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How Can I Evaluate Omics Data?
In the book, we learned about some omics techniques, such as genomics, transcriptomics,
or proteomics, and how they are related. It is important to know that systems analysis is
not so easy to formalize. However, it is easy to recognize important ingredients about
biological systems if you have enough biological knowledge. In practice, however, one is
mostly occupied with collecting and evaluating omics data (e.g. own experiments or from
databases, such as GEO). In most cases, the statistical software R is used, which allows
analysis and graphical representation and is also widely used, e.g. with the Bioconductor
tool for high-throughput data analysis (see Sect. 19.6). There are numerous online tutorials
and already prescribed scripts, it is best to simply go to https://www.r-project.org/ and
https://www.bioconductor.org/ for information. In addition, several genome analysis pipe
lines exist, e.g. GensearchNGS, in which we collaborate (Wolf B, Kuonen P, Dandekar T
et al (2015) DNAseq workflow in a diagnostic context and an example of a user friendly
implementation. Biomed Res Int 2015:403–497. https://doi.org/10.1155/2015/403497).
For proteome and transcriptome, our two papers Stojanović SD, Fuchs M, Fiedler J et al.
(2020) Comprehensive bioinformatics identifies key microRNA players in ATG7-deficient
lung fibroblasts. Int J Mol Sci 21(11):4126. https://doi.org/10.3390/ijms21114126) and
Fuchs M, Kreutzer FP, Kapsner LA et al (2020) Integrative bioinformatic analyses of
global transcriptome data decipher novel molecular insights into cardiac anti-fibrotic ther
apies. Int J Mol Sci 21(13):4727. https://doi.org/10.3390/ijms21134727) provide a good
overview. For this it is best to look at the publication, there you will find instructions and
you can practice yourself.
If you want to look a little more into machine learning, you can check out our analysis
pipeline for diagnostic and prognostic signatures (Vey J, Kapsner LA, Fuchs M et al
(2019) A toolbox for functional analysis and the systematic identification of diagnostic
and prognostic gene expression signatures combining meta-analysis and machine learn
ing. Cancers [Basel], 11(10). pii: E1606. https://doi.org/10.3390/cancers11101606). A
nice application example is also shown in the paper Schweitzer S, Kunz M, Kurlbaum M
et al (2019) Plasma steroid metabolome profiling for the diagnosis of adrenocortical car
cinoma. Eur J Endocrinol 180(2):117–125. https://doi.org/10.1530/EJE-18-0782).
19.1 Genomic Data: From Sequence to Structure and Function