Adipose Tissue in Breast Cancer Microphysiological Models to Capture Human Diversity in Preclinical Models

Author:

Hamel Katie M.1ORCID,Frazier Trivia P.1,Williams Christopher2,Duplessis Tamika3,Rowan Brian G.4,Gimble Jeffrey M.1,Sanchez Cecilia G.1

Affiliation:

1. Obatala Sciences, Inc., New Orleans, LA 70148, USA

2. Division of Basic Pharmaceutical Sciences, Xavier University of Louisiana, New Orleans, LA 70125, USA

3. Delgado Community College, New Orleans, LA 70119, USA

4. Department of Structural and Cellular Biology, Tulane University School of Medicine, New Orleans, LA 70112, USA

Abstract

Female breast cancer accounts for 15.2% of all new cancer cases in the United States, with a continuing increase in incidence despite efforts to discover new targeted therapies. With an approximate failure rate of 85% for therapies in the early phases of clinical trials, there is a need for more translatable, new preclinical in vitro models that include cellular heterogeneity, extracellular matrix, and human-derived biomaterials. Specifically, adipose tissue and its resident cell populations have been identified as necessary attributes for current preclinical models. Adipose-derived stromal/stem cells (ASCs) and mature adipocytes are a normal part of the breast tissue composition and not only contribute to normal breast physiology but also play a significant role in breast cancer pathophysiology. Given the recognized pro-tumorigenic role of adipocytes in tumor progression, there remains a need to enhance the complexity of current models and account for the contribution of the components that exist within the adipose stromal environment to breast tumorigenesis. This review article captures the current landscape of preclinical breast cancer models with a focus on breast cancer microphysiological system (MPS) models and their counterpart patient-derived xenograft (PDX) models to capture patient diversity as they relate to adipose tissue.

Publisher

MDPI AG

Reference119 articles.

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