利用迁移学习领域适应模型和联邦学习彻底改变医疗保健

IF 3.4 4区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Expert Systems Pub Date : 2024-12-29 DOI:10.1111/exsy.13827
Priyanka Verma, Nitesh Bharot, John G. Breslin, Donna O'Shea, Anand Kumar Mishra, Ankit Vidyarthi, Deepak Gupta
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引用次数: 0

摘要

人工智能(AI)在医疗保健领域的应用越来越受到关注。特别是,联邦学习(FL)因其在保持数据隐私和安全的同时提高模型质量的潜力而受到青睐。然而,目前FL方法的有效性可能在非iid条件下表现不佳,其特征是跨客户端的数据分布不同。全局构建的FL模型可能会因为允许表现最差的模型平等参与而遭受严重的问题。因此,我们提出了一种新的基于准确性的FL方法(FedAcc),该方法仅考虑客户端的验证准确性,以考虑他们在全局聚合期间的参与,也称为智能医疗保健放大(SHA)。然而,在有限的监督数据下,提高模型性能具有挑战性,因此使用迁移学习(TL)的概念。TL使全局模型能够整合来自预先计算系统的知识,从而形成一个高效的模型。然而,这些TL模型放大了全球系统的复杂性,导致了与梯度消失相关的挑战,特别是在处理大量层时。为了解决这个问题,我们提出了一个迁移学习领域适应模型(TLDAM)。TLDAM采用两层顺序训练的TL模型,与传统TL模型相比,其包含的层数减少了约50%。TLDAM在MNIST和CIFAR10等多个数据集上进行训练,增强其知识并使其具有域适应性。此外,在UCI-HAR数据集上进行的实验结果表明,我们提出的框架与传统FL技术和最新技术相比,准确率为94.2990%,f分数为94.2820%,精密度为94.3058%,召回率为94.2993%。
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Leveraging Transfer Learning Domain Adaptation Model With Federated Learning to Revolutionise Healthcare

The application of artificial intelligence (AI) in healthcare has been witnessing an increasing interest. Particularly, federated learning (FL) has become favourable due to its potential for enhancing model quality whilst maintaining data privacy and security. However, the effectiveness of present FL methodologies could underperform under non-IID conditions, characterised by divergent data distributions across clients. The globally constructed FL model may suffer potent issues by allowing the least-performing models to equal participation. Thus, we propose a new accuracy-based FL approach (FedAcc) which only takes into account the clients' validation accuracy to consider their participation during global aggregation, also called Smart Healthcare Amplified (SHA). However, with limited supervised data it is challenging to increase the model performance thus concept of transfer learning (TL) is used. TL enables the global model to integrate knowledge from precomputed systems, resulting in an efficient model. However, the complexity of the global system is amplified by these TL models, leading to challenges related to vanishing gradients, particularly when dealing with a substantial number of layers. To mitigate this, we present a Transfer Learning Domain Adaptation Model (TLDAM). TLDAM employs a two-layered sequentially trained TL model, which contains approximately 50% fewer layers compared to traditional TL models. TLDAM is trained on multiple datasets such as MNIST and CIFAR10, to enhance its knowledge and make it domain-adaptive. Moreover, experimental results conducted on the UCI-HAR dataset reveal the supremacy of our proposed framework with an accuracy of 94.2990%, F-score of 94.2820%, precision of 94.3058%, and recall of 94.2993% over traditional FL techniques and state-of-the-art techniques.

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来源期刊
Expert Systems
Expert Systems 工程技术-计算机:理论方法
CiteScore
7.40
自引率
6.10%
发文量
266
审稿时长
24 months
期刊介绍: Expert Systems: The Journal of Knowledge Engineering publishes papers dealing with all aspects of knowledge engineering, including individual methods and techniques in knowledge acquisition and representation, and their application in the construction of systems – including expert systems – based thereon. Detailed scientific evaluation is an essential part of any paper. As well as traditional application areas, such as Software and Requirements Engineering, Human-Computer Interaction, and Artificial Intelligence, we are aiming at the new and growing markets for these technologies, such as Business, Economy, Market Research, and Medical and Health Care. The shift towards this new focus will be marked by a series of special issues covering hot and emergent topics.
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