Journal Article10.32604/cmes.2023.031425
Robust Machine Learning Technique to Classify COVID-19 Using Fusion of Texture and Vesselness of X-Ray Images
Shaik Mahaboob Basha,Victor Hugo C. de Albuquerque,Samia Allaoua Chelloug,Mohamed Abd Elaziz,Shaik Hashmitha Mohisin,Suhail Parvaze Pathan +5 more
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TL;DR: A robust machine learning technique is proposed to classify COVID-19 using fusion of texture and vesselness features from X-ray images, achieving 91.8% accuracy with Random Forest-based classifier and 97% true positive rate for COVID-19 diagnosis.
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Abstract: Manual investigation of chest radiography (CXR) images by physicians is crucial for effective decision-making in COVID-19 diagnosis. However, the high demand during the pandemic necessitates auxiliary help through image analysis and machine learning techniques. This study presents a multi-threshold-based segmentation technique to probe high pixel intensity regions in CXR images of various pathologies, including normal cases. Texture information is extracted using gray co-occurrence matrix (GLCM)-based features, while vessel-like features are obtained using Frangi, Sato, and Meijering filters. Machine learning models employing Decision Tree (DT) and Random Forest (RF) approaches are designed to categorize CXR images into common lung infections, lung opacity (LO), COVID-19, and viral pneumonia (VP). The results demonstrate that the fusion of texture and vessel-based features provides an effective ML model for aiding diagnosis. The ML model validation using performance measures, including an accuracy of approximately 91.8% with an RF-based classifier, supports the usefulness of the feature set and classifier model in categorizing the four different pathologies. Furthermore, the study investigates the importance of the devised features in identifying the underlying pathology and incorporates histogram-based analysis. This analysis reveals varying natural pixel distributions in CXR images belonging to the normal, COVID-19, LO, and VP groups, motivating the incorporation of additional features such as mean, standard deviation, skewness, and percentile based on the filtered images. Notably, the study achieves a considerable improvement in categorizing COVID-19 from LO, with a true positive rate of 97%, further substantiating the effectiveness of the methodology implemented.
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Citations
Attention induced multi-head convolutional neural network organization with MobileNetv1 transfer learning and COVID-19 diagnosis using jellyfish search optimization process on chest X-ray images
M. Ramkumar,M. S. Gowtham,S. Syed Jamaesha,M. Vigenesh +3 more
TL;DR: C19D-AIMCNN-MNet-JSOA model diagnoses COVID-19 using chest X-ray images with high accuracy and low computation time.
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Lung Opacity Classification in Chest X-Ray Images with a DenseNet201 Transfer Learning-Based Pre-Trained Convolutional Neural Network Model
Muskan Singla,Kanwarpartap Singh Gill,Kapil Rajput,Vijay Singh +3 more
- 17 Apr 2024
TL;DR: Lung opacity classification in chest X-ray images using transfer learning and DenseNet201 model achieves a 79% success rate.
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Transfer Learning-Based Lung Opacity Classification in Chest X-ray Image Dataset utilizing VGG16 pre-trained CNN Model
Muskan Singla,Kanwarpartap Singh Gill,Priyanshi Aggarwal,Ramesh Singh Rawat +3 more
- 26 Jul 2024
TL;DR: This study applies transfer learning with VGG16 to classify lung opacity in chest X-rays, utilizing Keras and DICOM compatibility, and evaluates model performance with precision, recall, and F1-score metrics, demonstrating efficacy in medical imaging.
Optimizing Lung Opacity Classification in Chest X-ray Images through Transfer Learning on VGG19 CNN Model
Muskan Singla,Kanwarpartap Singh Gill,Deepak Upadhyay,Swati Devliyal +3 more
- 03 May 2024
TL;DR: Transfer learning with VGG19 CNN model for optimizing lung opacity classification in chest X-ray images. The study explores data preprocessing, augmentation, model optimization, and evaluation techniques to achieve accurate classification.
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