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<p>
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<h3>vcfR documentation</h3>
by
<br>
Brian J. Knaus and Niklaus J. Grünwald
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<div id="header">
<h1 class="title toc-ignore">Ranking data</h1>
</div>
<p>In the vignette ‘Filtering data’ we used thresholds as an attempt to
isolate the high quality fraction of variants from a VCF file. Here we
assign ranks to variants within windows. This information used alone, or
in conjunction with thresholds, may be an effective strategy to identify
high quality variants.</p>
<div id="data" class="section level2">
<h2>Data</h2>
<p>As in other vignettes, we begin by loading the example data.</p>
<pre class="r"><code>library(vcfR)
vcf_file <- system.file("extdata", "pinf_sc50.vcf.gz", package = "pinfsc50")
dna_file <- system.file("extdata", "pinf_sc50.fasta", package = "pinfsc50")
gff_file <- system.file("extdata", "pinf_sc50.gff", package = "pinfsc50")
vcf <- read.vcfR(vcf_file, verbose = FALSE)
dna <- ape::read.dna(dna_file, format = "fasta")
gff <- read.table(gff_file, sep="\t", quote = "")
chrom <- create.chromR(name="Supercontig", vcf=vcf, seq=dna, ann=gff, verbose=FALSE)
#chrom <- masker(chrom, min_DP = 900, max_DP = 1500)
chrom <- proc.chromR(chrom, verbose = TRUE)</code></pre>
<pre><code>## Nucleotide regions complete.</code></pre>
<pre><code>## elapsed time: 0.122</code></pre>
<pre><code>## N regions complete.</code></pre>
<pre><code>## elapsed time: 0.114</code></pre>
<pre><code>## Population summary complete.</code></pre>
<pre><code>## elapsed time: 0.154</code></pre>
<pre><code>## window_init complete.</code></pre>
<pre><code>## elapsed time: 0</code></pre>
<pre><code>## windowize_fasta complete.</code></pre>
<pre><code>## elapsed time: 0.061</code></pre>
<pre><code>## windowize_annotations complete.</code></pre>
<pre><code>## elapsed time: 0.008</code></pre>
<pre><code>## windowize_variants complete.</code></pre>
<pre><code>## elapsed time: 0</code></pre>
</div>
<div id="creating-scores-to-rank" class="section level2">
<h2>Creating scores to rank</h2>
<p>Before we can rank our variants, we need to come up with some sort of
criteria to help us determine if a variant is high or low quality. Once
we have this score we can select the variant with the highest score from
each window. In order to create our vector of scores, let’s remind
ourselves of what data we have.</p>
<pre class="r"><code>head(chrom)</code></pre>
<pre><code>## ***** Class chromR, method head *****
## Name: Supercontig
## Length: 1,042,442
##
## ***** Sample names (chromR) *****
## [1] "BL2009P4_us23" "DDR7602" "IN2009T1_us22" "LBUS5"
## [5] "NL07434" "P10127"
## [1] "..."
## [1] "P17777us22" "P6096" "P7722" "RS2009P1_us8" "blue13"
## [6] "t30-4"
##
## ***** VCF fixed data (chromR) *****
## CHROM POS ID REF ALT QUAL FILTER
## [1,] "Supercontig_1.50" "41" NA "AT" "A" "4784.43" NA
## [2,] "Supercontig_1.50" "136" NA "A" "C" "550.27" NA
## [3,] "Supercontig_1.50" "254" NA "T" "G" "774.44" NA
## [4,] "Supercontig_1.50" "275" NA "A" "G" "714.53" NA
## [5,] "Supercontig_1.50" "386" NA "T" "G" "876.55" NA
## [6,] "Supercontig_1.50" "462" NA "T" "G" "1301.07" NA
## [1] "..."
## CHROM POS ID REF ALT QUAL FILTER
## [22026,] "Supercontig_1.50" "1042176" NA "T" "A" "162.59" NA
## [22027,] "Supercontig_1.50" "1042196" NA "G" "A" "180.86" NA
## [22028,] "Supercontig_1.50" "1042198" NA "T" "G" "60.27" NA
## [22029,] "Supercontig_1.50" "1042303" NA "C" "G" "804.15" NA
## [22030,] "Supercontig_1.50" "1042396" NA "GA" "G" "1578.82" NA
## [22031,] "Supercontig_1.50" "1042398" NA "A" "C" "1587.87" NA
##
## INFO column has been suppressed, first INFO record:
## [1] "AC=32" "AF=1.00"
## [3] "AN=32" "DP=174"
## [5] "FS=0.000" "InbreedingCoeff=-0.0224"
## [7] "MLEAC=32" "MLEAF=1.00"
## [9] "MQ=51.30" "MQ0=0"
## [11] "QD=27.50" "SOR=4.103"
##
## ***** VCF genotype data (chromR) *****
## ***** First 6 columns *********
## FORMAT BL2009P4_us23 DDR7602
## [1,] "GT:AD:DP:GQ:PL" "1|1:0,7:7:21:283,21,0" "1|1:0,6:6:18:243,18,0"
## [2,] "GT:AD:DP:GQ:PL" "0|0:12,0:12:36:0,36,427" "0|0:20,0:20:60:0,60,819"
## [3,] "GT:AD:DP:GQ:PL" "0|0:27,0:27:81:0,81,1117" "0|0:26,0:26:78:0,78,1077"
## [4,] "GT:AD:DP:GQ:PL" "0|0:29,0:29:87:0,87,1243" "0|0:27,0:27:81:0,81,1158"
## [5,] "GT:AD:DP:GQ:PL" "0|0:26,0:26:78:0,78,1034" "0|0:30,0:30:90:0,90,1242"
## [6,] "GT:AD:DP:GQ:PL" "0|0:23,0:23:69:0,69,958" "0|0:36,0:36:99:0,108,1556"
## IN2009T1_us22 LBUS5
## [1,] "1|1:0,8:8:24:324,24,0" "1|1:0,6:6:18:243,18,0"
## [2,] "0|0:16,0:16:48:0,48,650" "0|0:20,0:20:60:0,60,819"
## [3,] "0|0:23,0:23:69:0,69,946" "0|0:26,0:26:78:0,78,1077"
## [4,] "0|0:32,0:32:96:0,96,1299" "0|0:27,0:27:81:0,81,1158"
## [5,] "0|0:41,0:41:99:0,122,1613" "0|0:30,0:30:90:0,90,1242"
## [6,] "0|0:35,0:35:99:0,105,1467" "0|0:36,0:36:99:0,108,1556"
## NL07434
## [1,] "1|1:0,12:12:36:486,36,0"
## [2,] "0|0:28,0:28:84:0,84,948"
## [3,] "0|1:19,20:39:99:565,0,559"
## [4,] "0|1:19,19:38:99:523,0,535"
## [5,] "0|1:22,22:44:99:593,0,651"
## [6,] "0|1:29,25:54:99:723,0,876"
##
## ***** Var info (chromR) *****
## ***** First 6 columns *****
## CHROM POS MQ DP mask n
## 1 Supercontig_1.50 41 51.30 174 TRUE 16
## 2 Supercontig_1.50 136 52.83 390 TRUE 17
## 3 Supercontig_1.50 254 56.79 514 TRUE 17
## 4 Supercontig_1.50 275 57.07 514 TRUE 17
## 5 Supercontig_1.50 386 57.40 509 TRUE 16
## 6 Supercontig_1.50 462 58.89 508 TRUE 17
##
## ***** VCF mask (chromR) *****
## Percent unmasked: 100
##
## ***** End head (chromR) *****</code></pre>
<p>Let’s use the genotype quality (GQ) and sequence depth (DP) from the
VCF genotype information. We can isolate matrices of genotype quality
and sequence depth with the extract.gt function.</p>
<pre class="r"><code>gq <- extract.gt(chrom, element="GQ", as.numeric=TRUE)
dp <- extract.gt(chrom, element="DP", as.numeric=TRUE)</code></pre>
<p>We can visualize these data with box and whisker plots.</p>
<pre class="r"><code>#hist(gq[,1])
par( mar = c(8,4,4,2) )
boxplot(gq, las=2, col=2:5, main="Genotype Quality (GQ)")</code></pre>
<p><img src="ranking_data_files/figure-html/unnamed-chunk-4-1.png" width="672" style="display: block; margin: auto;" /></p>
<pre class="r"><code>dp2 <- dp
dp2[ dp2 == 0 ] <- NA
boxplot(dp2, las=2, col=2:5, main="Sequence Depth (DP)", log="y")
abline(h=10^c(0:4), lty=3, col="#808080")</code></pre>
<p><img src="ranking_data_files/figure-html/unnamed-chunk-4-2.png" width="672" style="display: block; margin: auto;" /></p>
<pre class="r"><code>par( mar = c(5,4,4,2) )</code></pre>
<p>The values for genotype quality appear to range from 0 to 100 with
among sample variability. For example, sample P13626 consists of
variants which are predominantly near 100 while sample P1362 consists of
variants with qualities mostly just below 20. Comparison of the plots
suggests that there is a correlation among sequence depth (DP) and
genotype qualities (GQ) where samples with variants of high sequence
depth have variants of high genotype quality.</p>
<p>Unlike genotype quality, we don’t necessarily want to maximize on
sequence depth. Low depth variants may make obvious poor choices, but
excessive coverage may represent variants from repetitive regions of the
genome. What we really want to optimize on is mean depth, or some other
measure of central tendency. This will require a little mathematical
gymnastics. If we substract from each library its mean (or other measure
of central tendency) it will center the data around zero. We can then
take an absolute value which will cause the data to range from zero to
some infinite number with zero being our optimal value (the measure of
central tendency). The algorithm we’re going to use looks for an optimum
and not a minimum, so if we multiply by negative one our data will range
from negative infinity to zero with zero being optimal. We now have a
measure of depth where the greatest value is the optimal value.</p>
<pre class="r"><code>mids <- apply(dp, MARGIN=2, median, na.rm=TRUE)
dp2 <- sweep(dp, MARGIN=2, mids, FUN="-")
dp2 <- abs(dp2)
dp2 <- -1 * dp2</code></pre>
<pre class="r"><code>par( mar = c(8,4,4,2) )
boxplot(dp2, las=2, col=2:5, main="Sequence Depth (DP)")</code></pre>
<p><img src="ranking_data_files/figure-html/unnamed-chunk-6-1.png" width="672" style="display: block; margin: auto;" /></p>
<pre class="r"><code>par( mar = c(5,4,4,2) )</code></pre>
<p>Before we combine these data we have one more issue we need to
address. In their current state, sequence depth’s range is much greater
than genotype quality. This means that the data are effectively
weighted, if we simply add them together the sequence depth will have a
greater impact on the final metric than will genotype quality. If we are
happy with that then we can proceed. If we would like to equalize each
metric’s contribution to our final measure of quality we’ll want to
normalize the data. The genotype quality data is fairly straight
forward. If we divide each library by 100 (their theoretical maximum)
they will scale from 0 to 1 instead of 0 to 100. For the sequence depth
we can add the absolute value of the minimum value to each library, this
will make all of the data positive. Then we can divide by this value and
our data should then scale from 0 to 1.</p>
<pre class="r"><code>gq2 <- gq/100
range(gq2, na.rm=TRUE)</code></pre>
<pre><code>## [1] 0.00 0.99</code></pre>
<pre class="r"><code>amins <- abs(apply(dp2, MARGIN=2, min, na.rm = TRUE))
dp2 <- sweep(dp2, MARGIN=2, STATS = amins, FUN="+")
dp2 <- sweep(dp2, MARGIN=2, STATS = amins, FUN="/")
range(dp2, na.rm=TRUE)</code></pre>
<pre><code>## [1] 0 1</code></pre>
<p>We now have metrics which are fairly equal. We can add them together
and summarize over variants.</p>
<pre class="r"><code>scores <- dp2 + gq2
scores <- rowSums(scores, na.rm = TRUE)</code></pre>
<p>Check their distribution with a histogram.</p>
<pre class="r"><code>hist(scores, col=4)</code></pre>
<p><img src="ranking_data_files/figure-html/unnamed-chunk-9-1.png" width="672" style="display: block; margin: auto;" /></p>
<p>Once we have scores in hand we can use them to rank our variants.</p>
<pre class="r"><code>chrom <- rank.variants.chromR(chrom, scores)
head([email protected])</code></pre>
<pre><code>## CHROM POS MQ DP mask n Allele_counts He Ne
## 1 Supercontig_1.50 41 51.30 174 TRUE 16 0,32 0.0000000 1.000000
## 2 Supercontig_1.50 136 52.83 390 TRUE 17 32,2 0.1107266 1.124514
## 3 Supercontig_1.50 254 56.79 514 TRUE 17 31,3 0.1608997 1.191753
## 4 Supercontig_1.50 275 57.07 514 TRUE 17 31,3 0.1608997 1.191753
## 5 Supercontig_1.50 386 57.40 509 TRUE 16 29,3 0.1699219 1.204706
## 6 Supercontig_1.50 462 58.89 508 TRUE 17 31,3 0.1608997 1.191753
## window_number rank
## 1 0 16
## 2 0 15
## 3 0 11
## 4 0 10
## 5 0 14
## 6 0 6</code></pre>
<p>This creates a vector of window numbers and rank within each window
and adds them to the var.info slot of the chromR object. We can take a
look at them bay calling this directly.</p>
<pre class="r"><code>head([email protected][,c('POS', 'MQ', 'DP', 'window_number', 'rank')])</code></pre>
<pre><code>## POS MQ DP window_number rank
## 1 41 51.30 174 0 16
## 2 136 52.83 390 0 15
## 3 254 56.79 514 0 11
## 4 275 57.07 514 0 10
## 5 386 57.40 509 0 14
## 6 462 58.89 508 0 6</code></pre>
<p>We can use this information to create our mask.</p>
<pre class="r"><code>[email protected]$mask[[email protected]$rank > 1] <- FALSE</code></pre>
<p>And plot.</p>
<pre class="r"><code>chromoqc(chrom, dp.alpha='66')</code></pre>
<p><img src="ranking_data_files/figure-html/unnamed-chunk-13-1.png" width="672" /></p>
<p>This looks pretty good. But we still have variants with rather high
or low depth. We can combine the use of masker, which we explored in the
vignette ‘Filtering data’ with our ranks. We’ll first call masker, which
will reset our mask, and then censor this mask based on rank.</p>
<pre class="r"><code>chrom <- masker( chrom, min_QUAL=0, min_DP=350, max_DP=650, min_MQ=59.5, max_MQ=60.5 )
[email protected]$mask[ [email protected]$rank > 1 ] <- FALSE</code></pre>
<p>Then replot.</p>
<pre class="r"><code>chromoqc(chrom, dp.alpha='66')</code></pre>
<p><img src="ranking_data_files/figure-html/unnamed-chunk-15-1.png" width="672" /></p>
</div>
<div id="conclusion" class="section level2">
<h2>Conclusion</h2>
<p>This provides another tool to help filter variant files to the
highest quality fraction. In a previous vignette we used the function
masker() to filter the data. Here we’ve created a composite score which
we’d like to maximize and ranked the variants based on theis score
within windows. A strength of this method is that by using windows we’re
able to evenly space our variants accross a chromosome. Choosing the
best, or several best, variants per window does not necessarily guaranty
high quality variants. If all of the variants in a window are of low
quality then the best of these may still be poor quality. Some some
additional processing may be necessary. With these tools it is hoped
that an individual can rapidly explore their data and determine a method
to extract the highest quality variants so that downstream analyses will
be of the highest quality possible.</p>
</div>
<center>
<hr class="style1">
<p>Copyright © 2017, 2018 Brian J. Knaus. All rights reserved.</p>
<p>USDA Agricultural Research Service, Horticultural Crops Research Lab.</p>
</center>
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