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Multivariate anomaly detection models enhance identification of errors in routine clinical chemistry testing.

Clin Chem Lab Med

November 2024

Department of Chemical Pathology, NSW Health Pathology, Level 1, Pathology Building, 34378 Liverpool Hospital, Liverpool, NSW, Australia.

Objectives: Conventional autoverification rules evaluate analytes independently, potentially missing unusual patterns of results indicative of errors such as serum contamination by collection tube additives. This study assessed whether multivariate anomaly detection algorithms could enhance the detection of such errors.

Methods: Multivariate Gaussian, k-nearest neighbours (KNN) distance, and one-class support vector machine (SVM) anomaly detection models, along with conventional limit checks, were developed using a training dataset of 127,451 electrolyte, urea, and creatinine (EUC) results, with a 5 % flagging rate targeted for all approaches.

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