眼科诊断基础模型的分布式训练。

Sina Gholami, Fatema-E Jannat, Atalie Carina Thompson, Sally Shin Yee Ong, Jennifer I Lim, Theodore Leng, Hamed Tabkhivayghan, Minhaj Nur Alam
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引用次数: 0

摘要

全球有近22亿人受到视力损害的影响,其中近一半的病例可以通过早期诊断和干预得到预防,这凸显了对糖尿病视网膜病变和年龄相关性黄斑变性等疾病的可靠和可扩展检测方法的迫切需要。本文提出了一种集成了自监督和领域自适应联邦学习的分布式深度学习框架,以增强对光学相干断层扫描图像中眼病的检测。我们采用了一种自我监督的、基于掩码的预训练策略来开发一个鲁棒的基础编码器。该编码器在七个光学相干层析成像数据集上进行了训练,并比较了其在局部、集中和联邦学习设置下的性能。我们的结果表明,与本地模型相比,自我监督方法(包括集中式和联邦式)将曲线下的面积提高了至少10%。此外,将领域适应纳入联邦学习框架进一步提高了不同人群和成像条件下的性能和泛化。该方法支持无需数据共享的协作模型开发,为在不同临床环境中进行有效的视网膜疾病筛查和诊断提供了可扩展的、保护隐私的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Distributed training of foundation models for ophthalmic diagnosis.

Vision impairment affects nearly 2.2 billion people globally, and nearly half of these cases could be prevented with early diagnosis and intervention-underscoring the urgent need for reliable and scalable detection methods for conditions like diabetic retinopathy and age-related macular degeneration. Here we propose a distributed deep learning framework that integrates self-supervised and domain-adaptive federated learning to enhance the detection of eye diseases from optical coherence tomography images. We employed a self-supervised, mask-based pre-training strategy to develop a robust foundation encoder. This encoder was trained on seven optical coherence tomography datasets, and we compared its performance under local, centralized, and federated learning settings. Our results show that self-supervised methods-both centralized and federated-improved the area under the curve by at least 10% compared to local models. Additionally, incorporating domain adaptation into the federated learning framework further boosted performance and generalization across different populations and imaging conditions. This approach supports collaborative model development without data sharing, providing a scalable, privacy-preserving solution for effective retinal disease screening and diagnosis in diverse clinical settings.

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