CYLGNov 9, 2021

Early Prediction of Mortality in Critical Care Setting in Sepsis Patients Using Structured Features and Unstructured Clinical Notes

arXiv:2112.01230v113 citations
Originality Synthesis-oriented
AI Analysis

This work addresses mortality risk identification for sepsis patients in critical care, but it is incremental as it applies existing methods to a specific dataset.

The paper tackled early mortality prediction in sepsis ICU patients by integrating structured and unstructured clinical data, achieving an F-measure of 0.512 for risk prediction.

Sepsis is an important cause of mortality, especially in intensive care unit (ICU) patients. Developing novel methods to identify early mortality is critical for improving survival outcomes in sepsis patients. Using the MIMIC-III database, we integrated demographic data, physiological measurements and clinical notes. We built and applied several machine learning models to predict the risk of hospital mortality and 30-day mortality in sepsis patients. From the clinical notes, we generated clinically meaningful word representations and embeddings. Supervised learning classifiers and a deep learning architecture were used to construct prediction models. The configurations that utilized both structured and unstructured clinical features yielded competitive F-measure of 0.512. Our results showed that the approaches integrating both structured and unstructured clinical features can be effectively applied to assist clinicians in identifying the risk of mortality in sepsis patients upon admission to the ICU.

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