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Dual_Pachi: Attention-based dual path framework with intermediate second order-pooling for Covid-19 detection from chest X-ray images. | LitMetric

AI Article Synopsis

  • Recent advancements in machine learning, particularly deep learning, help in recognizing and classifying COVID-19 in medical images, but they struggle with feature extraction, which leads to less accurate results.
  • This study introduces Dual_Pachi, an innovative framework designed for improved feature extraction from chest X-rays, utilizing a structure that includes converting images into specific color spaces and employing a multi-head self-attention mechanism.
  • Testing shows that Dual_Pachi significantly outperforms traditional deep learning methods, achieving high accuracy levels while also providing visual insights into how attention is applied in the classification process.

Article Abstract

Numerous machine learning and image processing algorithms, most recently deep learning, allow the recognition and classification of COVID-19 disease in medical images. However, feature extraction, or the semantic gap between low-level visual information collected by imaging modalities and high-level semantics, is the fundamental shortcoming of these techniques. On the other hand, several techniques focused on the first-order feature extraction of the chest X-Ray thus making the employed models less accurate and robust. This study presents Dual_Pachi: Attention Based Dual Path Framework with Intermediate Second Order-Pooling for more accurate and robust Chest X-ray feature extraction for Covid-19 detection. Dual_Pachi consists of 4 main building Blocks; Block one converts the received chest X-Ray image to CIE LAB coordinates (L & AB channels which are separated at the first three layers of a modified Inception V3 Architecture.). Block two further exploit the global features extracted from block one via a global second-order pooling while block three focuses on the low-level visual information and the high-level semantics of Chest X-ray image features using a multi-head self-attention and an MLP Layer without sacrificing performance. Finally, the fourth block is the classification block where classification is done using fully connected layers and SoftMax activation. Dual_Pachi is designed and trained in an end-to-end manner. According to the results, Dual_Pachi outperforms traditional deep learning models and other state-of-the-art approaches described in the literature with an accuracy of 0.96656 (Data_A) and 0.97867 (Data_B) for the Dual_Pachi approach and an accuracy of 0.95987 (Data_A) and 0.968 (Data_B) for the Dual_Pachi without attention block model. A Grad-CAM-based visualization is also built to highlight where the applied attention mechanism is concentrated.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9671873PMC
http://dx.doi.org/10.1016/j.compbiomed.2022.106324DOI Listing

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