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Computational Systems Biology
Jean-Luc Bouchot
William L. Trimble
Gregory Ditzler
Yemin Lan
Steve Essinger
Gail Rosen
其他書名
Chapter 14. Advances in Machine Learning for Processing and Comparison of Metagenomic Data
出版
Elsevier Inc. Chapters
, 2013-11-26
主題
Medical / Biostatistics
Science / Life Sciences / Molecular Biology
Science / Life Sciences / Biochemistry
Science / Life Sciences / Biophysics
ISBN
0128070153
9780128070154
URL
http://books.google.com.hk/books?id=ell2DAAAQBAJ&hl=&source=gbs_api
EBook
SAMPLE
註釋
Recent advances in next-generation sequencing have enabled high-throughput determination of biological sequences in microbial communities, also known as microbiomes. The large volume of data now presents the challenge of how to extract knowledge—recognize patterns, find similarities, and find relationships—from complex mixtures of nucleic acid sequences currently being examined. In this chapter we review basic concepts as well as state-of-the-art techniques to analyze hundreds of samples which each contain millions of DNA and RNA sequences. We describe the general character of sequence data and describe some of the processing steps that prepare raw sequence data for inference. We then describe the process of extracting features from the data, assigning taxonomic and gene labels to the sequences. Then we review methods for cross-sample comparisons: (1) using similarity measures and ordination techniques to visualize and measure differences between samples and (2) feature selection and classification to select the most relevant features for discriminating between samples. Finally, in conclusion, we outline some open research problems and challenges left for future research.