Sachnaz Desta Oktarina
Program Studi Statistika dan Sains Data, Institut Pertanian Bogor, Bogor, 16680, Indonesia
Deswita Nur Alpharofi
Program Studi Statistika dan Sains Data, Institut Pertanian Bogor, Bogor, 16680, Indonesia
Delita Nur Hasanah
Program Studi Statistika dan Sains Data, Institut Pertanian Bogor, Bogor, 16680, Indonesia
Rizky Kurniawan
Program Studi Statistika dan Sains Data, Institut Pertanian Bogor, Bogor, 16680, Indonesia
Faiz Aji Muzakki
Program Studi Statistika dan Sains Data, Institut Pertanian Bogor, Bogor, 16680, Indonesia
Muhammad Tsaqif Najdmuddin
Program Studi Statistika dan Sains Data, Institut Pertanian Bogor, Bogor, 16680, Indonesia
Rahma Anisa
Program Studi Statistika dan Sains Data, Institut Pertanian Bogor, Bogor, 16680, Indonesia
DOI: https://doi.org/10.19184/mims.v25i2.53746
ABSTRACT
Pneumonia is a leading cause of death among children under five, accounting for 14% of fatalities. Chest X-ray analysis is a key method for diagnosis, but many developing countries have only one radiologist per million people, making timely detection difficult. To address this challenge, Convolutional Neural Networks (CNN) offer a viable solution due to their ability to analyze visual data efficiently. This study evaluates two CNN architectures, VGG19 and ResNet-50, considering their effectiveness in pneumonia detection. Both models were trained using two different optimizers, SGDM and Adam, to determine the best combination for accurate classification. Results using test data indicate that VGG19 with the Adam optimizer achieves the highest accuracy at 90%, surpassing other models which recorded 62%, 77%, and 84% without overfitting. This highlights the potential of artificial intelligence driven diagnostic tools in bridging healthcare gaps and improving pneumonia detection in resource-limited settings.
Keywords: Classification, CNN, Optimizer, Pneumonia
MSC2020: 62