Deep learning analysis of blood flow sounds to detect arteriovenous fistula stenosis

G. Wayne Zhou(Cornell University), Yunchan Chen(Cornell University), Candace Chien(Cornell University), Leslie Revatta(City University of New York), Jannatul Ferdous(City University of New York), Michelle Chen(City University of New York), Shourov Deb(City University of New York), Sol De leon cruz(City University of New York), Alan Wang(Cornell University), Benjamin C. Lee(Cornell University), Mert R. Sabuncu(Cornell University), William F. Browne(NewYork–Presbyterian Hospital), Herrick Wun(NewYork–Presbyterian Hospital), Bobak Mosadegh(Cornell University)
npj Digital Medicine
September 1, 2023
Cited by 24Open Access
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Abstract

For hemodialysis patients, arteriovenous fistula (AVF) patency determines whether adequate hemofiltration can be achieved, and directly influences clinical outcomes. Here, we report the development and performance of a deep learning model for automated AVF stenosis screening based on the sound of AVF blood flow using supervised learning with data validated by ultrasound. We demonstrate the importance of contextualizing the sound with location metadata as the characteristics of the blood flow sound varies significantly along the AVF. We found the best model to be a vision transformer trained on spectrogram images. Our model can screen for stenosis at a performance level comparable to that of a nephrologist performing a physical exam, but with the advantage of being automated and scalable. In a high-volume, resource-limited clinical setting, automated AVF stenosis screening can help ensure patient safety via early detection of at-risk vascular access, streamline the dialysis workflow, and serve as a patient-facing tool to allow for at-home, self-screening.


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