利用深度学习自动识别斯塔加特病的斑点病变,提高了病变检测灵敏度,并实现了斑点的形态计量分析。

IF 3.7 2区 医学 Q1 OPHTHALMOLOGY British Journal of Ophthalmology Pub Date : 2024-08-22 DOI:10.1136/bjo-2023-323592
Jasdeep Sabharwal, Tin Yan Alvin Liu, Bani Antonio-Aguirre, Mya Abousy, Tapan Patel, Cindy X Cai, Craig K Jones, Mandeep S Singh
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引用次数: 0

摘要

目的:对Stargardt病(STGD)中的飞蚊症病变进行分类,并评估人工智能(AI)识别飞蚊症的能力:方法:对 85 名确诊 STGD 患者的 170 只眼睛进行回顾性研究。提取眼底自动荧光图像,人工勾画斑点。对深度学习模型进行了训练,并使用一个保留测试子集与人工识别的斑点进行比较,供分级人员进行评估。使用 K-means 聚类对斑点进行聚类:85 名受试者中有 45 名女性,年龄中位数为 37 岁(IQR 25-59)。一部分受试者(41 人)有可明确识别的斑点病变,人工智能经过训练后可成功识别这些病变(平均 Dice 得分为 0.53,18 人)。人工智能分割的面积更小(0.018 与 0.034 平方毫米相比,p 结论:基于人工智能的斑点检测灵敏度高于人工分级,但假阳性率较高。通过进一步优化以解决目前的不足,这种方法可用于临床研究的受试者预筛。将斑点形态量化与人工智能分级相结合作为疾病进展的生物标志物的可行性和实用性还需要进一步研究。
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Automated identification of fleck lesions in Stargardt disease using deep learning enhances lesion detection sensitivity and enables morphometric analysis of flecks.

Purpose: To classify fleck lesions and assess artificial intelligence (AI) in identifying flecks in Stargardt disease (STGD).

Methods: A retrospective study of 170 eyes from 85 consecutive patients with confirmed STGD. Fundus autofluorescence images were extracted, and flecks were manually outlined. A deep learning model was trained, and a hold-out testing subset was used to compare with manually identified flecks and for graders to assess. Flecks were clustered using K-means clustering.

Results: Of the 85 subjects, 45 were female, and the median age was 37 years (IQR 25-59). A subset of subjects (n=41) had clearly identifiable fleck lesions, and an AI was successfully trained to identify these lesions (average Dice score of 0.53, n=18). The AI segmentation had smaller (0.018 compared with 0.034 mm2, p<0.001) but more numerous flecks (75.5 per retina compared with 40.0, p<0.001), but the total size of flecks was not different. The AI model had higher sensitivity to detect flecks but resulted in more false positives. There were two clusters of flecks based on morphology: broadly, one cluster of small round flecks and another of large amorphous flecks. The per cent frequency of small round flecks negatively correlated with subject age (r=-0.31, p<0.005).

Conclusions: AI-based detection of flecks shows greater sensitivity than human graders but with a higher false-positive rate. With further optimisation to address current shortcomings, this approach could be used to prescreen subjects for clinical research. The feasibility and utility of quantifying fleck morphology in conjunction with AI-based segmentation as a biomarker of progression require further study.

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来源期刊
CiteScore
10.30
自引率
2.40%
发文量
213
审稿时长
3-6 weeks
期刊介绍: The British Journal of Ophthalmology (BJO) is an international peer-reviewed journal for ophthalmologists and visual science specialists. BJO publishes clinical investigations, clinical observations, and clinically relevant laboratory investigations related to ophthalmology. It also provides major reviews and also publishes manuscripts covering regional issues in a global context.
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