Identification of novel biomarkers for retinopathy of prematurity in preterm infants by use of innovative technologies and artificial intelligence

IF 18.6 1区 医学 Q1 OPHTHALMOLOGY
Sandra Hoyek , Natasha F.S. da Cruz , Nimesh A. Patel , Hasenin Al-Khersan , Kenneth C. Fan , Audina M. Berrocal
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引用次数: 0

Abstract

Retinopathy of prematurity (ROP) is a leading cause of preventable vision loss in preterm infants. While appropriate screening is crucial for early identification and treatment of ROP, current screening guidelines remain limited by inter-examiner variability in screening modalities, absence of local protocol for ROP screening in some settings, a paucity of resources and an increased survival of younger and smaller infants. This review summarizes the advancements and challenges of current innovative technologies, artificial intelligence (AI), and predictive biomarkers for the diagnosis and management of ROP. We provide a contemporary overview of AI-based models for detection of ROP, its severity, progression, and response to treatment. To address the transition from experimental settings to real-world clinical practice, challenges to the clinical implementation of AI for ROP are reviewed and potential solutions are proposed. The use of optical coherence tomography (OCT) and OCT angiography (OCTA) technology is also explored, providing evaluation of subclinical ROP characteristics that are often imperceptible on fundus examination. Furthermore, we explore several potential biomarkers to reduce the need for invasive procedures, to enhance diagnostic accuracy and treatment efficacy. Finally, we emphasize the need of a symbiotic integration of biologic and imaging biomarkers and AI in ROP screening, where the robustness of biomarkers in early disease detection is complemented by the predictive precision of AI algorithms.

利用创新技术和人工智能鉴定早产儿视网膜病变的新生物标志物
早产儿视网膜病变(ROP)是可预防的早产儿视力下降的主要原因。虽然适当的筛查对于ROP的早期识别和治疗至关重要,但目前的筛查指南仍然受到检查者之间筛查方式的可变性、某些情况下缺乏ROP筛查的当地方案、资源匮乏以及年幼婴儿存活率增加的限制。这篇综述总结了当前用于ROP诊断和管理的创新技术、人工智能(AI)和预测生物标志物的进展和挑战。我们对基于人工智能的ROP检测模型、其严重程度、进展和治疗反应进行了当代综述。为了解决从实验环境到现实世界临床实践的转变,回顾了人工智能在ROP临床实施中面临的挑战,并提出了潜在的解决方案。还探索了光学相干断层扫描(OCT)和OCT血管造影术(OCTA)技术的使用,以评估在眼底检查中通常无法察觉的亚临床ROP特征。此外,我们探索了几种潜在的生物标志物,以减少对侵入性手术的需求,提高诊断准确性和治疗效果。最后,我们强调了生物和成像生物标志物与人工智能在ROP筛查中的共生整合的必要性,其中生物标志物在早期疾病检测中的稳健性与人工智能算法的预测精度相辅相成。
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来源期刊
CiteScore
34.10
自引率
5.10%
发文量
78
期刊介绍: Progress in Retinal and Eye Research is a Reviews-only journal. By invitation, leading experts write on basic and clinical aspects of the eye in a style appealing to molecular biologists, neuroscientists and physiologists, as well as to vision researchers and ophthalmologists. The journal covers all aspects of eye research, including topics pertaining to the retina and pigment epithelial layer, cornea, tears, lacrimal glands, aqueous humour, iris, ciliary body, trabeculum, lens, vitreous humour and diseases such as dry-eye, inflammation, keratoconus, corneal dystrophy, glaucoma and cataract.
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