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The Pseudotemporal Bootstrap for Predicting Glaucoma From Cross-Sectional Visual Field Data

机译:从横断面视野数据预测青光眼的伪颞引导

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Progressive loss of the field of vision is characteristic of a number of eye diseases such as glaucoma, a leading cause of irreversible blindness in the world. Recently, there has been an explosion in the amount of data being stored on patients who suffer from visual deterioration, including visual field (VF) test, retinal image, and frequent intraocular pressure measurements. Like the progression of many biological and medical processes, VF progression is inherently temporal in nature. However, many datasets associated with the study of such processes are often cross sectional and the time dimension is not measured due to the expensive nature of such studies. In this paper, we address this issue by developing a method to build artificial time series, which we call pseudo time series from cross-sectional data. This involves building trajectories through all of the data that can then, in turn, be used to build temporal models for forecasting (which would otherwise be impossible without longitudinal data). Glaucoma, like many diseases, is a family of conditions and it is, therefore, likely that there will be a number of key trajectories that are important in understanding the disease. In order to deal with such situations, we extend the idea of pseudo time series by using resampling techniques to build multiple sequences prior to model building. This approach naturally handles outliers and multiple possible disease trajectories. We demonstrate some key properties of our approach on synthetic data and present very promising results on VF data for predicting glaucoma.
机译:视力的逐渐丧失是许多眼疾病的特征,例如青光眼,这是世界上不可逆失明的主要原因。最近,存储在患有视觉恶化的患者上的数据量激增,包括视野(VF)测试,视网膜图像和频繁的眼内压测量。像许多生物学和医学过程的进展一样,VF进展本质上是暂时的。但是,与此类过程研究相关的许多数据集通常都是横截面的,由于此类研究的昂贵性质,因此无法测量时间维度。在本文中,我们通过开发一种构建人工时间序列的方法来解决这个问题,我们从横截面数据中称其为伪时间序列。这涉及通过所有数据构建轨迹,然后可以使用这些轨迹来构建用于预测的时间模型(否则,如果没有纵向数据,这是不可能的)。与许多疾病一样,青光眼是一类疾病,因此很可能会有许多关键轨迹对理解该疾病很重要。为了处理这种情况,我们通过使用重采样技术在模型构建之前构建多个序列来扩展伪时间序列的概念。这种方法自然可以处理异常值和多种可能的疾病轨迹。我们在合成数据上展示了我们方法的一些关键特性,并在VF数据上提供了非常有希望的结果来预测青光眼。

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