Overview of the BioCreative VI Precision Medicine Track: mining protein interactions and mutations for precision medicine
Rezarta Islamaj(National Institutes of Health), Zhiyong Lu(National Center for Biotechnology Information), Jinchan Qu(Florida State University), Ramakanth Kavuluru(University of Kentucky), Zehra Melce Hüsünbeyi(Boğaziçi University), Nagesh C. Panyam(The University of Melbourne), Arzucan Özgür, Donald C. Comeau(National Institutes of Health), Hong-Jie Dai(National University of Kaohsiung), Chen-Kai Wang(Taipei Medical University), Aparna Elangovan(The University of Melbourne), Qingyu Chen(National Institutes of Health), Rui Antunes(University of Aveiro), Chih-Hsuan Wei(National Institutes of Health), Albert Steppi(Florida State University), Karin Verspoor(Data61), Sérgio Matos(University of Aveiro), Yanshan Wang(University of Pittsburgh), Andrew Chatr‐aryamontri(Institute for Research in Immunology and Cancer), Jinfeng Zhang(Insilicos (United States)), Zhuang Liu(Dalian University of Technology), Sun Kim(National Institutes of Health), Ling Luo(Dalian University of Technology), Tung Tran(University of Kentucky), Hongfang Liu(Mayo Clinic in Florida), Berna Altınel(Marmara University), Aris Fergadis(National Technical University of Athens)
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