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A Dual Boundary Classifier for Predicting Acute Hypotensive Episodes in Critical Care

Overview
Journal PLoS One
Date 2018 Feb 24
PMID 29474481
Citations 2
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Abstract

An Acute Hypotensive Episode (AHE) is the sudden onset of a sustained period of low blood pressure and is one among the most critical conditions in Intensive Care Units (ICU). Without timely medical care, it can lead to an irreversible organ damage and death. By identifying patients at risk for AHE early, adequate medical intervention can save lives and improve patient outcomes. In this paper, we design a novel dual-boundary classification based approach for identifying patients at risk for AHE. Our algorithm uses only simple summary statistics of past Blood Pressure measurements and can be used in an online environment facilitating real-time updates and prediction. We perform extensive experiments with more than 4,500 patient records and demonstrate that our method outperforms the previous best approaches of AHE prediction. Our method can identify AHE patients two hours in advance of the onset, giving sufficient time for appropriate clinical intervention with nearly 80% sensitivity and at 95% specificity, thus having very few false positives.

Citing Articles

Development and Validation of a Prediction Model for Acute Hypotensive Events in Intensive Care Unit Patients.

Nakanishi T, Tsuji T, Tamura T, Fujiwara K, Sobue K J Clin Med. 2024; 13(10).

PMID: 38792329 PMC: 11122431. DOI: 10.3390/jcm13102786.


Dynamic Prediction of Patient Outcomes in the Intensive Care Unit: A Scoping Review of the State-of-the-Art.

Lapp L, Roper M, Kavanagh K, Bouamrane M, Schraag S J Intensive Care Med. 2023; 38(7):575-591.

PMID: 37016893 PMC: 10302367. DOI: 10.1177/08850666231166349.

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