The goal of this work is to improve the performance of sepsis-detection in photoplethysmography (PPG) data. To achieve this goal, we present a hybrid technique for classifying sepsis in PPG data based on confident learning (CL) with noisy data. The technique presented in this study employs CL to improve the accuracy and reliability of the machine learning models, as it takes into account the uncertainty associated with each prediction. Numerous experiments were carried out to assess the performance of the presented technique in detecting sepsis using PPG data. The results obtained, using the best-performing XGBoost model, were compared with those of a previous study in which a deep learning-based model was applied to the same sample of data. The presented technique demonstrated its effectiveness by achieving an F1 score of 80.62% on test set, with a 7% improvement compared to the performance of the previous study.

Dual pipeline technique for detecting sepsis from photoplethysmography / Abudalfa, Shadi; Lombardi, Sara; Barcali, Eleonora; Bocchi, Leonardo. - In: INTERNATIONAL JOURNAL OF DATA MINING AND BIOINFORMATICS. - ISSN 1748-5673. - ELETTRONICO. - 1:(2024), pp. 0-0. [10.1504/ijdmb.2025.10066271]

Dual pipeline technique for detecting sepsis from photoplethysmography

Lombardi, Sara;Barcali, Eleonora;Bocchi, Leonardo
2024

Abstract

The goal of this work is to improve the performance of sepsis-detection in photoplethysmography (PPG) data. To achieve this goal, we present a hybrid technique for classifying sepsis in PPG data based on confident learning (CL) with noisy data. The technique presented in this study employs CL to improve the accuracy and reliability of the machine learning models, as it takes into account the uncertainty associated with each prediction. Numerous experiments were carried out to assess the performance of the presented technique in detecting sepsis using PPG data. The results obtained, using the best-performing XGBoost model, were compared with those of a previous study in which a deep learning-based model was applied to the same sample of data. The presented technique demonstrated its effectiveness by achieving an F1 score of 80.62% on test set, with a 7% improvement compared to the performance of the previous study.
2024
1
0
0
Abudalfa, Shadi; Lombardi, Sara; Barcali, Eleonora; Bocchi, Leonardo
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Utilizza questo identificatore per citare o creare un link a questa risorsa: https://hdl.handle.net/2158/1390112
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