2024
DOI: 10.1097/md.0000000000037751
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JAKCalc: A machine-learning approach to rationalized JAK2 testing in patients with elevated hemoglobin levels

Fatos Dilan Koseoglu,
Fatma Keklik Karadag,
Hale Bulbul
et al.

Abstract: The demand for Janus Kinase-2 (JAK2) testing has been disproportionate to the low yield of positive results, which highlights the need for more discerning test strategies. The aim of this study is to introduce an artificial intelligence application as a more rational approach for testing JAK2 mutations in cases of erythrocytosis. Test results were sourced from samples sent to a tertiary hospital’s genetic laboratory between 2017 and 2023, meeting 2016 World Health Organization criteria for JAK2V617F mutation t… Show more

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