Automated sex and age partitioning for the estimation of reference intervals using a regression tree model

Author:

Klawitter Sandra1,Böhm Johannes2,Tolios Alexander3,Gebauer Julian E.4ORCID

Affiliation:

1. Ostfalia University of Applied Sciences , Wolfenbüttel , Germany

2. Klinikum Passau , Institut für Labor- und Transfusionsmedizin , Passau , Germany

3. Department of Transfusion Medicine and Cell Therapy (UTZ 4i) , Medical University of Vienna , Wien , Austria

4. MVZ Labor Krone GbR , Bad Salzuflen , Germany

Abstract

Abstract Objectives Reference intervals (RI) play a decisive role in the interpretation of medical laboratory results. An important step in the determination of RI is age- and sex specific partitioning, which is usually based on an empirical approach by graphical representation. In this study, we evaluate an automated machine learning approach. Methods This study uses pediatric data from the CALIPER RI (Canadian laboratory initiative on pediatric reference intervals) study. The calculation of potential partitions is carried out using a regression tree model included in the rpart package of the statistical programming language R. The Harris & Boyd method is used to compare the corresponding partitions suggested by rpart and CALIPER. For better comparability, the reference ranges of the partitions of both approaches are then calculated using reflimR. Results Most of the partitions suggested by rpart or CALIPER show sufficient heterogeneity among themselves to justify age- and/or sex-specific RI partitioning. With only few individual exceptions, both methods yield comparable results. The partitions of both approaches for albumin and γ-glutamyltransferase are very similar to each other. For creatinine rpart suggests a slightly earlier distinction between the sexes. Alkaline phosphatase shows the most pronounced differences. In addition to a considerable earlier sex split, rpart suggests different age intervals for both sexes, resulting in three partitions for females and four partitions for males. Conclusions Our findings indicate that the automated analysis provided by rpart yields results that comparable to traditional methods. Nevertheless, the medical plausibility of the automatic suggestions needs to be validated by human experts.

Publisher

Walter de Gruyter GmbH

Reference24 articles.

1. Horowitz, GL, Altaie, S, Boyd, JC, Ceriotti, F, Garg, G, Horn, P, et al.. C28-A3c: defining, establishing, and verifying reference intervals in the clinical laboratory; approved guideline – third edition, 3rd ed. Wayne: Clinical and Laboratory Standards Institute; 2008. (28th series; vol. 30).

2. Jones, GRD, Haeckel, R, Loh, TP, Sikaris, K, Streichert, T, Katayev, A, et al.. Indirect methods for reference interval determination – review and recommendations. Clin Chem Lab Med 2018;57:20–9. https://doi.org/10.1515/cclm-2018-0073.

3. Ichihara, K, Boyd, JC. An appraisal of statistical procedures used in derivation of reference intervals. Clin Chem Lab Med 2010;48:1537–51. https://doi.org/10.1515/cclm.2010.319.

4. Lahti, A. Partitioning biochemical reference data intosubgroups: comparison of existing methods. Clin Chem Lab Med 2004;42:725–33. https://doi.org/10.1515/cclm.2004.123.

5. Sikaris, KA. Physiology and its importance for reference intervals. Clin Biochem Rev 2014;35:3–14.

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