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Ultra-Efficient Compressed Phonocardiogram Classification on a Custom Embedded Neural Accelerator

Academic Article
Publication Date:
2025
abstract:
Real-time phonocardiogram analysis on embedded devices is a key enabler for scalable and accessible cardiovascular diagnostics, particularly considering portable systems designed for low-income countries. This work introduces a combination of compressive sensing and deep learning to build portable, efficient and effective diagnostic tools for widespread cardiac screenings. The proposed classification framework is tailored for deployment on ultra-low power STM32 microcontrollers equipped with the novel Neural-ART accelerator. Experimental evaluation on the CirCor Digiscope Phonocardiogram dataset demonstrates that even with a compression ratio exceeding 100×, a classification model can achieve up to 97.3% F1-score. A similar level of performance was obtained on the PhysioNet 2016 dataset, which was used to assess the robustness and generalization capability of the developed architectures. Compared to the state-of-the-art, our final edge solution achieves 94.3% accuracy, an inference time of 18.7 ms and an energy requirement of just 1.51 mJ per input window of 4,096 samples, confirming its suitability for real-time, energy-constrained medical applications.
Iris type:
1.1 Articolo in rivista
Keywords:
Cardiovascular Diseases; Compressive Sensing; Edge AI; Neural Accelerator; Phonocardiogram
List of contributors:
Ragusa, Domenico; Baeyens, Rens; Pau, Danilo; Marenzi, Elisa; Steckel, Jan; Daems, Walter; Leporati, Francesco; Torti, Emanuele
Authors of the University:
LEPORATI FRANCESCO
MARENZI ELISA
RAGUSA DOMENICO
TORTI EMANUELE
Handle:
https://iris.unipv.it/handle/11571/1540115
Published in:
IEEE INTERNET OF THINGS JOURNAL
Journal
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URL

https://ieeexplore.ieee.org/document/11263842
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