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The National Microbiome Data Collaborative: enabling microbiome science.
Nature Reviews Microbiology ( IF 88.1 ) Pub Date : 2020-06-01 , DOI: 10.1038/s41579-020-0377-0
Elisha M Wood-Charlson 1 , Anubhav 2 , Deanna Auberry 2 , Hannah Blanco 3 , Mark I Borkum 2 , Yuri E Corilo 2 , Karen W Davenport 4 , Shweta Deshpande 1 , Ranjeet Devarakonda 3 , Meghan Drake 3 , William D Duncan 1 , Mark C Flynn 4 , David Hays 1 , Bin Hu 4 , Marcel Huntemann 1 , Po-E Li 4 , Mary Lipton 2 , Chien-Chi Lo 4 , David Millard 2 , Kayd Miller 1 , Paul D Piehowski 2 , Samuel Purvine 2 , T B K Reddy 1 , Migun Shakya 4 , Jagadish Chandrabose Sundaramurthi 1 , Pajau Vangay 1 , Yaxing Wei 3 , Bruce E Wilson 3 , Shane Canon 1 , Patrick S G Chain 4 , Kjiersten Fagnan 1 , Stanton Martin 3 , Lee Ann McCue 2 , Christopher J Mungall 1 , Nigel J Mouncey 1 , Mary E Maxon 1 , Emiley A Eloe-Fadrosh 1
Affiliation  

To harness the potential of microbiome science across the broad range of relevant disciplines, new approaches to data infrastructure and transdisciplinary collaboration are necessary. The National Microbiome Data Collaborative (NMDC) is a new initiative to support microbiome data exploration and discovery through a collaborative, integrative data science ecosystem. To harness the potential of microbiome science across the broad range of relevant disciplines, new approaches to data infrastructure and transdisciplinary collaboration are necessary. The National Microbiome Data Collaborative is a new initiative to support microbiome data exploration and discovery through a collaborative, integrative data science ecosystem.

中文翻译:

国家微生物组数据合作组织:促进微生物组科学。

为了利用微生物学在众多相关学科中的潜能,数据基础设施和跨学科协作的新方法必不可少。美国国家微生物组数据协作组织(NMDC)是一项新计划,旨在通过协作,集成的数据科学生态系统来支持微生物组数据的探索和发现。为了利用微生物学在众多相关学科中的潜能,数据基础设施和跨学科协作的新方法必不可少。国家微生物组数据协作组织是一项新计划,旨在通过一个协作的,集成的数据科学生态系统来支持微生物组数据的探索和发现。
更新日期:2020-04-29
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