Artificial intelligence–based morphological fingerprinting of megakaryocytes: a new tool for assessing disease in MPN patients

Author:

Sirinukunwattana Korsuk1234ORCID,Aberdeen Alan2ORCID,Theissen Helen13ORCID,Sousos Nikolaos56ORCID,Psaila Bethan456ORCID,Mead Adam J.456ORCID,Turner Gareth D. H.78,Rees Gabrielle7,Rittscher Jens12349ORCID,Royston Daniel78ORCID

Affiliation:

1. Institute of Biomedical Engineering, Department of Engineering Science, University of Oxford, Oxford, United Kingdom;

2. Ground Truth Labs, Oxford, United Kingdom;

3. Big Data Institute/Li Ka Shing Centre for Health Information and Discovery, University of Oxford, Oxford, United Kingdom;

4. NIHR Oxford Biomedical Research Centre, Oxford University NHS Foundation Trust, Oxford, United Kingdom;

5. Medical Research Council (MRC) Molecular Haematology Unit, MRC Weatherall Institute of Molecular Medicine, and

6. Haematopoietic Stem Cell Biology Laboratory, MRC Weatherall Institute of Molecular Medicine, University of Oxford, Oxford, United Kingdom;

7. Department of Cellular Pathology, John Radcliffe Hospital, Oxford University NHS Foundation Trust, Oxford, United Kingdom; and

8. Nuffield Division of Clinical Laboratory Sciences, Radcliffe Department of Medicine, John Radcliffe Hospital, and

9. Ludwig Institute for Cancer Research/Nuffield Department of Medicine, University of Oxford, Oxford, United Kingdom

Abstract

Abstract Accurate diagnosis and classification of myeloproliferative neoplasms (MPNs) requires integration of clinical, morphological, and genetic findings. Despite major advances in our understanding of the molecular and genetic basis of MPNs, the morphological assessment of bone marrow trephines (BMT) is critical in differentiating MPN subtypes and their reactive mimics. However, morphological assessment is heavily constrained by a reliance on subjective, qualitative, and poorly reproducible criteria. To improve the morphological assessment of MPNs, we have developed a machine learning approach for the automated identification, quantitative analysis, and abstract representation of megakaryocyte features using reactive/nonneoplastic BMT samples (n = 43) and those from patients with established diagnoses of essential thrombocythemia (n = 45), polycythemia vera (n = 18), or myelofibrosis (n = 25). We describe the application of an automated workflow for the identification and delineation of relevant histological features from routinely prepared BMTs. Subsequent analysis enabled the tissue diagnosis of MPN with a high predictive accuracy (area under the curve = 0.95) and revealed clear evidence of the potential to discriminate between important MPN subtypes. Our method of visually representing abstracted megakaryocyte features in the context of analyzed patient cohorts facilitates the interpretation and monitoring of samples in a manner that is beyond conventional approaches. The automated BMT phenotyping approach described here has significant potential as an adjunct to standard genetic and molecular testing in established or suspected MPN patients, either as part of the routine diagnostic pathway or in the assessment of disease progression/response to treatment.

Publisher

American Society of Hematology

Subject

Hematology

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