» Articles » PMID: 38042105

Empowering COVID-19 Detection: Optimizing Performance Through Fine-tuned EfficientNet Deep Learning Architecture

Overview
Journal Comput Biol Med
Publisher Elsevier
Date 2023 Dec 2
PMID 38042105
Authors
Affiliations
Soon will be listed here.
Abstract

The worldwide COVID-19 pandemic has profoundly influenced the health and everyday experiences of individuals across the planet. It is a highly contagious respiratory disease requiring early and accurate detection to curb its rapid transmission. Initial testing methods primarily revolved around identifying the genetic composition of the coronavirus, exhibiting a relatively low detection rate and requiring a time-intensive procedure. To address this challenge, experts have suggested using radiological imagery, particularly chest X-rays, as a valuable approach within the diagnostic protocol. This study investigates the potential of leveraging radiographic imaging (X-rays) with deep learning algorithms to swiftly and precisely identify COVID-19 patients. The proposed approach elevates the detection accuracy by fine-tuning with appropriate layers on various established transfer learning models. The experimentation was conducted on a COVID-19 X-ray dataset containing 2000 images. The accuracy rates achieved were impressive of 99.55%, 97.32%, 99.11%, 99.55%, 99.11% and 100% for Xception, InceptionResNetV2, ResNet50 , ResNet50V2, EfficientNetB0 and EfficientNetB4 respectively. The fine-tuned EfficientNetB4 achieved an excellent accuracy score, showcasing its potential as a robust COVID-19 detection model. Furthermore, EfficientNetB4 excelled in identifying Lung disease using Chest X-ray dataset containing 4,350 Images, achieving remarkable performance with an accuracy of 99.17%, precision of 99.13%, recall of 99.16%, and f1-score of 99.14%. These results highlight the promise of fine-tuned transfer learning for efficient lung detection through medical imaging, especially with X-ray images. This research offers radiologists an effective means of aiding rapid and precise COVID-19 diagnosis and contributes valuable assistance for healthcare professionals in accurately identifying affected patients.

Citing Articles

ACU-Net: Attention-based convolutional U-Net model for segmenting brain tumors in fMRI images.

Talukder M, Layek M, Hossain M, Islam M, Nur-E-Alam M, Kazi M Digit Health. 2025; 11:20552076251320288.

PMID: 39968528 PMC: 11833834. DOI: 10.1177/20552076251320288.


A hybrid cardiovascular arrhythmia disease detection using ConvNeXt-X models on electrocardiogram signals.

Talukder M, Khalid M, Kazi M, Muna N, Nur-E-Alam M, Halder S Sci Rep. 2024; 14(1):30366.

PMID: 39638880 PMC: 11621342. DOI: 10.1038/s41598-024-81992-w.


Novel large empirical study of deep transfer learning for COVID-19 classification based on CT and X-ray images.

Almutaani M, Turki T, Taguchi Y Sci Rep. 2024; 14(1):26520.

PMID: 39489731 PMC: 11532342. DOI: 10.1038/s41598-024-76498-4.


Brain tumor classification using fine-tuned transfer learning models on magnetic resonance imaging (MRI) images.

Rasa S, Islam M, Talukder M, Uddin M, Khalid M, Kazi M Digit Health. 2024; 10:20552076241286140.

PMID: 39381813 PMC: 11459499. DOI: 10.1177/20552076241286140.


Toward reliable diabetes prediction: Innovations in data engineering and machine learning applications.

Talukder M, Islam M, Uddin M, Kazi M, Khalid M, Akhter A Digit Health. 2024; 10():20552076241271867.

PMID: 39175924 PMC: 11339751. DOI: 10.1177/20552076241271867.