An automated workflow on data processing (AutoDP) for semiquantitative analysis of urine organic acids with GC-MS to facilitate diagnosis of inborn errors of metabolism

San yuan Wang, Te I. Weng, Ju Yu Chen, Ni Chung Lee, Kun Chen Lee, Mei Ling Lai, Yin Hsiu Chien, Wuh Liang Hwu, Guan Yuan Chen

Research output: Contribution to journalArticlepeer-review

Abstract

Determination of urine organic acids (UOAs) is essential to understand the disease progress of inborn errors of metabolism (IEM) and often relies on GC-MS analysis. However, the efficiency of analytical reports is sometimes restricted by data processing due to labor-intensive work if no proper tool is employed. Herein, we present a simple and rapid workflow with an R-based script for automated data processing (AutoDP) of GC-MS raw files to quantitatively analyze essential UOAs. AutoDP features automatic quality checks, compound identification and confirmation with specific fragment ions, retention time correction from analytical batches, and visualization of abnormal UOAs with age-matched references on chromatograms. Compared with manual processing, AutoDP greatly reduces analytical time and increases the number of identifications. Speeding up data processing is expected to shorten the waiting time for clinical diagnosis, which could greatly benefit clinicians and patients with IEM. In addition, with quantitative results obtained from AutoDP, it would be more feasible to perform retrospective analysis of specific UOAs in IEM and could provide new perspectives for studying IEM.

Original languageEnglish
Article number117230
JournalClinica Chimica Acta
Volume540
DOIs
Publication statusPublished - Feb 2023

Keywords

  • AutoDP
  • Automation
  • Data processing
  • GC-MS
  • Inborn errors of metabolism

ASJC Scopus subject areas

  • Biochemistry
  • Clinical Biochemistry
  • Biochemistry, medical

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