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Download Flyer COLD SPRING HARBOR ASIA ORGANIZERS(Speaker, Affiliation, Country/Region) Steven E. Brenner Frontiers in University of California, Berkeley, USA A Keith Dunker Indiana University School of Medicine, USA Computational Biology Julian Gough MRC Laboratory of Molecular Biology, UK Suzhou, China September 3-7, 2018 Luhua Lai & Bioinformatics Peking University, China Yunlong Liu Abstract deadline: July 13, 2018 Indiana University School of Medicine, USA MAJOR TOPICS Precision medicine, human genome variation, disease & diagnosis Molecular evolution Pathways, networks & developmental biology Molecular structure, with pioneering techniques Molecular machines, their functions & dynamics Intrinsically disordered proteins & their functions RNA function, regulation & splicing 3D genomics & regulatory inferences Single cell analysis KEYNOTE SPEAKERS (Speaker, Affiliation, Country/Region) Nancy Cox, Vanderbilt University, USA Yoshihide Hayashizaki, RIKEN Research Cluster for Innovation, JAPAN INVITED SPEAKERS (Speaker, Affiliation, Country/Region) Russ Altman, Stanford University, USA Manolis Kellis, MIT Computer Science and Broad Institute, USA Lukasz Kurgan, Virginia Commonwealth University, USA Peer Bork, European Molecular Biology Laboratory, GERMANY Luhua Lai, Peking University, CHINA Steven Brenner, University of California, Berkeley, USA Michal Linial, The Hebrew University of Jerusalem, ISRAEL Angela Brooks, University of California, Santa Cruz, USA Yunlong Liu, Indiana University School of Medicine, USA Luonan Chen, Shanghai Institutes for Biological Sciences, CAS, CHINA Hanah Margalit, Hebrew University of Jerusalem, ISRAEL Keith Dunker, Indiana University School of Medicine, USA Christine Orengo, University College London, UNITED KINGDOM Kumarasamy Thangaraj, The Centre for Cellular & Molecular Biology, INDIA Eleazar Eskin, University of California, Los Angeles, USA Shoshana Wodak, Hospital for Sick Children, CANADA Julian Gough, MRC Laboratory of Molecular Biology, United Kingdom Xinshu Grace Xiao, University of California, Los Angeles, USA Roderic Guigo, Centre de Regulacio Genomica (CRG), SPAIN Li Yang, CAS-MPG Partner Institute for Computational Biology, CHINA Yoshihide Hayashizaki, RIKEN Research Cluster for Innovation, JAPAN Yaoqi Zhou, Griffith University, AUSTRALIA Cold Spring Harbor Asia (CSHA) is the FELLOWSHIPS Asia-Pacific subsidiary of New York We are eager to have as many young people as possible attend since they are likely to benefit most from this meeting. based Cold Spring Harbor Laboratory A certain number of presentations by graduate students and postdocs in this conference will be selected as (CSHL). Inaugurated in 2010, CSHA is fellowship (USD $100-$500) awards. dedicated to promote international scientific exchange in the Asia-Pacific Rim by offering scientific conferences and advanced training courses with highest quality. Tel: +86-512-62729029 Email: [email protected] Address: No. 299, Qiyue Road, Suzhou, China www.csh-asia.org.
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