Human ovarian carcinoma–associated mesenchymal stem cells regulate cancer stem cells and tumorigenesis via altered BMP production

Karen McLean, Yusong Gong(University of Michigan–Ann Arbor), Yun‐Jung Choi(University of Michigan–Ann Arbor), Ning Deng(University of Michigan–Ann Arbor), Kun Yang(University of Michigan–Ann Arbor), Shoumei Bai(Palmetto Hematology Oncology), Lourdes Cabrera(University of Michigan–Ann Arbor), Evan T. Keller(Institute of Laboratory Animal Science), Laurie K. McCauley, Kathleen R. Cho, Ronald J. Buckanovich(Palmetto Hematology Oncology)
Journal of Clinical Investigation
July 1, 2011
Cited by 398

Abstract

Accumulating evidence suggests that mesenchymal stem cells (MSCs) are recruited to the tumor microenvironment; however, controversy exists regarding their role in solid tumors. In this study, we identified and confirmed the presence of carcinoma-associated MSCs (CA-MSCs) in the majority of human ovarian tumor samples that we analyzed. These CA-MSCs had a normal morphologic appearance, a normal karyotype, and were nontumorigenic. CA-MSCs were multipotent with capacity for differentiating into adipose, cartilage, and bone. When combined with tumor cells in vivo, CA-MSCs promoted tumor growth more effectively than did control MSCs. In vitro and in vivo studies suggested that CA-MSCs promoted tumor growth by increasing the number of cancer stem cells. Although CA-MSCs expressed traditional MSCs markers, they had an expression profile distinct from that of MSCs from healthy individuals, including increased expression of BMP2, BMP4, and BMP6. Importantly, BMP2 treatment in vitro mimicked the effects of CA-MSCs on cancer stem cells, while inhibiting BMP signaling in vitro and in vivo partly abrogated MSC-promoted tumor growth. Taken together, our data suggest that MSCs in the ovarian tumor microenvironment have an expression profile that promotes tumorigenesis and that BMP inhibition may be an effective therapeutic approach for ovarian cancer.


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