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I have two dataframes as follows

depth
chr  Pos Nucleotide Coverage
chr1 1   A          10
chr1 2   G          12
chr1 3   T          3
chr1 4   A          20
chr1 5   T          22
chr1 6   N          0
chr1 7   N          0
chr2 23  A          1
chr2 24  T          5
chr2 25  G          15

and another dataframe of intervals

intervals

chr1  3  5
chr2 23 25
chr4  1 30

My desired output is as follows: if there are positions in the depth dataframe falling within the range as indicated in the intervals dataframe with the same chr value, the Coverage sum over all nucleotides is calculated for that range and assigned to the 4th column.

chr1  3  5 45
chr2 23 25 21
chr4  1 30  0

and

chr1 3   T  3
chr1 4   A 20
chr1 5   T 22
chr2 23  A  1
chr2 24  T  5
chr2 25  G 15

How can I create these two dataframes using R. I have very large files for depth dataframe with size of 50GB.

  • Why is the sum 0 for the range 1 to 30 but >0 for the sub-range 23 to 25? And what column is being summed? – IceCreamToucan Nov 27 '18 at 17:58
  • And why is the interval 1 to 30 excluded from the second output? – IceCreamToucan Nov 27 '18 at 18:05
  • @IceCreamToucan The Coverage column of the depth dataframe is being summed. The sum for chr4 1 30 is 0 because there is no overlapping value in the depth dataframe. – Callie Nov 27 '18 at 18:06
  • @IceCreamToucan I wish to include the chr4 range positions in the second output as well. – Callie Nov 27 '18 at 18:07
  • Oh, missed the fact that chr was part of the join – IceCreamToucan Nov 27 '18 at 18:15
1

You can use sqldf

library(sqldf)

out1 <- sqldf('
select    i.*
          , coalesce(sum(d.Coverage), 0) as CovSum
from      intervals i
          left join depth d
            on  d.Pos between i.low and i.high
                and d.chr = i.chr
group by  i.chr, i.low, i.high
')
out1        
#    chr low high CovSum
# 1 chr1   3    5     45
# 2 chr2  23   25     21
# 3 chr4   1   30      0

out2 <- sqldf('
select    d.*
from      intervals i
          join depth d
            on  d.Pos between i.low and i.high
                and d.chr = i.chr
')
out2
#    chr Pos Nucleotide Coverage
# 1 chr1   3          T        3
# 2 chr1   4          A       20
# 3 chr1   5          T       22
# 4 chr2  23          A        1
# 5 chr2  24          T        5
# 6 chr2  25          G       15

Data used

library(data.table)

depth <- fread('
chr  Pos Nucleotide Coverage
chr1 1   A          10
chr1 2   G          12
chr1 3   T          3
chr1 4   A          20
chr1 5   T          22
chr1 6   N          0
chr1 7   N          0
chr2 23  A          1
chr2 24  T          5
chr2 25  G          15
')

intervals <- fread('
chr   low high
chr1  3  5
chr2 23 25
chr4  1 30
')
  • I suppose that does address the issue of what to do when one or both of the objects will not fit into RAM. – 42- Nov 27 '18 at 18:34
0

dplyr works great for these kinds of operations:

# first, read in the data, with headers
depth <- read.table(header = T, text = 
"chr  Pos Nucleotide Coverage
chr1 1   A          10
chr1 2   G          12
chr1 3   T          3
chr1 4   A          20
chr1 5   T          22
chr1 6   N          0
chr1 7   N          0
chr2 23  A          1
chr2 24  T          5
chr2 25  G          15")

intervals <- read.table(header = T, text =
"chr  start   end
chr1  3  5
chr2 23 25
chr4  1 30")

Now you can get to work:

library(dplyr)
# create a new data.frame:
# link intervals with any rows from depth where the value of 'chr' matches
# (keeping all rows from intervals)

merged <-
  merge(intervals, depth, by = 'chr', all.x = T) %>%

  mutate(
    # add a column to flag rows in the range spec'd by intervals
    in_range = Pos >= start & Pos <= end,
    # substitute 0 for any missing values in Coverage
    Coverage = coalesce(Coverage, 0L))

# now you can get your results:

result1 <- 
  merged %>% 
  # keep those in range or with no value from depth$Pos
  filter(in_range | is.na(Pos)) %>%
  group_by(chr, start, end) %>%
  summarise(sum_cov = sum(Coverage))

result2 <-
  merged %>%
  # keep those in range
  filter(in_range ==T) %>%
  # only get the columns that were in depth
  select(names(depth))

The results are as you expect:

> result1
  chr   start   end sum_cov
1 chr1      3     5      45
2 chr2     23    25      21
3 chr4      1    30       0

> result2
   chr Pos Nucleotide Coverage
1 chr1   3          T        3
2 chr1   4          A       20
3 chr1   5          T       22
4 chr2  23          A        1
5 chr2  24          T        5
6 chr2  25          G       15
  • Who's downvoting this answer? :/ – arvi1000 Nov 27 '18 at 22:42

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