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Penalized count data regression with application to hospital stay after pediatric cardiac surgery

机译:惩罚计数数据回归分析及其在小儿心脏外科手术后住院期间的应用

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Pediatric cardiac surgery may lead to poor outcomes such as acute kidney injury (AKI) and prolonged hospital length of stay (LOS). Plasma and urine biomarkers may help with early identification and prediction of these adverse clinical outcomes. In a recent multi-center study, 311 children undergoing cardiac surgery were enrolled to evaluate multiple biomarkers for diagnosis and prognosis of AKI and other clinical outcomes. LOS is often analyzed as count data, thus Poisson regression and negative binomial (NB) regression are common choices for developing predictive models. With many correlated prognostic factors and biomarkers, variable selection is an important step. The present paper proposes new variable selection methods for Poisson and NB regression. We evaluated regularized regression through penalized likelihood function. We first extend the elastic net (Enet) Poisson to two penalized Poisson regression: Mnet, a combination of minimax concave and ridge penalties; and Snet, a combination of smoothly clipped absolute deviation (SCAD) and ridge penalties. Furthermore, we extend the above methods to the penalized NB regression. For the Enet, Mnet, and Snet penalties (EMSnet), we develop a unified algorithm to estimate the parameters and conduct variable selection simultaneously. Simulation studies show that the proposed methods have advantages with highly correlated predictors, against some of the competing methods. Applying the proposed methods to the aforementioned data, it is discovered that early postoperative urine biomarkers including NGAL, IL18, and KIM-1 independently predict LOS, after adjusting for risk and biomarker variables.
机译:小儿心脏手术可能导致不良结局,例如急性肾损伤(AKI)和住院时间延长(LOS)。血浆和尿液生物标志物可能有助于早期识别和预测这些不良临床结果。在最近的一项多中心研究中,招募了311名接受心脏手术的儿童,以评估多种生物标志物对AKI的诊断和预后以及其他临床结果。 LOS通常作为计数数据进行分析,因此泊松回归和负二项式(NB)回归是开发预测模型的常见选择。有了许多相关的预后因素和生物标志物,变量选择是重要的一步。本文提出了一种新的用于Poisson和NB回归的变量选择方法。我们通过惩罚似然函数评估了正则回归。我们首先将弹性网(Enet)泊松扩展到两个惩罚性泊松回归:Mnet,最小极大凹和脊罚的组合;和Snet,结合了平滑修剪的绝对偏差(SCAD)和脊线罚分。此外,我们将上述方法扩展到惩罚的NB回归。对于Enet,Mnet和Snet罚款(EMSnet),我们开发了统一的算法来估计参数并同时进行变量选择。仿真研究表明,与某些竞争方法相比,所提出的方法具有与预测因子高度相关的优势。将提出的方法应用于上述数据,发现在调整风险和生物标志物变量后,早期的术后尿液生物标志物(包括NGAL,IL18和KIM-1)可以独立预测LOS。

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