ADVERTISEMENT

Home|Journals|Articles by Year|Audio Abstracts
 

Original Article

JJCIT. 2025; 11(1): 85-99


PRIVACY-AWARE MALARIA DETECTION: U-NET MODEL WITH K-ANONYMITY FOR CONFIDENTIAL IMAGE ANALYSIS

Ghazala Hcini, Imen Jdey.



Abstract
Download PDF Post

Malaria detection through cell image analysis is essential for early diagnosis and effective treatment, as timely detection can significantly reduce the risk of severe health complications. However, this process raises substantial privacy concerns due to the sensitivity of medical data. This study presents a U-Net model combined with k-anonymity to enhance data security while maintaining high accuracy. The model features a custom Spatial Attention mechanism for improved segmentation performance and incorporates advanced techniques to focus on critical image features. K-Anonymity adds controlled noise to protect data privacy by obfuscating sensitive information.
The model achieved a validation accuracy of 99.60%, a Dice score of 99.61%, precision of 99.42%, recall of 99.96%, and an F1 score of 99.69% on malaria cell images. When applied to the Cactus dataset, a real dataset, in agriculture, it achieved an accuracy of 98.58%, an F1 Score of 98.44%, a Dice Score of 95.08%, a Precision of 98.04%, and a Recall of 98.86%, demonstrating its strong generalization capability.
These results highlight the effectiveness of integrating privacy-preserving techniques with advanced neural network architectures, improving both security and performance in diverse image analysis applications.

Key words: Deep learning, U-net architecture, Spatial Attention Mechanism, K-anonymity, Privacy preservation, Cross-Domain Transfer.







Bibliomed Article Statistics

41
31
31
47
28
33
38
23
21
10
R
E
A
D
S

14

29

31

100

43

40

42

29

32

10
D
O
W
N
L
O
A
D
S
03040506070809101112
2025

Full-text options


Share this Article


Online Article Submission
• ejmanager.com




ejPort - eJManager.com
Author Tools
About BiblioMed
License Information
Terms & Conditions
Privacy Policy
Contact Us

The articles in Bibliomed are open access articles licensed under Creative Commons Attribution 4.0 International License (CC BY), which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/.