Advances in machine learning for ABCA4-related retinopathy: segmentation and phenotyping.

IF 1.4 4区 医学 Q3 OPHTHALMOLOGY
Yousif J Shwetar, Brian P Brooks, Brett G Jeffrey, Benjamin D Solomon, Melissa A Haendel
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引用次数: 0

Abstract

Purpose: Stargardt disease, also called ABCA4-related retinopathy (ABCA4R), is the most common form of juvenile-onset macular dystrophy and yet lacks an FDA approved treatment. Substantial progress has been made through landmark studies like that of the Progression of Atrophy Secondary to Stargardt Disease (ProgStar), but tasks like image segmentation and phenotyping still pose major challenges in terms of monitoring disease progression and categorizing patient subgroups. Furthermore, these methods are subjective and laborious. Recent advancements in machine learning (ML) and deep learning show considerable promise in automating these processes.

Methods: This scoping review explores ML applications in ABCA4R, with a focus on segmentation and phenotyping. Following the Preferred Reporting Items for Systematic Reviews and Meta-Analysis (PRISMA) methodology, 15 articles were selected from 264, with 12 focused on the task of segmenting atrophic lesions, retinal flecks, retinal layer boundaries, or en-face imaging. Three studies addressed phenotyping based on electroretinography (ERG), visual acuity, and microperimetry.

Results: Several effective approaches were implemented in these studies, including ensemble modeling, self-attention mechanisms, soft-label approaches, and dynamic frameworks that consider extent of tissue damage. Excellent model performance includes segmentation DICE performances of 0.99 and ERG phenotyping accuracies 90% and greater. Smaller datasets and variable presentations present as significant challenges, while advanced methods like Monte Carlo dropout and active learning improve pipeline efficiency and performance.

Conclusion: ML techniques are well on their way to automate key steps in ABCA4R evaluation with excellent performance. These emerging methods have the potential to expedite therapeutic innovation and enhance our understanding of ABCA4R.

abca4相关视网膜病变的机器学习进展:分割和表型。
目的:Stargardt病,也称为abca4相关视网膜病变(ABCA4R),是青少年发病的黄斑营养不良最常见的形式,但缺乏FDA批准的治疗方法。通过具有里程碑意义的研究,如Stargardt病继发萎缩进展(ProgStar),已经取得了实质性进展,但在监测疾病进展和对患者亚组进行分类方面,图像分割和表型等任务仍然面临重大挑战。此外,这些方法是主观的,费力的。机器学习(ML)和深度学习的最新进展在自动化这些过程方面显示出相当大的希望。方法:本综述探讨了ML在ABCA4R中的应用,重点是片段和表型。按照系统评价和荟萃分析的首选报告项目(PRISMA)方法,从264篇文章中选择了15篇,其中12篇侧重于分割萎缩性病变、视网膜斑点、视网膜层边界或面部成像的任务。三项研究涉及基于视网膜电图(ERG),视力和显微镜的表型。结果:在这些研究中实施了几种有效的方法,包括集成建模、自我注意机制、软标签方法和考虑组织损伤程度的动态框架。出色的模型性能包括0.99的分割DICE性能和90%以上的ERG表型准确率。较小的数据集和可变的演示是一个重大挑战,而蒙特卡罗辍学和主动学习等先进方法提高了管道的效率和性能。结论:机器学习技术在ABCA4R评估的关键步骤自动化方面取得了很好的效果。这些新兴的方法有可能加速治疗创新,增强我们对ABCA4R的理解。
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
3.20
自引率
0.00%
发文量
451
期刊介绍: International Ophthalmology provides the clinician with articles on all the relevant subspecialties of ophthalmology, with a broad international scope. The emphasis is on presentation of the latest clinical research in the field. In addition, the journal includes regular sections devoted to new developments in technologies, products, and techniques.
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