Package ddpcr

Dean Attali

2020-06-01

ddpcr: Analysis and visualization of Droplet Digital PCR data in R and on the web

Build Status CRAN version

Copyright 2016-2019 Dean Attali. Licensed under the MIT license.

This package provides an interface to explore, analyze, and visualize droplet digital PCR (ddPCR) data in R. It also includes an interactive web application with a visual user interface to facilitate analysis for anyone who is not comfortable with using R. The app is available online or it can be run locally.

This document explains the purpose of this package and includes a tutorial on how to use it. It should take about 20 minutes to go through the entire document. A peer-reviewed publication describing this tool is available in F1000Research.

Table of contents

Background

Droplet Digital PCR (ddPCR) is a technology provided by Bio-Rad for performing digital PCR. The basic workflow of ddPCR involves three main steps: partitioning sample DNA into 20,000 droplets, PCR amplification of the nucleic acid in each droplet, and finally passing the droplets through a reader that detects fluorescence in two different wavelengths (generally set to detect FAM and HEX dyes). As a result, the data obtained from a ddPCR experiment can be visualized as a 2D scatterplot (one dimension is FAM intensity and the other dimension is HEX intensity) with 20,000 points (each droplet represents a point). The following figure is an example of a scatterplot from ddPCR data.

Sample ddPCR data

This package is designed to analyze two-channel ddPCR experiments (experiments utilizing both fluorescence channels). Single-channel experiments (where only one fluorescence channel is used) cannot use this tool.

A two-channel assay typically uses one FAM dye and one HEX dye, and consequently the droplets will be grouped into one of four clusters: double-positive (droplets that contain both target sequences and emit both HEX and FAM fluorescence), FAM-positive, HEX-positive, and double-negative (empty droplets without any amplifiable template that do not emit fluorescence in either channel). When plotting the droplets, each quadrant of the plot corresponds to a cluster; for example, the droplets in the lower-left quadrant are the double-negative droplets.

After running a ddPCR experiment, a key step in the analysis is gating the droplets to determine how many droplets belong to each cluster. Bio-Rad provides an analysis software called QuantaSoft which can be used to perform gating. QuantaSoft can either do the gating automatically or allow the user to set the gates manually. Most ddPCR users currently gate their data manually because QuantaSoft’s automatic gating often does a poor job and there are no other tools available for gating ddPCR data.

Overview

The ddpcr package allows you to import your ddPCR data, perform some basic analysis, explore the data, and create customizable figures of the data.

Main features

The main features include:

Supported experiment types

While this tool was originally developed to automatically gate data for a particular ddPCR assay (Quantitative Detection and Resolution of BRAF V600 Status in Colorectal Cancer Using Droplet Digital PCR and a Novel Wild-Type Negative Assay by Roza Bidshahri, Dean Attali, et al.), any ddPCR experiment using an assay with similar characteristics can also use this tool to automatically gate the droplets. In order to benefit from the full automatic analysis, your ddPCR experiment needs to have these characteristics:

In other words, the built-in automatic gating will work when there are three expected clusters of droplets: (1) double-negative, (2) double-positive, and (3) either FAM+ or HEX+. These types of experiments will be referred to as (FAM+)/(FAM+HEX+) or (HEX+)/(FAM+HEX+). Both of these experiment types fall under the name of PNPP experiments; PNPP is short for PositiveNegative/PositivePositive, which is a reflection of the droplet clusters. Here is what a typical well from a PNPP experiment looks like:

Supported experiment types

If your experiment matches the criteria for a PNPP experiment (either a (FAM+)/(FAM+HEX+) or a (HEX+)/(FAM+HEX+) experiment), then each droplet will be classified either as a rain droplet or as one of the three expected droplet clusters (FAM+, FAM+HEX+, or double-negative). Rain droplets are droplets that emit considerably more fluorescence than empty droplets, but do not emit enough fluorescence to be assigned into one of the main clusters. Here is the result of analyzing a single well from a (FAM+)/(FAM+HEX+) experiment:

Analyze result

If your ddPCR experiment is not a PNPP type, you can still use this tool for the rest of the analysis, exploration, and plotting, but it will not benefit from the automatic gating. However, ddpcr is built to be easily extensible, which means that you can add your own experiment type. Custom experiment types need to define their own method for gating the droplets in a well, and then they can be used in the same way as the built-in experiment types.

Note: throughout this document, FAM will be synonymous to Y axis and HEX will be synonymous to X axis, as a reflection of the fact that conventionally when visualizing the data the FAM intensity is plotted on the Y axis and the HEX intensity is on the X axis.

Analysis using the interactive tool

If you’re not comfortable using R and would like to use a visual tool that requires no programming, you can use the tool online. You should still skim through the rest of this document (you can ignore the actual code/commands) as it will explain some important concepts.

Analysis using R

Enough talking, let’s get our hands dirty.

First, install ddpcr

install.packages("ddpcr")

Running the interactive tool locally through R

Even if you do know R, using the interactive application can be easier and more convenient than running R commands. If you want to use the visual tool, simply run ddpcr::launch() and it will run the same application that’s hosted online on your own machine.

Quick start

Here are two basic examples of how to use ddpcr to analyze and plot your ddPCR data. One example shows an analysis where the gating thresholds are manually set, and the other example uses the automated analysis. Explanation will follow, these are just here as a teaser.

Note how ddpcr is designed to play nicely with the magrittr pipe %>% for easier pipeline workflows.

library(ddpcr)
dir <- sample_data_dir()

# example 1: manually set thresholds
plate1 <-
  new_plate(dir, type = plate_types$custom_thresholds) %>%
  subset("A01,A05") %>%
  set_thresholds(c(5000, 7500)) %>%
  analyze()
plot(plate1, show_grid_labels = TRUE, alpha_drops = 0.3,
       title = "Manually set gating thresholds\nworks with any data")

# example 2: automatic gating
new_plate(dir, type = plate_types$fam_positive_pnpp) %>%
  subset("A01:A05") %>%
  analyze() %>%
  plot(show_mutant_freq = FALSE, show_grid_labels = TRUE, alpha_drops = 0.3,
       title = "Automatic gating\nworks with PNPP experiments")

Running a basic analysis - detailed walkthrough

This section will go into details of how to use ddpcr to analyze ddPCR data.

Loading ddPCR data

The first step is to get the ddPCR data into R. ddpcr uses the data files that are exported by QuantaSoft as its input. If you loaded an experiment named 2015-05-20_mouse with 50 wells to QuantaSoft, then QuantaSoft can export the following files:

The well files are the only required input to ddpcr, and since ddPCR plates contain 96 wells, you can upload anywhere from 1 to 96 well files. The results file is not mandatory, but if you don’t provide it then the wells will not have sample names attached to them.

ddpcr contains a sample dataset called small that has 5 wells. We use the new_plate() function to initialize a new ddPCR plate object. If given a directory, it will automatically find all the valid well files in the directory and attempt to find a matching results file.

library(ddpcr)
dir <- sample_data_dir()
plate <- new_plate(dir)
#> Reading data files into plate... DONE (0 seconds)
#> Initializing plate of type `ddpcr_plate`... DONE (0 seconds)

You will see some messages appear - every time ddpcr runs an analysis step (initializing the plate is part of the analysis), it will output a message describing what it’s doing. You can turn off messages by disabling the verbose option with the command options(ddpcr.verbose = FALSE).

Pre-analysis exploration of the data

We can explore the data we loaded even before doing any analysis. The first and easiest thing to do is to plot the raw data.

plot(plate)

Another way to get a quick overview of the data is by simply printing the plate object.

plate
#>                     ddpcr plate
#>                    -------------
#>             Dataset name : small
#>             Data summary : 5 wells; 72,727 drops
#>               Plate type : ddpcr_plate
#> Completed analysis steps : INITIALIZE
#> Remaining analysis steps : REMOVE_FAILURES, REMOVE_OUTLIERS, REMOVE_EMPTY

Among other things, this tells us how many wells and total droplets we have in the data, and what steps of the analysis are remaining. All the information that gets shown when you print a ddpcr plate object is also available through other functions that are dedicated to show one piece of information. For example

plate %>% name()  # equivalent to `name(plate)`
#> [1] "small"
plate %>% type()  # equivalent to `type(plate)`
#> [1] "ddpcr_plate"

Since we didn’t specify an experiment type, this plate object has the default type of ddpcr_plate.

We can see what wells are in our data with wells_used()

plate %>% wells_used()
#> [1] "A01" "A05" "C01" "C05" "F05"

There are 5 wells because the sample data folder has 5 well files.

We can see all the droplets data with plate_data()

plate %>% plate_data()
#> # A tibble: 72,727 x 4
#>    well    HEX   FAM cluster
#>    <chr> <int> <int>   <int>
#>  1 A01     577   494       1
#>  2 A01     515   495       1
#>  3 A01     690   645       1
#>  4 A01     929   860       1
#>  5 A01     844   868       1
#>  6 A01     942   907       1
#>  7 A01     985   923       1
#>  8 A01    1058   966       1
#>  9 A01    1058   979       1
#> 10 A01    1095  1002       1
#> # ... with 72,717 more rows

Technical note: This shows us the fluorescence amplitudes of each droplet, along with the current cluster assignment of each droplet. Right now all droplets are assigned to cluster 1 which corresponds to undefined since no analysis has taken place yet. You can see all the clusters that a droplet can belong to with the clusters() function

plate %>% clusters()
#> [1] "UNDEFINED" "FAILED"    "OUTLIER"   "EMPTY"

This tells us that any droplet in a ddpcr_plate-type experiment can be classified into those clusters. Any droplet is initially UNDEFINED, droplets in failed wells are marked as FAILED, and the other two names are self-explanatory.

We can see the results of the plate so far with plate_meta()

plate %>% plate_meta(only_used = TRUE)
#>   well sample row col used    target_ch1     target_ch2 drops
#> 1  A01   Dean   A   1 TRUE Consensus_FAM WTspecific_HEX 15820
#> 2  A05   Dave   A   5 TRUE Consensus_FAM WTspecific_HEX 13165
#> 3  C01   Mike   C   1 TRUE Consensus_FAM WTspecific_HEX 14256
#> 4  C05  Emily   C   5 TRUE Consensus_FAM WTspecific_HEX 14109
#> 5  F05   Mary   F   5 TRUE Consensus_FAM WTspecific_HEX 15377

The only_used parameter is used so that we’ll only get data about the 5 existing wells and ignore the other 91 unused wells on the plate. Notice that meta (short for metadata) is used instead of results. This is because the meta/results table contains information for each well such as its name, number of drops, number of empty drops, concentration, and many other calculated values.

Subset the plate

If you aren’t interested in all the wells, you can use the subset() function to retain only certain wells. Alternatively, you can use the data_files argument of the new_plate() function to only load certain well files instead of a full directory.

The subset() function accepts either a list of sample names, a list of wells, or a special range notation. The range notation is a convenient way to select many wells: use a colon (:) to specify a range of wells and a comma (,) to add another well or range. A range of wells is defined as all wells in the rectangular area between the two endpoints. For example, B05:C06 corresponds to the four wells B05, B06, C05, C06. The following diagram shows the result of subsetting with a range notation of A01:H03, C05, E06, B07:C08 on a plate that initially contains all 96 wells.

Subset example

Back to our data: we have 5 wells, let’s keep 4 of them

plate <- plate %>% subset("A01:C05")
# could have also used subset("A01, A05, C01, C05")
plate %>% wells_used()
#> [1] "A01" "A05" "C01" "C05"

Run analysis

An analysis of a ddPCR plate consists of running the plate through a sequence of steps. You can see the steps of an experiment by printing it.

plate
#>                     ddpcr plate
#>                    -------------
#>             Dataset name : small
#>             Data summary : 4 wells; 57,350 drops
#>               Plate type : ddpcr_plate
#> Completed analysis steps : INITIALIZE
#> Remaining analysis steps : REMOVE_FAILURES, REMOVE_OUTLIERS, REMOVE_EMPTY

The last two lines show which steps have been completed and which steps remain. These steps are the default steps that any ddpcr plate will go through by default if no type is specified. At this point all we did was load the data, so the initialization step was done and there are 3 remaining steps. You can run all remaining steps with analyze(), or run through the steps one by one using next_step().

plate <- plate %>% analyze()
#> Identifying failed wells... DONE (0 seconds)
#> Identifying outlier droplets... DONE (0 seconds)
#> Identifying empty droplets... DONE (1 seconds)
#> Analysis complete
# equivalent to `plate %>% next_step(3)`
# also equivalent to `plate %>% next_step() %>% next_step() %>% next_step()`

As each step of the analysis is performed, a message describing the current step is printed to the screen. Since we only have 4 wells, it should be very fast, but when you have a full 96-well plate, the analysis could take several minutes. Sometimes it can be useful to run each step individually rather than all of them together if you want to inspect the data after each step.

Post-analysis exploration of the data

We can explore the plate again, now that it has been analyzed.

plate
#>         ddpcr plate
#>        -------------
#> Dataset name : small
#> Data summary : 4 wells; 57,350 drops
#>   Plate type : ddpcr_plate
#>       Status : Analysis completed

We now get a message that says the analysis is complete (earlier it said which steps were remaining). We can also look at the droplets data

plate %>% plate_data()
#> # A tibble: 57,350 x 4
#>    well    HEX   FAM cluster
#>    <chr> <int> <int>   <int>
#>  1 A01     577   494       4
#>  2 A01     515   495       4
#>  3 A01     690   645       4
#>  4 A01     929   860       4
#>  5 A01     844   868       4
#>  6 A01     942   907       4
#>  7 A01     985   923       4
#>  8 A01    1058   966       4
#>  9 A01    1058   979       4
#> 10 A01    1095  1002       4
#> # ... with 57,340 more rows

This isn’t very informative since it shows the cluster assignment for each droplet, which is not easy for a human to digest. Instead, this information can be visualized by plotting the plate (coming up). We can also look at the plate results

plate %>% plate_meta(only_used = TRUE)
#>   well sample row col used    target_ch1     target_ch2 drops success
#> 1  A01   Dean   A   1 TRUE Consensus_FAM WTspecific_HEX 15820    TRUE
#> 2  A05   Dave   A   5 TRUE Consensus_FAM WTspecific_HEX 13165    TRUE
#> 3  C01   Mike   C   1 TRUE Consensus_FAM WTspecific_HEX 14256    TRUE
#> 4  C05  Emily   C   5 TRUE Consensus_FAM WTspecific_HEX 14109   FALSE
#>   drops_outlier drops_empty drops_non_empty drops_empty_fraction concentration
#> 1             2       13690            2130                0.865           170
#> 2             1       11283            1882                0.857           181
#> 3             0       12879            1377                0.903           120
#> 4             0          NA              NA                   NA            NA

Now there’s a bit more information in the results table. The success column indicates whether or not the ddPCR run was successful in that particular well; notice how well C05 was deemed a failure, and thus is not included the any subsequent analysis steps.

You can use the well_info() function to get the value of a specific variable of a specific well from the results. For example, we can query the plate object to see how many empty droplets are in well A05.

well_info(plate, "A05", "drops_empty")
#> [1] 11283

Plot

The easiest way to visualize a ddPCR plate is using the plot() function.

plate %>% plot()

Notice well C05 is grayed out, which means that it is a failed well. By default, failed wells have a grey background, and empty and outlier droplets are excluded from the plot.

You don’t have to analyze a plate object before you can plot it - a ddPCR plate can be plotted at any time to show the data in it. If you plot a plate before analyzing it, it’ll show the raw data.

Plot parameters

There are many plot parameters to allow you to create extremely customizable plots. Among the many parameters, there are three special categories of parameters that affect the visibility of droplets: show_drops_* is used to show/hide certain droplets, col_drops_* is used to set the colour of droplets, and alpha_drops_* is used to set the transparency of droplets (0 = transparent, 1 = opaque). The * can be replaced by the name of any droplet cluster (the available clusters can be obtained with clusters(plate) as mentioned earlier). For example, to show the outlier droplets in blue, add the parameters show_drops_outlier = TRUE, col_drops_outlier = "blue".

The following two plots show examples of how to use some plot parameters.

plate %>% plot(wells = "A01,A05", show_full_plate = TRUE,
               show_drops_empty = TRUE, col_drops_empty = "red",
               title = "Show full plate")
plate %>% plot(wells = "A01,A05", superimpose = TRUE,
               show_grid = TRUE, show_grid_labels = TRUE, title = "Superimpose")

To see all the available plot parameters, run ?plot.ddpcr_plate.

Save your data

As was shown previously, you can use the plate_meta() function to retrieve a table with the results. If you want to save that table, you can use R’s built-in write.csv() or write.table() functions.

You can also save a ddPCR plate object using plate_save(). This will create a single .rds file that contains an exact copy of the plate’s current state, including all the data, attributes, and analysis progress of the plate. The resulting file can be loaded to restore the ddPCR object at a later time with plate_load().

plate %>% save_plate("myplate")
from_file <- load_plate("myplate")
identical(plate, from_file)
#> [1] TRUE
unlink("myplate.rds")

Analysis of different plate types

So far we only used the default plate type in this analysis, but droplet gating does not take place with the default type. While you can define your own plate types (more on that later), there are three built-in plate types you can use:

  1. plate_types$custom_thresholds - when you want to gate your droplets into four quadrants according to HEX and FAM values that you set
  2. plate_types$fam_positive_pnpp - when you have a FAM-positive PNPP plate (FAM+)/(FAM+HEX+)
  3. plate_types$hex_positive_pnpp - when you have a HEX-positive PNPP plate (HEX+)/(FAM+HEX+)

The next two sections explain how to use these experiment types.

Gating droplets in any ddPCR plate with custom thresholds

If you want to perform a simple 4-quadrant gating like the one available in QuantaSoft, you need to set the type of the plate object to plate_types$custom_thresholds. This can either be done when initializing a new plate or by resetting an existing plate object.

# two ways to create the desired plate
plate_manual <- reset(plate, type = plate_types$custom_thresholds)
plate_manual2 <- new_plate(dir, type = plate_types$custom_thresholds) %>%
  subset("A01:C05")

# make sure the two methods above are identical
identical(plate_manual, plate_manual2)
#> [1] TRUE
plate_manual
#>                     ddpcr plate
#>                    -------------
#>             Dataset name : small
#>             Data summary : 4 wells; 57,350 drops
#>               Plate type : custom_thresholds, ddpcr_plate
#> Completed analysis steps : INITIALIZE
#> Remaining analysis steps : REMOVE_OUTLIERS, CLASSIFY

It’s usually a good idea to take a look at the raw data to decide where the draw the thresholds

plot(plate_manual, show_grid_labels = TRUE)

If you noticed, there’s a droplet in well A05 that has a much larger fluorescence value and is probably an outlier, which is the reason the scale is a bit too large. After analyzing the plate, it will be identified as an outlier and hidden automatically. Before running the analysis, we should set where the thresholds will be. By default, the thresholds are at (5000, 5000), which is very arbitrary. It looks like the x coordinate is fine, but the y border should move up to approximately 8000. Then run the analysis.

# what are the current thresholds?
thresholds(plate_manual)
#> [1] "(5000, 5000)"
# set the thresholds to (5000,8000)
thresholds(plate_manual) <- c(5000, 8000)
plate_manual <- analyze(plate_manual)
#> Identifying outlier droplets... DONE (0 seconds)
#> Classifying droplets... DONE (0 seconds)
#> Analysis complete

Now the plate is ready and we can plot it or look at its results

plate_meta(plate_manual, only_used = TRUE)
#>   well sample row col used    target_ch1     target_ch2 drops drops_outlier
#> 1  A01   Dean   A   1 TRUE Consensus_FAM WTspecific_HEX 15820             2
#> 2  A05   Dave   A   5 TRUE Consensus_FAM WTspecific_HEX 13165             1
#> 3  C01   Mike   C   1 TRUE Consensus_FAM WTspecific_HEX 14256             0
#> 4  C05  Emily   C   5 TRUE Consensus_FAM WTspecific_HEX 14109             0
#>   drops_empty drops_x_positive drops_y_positive drops_both_positive
#> 1       13909               20               20                1869
#> 2       11512               34              390                1228
#> 3       12967                8                7                1274
#> 4       14011               15               11                  72
plot(plate_manual)

By default, the droplets in each quadrant are a different colour. If you want to change the colour of some droplets, we can use the col_drops_* parameter as before. Since now we’re working with a different plate type, the names of the droplet clusters can be different, so we need to first know what they are

clusters(plate_manual)
#> [1] "UNDEFINED"     "OUTLIER"       "EMPTY"         "X_POSITIVE"   
#> [5] "Y_POSITIVE"    "BOTH_POSITIVE"

Now if we want to change the colour of the double-positive droplets to red, we just add a parameter col_drops_both_positive = "red".

To see all the available plot parameters for this plate type, run ?plot.custom_thresholds. In addition, any plot parameter that is available for default plates can also be used here (all parameters listed under ?plot.ddpcr_plate).

Gating droplets in PNPP experiments automatically

If you have a PNPP experiment ((FAM+)/(FAM+HEX+) or (HEX+)/(FAM+HEX+)), then ddpcr can perform a fully automatic analysis on the plate. The sample dataset used in this running example is from a (FAM+)/(FAM+HEX+) experiment, so we can take advantage of the automatic gating if we set the type to plate_types$fam_positive_pnpp.

Let’s create a new plate object of the desired type.

plate_pnpp <- new_plate(dir, type = plate_types$fam_positive_pnpp)
#> Reading data files into plate... DONE (0 seconds)
#> Initializing plate of type `fam_positive_pnpp`... DONE (0 seconds)

If the data were (HEX+)/(FAM+HEX+), we would have used type = plate_types$hex_positive_pnpp instead.

Clusters of a PNPP experiment

Before running the analysis, it’s a good idea to know what are the possible cluster groupings that a droplet can belong to

clusters(plate_pnpp)
#> [1] "UNDEFINED" "FAILED"    "OUTLIER"   "EMPTY"     "RAIN"      "POSITIVE" 
#> [7] "NEGATIVE"

The first 4 clusters we’ve seen before, as they are common to all plate types. Droplets in the HEX+FAM+ cluster are considered POSITIVE, while droplets in the FAM+ cluster are considered NEGATIVE since they are HEX-. Any droplets that are not empty but don’t emit enough fluorescent intensity to be in the POSITIVE or NEGATIVE clusters are considered RAIN.

When using the plate_types$fam_positive_pnpp type, the positive droplets (FAM+HEX+) are called wildtype, and the negative droplets (FAM+HEX-) are called mutant. Why? This package was originally designed to analyze a specific assay where the FAM+HEX+ cluster represented droplets with a wildtype gene inside, while the FAM+HEX- cluster corresponded to droplets with a mutant gene. Talking about positive vs negative drops or positive vs negative wells sounds a bit weird, so it was decided to stick with mutant vs wildtype. Just remember: wildtype = double-positive droplets, mutant = singly-positive droplets.

Analysis of a PNPP experiment

Now we can analyze the plate

plate_pnpp <- analyze(plate_pnpp)
#> Identifying failed wells... DONE (0 seconds)
#> Identifying outlier droplets... DONE (0 seconds)
#> Identifying empty droplets... DONE (1 seconds)
#> Classifying droplets... DONE (1 seconds)
#> Reclassifying droplets... skipped (not enough wells with significant mutant clusters)
#> Analysis complete

One of the key goals in running the analysis is to determine the number of POSITIVE (wildtype) and NEGATIVE (mutant) droplets in each well, and similarly the mutant frequency (if a well has 95 wildtype droplets and 5 mutant droplets, then the mutant frequency in the well is 5%).

You can see from the output that the two last steps are classifying and reclassifying the droplets, and that the reclassification didn’t take place. The classification step identifies all the non-empty droplets as either rain, mutant, or wildtype by analyzing each well individually. Wells with a very low mutant frequency (i.e. there are very few mutant droplets) are much harder to gate accurately, which is the reason for the reclassification step. The reclassification step uses information from wells with high a mutant frequency, where the gates are more clearly defined, to adjust the gates in wells with a low mutant frequency. The reclassification step only takes place if there are enough wells with a high mutant frequency.

Results of a PNPP experiment

Take a look at the results

plate_pnpp %>% plate_meta(only_used = TRUE)
#>   well sample row col used    target_ch1     target_ch2 drops success
#> 1  A01   Dean   A   1 TRUE Consensus_FAM WTspecific_HEX 15820    TRUE
#> 2  A05   Dave   A   5 TRUE Consensus_FAM WTspecific_HEX 13165    TRUE
#> 3  C01   Mike   C   1 TRUE Consensus_FAM WTspecific_HEX 14256    TRUE
#> 4  F05   Mary   F   5 TRUE Consensus_FAM WTspecific_HEX 15377    TRUE
#> 5  C05  Emily   C   5 TRUE Consensus_FAM WTspecific_HEX 14109   FALSE
#>   drops_outlier drops_empty drops_non_empty drops_empty_fraction concentration
#> 1             2       13690            2130                0.865           170
#> 2             1       11283            1882                0.857           181
#> 3             0       12879            1377                0.903           120
#> 4             0       14126            1251                0.919            99
#> 5             0          NA              NA                   NA            NA
#>   mutant_border filled_border significant_mutant_cluster mutant_num
#> 1          4194          8286                      FALSE          4
#> 2          3789          8136                       TRUE        368
#> 3          4356          8445                      FALSE          3
#> 4          3926          8294                       TRUE        211
#> 5            NA            NA                         NA         NA
#>   wildtype_num mutant_freq
#> 1         1827       0.218
#> 2         1224      23.100
#> 3         1248       0.240
#> 4          855      19.800
#> 5           NA          NA

Explanation of some of the variables:

Plotting the data is usually the best way to see the results

plate_pnpp %>% plot(text_size_mutant_freq = 8)

To see all the available plot parameters for this plate type, run ?plot.pnpp_experiment. In addition, any plot parameter that is available for default plates can also be used here (all parameters listed under ?plot.ddpcr_plate).

The wildtype droplets are green and the mutant droplets are purple. The well colours themselves reflect the significant_mutant_cluster variable: wells that are mostly wildtype droplets are green, and wells with significant mutant clusters are purple. There are parameters to set all these colours, the transparency levels, and many more options.

Similar to how wells_failed() returns the failed wells, you can use the wells_mutant() and wells_wildtype() functions to extract the wells with a significant mutant cluster and those without.

plate_pnpp %>% wells_mutant()
#> [1] "A05" "F05"
plate_pnpp %>% wells_wildtype()
#> [1] "A01" "C01"

Advanced topic 1: Plate parameters

Every ddPCR plate object has adjustable parameters associated with it. There are general parameters that apply to the plate as a whole, and each analysis step has its own set of parameters that are used for the algorithm in that step. You can see all the parameters of a plate using the params() function

plate %>% params() %>% str()
#> List of 4
#>  $ GENERAL        :List of 4
#>   ..$ X_VAR         : chr "HEX"
#>   ..$ Y_VAR         : chr "FAM"
#>   ..$ DROPLET_VOLUME: num 0.00085
#>   ..$ RANDOM_SEED   : num 8
#>  $ REMOVE_FAILURES:List of 3
#>   ..$ TOTAL_DROPS_T      : num 5000
#>   ..$ EMPTY_LAMBDA_LOW_T : num 0.3
#>   ..$ EMPTY_LAMBDA_HIGH_T: num 0.99
#>  $ REMOVE_OUTLIERS:List of 2
#>   ..$ TOP_PERCENT: num 1
#>   ..$ CUTOFF_IQR : num 5
#>  $ REMOVE_EMPTY   :List of 1
#>   ..$ CUTOFF_SD: num 7

You can also view the parameters for a specific step or the value of a parameter. For example, to see the parameters used in the step that identifies failed wells, use

plate %>% params("REMOVE_FAILURES")
#> $TOTAL_DROPS_T
#> [1] 5000
#> 
#> $EMPTY_LAMBDA_LOW_T
#> [1] 0.3
#> 
#> $EMPTY_LAMBDA_HIGH_T
#> [1] 0.99

You can also view or edit specific parameters. When identifying failed wells, one of the conditions for a successful run is to have at least 5,000 droplets in the well (Bio-Rad claims that every well has 20,000 droplets). If you know that your particular experiment had much fewer droplets than usual and as a result ddpcr thinks that all the wells are failures, you can change the setting

params(plate, "REMOVE_FAILURES", "TOTAL_DROPS_T")
#> [1] 5000
params(plate, "REMOVE_FAILURES", "TOTAL_DROPS_T") <- 1000
params(plate, "REMOVE_FAILURES", "TOTAL_DROPS_T")
#> [1] 1000

If you look at the full parameters of the plate, you’ll notice that by default ddpcr assumes that the dyes used are FAM and HEX. If you are using a different dye and want the name of that dye appear in the results instead, you can use the x_var() or y_var() functions.

orig_x <- x_var(plate)
orig_x
#> [1] "HEX"
x_var(plate) <- "VIC"
plate %>% plate_data() %>% names()
#> [1] "well"    "VIC"     "FAM"     "cluster"
x_var(plate) <- orig_x

Note that if you change any parameters, you need to re-run the analysis. If you try running analyze() after a plate has already been analyzed, you will simply get a message saying the plate is already analyzed. To force an already-analyzed plate to re-run the analysis, you need to use the restart = TRUE parameter.

plate <- analyze(plate)
#> Analysis complete
plate <- analyze(plate, restart = TRUE)
#> Restarting analysis
#> Initializing plate of type `ddpcr_plate`... DONE (0 seconds)
#> Identifying failed wells... DONE (0 seconds)
#> Identifying outlier droplets... DONE (0 seconds)
#> Identifying empty droplets... DONE (1 seconds)
#> Analysis complete

Advanced topic 2: Algorithms used in each step

If you want to know how a step is performed, you can see the exact algorithm (code) used in each step by consulting the steps() function.

plate_pnpp %>% steps
#> $INITIALIZE
#> [1] "init_plate"
#> 
#> $REMOVE_FAILURES
#> [1] "remove_failures"
#> 
#> $REMOVE_OUTLIERS
#> [1] "remove_outliers"
#> 
#> $REMOVE_EMPTY
#> [1] "remove_empty"
#> 
#> $CLASSIFY
#> [1] "classify_droplets"
#> 
#> $RECLASSIFY
#> [1] "reclassify_droplets"

This list contains all the steps of analyzing the given plate, with each item in the list containing both the name of the step and the R function that performs it. For example, the first step is INITIALIZE and it uses the function init_plate(). You can see the code for that function by running ddpcr:::init_plate.

ddpcr:::init_plate
#> function (plate) 
#> {
#>     stopifnot(plate %>% inherits("ddpcr_plate"))
#>     step_begin(sprintf("Initializing plate of type `%s`", type(plate)))
#>     plate %<>% set_default_clusters %>% set_default_steps %>% 
#>         init_data %>% init_meta
#>     status(plate) <- step(plate, "INITIALIZE")
#>     plate[["version"]] <- as.character(utils::packageVersion("ddpcr"))
#>     plate[["dirty"]] <- FALSE
#>     step_end()
#>     plate
#> }
#> <bytecode: 0x0000000015452128>
#> <environment: namespace:ddpcr>

For more details about the algorithm, see the Algorithms vignette.

Advanced topic 3: Creating new plate types

Each ddPCR plate has a plate type which determines what type of analysis to run on the data. plate_types contains a list of the built-in plate types that are supported, but you can also create your own plate type. Create a new plate type if you want to supply your own logic for any analysis step, or even if you simply want to have a type that sets different default parameters than the built-in ones.

For more details about how to create new plate types, see the Extending ddpcr by adding new plate types vignette.

Advanced topic 4: Implementation technical details

The ddpcr package uses some advanced R programming techniques.

For details on the technical details regarding the code implementation, see the Technical details vignette.