Unmasking biases and navigating pitfalls in the ophthalmic artificial intelligence lifecycle: A narrative review.

PLOS digital health Pub Date : 2024-10-08 eCollection Date: 2024-10-01 DOI:10.1371/journal.pdig.0000618
Luis Filipe Nakayama, João Matos, Justin Quion, Frederico Novaes, William Greig Mitchell, Rogers Mwavu, Claudia Ju-Yi Ji Hung, Alvina Pauline Dy Santiago, Warachaya Phanphruk, Jaime S Cardoso, Leo Anthony Celi
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Abstract

Over the past 2 decades, exponential growth in data availability, computational power, and newly available modeling techniques has led to an expansion in interest, investment, and research in Artificial Intelligence (AI) applications. Ophthalmology is one of many fields that seek to benefit from AI given the advent of telemedicine screening programs and the use of ancillary imaging. However, before AI can be widely deployed, further work must be done to avoid the pitfalls within the AI lifecycle. This review article breaks down the AI lifecycle into seven steps-data collection; defining the model task; data preprocessing and labeling; model development; model evaluation and validation; deployment; and finally, post-deployment evaluation, monitoring, and system recalibration-and delves into the risks for harm at each step and strategies for mitigating them.

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揭开眼科人工智能生命周期中的偏见和陷阱:叙述性综述。
在过去的二十年里,数据可用性、计算能力和新的建模技术呈指数级增长,导致人们对人工智能(AI)应用的兴趣、投资和研究不断扩大。随着远程医疗筛查项目的出现和辅助成像技术的使用,眼科成为寻求从人工智能中获益的众多领域之一。然而,在广泛部署人工智能之前,必须进一步开展工作,避免人工智能生命周期中的陷阱。这篇综述文章将人工智能生命周期分为七个步骤--数据收集;定义模型任务;数据预处理和标记;模型开发;模型评估和验证;部署;以及最后的部署后评估、监控和系统重新校准,并深入探讨了每个步骤中的危害风险以及降低风险的策略。
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