Electrical and Computer Engineering Department, University of Mississippi, Oxford, MS 38677, USA.
Department of Electrical Engineering, Assiut University, Assiut 71515, Egypt.
Sensors (Basel). 2023 Oct 6;23(19):8272. doi: 10.3390/s23198272.
Alzheimer's disease (AD) is a progressive illness with a slow start that lasts many years; the disease's consequences are devastating to the patient and the patient's family. If detected early, the disease's impact and prognosis can be altered significantly. Blood biosamples are often employed in simple medical testing since they are cost-effective and easy to collect and analyze. This research provides a diagnostic model for Alzheimer's disease based on federated learning (FL) and hardware acceleration using blood biosamples. We used blood biosample datasets provided by the ADNI website to compare and evaluate the performance of our models. FL has been used to train a shared model without sharing local devices' raw data with a central server to preserve privacy. We developed a hardware acceleration approach for building our FL model so that we could speed up the training and testing procedures. The VHDL hardware description language and an Altera 10 GX FPGA are utilized to construct the hardware-accelerator approach. The results of the simulations reveal that the proposed methods achieve accuracy and sensitivity for early detection of 89% and 87%, respectively, while simultaneously requiring less time to train than other algorithms considered to be state-of-the-art. The proposed algorithms have a power consumption ranging from 35 to 39 mW, which qualifies them for use in limited devices. Furthermore, the result shows that the proposed method has a lower inference latency (61 ms) than the existing methods with fewer resources.
阿尔茨海默病(AD)是一种进展缓慢、潜伏期长的疾病,其后果对患者及其家庭都是毁灭性的。如果能早期发现,疾病的影响和预后可以显著改变。由于血液生物样本检测具有成本效益高、易于采集和分析等优点,因此经常被用于简单的医学检测。本研究基于联邦学习(FL)和硬件加速,使用血液生物样本为阿尔茨海默病提供了一种诊断模型。我们使用 ADNI 网站提供的血液生物样本数据集来比较和评估我们模型的性能。FL 被用于训练一个共享模型,而无需与中央服务器共享本地设备的原始数据,以保护隐私。我们开发了一种用于构建我们的 FL 模型的硬件加速方法,以便加快训练和测试过程。该方法使用 VHDL 硬件描述语言和 Altera 10 GX FPGA 来构建硬件加速器。仿真结果表明,所提出的方法在早期检测方面的准确率和灵敏度分别达到 89%和 87%,同时比其他被认为是最先进的算法所需的训练时间更少。所提出的算法的功耗范围为 35 到 39 mW,这使其适用于有限的设备。此外,结果表明,与现有方法相比,所提出的方法具有更低的推理延迟(61 ms)和更少的资源。