Toward safer ophthalmic artificial intelligence via distributed validation on real-world data.

IF 3 2区 医学 Q1 OPHTHALMOLOGY
Siddharth Nath, Ehsan Rahimy, Ashley Kras, Edward Korot
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引用次数: 0

Abstract

Purpose of review: The current article provides an overview of the present approaches to algorithm validation, which are variable and largely self-determined, as well as solutions to address inadequacies.

Recent findings: In the last decade alone, numerous machine learning applications have been proposed for ophthalmic diagnosis or disease monitoring. Remarkably, of these, less than 15 have received regulatory approval for implementation into clinical practice. Although there exists a vast pool of structured and relatively clean datasets from which to develop and test algorithms in the computational 'laboratory', real-world validation remains key to allow for safe, equitable, and clinically reliable implementation. Bottlenecks in the validation process stem from a striking paucity of regulatory guidance surrounding safety and performance thresholds, lack of oversight on critical postdeployment monitoring and context-specific recalibration, and inherent complexities of heterogeneous disease states and clinical environments. Implementation of secure, third-party, unbiased, pre and postdeployment validation offers the potential to address existing shortfalls in the validation process.

Summary: Given the criticality of validation to the algorithm pipeline, there is an urgent need for developers, machine learning researchers, and end-user clinicians to devise a consensus approach, allowing for the rapid introduction of safe, equitable, and clinically valid machine learning implementations.

通过对真实世界数据的分布式验证,实现更安全的眼科人工智能。
回顾的目的:本文概述了目前算法验证的方法,这些方法是可变的,很大程度上是自决定的,以及解决不足的解决方案。最近的发现:仅在过去十年中,就有许多机器学习应用于眼科诊断或疾病监测。值得注意的是,其中只有不到15项获得了监管部门的批准,可用于临床实践。尽管存在大量结构化且相对干净的数据集,可用于在计算“实验室”中开发和测试算法,但现实世界的验证仍然是实现安全、公平和临床可靠实施的关键。验证过程中的瓶颈源于围绕安全性和性能阈值的监管指导明显缺乏,对关键的部署后监测和针对具体情况的重新校准缺乏监督,以及异质性疾病状态和临床环境的固有复杂性。安全的、第三方的、无偏见的部署前和部署后验证的实现,为解决验证过程中存在的不足提供了可能。摘要:鉴于验证对算法管道的重要性,开发人员、机器学习研究人员和最终用户临床医生迫切需要设计一种共识方法,以允许快速引入安全、公平和临床有效的机器学习实施。
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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