings
TCKAN achieved AUCs of 87.76% and 88.07% on MIMIC datasets.
Outperformed existing machine learning and deep learning models.
Improved detection of high-risk sepsis patients.
Abstract
Sepsis poses a major global health threat, accounting for millions of deaths annually and significant economic costs. Accurately predicting the risk of mortality in sepsis patients enables early identification, promotes the efficient allocation of medical resources, and facilitates timely interventions, thereby improving patient outcomes. Current methods typically utilize only one type of data--either constant, temporal, or ICD codes. This study introduces a novel approach, the Time-Constant Kolmogorov-Arnold Network (TCKAN), which uniquely integrates temporal data, constant data, and ICD codes within a single predictive model. Unlike existing methods that typically rely on one type of data, TCKAN leverages a multi-modal data integration strategy, resulting in superior predictive accuracy and robustness in identifying high-risk sepsis patients. Validated against the MIMIC-III and…
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Taxonomy
TopicsMachine Learning in Healthcare · Artificial Intelligence in Healthcare
