Explainable Machine Learning Techniques in Medical Image Analysis Based on Classification with Feature Extraction

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Dr. B. Dwarakanath
Dr. Gitanjali Shrivastava
Dr. Rohit Bansal
Praful Nandankar
Dr. Veera Talukdar
M Ahmer Usmani

Abstract

Animals are also afflicted by COVID-19, a virus that is quickly spreading and infects both humans and animals. This fatal viral disease has an impact on people's daily lives, health, and economy of a nation. Most effective machine learning method is deep learning, which offers insightful analysis for examining a significant number of chest x-ray pictures that have a significant bearing on COVID-19 screening. This research proposes novel technique in lung image analysis for detection of lung infection due to COVID using Explainable Machine learning techniques. Here the input has been collected as COVID patient’s lung image dataset and it has been processed for noise removal and smoothening. This processed image features have been extracted using spatio transfer neural network integrated with DenseNet+ architecture. Extracted features has been classified using stacked auto Boltzmann encoder machine with VGG-19Net+. With the transfer learning method integrated into the binary classification process, the suggested algorithm achieves good classification accuracy. The experimental analysis has been carried out for various COVID dataset in terms of accuracy, precision, Recall, F-1score, RMSE, MAP. The proposed technique attained accuracy of 95%, precision of 91%, recall of 85%, F_1 score of 80%, RMSE of 61% and MAP of 51%.

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How to Cite
Dwarakanath, D. B., Shrivastava, D. G. ., Bansal, D. R. ., Nandankar, P. ., Talukdar , D. V. ., & Usmani, M. A. . (2023). Explainable Machine Learning Techniques in Medical Image Analysis Based on Classification with Feature Extraction. International Journal of Communication Networks and Information Security (IJCNIS), 14(3), 342–357. Retrieved from https://ijcnis.org/index.php/ijcnis/article/view/5633 (Original work published December 31, 2022)
Section
Research Articles