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Segmenting and classifying lung diseases with M-Segnet and Hybrid Squeezenet-CNN architecture on CT images

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  • Syed Mohammed Shafi
  • Sathiya Kumar Chinnappan

Abstract

Diagnosing lung diseases accurately and promptly is essential for effectively managing this significant public health challenge on a global scale. This paper introduces a new framework called Modified Segnet-based Lung Disease Segmentation and Severity Classification (MSLDSSC). The MSLDSSC model comprises four phases: "preprocessing, segmentation, feature extraction, and classification." Initially, the input image undergoes preprocessing using an improved Wiener filter technique. This technique estimates the power spectral density of the noisy and original images and computes the SNR assisted by PSNR to evaluate image quality. Next, the preprocessed image undergoes Segmentation to identify and separate the RoI from the background objects in the lung image. We employ a Modified Segnet mechanism that utilizes a proposed hard tanh-Softplus activation function for effective Segmentation. Following Segmentation, features such as MLDN, entropy with MRELBP, shape features, and deep features are extracted. Following the feature extraction phase, the retrieved feature set is input into a hybrid severity classification model. This hybrid model comprises two classifiers: SDPA-Squeezenet and DCNN. These classifiers train on the retrieved feature set and effectively classify the severity level of lung diseases.

Suggested Citation

  • Syed Mohammed Shafi & Sathiya Kumar Chinnappan, 2024. "Segmenting and classifying lung diseases with M-Segnet and Hybrid Squeezenet-CNN architecture on CT images," PLOS ONE, Public Library of Science, vol. 19(5), pages 1-31, May.
  • Handle: RePEc:plo:pone00:0302507
    DOI: 10.1371/journal.pone.0302507
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