상세 보기
- ul Ain, Hoor;
- Ramzan, Shabana;
- Munwar Iqbal, Muhammad;
- Raza, Ali;
- Raoof, Farwa;
- ... Lee, Seung Won;
- 외 2명
WEB OF SCIENCE
0SCOPUS
0초록
Background The emergence of monkeypox as a global health concern highlights the need for innovative detection methods that improve upon polymerase chain reaction, which is costly, time-consuming, and poses risks of contagion to healthcare personnel.Purpose This study proposed a lightweight deep learning framework to enhance monkeypox lesion detection using skin image data.Methods Data augmentation and a novel edge enhancement algorithm are applied, employing contrast-limited adaptive histogram equalization and bilateral filters to refine skin images. The framework is tested across six pretrained deep learning models and one novel hybrid deep model, DenseNet121 + ConvNeXt-Tiny (DN-CXT). Performance is evaluated using accuracy, F1-score, and precision, with optimization through Adam, root mean square propagation, and stochastic gradient descent.Results The proposed DN-CXT model achieved the highest performance, with a test accuracy of 97%, F1-score of 97%, and precision of 99%. Applied techniques such as DenseNet121, MobileNetV2, InceptionV3, and ConvNeXt-Tiny also showed exceptional results.Conclusions The proposed framework significantly advances medical image detection for monkeypox lesions.Implications These findings support the integration of artificial intelligence-driven methodologies into monkeypox detection workflows, potentially improving diagnostic efficiency, reducing risks to medical personnel, and enhancing healthcare response to emerging infectious diseases.
키워드
- 제목
- Detection of monkeypox skin lesions using edge enhancement algorithms integrated with hybrid deep learning
- 저자
- ul Ain, Hoor; Ramzan, Shabana; Munwar Iqbal, Muhammad; Raza, Ali; Raoof, Farwa; Latif Fitriyani, Norma; Syafrudin, Muhammad; Lee, Seung Won
- 발행일
- 2026
- 유형
- Article
- 저널명
- DIGITAL HEALTH
- 권
- 12