Study of Different Deep Learning Approach with Explainable AI for
Screening Patients with COVID-19 Symptoms: Using CT Scan and Chest X-ray
Image Dataset
- URL: http://arxiv.org/abs/2007.12525v1
- Date: Fri, 24 Jul 2020 13:51:58 GMT
- Title: Study of Different Deep Learning Approach with Explainable AI for
Screening Patients with COVID-19 Symptoms: Using CT Scan and Chest X-ray
Image Dataset
- Authors: Md Manjurul Ahsan, Kishor Datta Gupta, Mohammad Maminur Islam, Sajib
Sen, Md. Lutfar Rahman, Mohammad Shakhawat Hossain
- Abstract summary: The outbreak of COVID-19 disease caused more than 100,000 deaths so far in the USA alone.
It is becoming laborious to conduct the tests with the available testing kits due to the growing number of patients.
This study aims to develop a deep learning-based model that can detect COVID-19 patients with better accuracy both on CT scan and chest X-ray image dataset.
- Score: 1.4680035572775532
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The outbreak of COVID-19 disease caused more than 100,000 deaths so far in
the USA alone. It is necessary to conduct an initial screening of patients with
the symptoms of COVID-19 disease to control the spread of the disease. However,
it is becoming laborious to conduct the tests with the available testing kits
due to the growing number of patients. Some studies proposed CT scan or chest
X-ray images as an alternative solution. Therefore, it is essential to use
every available resource, instead of either a CT scan or chest X-ray to conduct
a large number of tests simultaneously. As a result, this study aims to develop
a deep learning-based model that can detect COVID-19 patients with better
accuracy both on CT scan and chest X-ray image dataset. In this work, eight
different deep learning approaches such as VGG16, InceptionResNetV2, ResNet50,
DenseNet201, VGG19, MobilenetV2, NasNetMobile, and ResNet15V2 have been tested
on two dataset-one dataset includes 400 CT scan images, and another dataset
includes 400 chest X-ray images studied. Besides, Local Interpretable
Model-agnostic Explanations (LIME) is used to explain the model's
interpretability. Using LIME, test results demonstrate that it is conceivable
to interpret top features that should have worked to build a trust AI framework
to distinguish between patients with COVID-19 symptoms with other patients.
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