Development of an Intelligent Software Solution for Artificial Intelligence Enabled Stethoscope: Accurate Coronary Artery Disease Diagnosis and Real-time Feedback System
Abstract
Although the classic stethoscope has long been a crucial diagnostic tool for cardiac
conditions, it has an elementary level of accuracy in its diagnosis capability. Mainly,
the diagnostic capability of a traditional stethoscope relies on the listener’s experience
and expertise. The proportion of cardiac patients is increasing day by day due to the low
accuracy rate of the traditional stethoscope. In addition, it has very limited capability to
provide real-time feedback during auscultation. This study aims to develop a software
prototype for a tube-free intelligent stethoscope that not only diagnoses heart diseases
but also provides real-time feedback and guidance during heart auscultation. This
uses modern machine learning algorithms and real-time signal processing to diagnose
heart problems accurately and immediately while providing real-time feedback to assist
physicians during heart auscultations. The study was mainly based on Coronary Artery
Disease (CAD). It captured audio signals from the patient’s heart using sensors, and
thereby the collected audio signals are pre-processed and converted into spectrograms
using a Short-time Fourier Transform for frequency domain analysis. Then the trained
Convolutional Neural Network model achieves a high accuracy rate in differentiating
between normal and abnormal heart sounds, enabling accurate CAD diagnosis. Finally,
the study received an accuracy rate of 65%. This research has significant implications
for cardiology and healthcare, revolutionizing heart disease diagnosis by enabling faster,
more accurate, effective, and early diagnosis. The integration of real-time feedback and
guidance during auscultation provides valuable insights for effective diagnosis and future
enhancements in clinical settings