Artificial intelligence for home monitoring devices.

IF 3 2区 医学 Q1 OPHTHALMOLOGY
Tiarnan D L Keenan, Anat Loewenstein
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引用次数: 0

Abstract

Purpose of review: Home monitoring in ophthalmology is appropriate for disease stages requiring frequent monitoring or rapid intervention, for example, neovascular age-related macular degeneration (AMD) and glaucoma, where the balance between frequent hospital attendance versus risk of late detection is a constant challenge. Artificial intelligence approaches are well suited to address some challenges of home monitoring.

Recent findings: Ophthalmic data collected at home have included functional (e.g. perimetry), biometric (e.g. intraocular pressure), and imaging [e.g. optical coherence tomography (OCT)] data. Potential advantages include early detection/intervention, convenience, cost, and visual outcomes. Artificial intelligence can assist with home monitoring workflows by handling large data volumes from frequent testing, compensating for test quality, and extracting useful metrics from complex data. Important use cases include machine learning applied to hyperacuity self-testing for detecting neovascular AMD and deep learning applied to OCT data for quantifying retinal fluid.

Summary: Home monitoring of health conditions is useful for chronic diseases requiring rapid intervention or frequent data sampling to decrease risk of irreversible vision loss. Artificial intelligence may facilitate accurate, frequent, large-scale home monitoring, if algorithms are integrated safely into workflows. Clinical trials and economic evaluations are important to demonstrate the value of artificial intelligence-based home monitoring, towards improved visual outcomes.

人工智能家庭监控设备。
综述目的:眼科家庭监测适用于需要频繁监测或快速干预的疾病阶段,例如,新生血管性年龄相关性黄斑变性(AMD)和青光眼,在这些疾病阶段,频繁住院与晚期发现风险之间的平衡是一个持续的挑战。人工智能方法非常适合解决家庭监控的一些挑战。最近的发现:在家里收集的眼科数据包括功能(如视野测量)、生物特征(如眼压)和成像(如光学相干断层扫描(OCT))数据。潜在的优势包括早期检测/干预、方便、成本和视觉效果。人工智能可以通过处理来自频繁测试的大量数据、补偿测试质量以及从复杂数据中提取有用的度量来帮助家庭监控工作流程。重要的用例包括用于检测新生血管性AMD的超锐自检的机器学习和用于量化视网膜液的OCT数据的深度学习。摘要:家庭健康状况监测对于需要快速干预或频繁数据采样以降低不可逆视力丧失风险的慢性疾病是有用的。如果将算法安全地集成到工作流程中,人工智能可能会促进准确、频繁、大规模的家庭监控。临床试验和经济评估对于证明基于人工智能的家庭监控在改善视觉效果方面的价值非常重要。
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
CiteScore
6.80
自引率
5.40%
发文量
120
审稿时长
6-12 weeks
期刊介绍: Current Opinion in Ophthalmology is an indispensable resource featuring key up-to-date and important advances in the field from around the world. With renowned guest editors for each section, every bimonthly issue of Current Opinion in Ophthalmology delivers a fresh insight into topics such as glaucoma, refractive surgery and corneal and external disorders. With ten sections in total, the journal provides a convenient and thorough review of the field and will be of interest to researchers, clinicians and other healthcare professionals alike.
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