OCT-SelfNet: a self-supervised framework with multi-source datasets for generalized retinal disease detection.

IF 2.4 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
Frontiers in Big Data Pub Date : 2025-07-29 eCollection Date: 2025-01-01 DOI:10.3389/fdata.2025.1609124
Fatema-E Jannat, Sina Gholami, Minhaj Nur Alam, Hamed Tabkhi
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引用次数: 0

Abstract

Introduction: In the medical AI field, there is a significant gap between advances in AI technology and the challenge of applying locally trained models to diverse patient populations. This is mainly due to the limited availability of labeled medical image data, driven by privacy concerns. To address this, we have developed a self-supervised machine learning framework for detecting eye diseases from optical coherence tomography (OCT) images, aiming to achieve generalized learning while minimizing the need for large labeled datasets.

Methods: Our framework, OCT-SelfNet, effectively addresses the challenge of data scarcity by integrating diverse datasets from multiple sources, ensuring a comprehensive representation of eye diseases. By employing a robust two-phase training strategy self-supervised pre-training with unlabeled data followed by a supervised training stage, we utilized the power of a masked autoencoder built on the SwinV2 backbone.

Results: Extensive experiments were conducted across three datasets with varying encoder backbones, assessing scenarios including the absence of self-supervised pre-training, the absence of data fusion, low data availability, and unseen data to evaluate the efficacy of our methodology. OCT-SelfNet outperformed the baseline model (ResNet-50, ViT) in most cases. Additionally, when tested for cross-dataset generalization, OCT-SelfNet surpassed the performance of the baseline model, further demonstrating its strong generalization ability. An ablation study revealed significant improvements attributable to self-supervised pre-training and data fusion methodologies.

Discussion: Our findings suggest that the OCT-SelfNet framework is highly promising for real-world clinical deployment in detecting eye diseases from OCT images. This demonstrates the effectiveness of our two-phase training approach and the use of a masked autoencoder based on the SwinV2 backbone. Our work bridges the gap between basic research and clinical application, which significantly enhances the framework's domain adaptation and generalization capabilities in detecting eye diseases.

OCT-SelfNet:一个具有多源数据集的自监督框架,用于广义视网膜疾病检测。
导言:在医疗人工智能领域,人工智能技术的进步与将本地训练的模型应用于不同患者群体的挑战之间存在显著差距。这主要是由于受隐私问题的影响,有标签的医学图像数据的可用性有限。为了解决这个问题,我们开发了一个自监督机器学习框架,用于从光学相干断层扫描(OCT)图像中检测眼病,旨在实现广义学习,同时最大限度地减少对大型标记数据集的需求。方法:我们的框架OCT-SelfNet通过整合来自多个来源的不同数据集,有效地解决了数据稀缺的挑战,确保了眼科疾病的全面代表。通过采用鲁棒的两阶段训练策略,对未标记数据进行自监督预训练,然后进行监督训练阶段,我们利用了建立在SwinV2主干上的屏蔽自编码器的功能。结果:在三个具有不同编码器主干的数据集上进行了广泛的实验,评估了包括缺乏自我监督预训练、缺乏数据融合、数据可用性低和未见数据在内的场景,以评估我们的方法的有效性。OCT-SelfNet在大多数情况下优于基线模型(ResNet-50, ViT)。此外,在跨数据集泛化测试中,OCT-SelfNet的性能超过了基线模型,进一步证明了其强大的泛化能力。消融研究显示,自我监督的预训练和数据融合方法显著改善。讨论:我们的研究结果表明OCT- selfnet框架在从OCT图像检测眼部疾病方面具有很高的临床应用前景。这证明了我们的两阶段训练方法和基于SwinV2主干的掩码自动编码器的有效性。我们的工作在基础研究和临床应用之间架起了桥梁,显著提高了该框架在眼病检测中的领域适应和泛化能力。
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来源期刊
CiteScore
5.20
自引率
3.20%
发文量
122
审稿时长
13 weeks
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