Continuous Indexing of Fibrosis (CIF): improving the assessment and classification of MPN patients

Author:

Ryou HosukORCID,Sirinukunwattana Korsuk,Aberdeen AlanORCID,Grindstaff Gillian,Stolz Bernadette J.,Byrne Helen,Harrington Heather A.,Sousos NikolaosORCID,Godfrey Anna L.,Harrison Claire N.,Psaila BethanORCID,Mead Adam J.ORCID,Rees Gabrielle,Turner Gareth D. H.,Rittscher Jens,Royston DanielORCID

Abstract

AbstractThe grading of fibrosis in myeloproliferative neoplasms (MPN) is an important component of disease classification, prognostication and monitoring. However, current fibrosis grading systems are only semi-quantitative and fail to fully capture sample heterogeneity. To improve the quantitation of reticulin fibrosis, we developed a machine learning approach using bone marrow trephine (BMT) samples (n = 107) from patients diagnosed with MPN or a reactive marrow. The resulting Continuous Indexing of Fibrosis (CIF) enhances the detection and monitoring of fibrosis within BMTs, and aids MPN subtyping. When combined with megakaryocyte feature analysis, CIF discriminates between the frequently challenging differential diagnosis of essential thrombocythemia (ET) and pre-fibrotic myelofibrosis with high predictive accuracy [area under the curve = 0.94]. CIF also shows promise in the identification of MPN patients at risk of disease progression; analysis of samples from 35 patients diagnosed with ET and enrolled in the Primary Thrombocythemia-1 trial identified features predictive of post-ET myelofibrosis (area under the curve = 0.77). In addition to these clinical applications, automated analysis of fibrosis has clear potential to further refine disease classification boundaries and inform future studies of the micro-environmental factors driving disease initiation and progression in MPN and other stem cell disorders.

Funder

Cancer Research UK

Publisher

Springer Science and Business Media LLC

Subject

Oncology,Cancer Research,Hematology

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