结膜充血的自动评估:半监督人工智能方法。

IF 4.8 3区 综合性期刊 Q1 MULTIDISCIPLINARY SCIENCES
Damon Wong, Yvonne Ng, Leila Sara Eppenberger, Alina Popa Cherecheanu, Anca Anghelache, Eduard Toma, Ruxandra Coroleuca, Julian Garcia-Feijoo, Gerhard Garhöfer, Leopold Schmetterer
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引用次数: 0

摘要

本文开发了一种使用半监督学习从裂隙灯图像自动分级结膜充血的方法。我们进行了一项回顾性研究,包括来自两个研究地点的裂隙灯图像。两名独立评分员根据Efron评分量表评估充血的严重程度。结膜及其血管的分割采用半监督分割,标记数据有限。从模型输出估计结膜血管密度,并与手工临床Efron分级进行比较。其中包括主站点的317张裂隙灯图像和外部站点的164张图像。与仅使用标记数据的基线全监督模型相比,具有未标记数据的半监督模型显示出显著改善的分割(p < 0.001)。计算出的结膜血管密度与真实血管密度的相关性为0.86[0.76,0.93]。血管密度与人工临床平均Efron分级的比较显示,测试数据集和外部数据集的相关性分别为0.83和0.80,与数据集的评分间一致性分别为0.82[0.68,0.90]和0.75[0.67,0.81]。半监督学习获得的结膜血管密度与结膜充血的临床分级一致。该方法可用于自动、客观地评估结膜。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Toward automated assessment of conjunctival hyperemia: A semisupervised artificial intelligence approach

Toward automated assessment of conjunctival hyperemia: A semisupervised artificial intelligence approach

Toward automated assessment of conjunctival hyperemia: A semisupervised artificial intelligence approach

Toward automated assessment of conjunctival hyperemia: A semisupervised artificial intelligence approach

Toward automated assessment of conjunctival hyperemia: A semisupervised artificial intelligence approach

This paper develops an automated approach for conjunctival hyperemia grading from slit-lamp images using semisupervised learning. We conducted a retrospective study including slit-lamp images from two study sites. Two independent graders assessed the severity of hyperemia according to the Efron Grading Scales. Segmentation of the conjunctiva and its vessels was performed using semisupervised segmentation with limited labeled data. Conjunctival vessel densities were estimated from the model outputs and compared against the manual clinical Efron gradings. Three hundred and seventeen slit-lamp images from the primary site and 164 from an external site were included. The semisupervised models with unlabeled data demonstrated significantly improved segmentation compared to a baseline fully supervised model using only the labeled data (p < 0.001). Calculated conjunctival vessel densities showed correlations of 0.86 [0.76, 0.93] with ground truth vessel densities. Comparisons of vessel densities against mean manual clinical Efron gradings showed correlations of 0.83 and 0.80 for the test and external datasets, which were comparable to the inter-rater agreements of 0.82 [0.68, 0.90] and 0.75 [0.67, 0.81] in the datasets, respectively. Conjunctival vessel densities obtained with semisupervised learning showed good agreement with clinical grading of conjunctival hyperemia. This approach may be applied toward an automatic, objective assessment of the conjunctiva.

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来源期刊
Annals of the New York Academy of Sciences
Annals of the New York Academy of Sciences 综合性期刊-综合性期刊
CiteScore
11.00
自引率
1.90%
发文量
193
审稿时长
2-4 weeks
期刊介绍: Published on behalf of the New York Academy of Sciences, Annals of the New York Academy of Sciences provides multidisciplinary perspectives on research of current scientific interest with far-reaching implications for the wider scientific community and society at large. Each special issue assembles the best thinking of key contributors to a field of investigation at a time when emerging developments offer the promise of new insight. Individually themed, Annals special issues stimulate new ways to think about science by providing a neutral forum for discourse—within and across many institutions and fields.
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