| Literature DB >> 25572668 |
Abstract
BACKGROUND: Codon decoding time is a fundamental property of mRNA translation believed to affect the abundance, function, and properties of proteins. Recently, a novel experimental technology--ribosome profiling--was developed to measure the density, and thus the speed, of ribosomes at codon resolution. Specifically, this method is based on next-generation sequencing, which theoretically can provide footprint counts that correspond to the probability of observing a ribosome in this position for each nucleotide in each transcript.Entities:
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Year: 2014 PMID: 25572668 PMCID: PMC4240079 DOI: 10.1186/1471-2164-15-S6-S13
Source DB: PubMed Journal: BMC Genomics ISSN: 1471-2164 Impact factor: 3.969
Figure 2NFC distributions. (A) - Schematic description of the topology of the NFC distributions and some of its major features. The mode describes the NFC value that appears most frequently in the data. (B) - (F) - The NFC distributions of all codon types for the analysed organisms (after empirically fitting them to a curve), shown for NFC values the in range of 0 to 2. NFC distribution functions were sorted (front to back) according to the amplitude of their mode. The codon types with highest/lowest mode amplitude are marked in the figure.
Figure 3Inferring the length of the regions at the ORF 5'/3' ends that are characterized by different NFC distributions relatively to inner parts of the ORF. (A) - NFC distributions are calculated for each codon type, on windows of 50 codons, for the first and last 200 codons of the ORF. (B) Next, the distance between each pair of NFC distributions originating from different windows is calculated, creating a distance matrix for each codon type. The resulting distance matrices are averaged over all codons, and each column in the averaged matrix is averaged again, overall producing a mean distance vector. Each component in this vector describes the average distance between a NFC distribution calculated in the window it represents to NFC distributions of other windows (across all codon types). To determine at what location relative from the 5'/3' ends the distance between NFC distributions stop to significantly differ, a sliding window of length 10 was applied on the mean distance vector, and the values in and outside the window were compared using a Wilcoxon test. The first test that resulted in a p-value greater than 0.05 defined the location relative to the 5'/3' ends that was characterized by similar NFC distributions. (C) - Each subplot describes the mean distance vector calculated on the first and last 100 windows using the Hellinger metric (dotted graphs). The vertical bars depict the calculated standard deviation for each window. The navy bars beneath mark the regions relatively to the 5'/3' end with significantly different NFC distributions in comparison to subsequent regions on the ORFs. A similar test was directly applied on the averaged RC profiles (instead on the mean distance vector; see Figure 24 in Additional file 1), shown in burgundy bars (absent bars indicate of no such region). To emphasize the difference within each organism, different y-scales were used for each organism. For a comparison between organisms using the same y-scale see Figure 21 in Additional file 1.
Figure 4The correlation of basic features of the NFC distribution with various proxies of tRNA levels. Spearman correlations between various basic features (left to right: mean, median, mode, mean/median/skewness of the log-normal fitting) with tRNA copy numbers/tAI values for the different analysed organisms. The height of each bar is the Spearman correlation coefficient, significant correlations in the right direction (p < 0.05) are marked with red '*'.