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'''Functional genomics''' is a field of [[molecular biology]] that attempts to describe [[gene]] (and [[protein]]) functions and interactions. Functional genomics make use of the vast data generated by [[genomics|genomic]] and [[Transcriptomics|transcriptomic]] projects (such as [[genome project|genome sequencing projects]] and [[RNA-Seq|RNA sequencing]]). Functional genomics focuses on the dynamic aspects such as gene [[transcription (genetics)|transcription]], [[translation (biology)|translation]], [[regulation of gene expression]] and [[protein–protein interaction]]s, as opposed to the static aspects of the genomic information such as [[DNA sequence]] or structures. A key characteristic of functional genomics studies is their genome-wide approach to these questions, generally involving high-throughput methods rather than a more traditional "candidate-gene" approach.
'''Functional genomics''' is a field of [[molecular biology]] that attempts to describe [[gene]] (and [[protein]]) functions and interactions. Functional genomics make use of the vast data generated by [[genomics|genomic]] and [[Transcriptomics|transcriptomic]] projects (such as [[genome project|genome sequencing projects]] and [[RNA-Seq|RNA sequencing]]). Functional genomics focuses on the dynamic aspects such as gene [[transcription (genetics)|transcription]], [[translation (biology)|translation]], [[regulation of gene expression]] and [[protein–protein interaction]]s, as opposed to the static aspects of the genomic information such as [[DNA sequence]] or structures. A key characteristic of functional genomics studies is their genome-wide approach to these questions, generally involving high-throughput methods rather than a more traditional "candidate-gene" approach.


==Definition and goals ==
==Definition and goals of functional genomics==


In order to understand functional genomics it is important to first define function. In their paper<ref>{{cite journal | vauthors = Graur D, Zheng Y, Price N, Azevedo RB, Zufall RA, Elhaik E | title = On the immortality of television sets: "function" in the human genome according to the evolution-free gospel of ENCODE | journal = Genome Biology and Evolution | volume = 5 | issue = 3 | pages = 578–90 | date = 20 February 2013 | pmid = 23431001 | doi = 10.1093/gbe/evt028 | pmc=3622293}}</ref> Graur et al. define function in two possible ways. These are "selected effect" and "causal role". The "selected effect" function refers to the function for which a trait (DNA, RNA, protein etc.) is selected for. The "causal role" function refers to the function that a trait is sufficient and necessary for. Functional genomics usually tests the "causal role" definition of function.
In order to understand functional genomics it is important to first define function. In their paper<ref>{{cite journal | vauthors = Graur D, Zheng Y, Price N, Azevedo RB, Zufall RA, Elhaik E | title = On the immortality of television sets: "function" in the human genome according to the evolution-free gospel of ENCODE | journal = Genome Biology and Evolution | volume = 5 | issue = 3 | pages = 578–90 | date = 20 February 2013 | pmid = 23431001 | doi = 10.1093/gbe/evt028 | pmc=3622293}}</ref> Graur et al. define function in two possible ways. These are "selected effect" and "causal role". The "selected effect" function refers to the function for which a trait (DNA, RNA, protein etc.) is selected for. The "causal role" function refers to the function that a trait is sufficient and necessary for. Functional genomics usually tests the "causal role" definition of function.
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Results from MPRA experiments have required machine learning approaches to interpret the data. A gapped k-mer SVM model has been used to infer the kmers that are enriched within cis-regulatory sequences with high activity compared to sequences with lower activity.<ref>{{cite journal | vauthors = Ghandi M, Lee D, Mohammad-Noori M, Beer MA | title = Enhanced regulatory sequence prediction using gapped k-mer features | journal = PLOS Computational Biology | volume = 10 | issue = 7 | pages = e1003711 | date = July 2014 | pmid = 25033408 | pmc = 4102394 | doi = 10.1371/journal.pcbi.1003711 | doi-access = free | bibcode = 2014PLSCB..10E3711G }}</ref> These models provide high predictive power. Deep learning and random forest approaches have also been used to interpret the results of these high-dimensional experiments.<ref>{{cite journal | vauthors = Li Y, Shi W, Wasserman WW | title = Genome-wide prediction of cis-regulatory regions using supervised deep learning methods | journal = BMC Bioinformatics | volume = 19 | issue = 1 | pages = 202 | date = May 2018 | pmid = 29855387 | pmc = 5984344 | doi = 10.1186/s12859-018-2187-1 | doi-access = free }}</ref> These models are beginning to help develop a better understanding of [[non-coding DNA]] function towards gene-regulation.
Results from MPRA experiments have required machine learning approaches to interpret the data. A gapped k-mer SVM model has been used to infer the kmers that are enriched within cis-regulatory sequences with high activity compared to sequences with lower activity.<ref>{{cite journal | vauthors = Ghandi M, Lee D, Mohammad-Noori M, Beer MA | title = Enhanced regulatory sequence prediction using gapped k-mer features | journal = PLOS Computational Biology | volume = 10 | issue = 7 | pages = e1003711 | date = July 2014 | pmid = 25033408 | pmc = 4102394 | doi = 10.1371/journal.pcbi.1003711 | doi-access = free | bibcode = 2014PLSCB..10E3711G }}</ref> These models provide high predictive power. Deep learning and random forest approaches have also been used to interpret the results of these high-dimensional experiments.<ref>{{cite journal | vauthors = Li Y, Shi W, Wasserman WW | title = Genome-wide prediction of cis-regulatory regions using supervised deep learning methods | journal = BMC Bioinformatics | volume = 19 | issue = 1 | pages = 202 | date = May 2018 | pmid = 29855387 | pmc = 5984344 | doi = 10.1186/s12859-018-2187-1 | doi-access = free }}</ref> These models are beginning to help develop a better understanding of [[non-coding DNA]] function towards gene-regulation.


==Consortium projects==
==Consortium projects focused on Functional Genomics==


=== The ENCODE project ===
=== The ENCODE project ===
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