Estimating Reference Change Values Using Routine Patient Data: A Novel Pathology Database Approach.

IF 7.1 2区 医学 Q1 MEDICAL LABORATORY TECHNOLOGY
Eirik Åsen Røys, Kristin Viste, Ralf Kellmann, Nora Alicia Guldhaug, Bashir Alaour, Marit Sverresdotter Sylte, Janniche Torsvik, Heidi Strand, Michael Marber, Torbjørn Omland, Elvar Theodorsson, Graham Ross Dallas Jones, Kristin Moberg Aakre
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Abstract

Background: The reference change value (RCV) is calculated by combining the within-subject biological variation (CVI) and local analytical variation (CVA). These calculations do not account for the variation seen in preanalytical conditions in routine practice or CVI in patients presenting for treatment. As a result, the RCVs may not reflect routine practice or align with clinicians' experiences. We propose a novel RCV approach based on routine patient data that is potentially more clinically relevant.

Methods: This study used the refineR algorithm to determine RCVs using serial patient data extracted from a local Laboratory Information System (LIS). The model was applied to biomarkers with a range of result ratio distributions varying from normal to log-normal. Results were compared against conventional formula-based RCVs using CVI estimates from a state-of-the-art biological variation study. Monte Carlo simulations were also used to validate the LIS data approach.

Results: The RCVs estimated from LIS data were: 11-deoxycortisol (men): -70%/+196%, 17-hydroxyprogesterone (men): -49%/+100%, albumin: -10%/+11%, androstenedione (men): -47%/+96%, cortisol (men): -54%/+51%, cortisone (men): -32%/+51%, creatinine: -16%/+14%, phosphate (women): -23%/+29%, phosphate (men): -27%/+29%, testosterone (men): -38%/+60%. The formula-based RCV estimates showed similar but slightly lower results, and the Monte Carlo simulations confirmed the applicability of the new approach.

Conclusions: RCVs may be estimated from patient results without prior assumptions about the shape of the ratios between serial results. Laboratories can determine RCVs based on local practice and population.

利用常规患者数据估算参考变化值:一种新颖的病理数据库方法。
背景:参考变化值 (RCV) 是结合受试者内生物变异 (CVI) 和局部分析变异 (CVA) 计算得出的。这些计算方法没有考虑到常规做法中分析前条件的变化或接受治疗的患者的 CVI。因此,RCV 可能无法反映常规做法或与临床医生的经验不符。我们提出了一种基于常规患者数据的新型 RCV 方法,该方法可能更贴近临床:本研究使用 refineR 算法,利用从当地实验室信息系统(LIS)中提取的患者序列数据确定 RCV。该模型适用于具有从正态到对数正态分布的一系列结果比值的生物标记物。利用最新生物变异研究的 CVI 估计值,将结果与传统的基于公式的 RCV 进行了比较。蒙特卡罗模拟也用于验证 LIS 数据方法:结果:根据 LIS 数据估算出的 RCV 为11-脱氧皮质醇(男性):-70%/+196%,17-羟孕酮(男性):-49%/+100%,白蛋白:-10%/+11%,雄烯二酮(男性):-47%/+96%,皮质醇(男性):-54%/+51%,可的松(男性):-32%/+51%,肌酐:-16%/+14%,磷酸盐(女性):-23%/+29%,磷酸盐(男性):-27%/+29%,睾酮(男性):-38%/+60%.基于公式的 RCV 估值显示出相似但略低的结果,蒙特卡罗模拟证实了新方法的适用性:结论:RCV 可根据患者结果估算,而无需事先假设序列结果之间的比率形状。实验室可根据当地的实践和人口情况确定 RCV。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Clinical chemistry
Clinical chemistry 医学-医学实验技术
CiteScore
11.30
自引率
4.30%
发文量
212
审稿时长
1.7 months
期刊介绍: Clinical Chemistry is a peer-reviewed scientific journal that is the premier publication for the science and practice of clinical laboratory medicine. It was established in 1955 and is associated with the Association for Diagnostics & Laboratory Medicine (ADLM). The journal focuses on laboratory diagnosis and management of patients, and has expanded to include other clinical laboratory disciplines such as genomics, hematology, microbiology, and toxicology. It also publishes articles relevant to clinical specialties including cardiology, endocrinology, gastroenterology, genetics, immunology, infectious diseases, maternal-fetal medicine, neurology, nutrition, oncology, and pediatrics. In addition to original research, editorials, and reviews, Clinical Chemistry features recurring sections such as clinical case studies, perspectives, podcasts, and Q&A articles. It has the highest impact factor among journals of clinical chemistry, laboratory medicine, pathology, analytical chemistry, transfusion medicine, and clinical microbiology. The journal is indexed in databases such as MEDLINE and Web of Science.
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