Ensemble fusion model for improved lung abnormality classification: Leveraging pre-trained models.

Suresh Kumar Samarla, Maragathavalli P
Author Information
  1. Suresh Kumar Samarla: Information Technology, Puducherry Technological University, Puducherry, India.
  2. Maragathavalli P: Information Technology, Puducherry Technological University, Puducherry, India.

Abstract

Lung abnormalities pose significant health concerns, underscoring the need for swift and accurate diagnoses to facilitate timely medical intervention. This study introduces a novel methodology for the sub-classification of lung abnormalities within chest X-rays captured via smartphones. An accurate and timely diagnosis of lung abnormalities is essential for the successful implementation of appropriate therapy. In this paper, we propose a novel approach using a Convolutional neural network (CNN) with three maximum pooling layers and early fusion for sub-classifying lung abnormalities from chest Xrays. Based on the kind of abnormality, the CheXpert dataset is divided into 13 sub-classes, each of which is trained using a different sub-model. An early fusion procedure is then used to integrate the outputs of the sub-model.•3M-CNN (Method 1): We employed a Convolutional Neural Network (CNN) with three max pooling layers and an early fusion strategy to train dedicated sub-models for each of the 13 distinct sub-classes of lung abnormalities using the CheXpert dataset.•Ensemble Model (Method 2): Our 'Ensemble model' integrated the outputs of the trained sub-models, providing a powerful approach for the sub-classification of lung abnormalities.•Exceptional Accuracy: Our '3M-CNN' and 'fused model' achieved an accuracy of 98.79%, surpassing established methodologies, which is beneficial in resource-constrained environments embracing smartphone-based imaging.

Keywords

References

  1. Inform Med Unlocked. 2020;20:100391 [PMID: 32835077]
  2. MethodsX. 2021;8:101408 [PMID: 34109106]
  3. Cancers (Basel). 2022 Nov 13;14(22): [PMID: 36428662]
  4. Diagnostics (Basel). 2023 Jan 03;13(1): [PMID: 36611451]

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