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Machine Learning Approach for COVID-19 Detection Using Chest X-Ray Images

Deep Learning Model with Transfer Learning Optimization

Penulis: Prof. Dr. Mada Rahman, S.Kom., M.T., Dr. Lisa Chen, Ph.D., Dr. Ahmad Wijaya, S.T., M.T.

Penulis Korespondensi: Prof. Dr. Mada Rahman, S.Kom., M.T.

Jurnal: 2024 IEEE International Conference on Artificial Intelligence and Machine Learning

Penerbit: IEEE

Tanggal Publikasi: 10/06/2024

Halaman: 1245-1252

DOI: 10.1109/AIML2024.9876543

Scopus Indexed
Sitasi: 23 • Views: 1

Abstrak

Abstract

This paper presents a novel machine learning approach for automated COVID-19 detection using chest X-ray images. The proposed method leverages deep learning techniques with transfer learning optimization to achieve high accuracy in medical diagnosis.

Methodology:

We developed a convolutional neural network (CNN) model based on ResNet-50 architecture with transfer learning. The model was trained on a dataset of 15,000 chest X-ray images comprising COVID-19 positive, pneumonia, and normal cases.

Results:

  • Overall accuracy: 96.5%
  • COVID-19 detection sensitivity: 94.8%
  • Specificity: 97.2%
  • Processing time: <2 seconds per image

The proposed system demonstrates significant potential for rapid screening and diagnosis support in clinical settings, particularly valuable during pandemic situations.

Kata Kunci

COVID-19, chest X-ray, deep learning, transfer learning, medical diagnosis

Bidang Subjek

Medical Imaging

Informasi Tambahan

Jurnal:
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Area Penelitian:

Machine Learning, Medical Diagnosis, Computer Vision

Kategori: Prosiding Konferensi

Diterbitkan: 29/12/2025 01:22:49