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稳健且可解释的卷积神经网络,用于检测光学相干断层扫描图像中的青光眼。

Robust and Interpretable Convolutional Neural Networks to Detect Glaucoma in Optical Coherence Tomography Images.

出版信息

IEEE Trans Biomed Eng. 2021 Aug;68(8):2456-2466. doi: 10.1109/TBME.2020.3043215. Epub 2021 Jul 19.

Abstract

Recent studies suggest that deep learning systems can now achieve performance on par with medical experts in diagnosis of disease. A prime example is in the field of ophthalmology, where convolutional neural networks (CNNs) have been used to detect retinal and ocular diseases. However, this type of artificial intelligence (AI) has yet to be adopted clinically due to questions regarding robustness of the algorithms to datasets collected at new clinical sites and a lack of explainability of AI-based predictions, especially relative to those of human expert counterparts. In this work, we develop CNN architectures that demonstrate robust detection of glaucoma in optical coherence tomography (OCT) images and test with concept activation vectors (TCAVs) to infer what image concepts CNNs use to generate predictions. Furthermore, we compare TCAV results to eye fixations of clinicians, to identify common decision-making features used by both AI and human experts. We find that employing fine-tuned transfer learning and CNN ensemble learning create end-to-end deep learning models with superior robustness compared to previously reported hybrid deep-learning/machine-learning models, and TCAV/eye-fixation comparison suggests the importance of three OCT report sub-images that are consistent with areas of interest fixated upon by OCT experts to detect glaucoma. The pipeline described here for evaluating CNN robustness and validating interpretable image concepts used by CNNs with eye movements of experts has the potential to help standardize the acceptance of new AI tools for use in the clinic.

摘要

最近的研究表明,深度学习系统现在可以在疾病诊断方面达到与医学专家相当的水平。一个主要的例子是在眼科领域,卷积神经网络 (CNN) 已被用于检测视网膜和眼部疾病。然而,由于对算法在新临床站点收集的数据集中的稳健性的质疑,以及对基于人工智能的预测的可解释性的缺乏,特别是相对于人类专家的预测,这种人工智能尚未在临床上采用。在这项工作中,我们开发了 CNN 架构,这些架构证明了在光学相干断层扫描 (OCT) 图像中对青光眼的稳健检测,并使用概念激活向量 (TCAV) 进行测试,以推断 CNN 用于生成预测的图像概念。此外,我们将 TCAV 结果与临床医生的眼动进行比较,以识别 AI 和人类专家都使用的共同决策特征。我们发现,采用微调的迁移学习和 CNN 集成学习,可以创建具有卓越稳健性的端到端深度学习模型,与之前报道的混合深度学习/机器学习模型相比,TCAV/眼动比较表明,三个 OCT 报告子图像对于检测青光眼非常重要,这三个 OCT 报告子图像与 OCT 专家关注的兴趣区域一致。这里描述的用于评估 CNN 稳健性和验证可解释的 CNN 图像概念与专家的眼动的管道有可能有助于标准化新的人工智能工具在临床中的应用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b215/8397372/cc366924ad41/nihms-1725970-f0001.jpg

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