Center for Clinical Epidemiology and Evidence-Based Medicine, Beijing Children's Hospital, Capital Medical University, National Center for Children Health, Beijing, P.R. China.
Department of Epidemiology and Biostatistics, School of Public Health, Capital Medical University, Beijing, P.R. China.
Clin Chem Lab Med. 2018 Aug 28;56(9):1514-1523. doi: 10.1515/cclm-2017-1095.
We describe an algorithm to determine age-partitioned reference intervals (RIs) exemplified for creatinine using data collection from the clinical laboratory database.
The data were acquired from the test results of creatinine of 164,710 outpatients aged <18 years in Beijing Children's Hospital laboratories' databases between January 2016 and December 2016. The tendency of serum creatinine with age was examined visually using box plot by gender first. The age subgroup was divided automatically by the decision tree method. Subsequently, the statistical tests of the difference between subgroups were performed by Harris-Boyd and Lahti methods.
A total of 136,546 samples after data cleaning were analyzed to explore the partition of age group for serum creatinine from birth to 17 years old. The suggested age partitioning of RIs for creatinine by the decision tree method were for eight subgroups. The difference between age subgroups was demonstrated to be statistically significant by Harris-Boyd and Lahti methods. In addition, the results of age partitioning for RIs estimation were similar to the suggested age partitioning by the Canadian Laboratory Initiative in Pediatric Reference Intervals study. Lastly, a suggested algorithm was developed to provide potential methodological considerations on age partitioning for RIs estimation.
Appropriate age partitioning is very important for establishing more accurate RIs. The procedure to explore the age partitioning using clinical laboratory data was developed and evaluated in this study, and will provide more opinions for designing research on establishment of RIs.
我们描述了一种使用临床实验室数据库中的数据来确定年龄分段参考区间(RI)的算法,以肌酐为例。
本研究的数据来自于 2016 年 1 月至 2016 年 12 月期间北京儿童医院实验室数据库中 164710 名年龄<18 岁的门诊患者的肌酐检测结果。首先,通过性别箱线图直观地检查血清肌酐随年龄的变化趋势。然后,使用决策树法自动划分年龄亚组。随后,采用 Harris-Boyd 和 Lahti 方法对亚组间差异进行统计学检验。
共分析了 136546 个经过数据清理后的样本,以探索出生至 17 岁血清肌酐的年龄分组。决策树法建议的肌酐 RI 年龄分组为 8 个亚组。Harris-Boyd 和 Lahti 方法表明年龄亚组间的差异具有统计学意义。此外,RI 估计的年龄分组结果与加拿大儿科参考区间实验室倡议(Canadian Laboratory Initiative in Pediatric Reference Intervals study)建议的年龄分组相似。最后,开发了一种建议的算法,为 RI 估计的年龄分组提供了潜在的方法学考虑。
适当的年龄分组对于建立更准确的 RI 非常重要。本研究开发并评估了使用临床实验室数据探索年龄分组的过程,将为 RI 建立研究的设计提供更多意见。