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Detecting and Visualising the Infectious Regions of COVID-19 in X-ray Images and CT scans Using Different Pretrained-Networks in Tensorflow 2.x.

The Corona Virus Disease 2019 (COVID-19) pandemic continues to have an upsetting effect on the health and well-being of the global population. A critical step in the fight against COVID-19 is effective screening of infected patients, with one of the key screening approaches being radiological imaging using chest radiography. It was found in early studies that patients present abnormalities in chest radiography images that are characteristic of those infected with COVID-19 as discussed in a recent [Paper]. Therefore, in this Repository I have tested different Pretrained Networks for the detection of COVID-19 cases from chest radiography images that is open source and available to the general public. Finally a Novel Method will be introduced to get the maximum of Positive Predicted Values from these Pretrained Networks.

Table of Contents

Dataset Description:

Dataset 01-Chest XRays:

Dataset 01 is the first version introduced by the authors of the [Paper]. This dataset is comprised of a total of 5949 posetrior chest radiography images across 2839 patients. I have write a python script to categorize each X-ray image in the raw data folder to a separate Class as per corresponding label. The original data distribution was

Category Number of Patients Number of X-rays
0: Normal 1203 1583
1: Bacteria 931 2786
2: Viral 660 1504
3: COVID-19 45 76

I have split the original data to train/test folders with following distrubtuions. This categorized dataset can be downloaded at Here. I have also write a python Script to make the NumpyFiles for the train/test images but without any normalization so that one can normalize the data as per his/her need. These NumpyFiles can also be accessed at Here.

Category Train Test
0: Normal 1349 234
1: Bacteria 2540 246
2: Viral 1355 149
3: COVID-19 66 10

Dataset 02-Chest XRays:

Dataset 02 is the second version introduced by the authors of the [Paper]. One can follow the steps given Here to generate this dataset. The NumpyFiles for this data can also be accessed at Here. The distribution of these Numpy files are as followed.

Category Train Test
0: Normal 8751 100
1: Pneumonia 5945 100
2: COVID-19 229 31

Dataset 03-CT Scans:

Dataset 03 is a generated version of three different datasets. Two of these datasets were origginally developed for segmentation tasks and can be found at Here and one is developed for identification/diagnosis task and can be found at Here. One can follow this simple Script to generate this dataset.

Pretrained Networks for COVID-19 Detection for Dataset 01-Chest XRays:

The core idea behind the Pretrained Networks and Transfer Learning can be studied in detail at my another GitHubRepository at Here. I have used the following Pretrained Networks for COVID-19 Detection. Each Pretrained Network is also described with its train/test History and a Confusion-Matrix for better visualization of the Generalization of the Trained Network.

VGG-16:

Code: Google Colab Notebook

Statistical Results:
alt-text-1 alt-text-2
Pretrained-VGG16 Accuracy-Graph Pretrained-VGG16 Loss-Graph
alt-text-1 alt-text-2
Pretrained-VGG16 Confusion Matrix Pretrained-VGG16 ROC
Visualization:

VGG-19:

Implementation:

Code: Google Colab Notebook

Statistical Results:
alt-text-1 alt-text-2
Pretrained-VGG19 Accuracy-Graph Pretrained-VGG19 Loss-Graph
alt-text-1 alt-text-2
Pretrained-VGG19 Confusion Matrix Pretrained-VGG19 ROC
Visualization:

DenseNet-121:

Code: Google Colab Notebook

Statistical Results:
alt-text-1 alt-text-2
Pretrained-DenseNet121 Accuracy-Graph Pretrained-DenseNet121 Loss-Graph
alt-text-1 alt-text-2
Pretrained-DenseNet121 Confusion Matrix Pretrained-DenseNet121 ROC
Visualization:

Pretrained Networks for COVID-19 Detection for Dataset 02-Chest XRays:

MobileNet-V2:

Code: Google Colab Notebook

Statistical Results:
alt-text-1 alt-text-2
Pretrained-MobileNetV2 Accuracy-Graph Pretrained-MobileNetV2 Loss-Graph
alt-text-1 alt-text-2
Pretrained-MobileNetV2 Confusion Matrix Pretrained-MobileNetV2 ROC
Visualization:

DenseNet-169:

Code: Google Colab Notebook

Statistical Results:
alt-text-1 alt-text-2
Pretrained-DenseNet169 Accuracy-Graph Pretrained-DenseNet169 Loss-Graph
alt-text-1 alt-text-2
Pretrained-DenseNet169 Confusion Matrix Pretrained-DenseNet169 ROC
Visualization:

Pretrained Networks for COVID-19 Detection for Dataset 03-CT Scans:

Code: Google Colab Notebook

Statistical Results:
alt-text-1 alt-text-2
Pretrained-DenseNet121 Confusion Matrix Pretrained-DenseNet121 ROC
Visualization:

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