Early detection of cardiovascular diseases (CVDs) is crucial for minimizing their adverse impact on patients' health. Electrocardiograms (ECGs), which capture the heart's electrical activity, have been widely used to primarily evaluate heart conduction disorders. On the other hand, phonocardiograms (PCGs) recorded during cardiac auscultation, have been less explored, often being overlooked in favor of echocardiograms for detecting mechanical issues such as valvular diseases. However, due to their low cost and non-invasive nature, the analysis of both ECGs and PCGs can be easily integrated into preventive settings. Combining effectively the complementary information from these two modalities could significantly enhance the early detection of CVDs, where Machine Learning (ML) techniques can offer promising and cost-effective solutions. Progress in this area, however, has been limited by the lack of large enough datasets containing both ECG and PCG signals. One objective of this work is to analyze in-depth prior bimodal CVD detection research, identifying key issues to better address data collection and transfer learning limitations. We also propose a different approach to transfer learning for improving heart sound interpretation. Our findings confirm the effectiveness of using both signals to detect abnormal heart conditions. However, we also notice that even a refined transfer learning approach to enhance PCG interpretation is not enough to fully address the issues coming from the lack of bimodal data, indicating the need for further efforts in this direction. Ultimately, our bimodal approach achieved an overall AUROC of 96.4%, exceeding the performance of corresponding ECG-only and PCG-only models by approximately 3% and 10%, respectively. Compared to the other existing approaches, our method demonstrated superior AUROC performance while maintaining a relatively low false-negative rate, which is critical in CVD screening contexts.

Bimodal ECG-PCG Cardiovascular Disease Detection: a Close Look at Transfer Learning and Data Collection Issues

Calzoni A.;Savardi M.;Signoroni A.
2024-01-01

Abstract

Early detection of cardiovascular diseases (CVDs) is crucial for minimizing their adverse impact on patients' health. Electrocardiograms (ECGs), which capture the heart's electrical activity, have been widely used to primarily evaluate heart conduction disorders. On the other hand, phonocardiograms (PCGs) recorded during cardiac auscultation, have been less explored, often being overlooked in favor of echocardiograms for detecting mechanical issues such as valvular diseases. However, due to their low cost and non-invasive nature, the analysis of both ECGs and PCGs can be easily integrated into preventive settings. Combining effectively the complementary information from these two modalities could significantly enhance the early detection of CVDs, where Machine Learning (ML) techniques can offer promising and cost-effective solutions. Progress in this area, however, has been limited by the lack of large enough datasets containing both ECG and PCG signals. One objective of this work is to analyze in-depth prior bimodal CVD detection research, identifying key issues to better address data collection and transfer learning limitations. We also propose a different approach to transfer learning for improving heart sound interpretation. Our findings confirm the effectiveness of using both signals to detect abnormal heart conditions. However, we also notice that even a refined transfer learning approach to enhance PCG interpretation is not enough to fully address the issues coming from the lack of bimodal data, indicating the need for further efforts in this direction. Ultimately, our bimodal approach achieved an overall AUROC of 96.4%, exceeding the performance of corresponding ECG-only and PCG-only models by approximately 3% and 10%, respectively. Compared to the other existing approaches, our method demonstrated superior AUROC performance while maintaining a relatively low false-negative rate, which is critical in CVD screening contexts.
2024
CEUR Workshop Proceedings
MIUR (compresi PRIN FIRB,FISR)
Francesco Calimeri, Mauro Dragoni, Fabio Stella
LS7_1 Medical engineering and technology
PE6_11 Machine learning, statistical data processing and applications using signal processing (eg. speech, image, video)
PE6_7 Artificial intelligence, intelligent systems, multi agent systems
Esperti anonimi
Inglese
no
3rd AIxIA Workshop on Artificial Intelligence For Healthcare, HC@AIxIA 2024
2024
ita
Internazionale
ELETTRONICO
3880
93
107
15
CEUR-WS
Cardiovascular diseases; electrocardiogram; multi-modality; phonocardiogram; transfer learning
https://ceur-ws.org/Vol-3880/paper9.pdf
   Quality-of-life Technological and Societal Exploitation of ECG Diagnostics
   QTSEED
   MUR
   PRIN 2022
   2022A49KR3
no
Goal 3: Good health and well-being
open
Calzoni, A.; Savardi, M.; Signoroni, A.
273
info:eu-repo/semantics/conferenceObject
3
4 Contributo in Atti di Convegno (Proceeding)::4.1 Contributo in Atti di convegno
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11379/626085
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