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Quantitative Prediction of Glaucomatous Visual Field Loss from Few Measurements

机译:测量少数测量中青光眼视野损失的定量预测

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We propose database-aware regression methods for extrapolation from few measurements in the context of quantitative prognosis. The idea is to leverage a database of patients with similar conditions to increase the effective number of samples when we train a predictive model. Applying the proposed method to a database of glaucoma patients, we were able to predict the disease condition at a future time point significantly more accurately than the conventional patient-wise linear regression approach. In fact, our prediction was 50% more accurate than the conventional approach when three or less measurements were available and with only two measurements at least as accurate as the conventional approach with six measurements. Moreover, the proposed method can provide spatially localized prediction and also the (localized) speed of progression, which are valuable for doctors in making decisions.
机译:我们提出了在定量预后背景下的几个测量外推外推断的数据库感知回归方法。这个想法是利用类似条件的患者的数据库来增加当我们训练预测模型时增加有效的样本数量。将提出的方法应用于青光眼患者的数据库,我们能够在未来的时间点预测疾病状况,比传统的患者 - 明智的线性回归方法更准确地更准确。事实上,当有三次或多或少测量时,我们的预测比传统方法更准确,并且只有两次测量,至少与六次测量一样准确。此外,所提出的方法可以提供空间局部化的预测,以及(局部化)的进展速度,这对于制定决策时对医生来说是有价值的。

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