基于联邦深度学习的MRI脑肿瘤分类

Khanh Le Dinh Viet, Khiem Le Ha, Trung Nguyen Quoc, Vinh Truong Hoang
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引用次数: 0

摘要

人工智能(AI)的扩散有可能彻底改变许多行业,但其应用受到大规模数据短缺的阻碍。不同领域的数据通常存在于孤立的孤岛中,因此需要隐私和安全。与此同时,缺乏医疗隐私阻碍了可靠系统的发展,无法诊断脑肿瘤等致命的恶性肿瘤。在这项研究中,我们应用了一种被称为联邦平均(FedAvg)的联邦学习算法,在不要求交换敏感数据的情况下,使用分散的数据来训练脑肿瘤分类系统。该框架的超参数进行了调整,以提高其在独立和相同(IID)和非独立和相同分布数据(Non-IID)上的有效性。此外,我们还利用VGG16、ResNet50、ConvNext和MaxViT四种前沿深度学习模型来优化分类精度。该框架对IID数据的分类准确率达到98.69%,对非IID数据的分类准确率超过93%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MRI Brain Tumor Classification based on Federated Deep Learning
The proliferation of artificial intelligence (AI) has the potential to revolutionize many industries, but its application is hindered by the shortage of large-scale data. Data in various domains often exist in isolated silos, necessitating privacy and security. In the meantime, the lack of access to medical privacy prevented the development of trustworthy systems for diagnosing deadly malignancies like brain tumors. In this study, we apply a federated learning algorithm known as Federated Averaging (FedAvg) to train a brain tumor classification system using decentralized data without requesting the exchange of sensitive data. The proposed framework’s hyperparameters are adjusted to enhance its effectiveness on both independently and identically (IID) and non-independently and identically distributed data (Non-IID). Additionally, we leverage four cutting-edge deep learning models, namely, VGG16, ResNet50, ConvNext, and MaxViT, to optimize classification accuracy. The proposed framework achieves a classification accuracy of 98.69% on IID data and over 93% on Non-IID data.
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