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Heartbeat analysis using Deep Learning, Signal Processing, and AI Agents.

Project description

🎵 Heart Murmur Detection with LSTM

A deep learning application that uses LSTM neural networks to detect heart murmurs from audio recordings. The application provides a user-friendly Streamlit interface for uploading audio files and getting real-time predictions with signal processing.


Heart_Murmur_Pipelinee drawio ---

Quick Start

Prerequisites

  • Python 3.9 or higher
  • Windows 10/11 (PowerShell)
  • Git (optional, for cloning)

Installation Steps

  1. Create Virtual Environment

    python -m venv hvenv
    
  2. Activate Virtual Environment

    hvenv\Scripts\Activate.ps1
    

    You should see (hvenv) at the beginning of your command prompt.

  3. Install the package

    pip install heart-murmur-analysis
    
  4. Run the Application

    streamlit run test_file.py
    

    Download the test_file.py

  5. Access the Application

    • Open your web browser
    • Navigate to http://localhost:8501
    • Upload a WAV or MP3 audio file
    • Get instant heart murmur predictions with signal processing !

🧠 Concepts & Terminologies

Heart Sounds

  • S1 ("Lub"): Closing of the mitral and tricuspid valves.
  • S2 ("Dub"): Closing of the aortic and pulmonary valves.
  • Murmur: Abnormal sound caused by turbulent blood flow.
  • Artifact: Noise unrelated to actual heart sounds (e.g., movement, microphone noise).

🛠️ Signal Processing Pipeline

1. Preprocessing

  • Bandpass Filter (20–500 Hz): Retains important heart sound frequencies while removing noise.
  • Envelope Detection: Smooths the waveform to highlight heartbeats for peak detection.

2. Extracted Metrics

The application extracts several clinical metrics to assist in diagnosis:

Metric Description
BPM Average heart rate in beats per minute.
IBV/IBI Inter-Beat Interval – time between successive heartbeats.
HRV Heart Rate Variability (SDNN, RMSSD, pNN50).
SNR Signal-to-Noise Ratio (recording quality).
S1/S2 Ratio Helps distinguish murmurs from normal beats.
Spectral Energy Energy distribution below 200 Hz.

📊 Visualizations

  • Waveform with Peaks: Visualizes detected beats.
  • Spectrogram: Frequency vs. time representation.
  • Poincaré Plot: Nonlinear HRV visualization.

🤖 Model Architecture

The LSTM model uses a hybrid CNN-LSTM architecture:

  • Input: Raw audio data (52 timesteps).
  • CNN Layers: 3 Conv1D layers for feature extraction.
  • LSTM Layers: 2 LSTM layers for temporal modeling.
  • Output: 3 classes (Normal, Murmur, Artifact).

Contributing

  1. Fork the repository
  2. Create a feature branch
  3. Make your changes
  4. Test thoroughly
  5. Submit a pull request

Happy Heart Murmur Detection!

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