Towards privacy-preserving Alzheimer's disease classification: Federated learning on T1-weighted magnetic resonance imaging data

被引:0
|
作者
Sahid, Md Abdus [1 ]
Uddin, Md Palash [1 ]
Saha, Hasi [1 ]
Islam, Md Rashedul [1 ]
机构
[1] Hajee Mohammad Danesh Sci & Technol Univ, Dept Comp Sci & Engn, Dr MA WazedBldg, Rangpur 5200, Bangladesh
来源
DIGITAL HEALTH | 2024年 / 10卷
关键词
Alzheimer's disease; deep learning; federated learning; magnetic resonance imaging; MILD COGNITIVE IMPAIRMENT;
D O I
10.1177/20552076241295577
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
Objective This study aims to address the challenge of privacy-preserving Alzheimer's disease classification using federated learning across various data distributions, focusing on real-world applicability. The goal is to improve the efficiency of classification by minimizing communication rounds between clients and the central server.Methods The proposed approach leverages two key strategies: increasing parallelism by utilizing more clients in each communication round and increasing computation per client during the intervals between rounds. To reflect real-world scenarios, data is divided into three distributions: identical and independently distributed, non-identical and independently distributed equal, and non-identical and independently distributed unequal. The impact of extreme quantity distribution skew is also examined. A convolutional neural network is used to evaluate the performance across these setups.Results The empirical study demonstrates that the proposed federated learning approach achieves a maximum accuracy of 84.75%, a precision of 86%, a recall of 85%, and an F1-score of 84%. Increasing the number of local epochs improves classification performance and reduces communication needs. The experiments show that federated learning is effective in handling heterogeneous datasets when all clients participate in each round of training. However, the results also indicate that extreme quantity distribution skew negatively impacts classification performance.Conclusions The study confirms that federated learning is a viable solution for Alzheimer's disease classification while preserving data privacy. Increasing local computation and client participation enhances classification performance, though extreme distribution imbalances present a challenge. Further investigation is needed to address these limitations in real-world scenarios.
引用
收藏
页数:15
相关论文
共 50 条
  • [1] The Application of Deep Learning for Classification of Alzheimer's Disease Stages by Magnetic Resonance Imaging Data
    Irfan, Muhammad
    Shahrestani, Seyed
    ElKhodr, Mahmoud
    INTERNATIONAL JOURNAL OF INTERACTIVE MULTIMEDIA AND ARTIFICIAL INTELLIGENCE, 2023, : 18 - 25
  • [2] Associations between texture of T1-weighted magnetic resonance imaging and radiographic pathologies in Alzheimer's disease
    Lee, Subin
    Kim, Ki Woong
    EUROPEAN JOURNAL OF NEUROLOGY, 2021, 28 (03) : 735 - 744
  • [3] A brain tumour classification on the magnetic resonance images using convolutional neural network based privacy-preserving federated learning
    Ay, Sevket
    Ekinci, Ekin
    Garip, Zeynep
    INTERNATIONAL JOURNAL OF IMAGING SYSTEMS AND TECHNOLOGY, 2024, 34 (01)
  • [4] T1-Weighted Imaging-Based Hippocampal Radiomics in the Diagnosis of Alzheimer's Disease
    Yin, Ting Ting
    Cao, Mao Hong
    Yu, Jun Cheng
    Shi, Ting Yan
    Mao, Xiao Han
    Wei, Xin Yue
    Jia, Zhong Zheng
    ACADEMIC RADIOLOGY, 2024, 31 (12) : 5183 - 5192
  • [5] Automated Scoring of Alzheimer's Disease Atrophy Scale with Subtype Classification Using Deep Learning-Based T1-Weighted Magnetic Resonance Image Segmentation
    Choe, Yeong Sim
    Kim, Regina E. Y.
    Kim, Hye Weon
    Kim, JeeYoung
    Lee, Hyunji
    Lee, Min Kyoung
    Lee, Minho
    Kim, Keun You
    Kim, Se-Hong
    Kim, Ji-Hoon
    Lee, Jun-Young
    Kim, Eosu
    Kim, Donghyeon
    Lim, Hyun Kook
    JOURNAL OF ALZHEIMERS DISEASE REPORTS, 2024, 8 (01) : 863 - 876
  • [6] Identification of Alzheimer's disease using a convolutional neural network model based on T1-weighted magnetic resonance imaging
    Bae, Jong Bin
    Lee, Subin
    Jung, Wonmo
    Park, Sejin
    Kim, Weonjin
    Oh, Hyunwoo
    Han, Ji Won
    Kim, Grace Eun
    Kim, Jun Sung
    Kim, Jae Hyoung
    Kim, Ki Woong
    SCIENTIFIC REPORTS, 2020, 10 (01)
  • [7] Diffusion-weighted magnetic resonance imaging in Alzheimer's disease
    Sandson, TA
    Felician, O
    Edelman, RR
    Warach, S
    DEMENTIA AND GERIATRIC COGNITIVE DISORDERS, 1999, 10 (02) : 166 - 171
  • [8] Multivariate Data Analysis and Machine Learning in Alzheimer's Disease with a Focus on Structural Magnetic Resonance Imaging
    Falahati, Farshad
    Westman, Eric
    Simmons, Andrew
    JOURNAL OF ALZHEIMERS DISEASE, 2014, 41 (03) : 685 - 708
  • [9] VSEPDA: Verifiable secure and efficient privacy-preserving data aggregation protocol for image classification in federated learning
    Chen, Shuo
    Zhou, Tanping
    Xie, Huiyu
    Yang, Xiaoyuan
    JOURNAL OF INFORMATION SECURITY AND APPLICATIONS, 2025, 90
  • [10] Diet and gastrointestinal signal on T1-weighted magnetic resonance imaging of mice
    Kiryu, Shigeru
    Inoue, Yusuke
    Yoshikawa, Kohki
    Shimada, Mono
    Watanabe, Makoto
    Ohtomo, Kuni
    MAGNETIC RESONANCE IMAGING, 2010, 28 (02) : 273 - 280