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Automated prediction of low ferritin concentrations using a machine learning algorithm.

Steef Kurstjens1, Thomas de Bel2, Armando van der Horst1

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Clinical Chemistry and Laboratory Medicine
|March 8, 2022
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Summary

A machine learning algorithm accurately predicts low ferritin levels in anemic patients using basic lab tests. This computational tool aids in diagnosing iron deficiency, improving patient outcomes in primary care settings.

Keywords:
artificial intelligencecase-findingdiagnosticsiron deficiencylaboratory information systemreflective testing

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Area of Science:

  • Biomedical Informatics
  • Clinical Pathology
  • Machine Learning in Healthcare

Background:

  • Laboratory test interpretation can be enhanced by computational algorithms.
  • Anemia is a common condition where low body iron storage (indicated by low ferritin) is a key concern.
  • Primary care physicians require efficient tools to assess iron status in anemic patients.

Purpose of the Study:

  • To develop and evaluate a machine learning algorithm for predicting low ferritin plasma levels.
  • To utilize a minimal set of routine laboratory tests (complete blood count and C-reactive protein) for risk assessment.
  • To compare the algorithm's performance against human expert interpretation.

Main Methods:

  • A machine learning algorithm was developed and validated using laboratory measurements from anemic primary care patients.
  • The algorithm's predictive accuracy for low ferritin was compared to twelve laboratory medicine specialists.
  • Specialists' performance was assessed with and without the algorithm's output as a decision support tool.

Main Results:

  • Machine learning algorithms achieved high accuracy in predicting low ferritin levels (AUC 0.92 and 0.90) on different analyzers.
  • Specialists demonstrated lower accuracy than the algorithms, even when provided with the algorithm's predictions.
  • Algorithm implementation led to an average of one new iron deficiency diagnosis per day.

Conclusions:

  • Machine learning algorithms can accurately predict low ferritin levels in anemic patients using standard laboratory results.
  • These algorithms serve as effective decision support tools, reducing unrecognized iron deficiencies.
  • Integrating such algorithms into laboratory systems can improve the diagnosis and management of iron deficiency.