학술논문

Classifying sepsis from photoplethysmography
Document Type
Academic Journal
Source
Health Information Science and Systems. October 31, 2022, Vol. 10 Issue 1
Subject
Care and treatment
Usage
Health aspects
Hospital patients -- Care and treatment
Pulse oximeters -- Usage
Medical research -- Usage -- Health aspects
Infection -- Care and treatment
Immune response -- Health aspects -- Usage
Oximetry -- Usage -- Health aspects
Medicine, Experimental -- Usage -- Health aspects
Language
English
ISSN
2047-2501
Abstract
Author(s): Sara Lombardi[sup.1], Petri Partanen[sup.2], Piergiorgio Francia[sup.1], Italo Calamai[sup.3], Rossella Deodati[sup.3], Marco Luchini[sup.3], Rosario Spina[sup.3] and Leonardo Bocchi[sup.1] Introduction The Sepsis-3 task force in 2016 defined sepsis as a life-threatening [...]
Purpose Sepsis is a life-threatening organ dysfunction. It is caused by a dysregulated immune response to an infection and is one of the leading causes of death in the intensive care unit (ICU). Early detection and treatment of sepsis can increase the survival rate of patients. The use of devices such as the photoplethysmograph could allow the early evaluation in addition to continuous monitoring of septic patients. The aim of this study was to verify the possibility of detecting sepsis in patients from whom the photoplethysmographic signal was acquired via a pulse oximeter. In this work, we developed a deep learning-based model for sepsis identification. The model takes a single input, the photoplethysmographic signal acquired by pulse oximeter, and performs a binary classification between septic and nonseptic samples. To develop the method, we used MIMIC-III database, which contains data from ICU patients. Specifically, the selected dataset includes 85 septic subjects and 101 control subjects. The PPG signals acquired from these patients were segmented, processed and used as input for the developed model with the aim of identifying sepsis. The proposed method achieved an accuracy of 76.37% with a sensitivity of 70.95% and a specificity of 81.04% on the test set. As regards the ROC curve, the Area Under Curve reached a value of 0.842. The results of this study indicate how the plethysmographic signal can be used as a warning sign for the early detection of sepsis with the aim of reducing the time for diagnosis and therapeutic intervention. Furthermore, the proposed method is suitable for integration in continuous patient monitoring. Keywords: Deep learning, Photoplethysmography, PPG, CNN, Sepsis, ICU