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Please use this identifier to cite or link to this item: http://hdl.handle.net/20.500.12710/19153
Title: Sepsis: current challenges and new solutions based on modern technologies. A clinical management approach
Authors: Iapăscurtă, Victor
Belîi, Adrian
Keywords: sepsis;early diagnosis;machine learning based systems;clinical application;COVID-19
Issue Date: 2021
Publisher: Universitatea de Stat de Medicină și Farmacie ”Nicolae Testemițanu” din Republica Moldova, Institutul de Cardiologie
Citation: IAPĂSCURTĂ, Victor, BELÎI, Adrian. Sepsis: current challenges and new solutions based on modern technologies. A clinical management approach: [poster]. In: Conferinţa ştiinţifică anuală "Cercetarea în biomedicină și sănătate: calitate, excelență și performanță", 20-22 octombrie 2021: culegere de postere. 2021, p. 117.
Abstract: Introduction: Despite high associated mortality and high treatment costs, sepsis remains difficult to diagnose. A recent supplement to sepsis management are systems based on machine learning (ML). Purpose: Proof of concept and presentation of a MLbased clinical application for the early prediction of sepsis. Material and methods: The data comes from the publicly accessible database Early Prediction of Sepsis from Clinical Data - the PhysioNet Computing in Cardiology Challenge 2019 and include 40366 intensive care clinical cases, of which 7.26% are patients with sepsis, and 92.74% - with other diagnoses. Exploratory data analysis and data processing are performed in RStudio (R programming language), and machine learning is based on the H2O platform (www.h2o.ai). Results: Based on the processing of the large data set, an intelligent system is built, which allows the prediction of sepsis 4 hours before the onset and which can be delivered as an application for clinical use. The performance metrics are: accuracy - 0.91, specificity - 0.93 and sensitivity - 0.84.
metadata.dc.relation.ispartof: Conferinţa ştiinţifică anuală "Cercetarea în biomedicină și sănătate: calitate, excelență și performanță", 20-22 octombrie 2021
URI: http://repository.usmf.md/handle/20.500.12710/19153
Appears in Collections:Conferinţa ştiinţifică anuală "Cercetarea în biomedicină și sănătate: calitate, excelență și performanță", 20-22 octombrie 2021: Culegere de postere

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