Editing Functional genomics
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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. |
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==Definition and goals == |
==Definition and goals of functional genomics== |
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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. |
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==Consortium projects== |
==Consortium projects focused on Functional Genomics== |
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=== The ENCODE project === |
=== The ENCODE project === |