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Data from Decoding Intratumoral Heterogeneity of Breast Cancer by Multiparametric In Vivo Imaging: A Translational Study

Posted on 2023-03-30 - 23:52
Abstract

Differential diagnosis and therapy of heterogeneous breast tumors poses a major clinical challenge. To address the need for a comprehensive, noninvasive strategy to define the molecular and functional profiles of tumors in vivo, we investigated a novel combination of metabolic PET and diffusion-weighted (DW)-MRI in the polyoma virus middle T antigen transgenic mouse model of breast cancer. The implementation of a voxelwise analysis for the clustering of intra- and intertumoral heterogeneity in this model resulted in a multiparametric profile based on [18F]Fluorodeoxyglucose ([18F]FDG)-PET and DW-MRI, which identified three distinct tumor phenotypes in vivo, including solid acinar, and solid nodular malignancies as well as cystic hyperplasia. To evaluate the feasibility of this approach for clinical use, we examined estrogen receptor-positive and progesterone receptor-positive breast tumors from five patient cases using DW-MRI and [18F]FDG-PET in a simultaneous PET/MRI system. The postsurgical in vivo PET/MRI data were correlated to whole-slide histology using the latter traditional diagnostic standard to define phenotype. By this approach, we showed how molecular, structural (microscopic, anatomic), and functional information could be simultaneously obtained noninvasively to identify precancerous and malignant subtypes within heterogeneous tumors. Combined with an automatized analysis, our results suggest that multiparametric molecular and functional imaging may be capable of providing comprehensive tumor profiling for noninvasive cancer diagnostics. Cancer Res; 76(18); 5512–22. ©2016 AACR.

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FUNDING

Swiss Werner Siemens Foundation

European Research Council

National Cancer Institute

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AUTHORS (20)

  • Jennifer Schmitz
    Julian Schwab
    Johannes Schwenck
    Qian Chen
    Leticia Quintanilla-Martinez
    Markus Hahn
    Beate Wietek
    Nina Schwenzer
    Annette Staebler
    Ursula Kohlhofer
    Olulanu H. Aina
    Neil E. Hubbard
    Gerald Reischl
    Alexander D. Borowsky
    Sara Brucker
    Konstantin Nikolaou
    Christian la Fougère
    Robert D. Cardiff
    Bernd J. Pichler
    Andreas M. Schmid
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