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Longitudinal Modeling of Glaucoma Progression Using 2-Dimensional Continuous-Time Hidden Markov Model

机译:使用二维连续时间隐马尔可夫模型对青光眼进展进行纵向建模

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We propose a 2D continuous-time Hidden Markov Model (2D CT-HMM) for glaucoma progression modeling given longitudinal structural and functional measurements. CT-HMM is suitable for modeling longitudinal medical data consisting of visits at arbitrary times, and 2D state structure is more appropriate for glaucoma since the time courses of functional and structural degeneration are usually different. The learned model not only corroborates the clinical findings that structural degeneration is more evident than functional degeneration in early glaucoma and the opposite is observed in more advanced stages, but also reveals the exact stages where the trend reverses. A method to detect time segments of fast progression is also proposed. Our results show that this detector can effectively identify patients with rapid degeneration. The model and the derived detector can be of clinical value for glaucoma monitoring.
机译:我们提出了用于青光眼进展模型的二维连续时间隐马尔可夫模型(2D CT-HMM),并进行了纵向结构和功能测量。 CT-HMM适用于建模由任意时间访问组成的纵向医学数据,而2D状态结构更适合于青光眼,因为功能和结构退化的时程通常是不同的。学习的模型不仅证实了临床发现,即青光眼早期结构性退化比功能性退化更为明显,而在晚期阶段则相反,而且还揭示了趋势逆转的确切阶段。还提出了一种检测快速进展的时间段的方法。我们的结果表明,该检测器可以有效地识别快速变性的患者。该模型和导出的检测器对于青光眼监测具有临床价值。

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