DSpace Repository

Enhancing Pneumonia Detection in Pediatric Chest X-Rays Using CGAN-Augmented Datasets and Lightweight Deep Transfer Learning Models.

Show simple item record

dc.contributor.author Mohamed, Coulibaly
dc.contributor.author Mwangi, Ronald Waweru
dc.contributor.author Kihoro, John M
dc.date.accessioned 2024-05-21T06:38:13Z
dc.date.available 2024-05-21T06:38:13Z
dc.date.issued 2024-01-18
dc.identifier.citation Mohamed, C., Mwangi, R.W. and Kihoro, J.M. (2024) Enhancing Pneumonia Detection in Pedia- tric Chest X-Rays Using CGAN-Augmented Datasets and Lightweight Deep Transfer Learning Models. Journal of Data Analysis and Information Processing, 12, 1-23. https://doi.org/10.4236/jdaip.2024.121001 en_US
dc.identifier.issn ISSN Online: 2327-7203
dc.identifier.issn ISSN Print: 2327-7211
dc.identifier.uri https://repository.cuk.ac.ke/handle/123456789/1328
dc.description A research article published in the Journal of Data Analysis and Information Processing. en_US
dc.description.abstract Pneumonia ranks as a leading cause of mortality, particularly in children aged five and under. Detecting this disease typically requires radiologists to examine chest X-rays and report their findings to physicians, a task susceptible to human error. The application of Deep Transfer Learning (DTL) for the identification of pneumonia through chest X-rays is hindered by a shortage of available images, which has led to less than optimal DTL performance and issues with overfitting. Overfitting is characterized by a model’s learning that is too closely fitted to the training data, reducing its effectiveness on unseen data. The problem of overfitting is especially prevalent in medical image processing due to the high costs and extensive time required for image annotation, as well as the challenge of collecting substantial datasets that also respect patient privacy concerning infectious diseases such as pneumonia. To mitigate these challenges, this paper introduces the use of conditional generative adversarial networks (CGAN) to enrich the pneumonia dataset with 2690 synthesized X-ray images of the minority class, aiming to even out the dataset distribution for improved diagnostic performance. Subsequently, we applied four modified lightweight deep transfer learning models such as Xception, MobileNetV2, MobileNet, and EfficientNetB0. These models have been fine-tuned and evaluated, demonstrating remarkable detection accuracies of 99.26%, 98.23%, 97.06%, and 94.55%, respectively, across fifty epochs. The experimental results validate that the models we have proposed achieve high detection accuracy rates, with the best model reaching up to 99.26% effectiveness, outperforming other models in the diagnosis of pneumonia from X-ray images. en_US
dc.language.iso en en_US
dc.publisher Scientific research publishing. en_US
dc.subject Pneumonia Detection. en_US
dc.subject Pediatric Radiology. en_US
dc.subject CGAN (Conditional Generative Adversarial Networks). en_US
dc.subject Deep Transfer Learning. en_US
dc.subject Medical Image Analysis. en_US
dc.title Enhancing Pneumonia Detection in Pediatric Chest X-Rays Using CGAN-Augmented Datasets and Lightweight Deep Transfer Learning Models. en_US
dc.type Article en_US


Files in this item

This item appears in the following Collection(s)

Show simple item record

Search DSpace


Advanced Search

Browse

My Account