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Published in: Annals of Hematology 11/2020

Open Access 01-11-2020 | Interferon | Original Article

Real-world risk assessment and treatment initiation among patients with myelofibrosis at community oncology practices in the United States

Authors: Srdan Verstovsek, Jingbo Yu, Jonathan K. Kish, Dilan Paranagama, Jill Kaufman, Callan Myerscough, Michael R. Grunwald, Philomena Colucci, Ruben Mesa

Published in: Annals of Hematology | Issue 11/2020

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Abstract

Myelofibrosis (MF) is a chronic myeloproliferative neoplasm with a prevalence of 4 to 6 per 100,000 people in the USA. Treatment recommendations are risk-adapted. This study was conducted to evaluate how physicians risk-stratify patients at the time of MF diagnosis, the accuracy of the risk stratification, and its effect on treatment selection. Medical charts were reviewed at US community hematology/oncology practices in the Cardinal Health Oncology Provider Extended Network; patient clinical characteristics, risk stratification, and treatment data were collected. Physician-assigned risk categorizations were compared with data-derived risk categorizations based on the International Prognostic Scoring System, the system recommended at diagnosis. A total of 491 patients diagnosed with MF between 2012 and 2016 (mean [SD] age at diagnosis, 65.4 [11.8] years; 54.8% male, 69.2% with primary MF) were included. Risk categorization was not assigned for 30.1% of patients. Of the patients with a physician-assigned risk categorization (n = 343), a scoring system was used in 49.9%. Compared with data-derived risk categorizations, 42.9% of physician-assigned risk categorizations were incorrect; 85.0% of incorrect physician-assigned risk categorizations were underestimations. Notably, 38.5% of patients with data-derived intermediate- or high-risk categorizations did not initiate treatment within 120 days of diagnosis. Among patients with data-derived intermediate risk, those with an underestimated physician-assigned risk categorization were significantly less likely to receive treatment within 120 days of diagnosis (51.6% with correct physician-assigned categorization vs 18.5% with underestimated risk categorization; P = 0.0023). These results highlight the gap in risk assessment and the importance of accurate risk stratification at diagnosis.
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Metadata
Title
Real-world risk assessment and treatment initiation among patients with myelofibrosis at community oncology practices in the United States
Authors
Srdan Verstovsek
Jingbo Yu
Jonathan K. Kish
Dilan Paranagama
Jill Kaufman
Callan Myerscough
Michael R. Grunwald
Philomena Colucci
Ruben Mesa
Publication date
01-11-2020
Publisher
Springer Berlin Heidelberg
Published in
Annals of Hematology / Issue 11/2020
Print ISSN: 0939-5555
Electronic ISSN: 1432-0584
DOI
https://doi.org/10.1007/s00277-020-04055-w

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