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使用混合效应逻辑回归模型预测1型糖尿病幼儿及青少年的血糖控制情况。

Prediction of glycaemic control in young children and adolescents with type 1 diabetes mellitus using mixed-effects logistic regression modelling.

作者信息

van Esdonk Michiel Joost, Tai Bonnie, Cotterill Andrew, Charles Bruce, Hennig Stefanie

机构信息

School of Pharmacy, Pharmacy Australia Centre of Excellence (PACE), The University of Queensland, Woolloongabba, Queensland, Australia.

Pharmacy Department, The Prince Charles Hospital, Chermside, Queensland, Australia.

出版信息

PLoS One. 2017 Aug 2;12(8):e0182181. doi: 10.1371/journal.pone.0182181. eCollection 2017.

Abstract

OBJECTIVES

Glycaemic control in children and adolescents with type 1 diabetes mellitus can be challenging, complex and influenced by many factors. This study aimed to identify patient characteristics that were predictive of satisfactory glycaemic control in the paediatric population using a logistic regression mixed-effects (population) modelling approach.

METHODS

The data were obtained from 288 patients aged between 1 and 22 years old recorded retrospectively over 3 years (1852 HbA1c observations). HbA1c status was categorised as 'satisfactory' or 'unsatisfactory' glycaemic control, using an a priori cut-off value of HbA1c ≥ 9% (75 mmol/mol), as used routinely by the hospital's endocrine paediatricians. Patients' characteristics were tested as covariates in the model as potential predictors of glycaemic control.

RESULTS

There were three patient characteristics identified as having a significant influence on glycaemic control: HbA1c measurement at the beginning of the observation period (Odds Ratio (OR) = 0.30 per 1% HbA1c increase, 95% confidence interval (CI) = 0.20-0.41); Age (OR = 0.88 per year increase, 95% CI = 0.80-0.94), and fractional disease duration (disease duration/age, OR = 0.80 per 0.10 increase, 95% CI = 0.66-0.93) were collectively identified as factors contributing significantly to lower the probability of satisfactory glycaemic control.

CONCLUSIONS

The study outcomes may prove useful for identifying paediatric patients at risk of having unsatisfactory glycaemic control, and who could require more extensive monitoring, support, or targeted interventions.

摘要

目的

1型糖尿病儿童和青少年的血糖控制可能具有挑战性、复杂性且受多种因素影响。本研究旨在采用逻辑回归混合效应(总体)建模方法,确定在儿科人群中预测血糖控制良好的患者特征。

方法

数据来自288例年龄在1至22岁之间的患者,这些数据是回顾性记录的,为期3年(共1852次糖化血红蛋白观察)。糖化血红蛋白状态被分类为血糖控制“良好”或“不佳”,采用医院儿科内分泌医生常规使用的糖化血红蛋白≥9%(75 mmol/mol)的先验临界值。患者特征作为模型中的协变量进行测试,作为血糖控制的潜在预测因素。

结果

确定了三个对血糖控制有显著影响的患者特征:观察期开始时的糖化血红蛋白测量值(每增加1%糖化血红蛋白,优势比(OR)=0.30,95%置信区间(CI)=0.2~0.41);年龄(每年增加,OR = 0.88,95% CI = 0.80~0.94),以及疾病病程分数(疾病病程/年龄,每增加0.10,OR = 0.80,95% CI = 0.66~0.93)被共同确定为显著降低血糖控制良好概率的因素。

结论

研究结果可能有助于识别血糖控制不佳风险的儿科患者,以及那些可能需要更广泛监测、支持或针对性干预的患者。

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