| FY08 LDRD Final Report Probabilistic Inference of Metabolic Pathways from Metagenomic Sequence Data | |
| D'haeseleer, P | |
| 关键词: BIOLOGICAL PATHWAYS; COMMUNITIES; ECOLOGY; FUNCTIONALS; GENES; STRUCTURAL CHEMICAL ANALYSIS; TESTING; | |
| DOI : 10.2172/948980 RP-ID : LLNL-TR-410988 PID : OSTI ID: 948980 Others : TRN: US200909%%378 |
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| 学科分类:生物科学(综合) | |
| 美国|英语 | |
| 来源: SciTech Connect | |
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【 摘 要 】
Metagenomic 'shotgun' sequencing of environmental microbial communities has the potential to revolutionize microbial ecology, allowing a cultivation-independent, yet sequence-based analysis of the metabolic capabilities and functions present in an environmental sample. Although its intensive sequencing requirements are a good match for the continuously increasing bandwidth at sequencing centers, the complexity, seemingly inexhaustible novelty, and 'scrambled' nature of metagenomic data is also proving a tremendous challenge for analysis. In fact, many metagenomics projects do not go much further than providing a list of novel gene variants and over- or under-represented functional gene categories. In this project, we proposed to develop a set of novel metagenomic sequence analysis tools, including a binning method to group sequences by species, inference of phenotypes and metabolic pathways from these reconstructed species, and extraction of coarse-grained flux models. We proposed to closely collaborate with the DOE Joint Genome Institute to align these tools with their metagenomics analysis needs and the developing IMG/M metagenomics pipeline. Results would be cross-validated with simulated metagenomic data using a testing platform developed at the JGI.
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| RO201705170002641LZ | 2324KB |
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