A Novel Transfer Learning Based Approach for Pneumonia Detection in Chest X-ray Images
Abstract
:1. Introduction
2. Methods
2.1. Outline of Methodology
2.2. Data Pre-Processing and Augmentation
2.3. Convolutional Neural Networks and the Use of Transfer Learning
2.4. Pretrained Neural Networks
2.4.1. AlexNet Architecture
2.4.2. DenseNet121 Architecture
2.4.3. ResNet18 Architecture
2.4.4. Inception V3 Architecture
2.4.5. GoogLeNet Architecture
2.4.6. Ensemble Classification
2.5. Dataset
3. Results
3.1. Results
3.2. Comparison
4. Discussion
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Category | Training Set (No. of Images) | Test Set (No. of Images) |
---|---|---|
Normal | 1349 | 234 |
Pneumonia | 3883 | 390 |
Total | 5232 | 624 |
Model | Epoch | Recall (%) | Precision (%) | AUC (%) | Test Accuracy (%) |
---|---|---|---|---|---|
AlexNet | 200 | 98.97 | 90.21 | 97.83 | 92.86 |
DenseNet121 | 100 | 99.23 | 91.18 | 98.78 | 92.62 |
InceptionV3 | 100 | 98.46 | 90.30 | 97.33 | 92.01 |
GoogLeNet | 50 | 99.48 | 90.44 | 98.29 | 93.12 |
ResNet18 | 200 | 99.48 | 91.58 | 99.36 | 94.23 |
Ensemble model | − | 99.62 | 93.28 | 99.34 | 96.39 |
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Chouhan, V.; Singh, S.K.; Khamparia, A.; Gupta, D.; Tiwari, P.; Moreira, C.; Damaševičius, R.; de Albuquerque, V.H.C. A Novel Transfer Learning Based Approach for Pneumonia Detection in Chest X-ray Images. Appl. Sci. 2020, 10, 559. https://doi.org/10.3390/app10020559
Chouhan V, Singh SK, Khamparia A, Gupta D, Tiwari P, Moreira C, Damaševičius R, de Albuquerque VHC. A Novel Transfer Learning Based Approach for Pneumonia Detection in Chest X-ray Images. Applied Sciences. 2020; 10(2):559. https://doi.org/10.3390/app10020559
Chicago/Turabian StyleChouhan, Vikash, Sanjay Kumar Singh, Aditya Khamparia, Deepak Gupta, Prayag Tiwari, Catarina Moreira, Robertas Damaševičius, and Victor Hugo C. de Albuquerque. 2020. "A Novel Transfer Learning Based Approach for Pneumonia Detection in Chest X-ray Images" Applied Sciences 10, no. 2: 559. https://doi.org/10.3390/app10020559