Differentiation of mammary tumors and reduction in metastasis upon <i>Malat1</i> lncRNA loss

Gayatri Arun(Cold Spring Harbor Laboratory), Sarah D. Diermeier(Cold Spring Harbor Laboratory), Martin Akerman(Cold Spring Harbor Laboratory), Kung-Chi Chang(Cold Spring Harbor Laboratory), John E. Wilkinson(University of Michigan), Stephen Hearn(Cold Spring Harbor Laboratory), Youngsoo Kim(Ionis Pharmaceuticals (United States)), A. Robert MacLeod(Ionis Pharmaceuticals (United States)), Adrian R. Krainer(Cold Spring Harbor Laboratory), Larry Norton(Memorial Sloan Kettering Cancer Center), Edi Brogi(Memorial Sloan Kettering Cancer Center), Mikala Egeblad(Cold Spring Harbor Laboratory), David L. Spector(Cold Spring Harbor Laboratory)
Genes & Development
December 23, 2015
Cited by 567Open Access
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Abstract

Genome-wide analyses have identified thousands of long noncoding RNAs (lncRNAs). Malat1 (metastasis-associated lung adenocarcinoma transcript 1) is among the most abundant lncRNAs whose expression is altered in numerous cancers. Here we report that genetic loss or systemic knockdown of Malat1 using antisense oligonucleotides (ASOs) in the MMTV (mouse mammary tumor virus)-PyMT mouse mammary carcinoma model results in slower tumor growth accompanied by significant differentiation into cystic tumors and a reduction in metastasis. Furthermore, Malat1 loss results in a reduction of branching morphogenesis in MMTV-PyMT- and Her2/neu-amplified tumor organoids, increased cell adhesion, and loss of migration. At the molecular level, Malat1 knockdown results in alterations in gene expression and changes in splicing patterns of genes involved in differentiation and protumorigenic signaling pathways. Together, these data demonstrate for the first time a functional role of Malat1 in regulating critical processes in mammary cancer pathogenesis. Thus, Malat1 represents an exciting therapeutic target, and Malat1 ASOs represent a potential therapy for inhibiting breast cancer progression.


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