Transcription control reprogramming in genetic backup circuits Literature search WANG Chao 4/6/2005.

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Transcription control reprogramming in genetic backup circuits Literature search WANG Chao 4/6/2005

Why this question? ► Why severe mutations often do not result in a detectably abnormal phenotype. robustness was partially ascribed to redundant paralogs ► U nderstand both the relevance of transcription regulation to duplicate retention in evolution and its role in controlling expression of genes that provide backup in case of mutation

Definition For each pair of paralogs, 40 correlation coefficients of mRNA expression corresponding to 40 different experiments Mean expression similarity: means of such correlations for each piar Partial coregulation (PCoR) values: standard deviations of such correlations for each pair

Inspected close and remote paralogous pairs separately and found markedly different trends: In remote pairs, backup was most efficient among transcriptionally noncorrelated pairs, as their essentiality was substantially lower than that of single genes. These results provide a potential explanation for the observed decrease in backup capacity with increased coexpression. In contrast to remote pairs, close pairs showed an almost opposite, more intuitive trend.

Dependence of backup on expression similarity between paralogs.

Backup among naturally dissimilarly expressed genes A and B may suggest that, upon mutation in gene A, expression of gene B is reprogrammed to acquire a profile that is similar to the wild-type expression profile of gene A. Example: Such reprogramming has been experimentally verified for the Acs1 and Acs2 isoenzymes.

In search for a mechanism that may regulate switching between dissimilar and similar expression in response to mutation, we examined the dependence of gene essentiality on PCoR. We found that PCoR was a very strong predictor of backup

Investigate the promoter architecture of backup-providing paralogs Maximal backup coincided with intermediate levels of motif sharing We propose that the unique motifs of each paralog provide differential expression in the wild type and that the shared motifs allow paralogs to respond to the same conditions. This situation allows for reprogramming in response to mutations.

Gene dispensability as a function of the regulatory motif–content overlap O between genes and their closest paralogs.

To corroborate the hypothesis that PCoR underlies reprogramming and, ultimately, backup, we examined three predictions.

First, one member of a pair with high PCoR should be upregulated transcriptionally in response to the deletion of its paralog. Transcriptional response of backup-providing genes to the deletion of the counterparts.

Second, our reprogramming scenario predicts that the more motifs control a gene, the better its reprogramming and backup-providing capacity will be. Difference in the number of motifs regulating paralogous pair members as a function of the difference in the growth rates of mutants lacking them.

Third, our proposed model predicts synthetic lethal interactions. Backup was maximal among pairs with high PCoR and low coexpression. Confirmation and characterization of genetic backup circuits.

What controls reprogramming of a gene upon mutation of its paralog. Propose a kinetic model, or reprogramming switch.

Conclusions The different behavior of close and remote paralogs probably stems from the profoundly different evolutionary regimens acting on them. We propose that backup-providing duplicates may be retained during evolution if their retention is coupled to other selectable traits, such as acquisition of new regulatory capabilities