eJHaem (May 2021)

An open‐source, expert‐designed decision tree application to support accurate diagnosis of myeloid malignancies

  • Thomas Coats,
  • Daniel Bean,
  • Theodora Vatopoulou,
  • Dhanapal Vijayavalli,
  • Razan El‐Bashir,
  • Aikaterini Panopoulou,
  • Henry Wood,
  • Manujasri Wimalachandra,
  • Jason Coppell,
  • Patrick Medd,
  • Michelle Furtado,
  • David Tucker,
  • Austin Kulasakeraraj,
  • Joya Pawade,
  • Richard Dobson,
  • Robin Ireland

DOI
https://doi.org/10.1002/jha2.182
Journal volume & issue
Vol. 2, no. 2
pp. 261 – 265

Abstract

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Abstract Accurate, reproducible diagnoses can be difficult to make in haemato‐oncology due to multi‐parameter clinical data, complex diagnostic criteria and time‐pressured environments. We have designed a decision tree application (DTA) that reflects WHO diagnostic criteria to support accurate diagnoses of myeloid malignancies. The DTA returned the correct diagnoses in 94% of clinical cases tested. The DTA maintained a high level of accuracy in a second validation using artificially generated clinical cases. Optimisations have been made to the DTA based on the validations, and the revised version is now publicly available for use at http://bit.do/ADAtool.

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