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Improving precision of glomerular filtration rate estimating model by ensemble learning

机译:通过集成学习提高肾小球滤过率估计模型的精度

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Accurate assessment of kidney function is clinically important, but estimates of glomerular filtration rate (GFR) by regression are imprecise. We hypothesized that ensemble learning could improve precision. A total of 1419 participants were enrolled, with 1002 in the development dataset and 417 in the external validation dataset. GFR was independently estimated from age, sex and serum creatinine using an artificial neural network (ANN), support vector machine (SVM), regression, and ensemble learning. GFR was measured by 99mTc-DTPA renal dynamic imaging calibrated with dual plasma sample 99mTc-DTPA GFR. Mean measured GFRs were 70.0?ml/min/1.73?m2 in the developmental and 53.4?ml/min/1.73?m2 in the external validation cohorts. In the external validation cohort, precision was better in the ensemble model of the ANN, SVM and regression equation (IQR?=?13.5?ml/min/1.73?m2) than in the new regression model (IQR?=?14.0?ml/min/1.73?m2, P 0.05 for all comparisons of the new regression equation and the other new models. An ensemble learning model including three variables, the average ANN, SVM, and regression equation values, was more precise than the new regression model. A more complex ensemble learning strategy may further improve GFR estimates.
机译:肾功能的准确评估在临床上很重要,但是通过回归估计肾小球滤过率(GFR)并不准确。我们假设整体学习可以提高精度。共有1419名参与者入选,其中1002名参与开发数据集,417名参与外部验证数据集。使用人工神经网络(ANN),支持向量机(SVM),回归和整体学习,根据年龄,性别和血清肌酐独立估算GFR。通过用双血浆样品99mTc-DTPA GFR校准的99mTc-DTPA肾脏动态成像测量GFR。在发育阶段,平均测得的GFR为70.0?ml / min / 1.73?m2,在外部验证队列中为53.4?ml / min / 1.73?m2。在外部验证队列中,在ANN,SVM和回归方程的集成模型(IQR?=?13.5?ml / min / 1.73?m2)中,精度优于新的回归模型(IQR?=?14.0?ml) /min/1.73?m2,对于新回归方程式和其他新模型的所有比较,P 0.05。包括三个变量(平均ANN,SVM和回归方程值)的整体学习模型比新回归模型更精确更复杂的整体学习策略可能会进一步改善GFR估算。

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