GeoChip: a comprehensive microarray for investigating biogeochemical, ecological and environmental processes

Zhili He(Oak Ridge National Laboratory), Terry J. Gentry(Oak Ridge National Laboratory), Christopher W. Schadt(Oak Ridge National Laboratory), Liyou Wu(Oak Ridge National Laboratory), Jost Liebich(Oak Ridge National Laboratory), Song C. Chong(Oak Ridge National Laboratory), Zhijian Huang(Oak Ridge National Laboratory), Wei‐Min Wu(Stanford University), Baohua Gu(Oak Ridge National Laboratory), P. M. Jardine(Oak Ridge National Laboratory), Craig S. Criddle(Stanford University), Jizhong Zhou(Oak Ridge National Laboratory)
The ISME Journal
May 1, 2007
Cited by 579Open Access
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Abstract

Owing to their vast diversity and as-yet uncultivated status, detection, characterization and quantification of microorganisms in natural settings are very challenging, and linking microbial diversity to ecosystem processes and functions is even more difficult. Microarray-based genomic technology for detecting functional genes and processes has a great promise of overcoming such obstacles. Here, a novel comprehensive microarray, termed GeoChip, has been developed, containing 24,243 oligonucleotide (50 mer) probes and covering >10,000 genes in >150 functional groups involved in nitrogen, carbon, sulfur and phosphorus cycling, metal reduction and resistance, and organic contaminant degradation. The developed GeoChip was successfully used for tracking the dynamics of metal-reducing bacteria and associated communities for an in situ bioremediation study. This is the first comprehensive microarray currently available for studying biogeochemical processes and functional activities of microbial communities important to human health, agriculture, energy, global climate change, ecosystem management, and environmental cleanup and restoration. It is particularly useful for providing direct linkages of microbial genes/populations to ecosystem processes and functions.


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