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检测视网膜功能变化:采用非平稳威布尔误差回归和空间增强分析(ANSWERS)。

Detecting changes in retinal function: Analysis with Non-Stationary Weibull Error Regression and Spatial enhancement (ANSWERS).

作者信息

Zhu Haogang, Russell Richard A, Saunders Luke J, Ceccon Stefano, Garway-Heath David F, Crabb David P

机构信息

School of Health Sciences, City University London, London, United Kingdom ; Institute of Ophthalmology, University College London, London, United Kingdom.

School of Health Sciences, City University London, London, United Kingdom.

出版信息

PLoS One. 2014 Jan 17;9(1):e85654. doi: 10.1371/journal.pone.0085654. eCollection 2014.

Abstract

Visual fields measured with standard automated perimetry are a benchmark test for determining retinal function in ocular pathologies such as glaucoma. Their monitoring over time is crucial in detecting change in disease course and, therefore, in prompting clinical intervention and defining endpoints in clinical trials of new therapies. However, conventional change detection methods do not take into account non-stationary measurement variability or spatial correlation present in these measures. An inferential statistical model, denoted 'Analysis with Non-Stationary Weibull Error Regression and Spatial enhancement' (ANSWERS), was proposed. In contrast to commonly used ordinary linear regression models, which assume normally distributed errors, ANSWERS incorporates non-stationary variability modelled as a mixture of Weibull distributions. Spatial correlation of measurements was also included into the model using a Bayesian framework. It was evaluated using a large dataset of visual field measurements acquired from electronic health records, and was compared with other widely used methods for detecting deterioration in retinal function. ANSWERS was able to detect deterioration significantly earlier than conventional methods, at matched false positive rates. Statistical sensitivity in detecting deterioration was also significantly better, especially in short time series. Furthermore, the spatial correlation utilised in ANSWERS was shown to improve the ability to detect deterioration, compared to equivalent models without spatial correlation, especially in short follow-up series. ANSWERS is a new efficient method for detecting changes in retinal function. It allows for better detection of change, more efficient endpoints and can potentially shorten the time in clinical trials for new therapies.

摘要

使用标准自动视野计测量的视野是确定青光眼等眼部疾病视网膜功能的基准测试。随着时间对其进行监测对于检测疾病进程的变化至关重要,因此对于促使临床干预以及在新疗法的临床试验中确定终点也很关键。然而,传统的变化检测方法没有考虑这些测量中存在的非平稳测量变异性或空间相关性。一种名为“非平稳威布尔误差回归与空间增强分析”(ANSWERS)的推断统计模型被提出。与常用的假设误差呈正态分布的普通线性回归模型不同,ANSWERS纳入了以威布尔分布混合形式建模的非平稳变异性。测量的空间相关性也通过贝叶斯框架纳入模型。使用从电子健康记录中获取的大量视野测量数据集对其进行评估,并与其他广泛用于检测视网膜功能恶化的方法进行比较。在匹配的假阳性率下,ANSWERS能够比传统方法更早地检测到恶化。在检测恶化方面的统计敏感性也显著更好,尤其是在短时间序列中。此外,与没有空间相关性的等效模型相比,ANSWERS中使用的空间相关性显示出提高了检测恶化的能力,尤其是在短随访序列中。ANSWERS是一种检测视网膜功能变化的新的有效方法。它能够更好地检测变化,确定更有效的终点,并且有可能缩短新疗法临床试验的时间。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7343/3894992/83b9cb2fa847/pone.0085654.g001.jpg

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