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首页> 外文期刊>Investigative ophthalmology & visual science >Automated Grading System for Evaluation of Superficial Punctate Keratitis Associated With Dry Eye
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Automated Grading System for Evaluation of Superficial Punctate Keratitis Associated With Dry Eye

机译:自动评分系统用于评估干眼症相关的浅点性角膜炎

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Purpose.: To develop an automated method of grading fluorescein staining that accurately reproduces the clinical grading system currently in use. Methods.: From the slit lamp photograph of the fluorescein-stained cornea, the region of interest was selected and punctate dot number calculated using software developed with the OpenCV computer vision library. Images (n = 229) were then divided into six incremental severity categories based on computed scores. The final selection of 54 photographs represented the full range of scores: nine images from each of six categories. These were then evaluated by three investigators using a clinical 0 to 4 corneal staining scale. Pearson correlations were calculated to compare investigator scores, and mean investigator and automated scores. Lin's Concordance Correlation Coefficients (CCC) and Bland-Altman plots were used to assess agreement between methods and between investigators. Results.: Pearson's correlation between investigators was 0.914; mean CCC between investigators was 0.882. Bland-Altman analysis indicated that scores assessed by investigator 3 were significantly higher than those of investigators 1 and 2 (paired t-test). The predicted grade was calculated to be: Gpred = 1.48log(Ndots) a?? 0.206. The two-point Pearson's correlation coefficient between the methods was 0.927 (P 0.0001). The CCC between predicted automated score Gpred and mean investigator score was 0.929, 95% confidence interval (0.884a??0.957). Bland-Altman analysis did not indicate bias. The difference in SD between clinical and automated methods was 0.398. Conclusions.: An objective, automated analysis of corneal staining provides a quality assurance tool to be used to substantiate clinical grading of key corneal staining endpoints in multicentered clinical trials of dry eye.
机译:目的:开发一种自动分级荧光素染色的方法,该方法可准确复制当前使用的临床分级系统。方法:从荧光素染色的角膜的裂隙灯照片中,选择感兴趣的区域,并使用OpenCV计算机视觉库开发的软件计算点的点数。然后根据计算的分数将图像(n = 229)分为六个增量严重性类别。最终选择的54张照片代表了整个评分范围:六个类别中的每个类别都有九张图像。然后由三名研究人员使用临床0到4角膜染色量表对它们进行评估。计算皮尔逊相关系数以比较研究者评分,平均研究者评分和自动评分。使用Lin的Concordance相关系数(CCC)和Bland-Altman图来评估方法之间以及研究者之间的一致性。结果:研究人员之间的Pearson相关系数为0.914;研究者之间的平均CCC为0.882。 Bland-Altman分析表明,研究者3评估的得分显着高于研究者1和2的得分(配对t检验)。计算出的预测等级为:Gpred = 1.48log(Ndots)a ?? 0.206。两种方法之间的两点皮尔逊相关系数为0.927(P <0.0001)。预测的自动评分Gpred与平均研究者评分之间的CCC为0.929,95%置信区间(0.884a ?? 0.957)。 Bland-Altman分析并未显示出偏见。临床方法和自动化方法之间的SD差异为0.398。结论:客观,自动化的角膜染色分析提供了一种质量保证工具,可用于证实干眼多中心临床试验中关键角膜染色终点的临床分级。

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