4.7 Article

DLBCL-Morph: Morphological features computed using deep learning for an annotated digital DLBCL image set

Journal

SCIENTIFIC DATA
Volume 8, Issue 1, Pages -

Publisher

NATURE RESEARCH
DOI: 10.1038/s41597-021-00915-w

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DLBCL is the most common non-Hodgkin lymphoma, with varying morphologies but no consistent morphologic features correlating with prognosis. Geometric features computed from tumor nuclei were found to be prognostically important and may help predict survival outcomes. Further validation in prospective studies is needed.
Diffuse Large B-Cell Lymphoma (DLBCL) is the most common non-Hodgkin lymphoma. Though histologically DLBCL shows varying morphologies, no morphologic features have been consistently demonstrated to correlate with prognosis. We present a morphologic analysis of histology sections from 209 DLBCL cases with associated clinical and cytogenetic data. Duplicate tissue core sections were arranged in tissue microarrays (TMAs), and replicate sections were stained with H&E and immunohistochemical stains for CD10, BCL6, MUM1, BCL2, and MYC. The TMAs are accompanied by pathologist-annotated regions-of-interest (ROIs) that identify areas of tissue representative of DLBCL. We used a deep learning model to segment all tumor nuclei in the ROIs, and computed several geometric features for each segmented nucleus. We fit a Cox proportional hazards model to demonstrate the utility of these geometric features in predicting survival outcome, and found that it achieved a C-index (95% CI) of 0.635 (0.574,0.691). Our finding suggests that geometric features computed from tumor nuclei are of prognostic importance, and should be validated in prospective studies.

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