3.9 Article

Machine Learning of Bone Marrow Histopathology Identifies Genetic and Clinical Determinants in Patients with MDS

Journal

BLOOD CANCER DISCOVERY
Volume 2, Issue 3, Pages 238-249

Publisher

AMER ASSOC CANCER RESEARCH
DOI: 10.1158/2643-3230.BCD-20-0162

Keywords

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Funding

  1. University of Helsinki
  2. Doctoral Programme in Biomedicine (DPBM)
  3. Biomedicum Helsinki Foundation
  4. Finska Lakaresallskapet
  5. Cancer Foundation Finland
  6. Sigrid Juselius Foundation
  7. Signe and Ane Gyllenberg Foundation
  8. Relander Foundation
  9. Helsinki Institute of Life Sciences Fellow grant
  10. Novartis
  11. state funding for university-level health research in Finland

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This study utilized convolutional neural networks to extract morphologic features from bone marrow biopsies of patients with MDS and MPN, showing promising results in predicting genetic abnormalities, prognosis, and other clinical variables. By linking deep BM histopathology with genetics and clinical variables, this study highlights the potential of convolutional neural networks in understanding MDS pathology and how genetics is reflected in BM morphology.
In myelodysplastic syndrome (MDS) and myeloproliferative neoplasm (MPN), bone marrow (BM) histopathology is assessed to identify dysplastic cellular morphology, cellularity, and blast excess. Yet, other morphologic findings may elude the human eye. We used convolutional neural networks to extract morphologic features from 236 MDS, 87 MDS/MPN, and 11 control BM biopsies. These features predicted genetic and cytogenetic aberrations, prognosis, age, and gender in multivariate regression models. Highest prediction accuracy was found for TET2 [area under the receiver operating curve (AUROC) = 0.94] and spliceosome mutations (0.89) and chromosome 7 monosomy (0.89). Mutation prediction probability correlated with variant allele frequency and number of affected genes per pathway, demonstrating the algorithms' ability to identify relevant morphologic patterns. By converting regression models to texture and cellular composition, we reproduced the classical del(5q) MDS morphology consisting of hypolobulated megakaryocytes. In summary, this study highlights the potential of linking deep BM histopathology with genetics and clinical variables. SIGNIFICANCE: Histopathology is elementary in the diagnostics of patients with MDS, but its high-dimensional data are underused. By elucidating the association of morphologic features with clinical variables and molecular genetics, this study highlights the vast potential of convolutional neural networks in understanding MDS pathology and how genetics is reflected in BM morphology.

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