Deep learning prioritizes cancer mutations that alter protein nucleocytoplasmic shuttling to drive tumorigenesis.

深度学习优先考虑改变蛋白质核质穿梭以驱动肿瘤发生的癌症突变

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作者:Zheng Yongqiang, Yu Kai, Lin Jin-Fei, Liang Zhuoran, Zhang Qingfeng, Li Junteng, Wu Qi-Nian, He Cai-Yun, Lin Mei, Zhao Qi, Zuo Zhi-Xiang, Ju Huai-Qiang, Xu Rui-Hua, Liu Ze-Xian
Genetic variants can affect protein function by driving aberrant subcellular localization. However, comprehensive analysis of how mutations promote tumor progression by influencing nuclear localization is currently lacking. Here, we systematically characterize potential shuttling-attacking mutations (SAMs) across cancers through developing the deep learning model pSAM for the ab initio decoding of the sequence determinants of nucleocytoplasmic shuttling. Leveraging cancer mutations across 11 cancer types, we find that SAMs enrich functional genetic variations and critical genes in cancer. We experimentally validate a dozen SAMs, among which R14M in PTEN, P255L in CHFR, etc. are identified to disrupt the nuclear localization signals through interfering their interactions with importins. Further studies confirm that the nucleocytoplasmic shuttling altered by SAMs in PTEN and CHFR rewire the downstream signaling and eliminate their function of tumor suppression. Thus, this study will help to understand the molecular traits of nucleocytoplasmic shuttling and their dysfunctions mediated by genetic variants.

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