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一种自动化的视网膜图像质量分级算法。

An automated retinal image quality grading algorithm.

作者信息

Hunter Andrew, Lowell James A, Habib Maged, Ryder Bob, Basu Ansu, Steel David

机构信息

University of Lincoln, UK.

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2011;2011:5955-8. doi: 10.1109/IEMBS.2011.6091472.

Abstract

This paper introduces an algorithm for the automated assessment of retinal fundus image quality grade. Retinal image quality grading assesses whether the quality of the image is sufficient to allow diagnostic procedures to be applied. Automated quality analysis is an important preprocessing step in algorithmic diagnosis, as it is necessary to ensure that images are sufficiently clear to allow pathologies to be visible. The algorithm is based on standard recommendations for quality analysis by human screeners, examining the clarity of retinal vessels within the macula region. An evaluation against a reference standard data-set is given; it is shown that the algorithm's performance correlates closely with that of clinicians manually grading image quality.

摘要

本文介绍了一种用于自动评估视网膜眼底图像质量等级的算法。视网膜图像质量分级评估图像质量是否足以进行诊断程序。自动质量分析是算法诊断中的一个重要预处理步骤,因为有必要确保图像足够清晰以便能够看到病变。该算法基于人工筛选员进行质量分析的标准建议,检查黄斑区域内视网膜血管的清晰度。给出了针对参考标准数据集的评估;结果表明该算法的性能与临床医生手动对图像质量进行分级的性能密切相关。

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