Johnston Patrick R, Rodriguez John, Lane Keith J, Ousler George, Abelson Mark B
Ora, Inc, Andover, MA, USA.
Clin Ophthalmol. 2013;7:253-9. doi: 10.2147/OPTH.S39104. Epub 2013 Feb 1.
Our aim was to extend the concept of blink patterns from average interblink interval (IBI) to other aspects of the distribution of IBI. We hypothesized that this more comprehensive approach would better discriminate between normal and dry eye subjects.
Blinks were captured over 10 minutes for ten normal and ten dry eye subjects while viewing a standardized televised documentary. Fifty-five blinks were analyzed for each of the 20 subjects. Means, standard deviations, and autocorrelation coefficients were calculated utilizing a single random effects model fit to all data points and a diagnostic model was subsequently fit to predict probability of a subject having dry eye based on these parameters.
Mean IBI was 5.97 seconds for normal versus 2.56 seconds for dry eye subjects (ratio: 2.33, P = 0.004). IBI variability was 1.56 times higher in normal subjects (P < 0.001), and the autocorrelation was 1.79 times higher in normal subjects (P = 0.044). With regard to the diagnostic power of these measures, mean IBI was the best dry eye versus normal classifier using receiver operating characteristics (0.85 area under curve (AUC)), followed by the standard deviation (0.75 AUC), and lastly, the autocorrelation (0.63 AUC). All three predictors combined had an AUC of 0.89. Based on this analysis, cutoffs of ≤3.05 seconds for median IBI, and ≤0.73 for the coefficient of variation were chosen to classify dry eye subjects.
(1) IBI was significantly shorter for dry eye patients performing a visual task compared to normals; (2) there was a greater variability of interblink intervals in normal subjects; and (3) these parameters were useful as diagnostic predictors of dry eye disease. The results of this pilot study merit investigation of IBI parameters on a larger scale study in subjects with dry eye and other ocular surface disorders.
我们的目标是将眨眼模式的概念从平均眨眼间隔(IBI)扩展到IBI分布的其他方面。我们假设这种更全面的方法能更好地区分正常人和干眼患者。
在观看标准化电视纪录片时,对10名正常受试者和10名干眼受试者进行了10分钟的眨眼记录。对20名受试者每人的55次眨眼进行分析。利用拟合所有数据点的单一随机效应模型计算均值、标准差和自相关系数,随后拟合诊断模型,根据这些参数预测受试者患干眼的概率。
正常受试者的平均IBI为5.97秒,干眼受试者为2.56秒(比值:2.33,P = 0.004)。正常受试者的IBI变异性高1.56倍(P < 0.001),正常受试者的自相关性高1.79倍(P = 0.044)。就这些指标的诊断能力而言,使用受试者工作特征曲线(曲线下面积(AUC)为0.85)时,平均IBI是区分干眼与正常受试者的最佳指标,其次是标准差(AUC为0.75),最后是自相关性(AUC为0.63)。所有三个预测指标联合使用时的AUC为0.89。基于此分析,选择中位数IBI≤3.05秒和变异系数≤0.73作为干眼受试者的分类标准。
(1)与正常人相比,干眼患者在执行视觉任务时的IBI明显更短;(2)正常受试者的眨眼间隔变异性更大;(3)这些参数可作为干眼疾病的诊断预测指标。这项初步研究的结果值得在更大规模的干眼及其他眼表疾病受试者研究中对IBI参数进行调查。