使用非iid数据分布的MRI图像进行脑肿瘤检测的联邦学习框架。

M D Zahin Muntaqim, Tangin Amir Smrity
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引用次数: 0

摘要

从医学图像,特别是磁共振成像(MRI)扫描中检测脑肿瘤,是早期诊断和治疗计划的关键任务。传统的机器学习方法通常依赖于集中的数据,这引起了人们对数据隐私、安全性以及获取大型注释数据集的困难的担忧。联邦学习(FL)已经成为一种很有前途的解决方案,用于跨分散设备训练模型,同时保持数据隐私。然而,在处理非iid(独立和相同分布)数据方面仍然存在挑战,这在现实场景中很常见。在这项研究中,我们使用了一个基于客户端-服务器的联邦学习框架,使用MRI图像进行脑肿瘤检测,利用VGG19作为骨干模型。为了提高临床相关性和模型的可解释性,我们采用了可解释性技术,特别是Grad-CAM。我们在四个具有非iid数据分布的客户端上训练我们的模型,以模拟现实世界的条件。对于性能评估,我们使用了一个集中的测试数据集,由原始数据的20%组成,测试集在完成联邦学习回合后用于评估模型性能。使用单独的测试数据集确保所有模型在相同的数据上进行评估,使比较公平。由于测试数据集不是FL训练过程的一部分,因此不会违反FL的隐私保护性质。实验结果表明,VGG19模型比其他最先进的模型达到了97.18% (FedAVG), 98.24% (FedProx)和98.45% (Scaffold)的高测试准确率,展示了联邦学习在处理分布式和非iid数据方面的有效性。我们的研究结果强调了联邦学习在解决医学图像分析中的隐私问题方面的潜力,同时即使在非iid设置中也能保持高性能。这种方法为医疗保健应用中保护隐私的人工智能的未来研究提供了一个有希望的方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Federated Learning Framework for Brain Tumor Detection Using MRI Images in Non-IID Data Distributions.

Brain tumor detection from medical images, especially magnetic resonance imaging (MRI) scans, is a critical task in early diagnosis and treatment planning. Traditional machine learning approaches often rely on centralized data, raising concerns about data privacy, security, and the difficulty of obtaining large annotated datasets. Federated learning (FL) has emerged as a promising solution for training models across decentralized devices while maintaining data privacy. However, challenges remain in dealing with non-IID (independent and identically distributed) data, which is common in real-world scenarios. In this research, we used a client-server-based federated learning framework for brain tumor detection using MRI images, leveraging VGG19 as the backbone model. To improve clinical relevance and model interpretability, we have included explainability techniques, particularly Grad-CAM. We trained our model across four clients with non-IID data distribution to simulate real-world conditions. For performance evaluation, we used a centralized test dataset, consisting of 20% of the original data, with the test set used collectively for evaluating model performance after completing federated learning rounds. Using a separate test dataset ensures that all models are evaluated on the same data, making comparisons fair. Since the test dataset is not part of the FL training process, it does not violate the privacy-preserving nature of FL. The experimental results demonstrate that the VGG19 model achieves a high test accuracy of 97.18% (FedAVG), 98.24% (FedProx), and 98.45% (Scaffold) than other state-of-the-art models, showcasing the effectiveness of federated learning in handling distributed and non-IID data. Our findings highlight the potential of federated learning to address privacy concerns in medical image analysis while maintaining high performance even in non-IID settings. This approach provides a promising direction for future research in privacy-preserving AI for healthcare applications.

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