Through the eyes into the brain, using artificial intelligence.

IF 5.2 4区 医学 Q2 Medicine
Annals Academy of Medicine Singapore Pub Date : 2023-02-01
Kanchalika Sathianvichitr, Oriana Lamoureux, Sakura Nakada, Zhiqun Tang, Leopold Schmetterer, Christopher Chen, Carol Y Cheung, Raymond P Najjar, Dan Milea
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引用次数: 0

Abstract

Introduction: Detection of neurological conditions is of high importance in the current context of increasingly ageing populations. Imaging of the retina and the optic nerve head represents a unique opportunity to detect brain diseases, but requires specific human expertise. We review the current outcomes of artificial intelligence (AI) methods applied to retinal imaging for the detection of neurological and neuro-ophthalmic conditions.

Method: Current and emerging concepts related to the detection of neurological conditions, using AI-based investigations of the retina in patients with brain disease were examined and summarised.

Results: Papilloedema due to intracranial hypertension can be accurately identified with deep learning on standard retinal imaging at a human expert level. Emerging studies suggest that patients with Alzheimer's disease can be discriminated from cognitively normal individuals, using AI applied to retinal images.

Conclusion: Recent AI-based systems dedicated to scalable retinal imaging have opened new perspectives for the detection of brain conditions directly or indirectly affecting retinal structures. However, further validation and implementation studies are required to better understand their potential value in clinical practice.

通过眼睛进入大脑,使用人工智能。
在人口日益老龄化的当前背景下,神经系统疾病的检测非常重要。视网膜和视神经头的成像为检测脑部疾病提供了一个独特的机会,但需要特定的人类专业知识。我们回顾了目前人工智能(AI)方法应用于视网膜成像检测神经和神经眼科疾病的结果。方法:目前和新兴的概念有关检测神经系统疾病,使用人工智能为基础的视网膜调查脑疾病患者进行检查和总结。结果:在标准视网膜成像上,深度学习可以准确识别颅内高压引起的乳头状水肿,达到人类专家水平。新的研究表明,使用应用于视网膜图像的人工智能可以将阿尔茨海默病患者与认知正常的人区分开来。结论:最近基于人工智能的系统致力于可扩展的视网膜成像,为检测直接或间接影响视网膜结构的大脑状况开辟了新的视角。然而,需要进一步的验证和实施研究来更好地了解它们在临床实践中的潜在价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Annals Academy of Medicine Singapore
Annals Academy of Medicine Singapore 医学-医学:内科
CiteScore
4.90
自引率
5.80%
发文量
186
审稿时长
6-12 weeks
期刊介绍: The Annals is the official journal of the Academy of Medicine, Singapore. Established in 1972, Annals is the leading medical journal in Singapore which aims to publish novel findings from clinical research as well as medical practices that can benefit the medical community.
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