By Rudy Guerra,Darlene R. Goldstein
Novel suggestions for reading and mixing info from glossy organic Studies
Broadens the normal Definition of Meta-Analysis
With the variety of knowledge and meta-data now on hand, there's elevated curiosity in examining a number of experiences past statistical techniques of formal meta-analysis. masking an in depth variety of quantitative details blend tools, Meta-analysis and mixing info in Genetics and Genomics seems at the best way to learn a number of stories from a extensive perspective.
After offering the elemental rules and instruments of meta-analysis, the e-book addresses the mix of comparable facts kinds: genotype facts from genome-wide linkage scans and knowledge derived from microarray gene expression experiments. The specialist individuals exhibit how a few information mix difficulties can come up even in the related simple framework and provide ideas to those difficulties. additionally they speak about the mixed research of other info kinds, giving readers a chance to work out info mixture ways in motion throughout a wide selection of genome-scale investigations.
As heterogeneous facts units turn into extra universal, organic knowing could be considerably aided through together reading such information utilizing essentially sound statistical method. This booklet offers many novel suggestions for studying information from glossy organic reviews that contain a number of facts units, both of an identical style or a number of information sources.
Read Online or Download Meta-analysis and Combining Information in Genetics and Genomics (Chapman & Hall/CRC Mathematical and Computational Biology) PDF
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Additional info for Meta-analysis and Combining Information in Genetics and Genomics (Chapman & Hall/CRC Mathematical and Computational Biology)
Meta-analysis and Combining Information in Genetics and Genomics (Chapman & Hall/CRC Mathematical and Computational Biology) by Rudy Guerra,Darlene R. Goldstein