Early detection of COVID19 by deep learning transfer Model for populations in isolated rural areas

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Abstract

To combat the spread of COVID 19, the World Health Organization suggests a large-scale implementation of COVID 19 tests. Unfortunately, these tests are expensive and cannot be provided and available for people in rural and remote areas. To remedy this problem, we will develop an intelligent clinical decision support system (SADC) for the early diagnosis of COVID 19 from chest X-rays which are more accessible for people in rural areas. Thus, we collected a total of 566 radiological images classified into 3 classes: a class of COVID19 type, a Class of Pneumonia type and a class of Normal type. In the experimental analysis, 70% of the data set was used as training set and 30% was used as the test set. After preprocessing process, we use some augmentation using a rotation, a horizontal flip, a channel shift and rescale. Our finale classifier achieved the best performance with test accuracy of 99%, f1score 98%, precision of 98.60% and sensitivity 98.30%.

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APA

Qjidaa, M., Mechbal, Y., Ben-Fares, A., Amakdouf, H., Maaroufi, M., Alami, B., & Qjidaa, H. (2020). Early detection of COVID19 by deep learning transfer Model for populations in isolated rural areas. In 2020 International Conference on Intelligent Systems and Computer Vision, ISCV 2020. Institute of Electrical and Electronics Engineers Inc. https://doi.org/10.1109/ISCV49265.2020.9204099

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