Loss of the abundant nuclear non-coding RNA<i>MALAT1</i>is compatible with life and development

Moritz F. Eissmann(Georg Speyer Haus), Tony Gutschner(German Cancer Research Center), Monika Hämmerle(German Cancer Research Center), Stefan Günther(Max Planck Institute for Heart and Lung Research), Maïwen Caudron‐Herger(German Cancer Research Center), Matthias Groß(German Cancer Research Center), Peter Schirmacher(Heidelberg University), Karsten Rippe(German Cancer Research Center), Thomas Braun(Max Planck Institute for Heart and Lung Research), Martin Zörnig(Georg Speyer Haus), Sven Diederichs(German Cancer Research Center)
RNA Biology
August 1, 2012
Cited by 393Open Access
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Abstract

The metastasis-associated lung adenocarcinoma transcript 1, MALAT1, is a long non-coding RNA (lncRNA) that has been discovered as a marker for lung cancer metastasis. It is highly abundant, its expression is strongly regulated in many tumor entities including lung adenocarcinoma and hepatocellular carcinoma as well as physiological processes, and it is associated with many RNA binding proteins and highly conserved throughout evolution. The nuclear transcript MALAT-1 has been functionally associated with gene regulation and alternative splicing and its regulation has been shown to impact proliferation, apoptosis, migration and invasion. Here, we have developed a human and a mouse knockout system to study the loss-of-function phenotypes of this important ncRNA. In human tumor cells, MALAT1 expression was abrogated using Zinc Finger Nucleases. Unexpectedly, the quantitative loss of MALAT1 did neither affect proliferation nor cell cycle progression nor nuclear architecture in human lung or liver cancer cells. Moreover, genetic loss of Malat1 in a knockout mouse model did not give rise to any obvious phenotype or histological abnormalities in Malat1-null compared with wild-type animals. Thus, loss of the abundant nuclear long ncRNA MALAT1 is compatible with cell viability and normal development.


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