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Group name EquipeCTCS
Item Type Journal Article
Title Assessing Histology Structures by Ex Vivo MR Microscopy and Exploring the Link Between MRM-Derived Radiomic Features and Histopathology in Ovarian Cancer
Creator Tardieu et al.
Author Marion Tardieu
Author Yulia Lakhman
Author Lakhdar Khellaf
Author Maida Cardoso
Author Olivia Sgarbura
Author Pierre-Emmanuel Colombo
Author Mireia Crispin-Ortuzar
Author Evis Sala
Author Christophe Goze-Bac
Author Stephanie Nougaret
Abstract The value of MR radiomic features at a microscopic scale has not been explored in ovarian cancer. The objective of this study was to probe the associations of MR microscopy (MRM) images and MRM-derived radiomic maps with histopathology in high-grade serous ovarian cancer (HGSOC). Nine peritoneal implants from 9 patients with HGSOC were imaged ex vivo with MRM using a 9.4-T MR scanner. All MRM images and computed pixel-wise radiomics maps were correlated with the slice-matched stroma and tumor proportion maps derived from whole histopathologic slide images (WHSI) of corresponding peritoneal implants. Automated MRM-derived segmentation maps of tumor and stroma were constructed using holdout test data and validated against the histopathologic gold standard. Excellent correlation between MRM images and WHSI was observed (Dice index = 0.77). Entropy, correlation, difference entropy, and sum entropy radiomic features were positively associated with high stromal proportion (r = 0.97,0.88, 0.81, and 0.96 respectively, p < 0.05). MR signal intensity, energy, homogeneity, auto correlation, difference variance, and sum average were negatively associated with low stromal proportion (r = -0.91, -0.93, -0.94, -0.9, -0.89, -0.89, respectively, p < 0.05). Using the automated model, MRM predicted stromal proportion with an accuracy ranging from 61.4% to 71.9%. In this hypothesis-generating study, we showed that it is feasible to resolve histologic structures in HGSOC using ex vivo MRM at 9.4 T and radiomics.
Publication Frontiers in Oncology
Volume 11
Pages 771848
Date 2021
Journal Abbr Front Oncol
Language eng
DOI 10.3389/fonc.2021.771848
ISSN 2234-943X
Library Catalog PubMed
Extra PMID: 35127479 PMCID: PMC8807492
Tags histology, machine learning, marque, MRI, original
Date Added 2022/07/29 - 11:50:49
Date Modified 2022/08/01 - 12:24:03
Notes and Attachments PubMed entry (Attachment)
Texte intégral (Attachment)


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