开发一种用于青光眼检测的隐私保护深度学习模型:一项联合学习的多中心研究。

IF 3.7 2区 医学 Q1 OPHTHALMOLOGY British Journal of Ophthalmology Pub Date : 2024-07-23 DOI:10.1136/bjo-2023-324188
An Ran Ran, Xi Wang, Poemen P Chan, Mandy O M Wong, Hunter Yuen, Nai Man Lam, Noel C Y Chan, Wilson W K Yip, Alvin L Young, Hon-Wah Yung, Robert T Chang, Suria S Mannil, Yih-Chung Tham, Ching-Yu Cheng, Tien Yin Wong, Chi Pui Pang, Pheng-Ann Heng, Clement C Tham, Carol Y Cheung
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引用次数: 0

摘要

背景:深度学习(DL)有望检测青光眼。然而,在汇集所有数据用于模型开发时,患者的隐私和数据安全是主要问题。我们使用联合学习(FL)范式开发了一个保护隐私的DL模型,从光学相干断层扫描(OCT)图像中检测青光眼。方法:这是一项多中心研究。FL模式由香港、美国和新加坡的一个“中心服务器”和七个眼科中心组成。每个中心首先用自己的OCT视盘体积数据集在本地训练模型,然后将其模型参数上传到中央服务器。中央服务器使用FedProx算法聚合所有中心的模型参数。随后,聚合参数被重新分配到每个中心,用于其局部模型优化。我们对三个三维(3D)网络进行了实验,以评估FL范式的稳定性。最后,我们在两个前瞻性收集的未公开数据集上测试了FL模型。结果:我们使用了来自2785名受试者的9326次体积OCT扫描。FL模型在7个中心的不同网络中表现一致(准确率分别为78.3%-98.5%、75.9%-97.0%和78.3%-97.5%),在2个未发现的数据集中表现稳定(准确率依次为84.8%-8.7%、81.3%-84.8%和86.0%-87.8%)。与传统模型相比,FL模型在青光眼分类方面的表现并不差,并且显著优于单个模型。结论:3D FL模型可以利用所有数据集并实现通用性能,而无需跨中心进行数据交换。这项研究展示了一种基于OCT的青光眼识别FL范式,确保了患者隐私和数据安全,为人工智能在眼科的现实世界转型指明了另一条道路。
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Developing a privacy-preserving deep learning model for glaucoma detection: a multicentre study with federated learning.

Background: Deep learning (DL) is promising to detect glaucoma. However, patients' privacy and data security are major concerns when pooling all data for model development. We developed a privacy-preserving DL model using the federated learning (FL) paradigm to detect glaucoma from optical coherence tomography (OCT) images.

Methods: This is a multicentre study. The FL paradigm consisted of a 'central server' and seven eye centres in Hong Kong, the USA and Singapore. Each centre first trained a model locally with its own OCT optic disc volumetric dataset and then uploaded its model parameters to the central server. The central server used FedProx algorithm to aggregate all centres' model parameters. Subsequently, the aggregated parameters are redistributed to each centre for its local model optimisation. We experimented with three three-dimensional (3D) networks to evaluate the stabilities of the FL paradigm. Lastly, we tested the FL model on two prospectively collected unseen datasets.

Results: We used 9326 volumetric OCT scans from 2785 subjects. The FL model performed consistently well with different networks in 7 centres (accuracies 78.3%-98.5%, 75.9%-97.0%, and 78.3%-97.5%, respectively) and stably in the 2 unseen datasets (accuracies 84.8%-87.7%, 81.3%-84.8%, and 86.0%-87.8%, respectively). The FL model achieved non-inferior performance in classifying glaucoma compared with the traditional model and significantly outperformed the individual models.

Conclusion: The 3D FL model could leverage all the datasets and achieve generalisable performance, without data exchange across centres. This study demonstrated an OCT-based FL paradigm for glaucoma identification with ensured patient privacy and data security, charting another course toward the real-world transition of artificial intelligence in ophthalmology.

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来源期刊
CiteScore
10.30
自引率
2.40%
发文量
213
审稿时长
3-6 weeks
期刊介绍: The British Journal of Ophthalmology (BJO) is an international peer-reviewed journal for ophthalmologists and visual science specialists. BJO publishes clinical investigations, clinical observations, and clinically relevant laboratory investigations related to ophthalmology. It also provides major reviews and also publishes manuscripts covering regional issues in a global context.
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