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The goal is to demonstrate the ability of convolution neural networks in differentiating covid-19 from community-acquired pneumonia.

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Pradip240/Covid-19-Chest-X-ray

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Covid-19-Chest-X-ray

Introduction:

In the recent pandemic, it is essential to get diagnosis fast to prevent cross-contamination in hospitals and start early treatment to save patients’ life. Diagnosis of Covid from X-ray is faster than any other lab test.

Problem Statement:

Build a classification model to Diagnosis of Covid from X-ray.

Data preparation:

• Removed null values from the dataset.

• Redistibuted test and train data split.

• Used augmentation techniques like adjusting brightness, zooming, random cropping, rotating, and flipping the images.

Conclusion:-

Developed a CNN model with Alex-net architect and acquire the Recall rate of 72%. Which is better than a rapid antigen test.

Epoch 1/100 42/42 [==============================] - 735s 17s/step - loss: 491.4482 - TP: 2010.6047 - TN: 4846.3256 - FP: 774.4186 - FN: 799.7674 - AUC: 0.6906 - Recall: 0.6735 - val_loss: 9.8583 - val_TP: 873.0000 - val_TN: 2055.0000 - val_FP: 309.0000 - val_FN: 309.0000 - val_AUC: 0.7135 - val_Recall: 0.7386

Epoch 100/100 42/42 [==============================] - 344s 8s/step - loss: 1.8391 - TP: 2307.8140 - TN: 5089.0465 - FP: 436.2558 - FN: 454.8372 - AUC: 0.9005 - Recall: 0.8393 - val_loss: 1.7527 - val_TP: 878.0000 - val_TN: 2062.0000 - val_FP: 302.0000 - val_FN: 304.0000 - val_AUC: 0.7028 - val_Recall: 0.7428

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The goal is to demonstrate the ability of convolution neural networks in differentiating covid-19 from community-acquired pneumonia.

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