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Stacked ensemble model based pulmonary abnormality detection: Improved chi-square feature selection including Wavelet

Nambi Rajeswari G1, B Leena2

  • 1Department of Computer Science and Engineering, JCT College of Engineering and Technology, Coimbatore, Tamil Nadu 641105, India.

Computational Biology and Chemistry
|June 19, 2026
PubMed
Summary

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This summary is machine-generated.

This study introduces a new stacked ensemble model (SEM) for pulmonary abnormality detection using respiratory sounds. The method accurately identifies lung abnormalities, aiding early diagnosis of respiratory disorders.

Area of Science:

  • Medical Signal Processing
  • Machine Learning for Healthcare
  • Respiratory Medicine

Background:

  • Respiratory sound analysis offers a non-invasive approach for early detection of pulmonary disorders.
  • Existing methods for respiratory sound analysis can be enhanced with advanced signal processing and machine learning.
  • A comprehensive database of respiratory sounds is crucial for developing robust diagnostic tools.

Purpose of the Study:

  • To develop a novel stacked ensemble model based Pulmonary Abnormality Detection (SEM based PAD) system.
  • To automatically identify and categorize pulmonary abnormalities from respiratory sound recordings.
  • To improve the accuracy and efficiency of respiratory disorder diagnosis.

Main Methods:

  • Preprocessing of respiratory sound signals using Improved Wiener filtering (IWF).
Keywords:
Improved Statistical parameterImproved Wiener filteringImproved chi-squarePulmonary AbnormalityScore Level Fusion

Related Experiment Videos

  • Extraction of statistical features with Improved Statistical Parameter Determination (ISPD).
  • Feature selection using Improved Chi-square and classification via a stacked ensemble model (SEM) combining Squeeze Net, SVM, and CNN, with outcomes determined by Improved Score Level Fusion (ISLF).
  • Main Results:

    • The SEM based PAD system demonstrated high accuracy in detecting pulmonary abnormalities from respiratory sounds.
    • The combination of advanced signal processing and ensemble machine learning significantly improved detection capabilities.
    • The feature selection and fusion techniques contributed to a robust and efficient diagnostic model.

    Conclusions:

    • The developed SEM based PAD method shows significant promise for the early and accurate detection of respiratory disorders.
    • This approach can serve as a valuable tool for physicians and researchers in diagnosing lung conditions.
    • Further validation and implementation of this system could enhance pulmonary health monitoring and patient outcomes.