BERT-Vignette

Introduction

BERT (Batch-Effect Removal with Trees) offers flexible and efficient batch effect correction of omics data, while providing maximum tolerance to missing values. Tested on multiple datasets from proteomic analyses, BERT offered a typical 5-10x runtime improvement over existing methods, while retaining more numeric values and preserving batch effect reduction quality.

As such, BERT is a valuable preprocessing tool for data analysis workflows, in particular for proteomic data. By providing BERT via Bioconductor, we make this tool available to a wider research community. An accompanying research paper is currently under preparation and will be made public soon.

BERT addresses the same fundamental data integration challenges than the [HarmonizR][https://github.com/HSU-HPC/HarmonizR] package, which is released on Bioconductor in November 2023. However, various algorithmic modications and optimizations of BERT provide better execution time and better data coverage than HarmonizR. Moreover, BERT offers a more user-friendly design and a less error-prone input format.

Please note that our package BERT is neither affiliated with nor related to Bidirectional Encoder Representations from Transformers as published by Google.

Please report any questions and issues in the GitHub forum, the BioConductor forum or directly contact the authors,

Installation

Please download and install a current version of R (Windows binaries). You might want to consider installing a development environment as well, e.g. RStudio. Finally, BERT can be installed via Bioconductor using

if (!require("BiocManager", quietly = TRUE)){
    install.packages("BiocManager")
}
BiocManager::install("BERT")

which will install all required dependencies. To install the development version of BERT, you can use devtools as follows

devtools::install_github("HSU-HPC/BERT")

which may require the manual installation of the dependencies sva and limma.

if (!require("BiocManager", quietly = TRUE)){
    install.packages("BiocManager")
}
BiocManager::install("sva")
BiocManager::install("limma")

Data Preparation

As input, BERT requires a dataframe1 with samples in rows and features in columns. For each sample, the respective batch should be indicated by an integer or string in a corresponding column labelled Batch. Missing values should be labelled as NA. A valid example dataframe could look like this:

example = data.frame(feature_1 = stats::rnorm(5), feature_2 = stats::rnorm(5), Batch=c(1,1,2,2,2))
example
#>   feature_1  feature_2 Batch
#> 1 0.5879917  0.1837426     1
#> 2 1.8999625  2.0871758     1
#> 3 0.1516297  0.1962357     2
#> 4 1.3372947 -1.0938136     2
#> 5 0.7712032  0.1119013     2

Note that each batch should contain at least two samples. Optional columns that can be passed are

  • Label A column with integers or strings indicating the (known) class for each sample. NA is not allowed. BERT may use this columns and Batch to compute quality metrics after batch effect correction.

  • Sample A sample name. This column is ignored by BERT and can be used to provide meta-information for further processing.

  • Cov_1, Cov_2, …, Cov_x: One or multiple columns with integers, indicating one or several covariate levels. NA is not allowed. If this(these) column(s) is present, BERT will pass them as covariates to the the underlying batch effect correction method. As an example, this functionality can be used to preserve differences between healthy/tumorous samples, if some of the batches exhibit strongly variable class distributions. Note that BERT requires at least two numeric values per batch and unique covariate level to adjust a feature. Features that don’t satisfy this condition in a specific batch are set to NA for that batch.

  • Reference A column with integers or strings from \(\mathbb{N}_0\) that indicate, whether a sample should be used for “learning” the transformation for batch effect correction or whether the sample should be co-adjusted using the learned transformation from the other samples.NA is not allowed. This feature can be used, if some batches contain unique classes or samples with unknown classes which would prohibit the usage of covariate columns. If the column contains a 0 for a sample, this sample will be co-adjusted. Otherwise, the sample should contain the respective class (encoded as integer or string). Note that BERT requires at least two references of common class per adjustment step and that the Reference column is mutually exclusive with covariate columns.

Note that BERT tries to find all metadata information for a SummarizedExperiment, including the mandatory batch information, using colData. For instance, a valid SummarizedExperiment might be defined as

nrows <- 200
ncols <- 8
expr_values <- matrix(runif(nrows * ncols, 1, 1e4), nrows)
# colData also takes all other metadata information, such as Label, Sample,
# Covariables etc.
colData <- data.frame(Batch=c(1,1,1,1,2,2,2,2), Reference=c(1,1,0,0,1,1,0,0))
dataset_raw = SummarizedExperiment::SummarizedExperiment(assays=list(expr=expr_values), colData=colData)

Basic Usage

BERT can be invoked by importing the BERT library and calling the BERT function. The batch effect corrected data is returned as a dataframe that mirrors the input dataframe2.

library(BERT)
# generate test data with 10% missing values as provided by the BERT library
dataset_raw <- generate_dataset(features=60, batches=10, samplesperbatch=10, mvstmt=0.1, classes=2)
# apply BERT
dataset_adjusted <- BERT(dataset_raw)
#> 2025-11-02 14:40:46.548989 INFO::Formatting Data.
#> 2025-11-02 14:40:46.555928 INFO::Replacing NaNs with NAs.
#> 2025-11-02 14:40:46.5627 INFO::Removing potential empty rows and columns
#> 2025-11-02 14:40:46.765663 INFO::Found  600  missing values.
#> 2025-11-02 14:40:46.776112 INFO::Introduced 0 missing values due to singular proteins at batch/covariate level.
#> 2025-11-02 14:40:46.776558 INFO::Done
#> 2025-11-02 14:40:46.776998 INFO::Acquiring quality metrics before batch effect correction.
#> 2025-11-02 14:40:46.786866 INFO::Starting hierarchical adjustment
#> 2025-11-02 14:40:46.78751 INFO::Found  10  batches.
#> 2025-11-02 14:40:46.787948 INFO::Cores argument is not defined or BPPARAM has been specified. Argument corereduction will not be used.
#> 2025-11-02 14:40:48.554352 INFO::Using default BPPARAM
#> 2025-11-02 14:40:48.554898 INFO::Processing subtree level 1
#> 2025-11-02 14:40:49.938631 INFO::Processing subtree level 2
#> 2025-11-02 14:40:51.294223 INFO::Adjusting the last 1 batches sequentially
#> 2025-11-02 14:40:51.295954 INFO::Done
#> 2025-11-02 14:40:51.296485 INFO::Acquiring quality metrics after batch effect correction.
#> 2025-11-02 14:40:51.301145 INFO::ASW Batch was 0.45034391542055 prior to batch effect correction and is now -0.164980050693594 .
#> 2025-11-02 14:40:51.301715 INFO::ASW Label was 0.34711580896851 prior to batch effect correction and is now 0.901432047146171 .
#> 2025-11-02 14:40:51.302698 INFO::Total function execution time is  4.77209091186523  s and adjustment time is  4.50864291191101 s ( 94.48 )

BERT uses the logging library to convey live information to the user during the adjustment procedure. The algorithm first verifies the shape and suitability of the input dataframe (lines 1-6) before continuing with the actual batch effect correction (lines 8-14). BERT measure batch effects before and after the correction step by means of the average silhouette score (ASW) with respect to batch and labels (lines 7 and 15). The ASW Label should increase in a successful batch effect correction, whereas low values (\(\leq 0\)) are desireable for the ASW Batch3. Finally, BERT prints the total function execution time (including the computation time for the quality metrics).

Advanced Options

Parameters

BERT offers a large number of parameters to customize the batch effect adjustment. The full function call, including all defaults is

BERT(data, cores = NULL, combatmode = 1, corereduction=2, stopParBatches=2, backend="default", method="ComBat", qualitycontrol=TRUE, verify=TRUE, labelname="Label", batchname="Batch", referencename="Reference", samplename="Sample", covariatename=NULL, BPPARAM=NULL, assayname=NULL)

In the following, we list the respective meaning of each parameter: - data: The input dataframe/matrix/SummarizedExperiment to adjust. See Data Preparation for detailed formatting instructions. - data The data for batch-effect correction. Must contain at least two samples per batch and 2 features.

  • cores: BERT uses BiocParallel for parallelization. If the user specifies a value cores, BERT internally creates and uses a new instance of BiocParallelParam, which is however not exhibited to the user. Setting this parameter can speed up the batch effect adjustment considerably, in particular for large datasets and on unix-based operating systems. A value between \(2\) and \(4\) is a reasonable choice for typical commodity hardware. Multi-node computations are not supported as of now. If, however, cores is not specified, BERT will default to BiocParallel::bpparam(), which may have been set by the user or the system. Additionally, the user can directly specify a specific instance of BiocParallelParam to be used via the BPPARAM argument.
  • combatmode An integer that encodes the parameters to use for ComBat.
Value par.prior mean.only
1 TRUE FALSE
2 TRUE TRUE
3 FALSE FALSE
4 FALSE TRUE

The value of this parameter will be ignored, if method!="ComBat".

  • corereduction Positive integer indicating the factor by which the number of processes should be reduced, once no further adjustment is possible for the current number of batches.4 This parameter is used only, if the user specified a custom value for parameter cores.

  • stopParBatches Positive integer indicating the minimum number of batches required at a hierarchy level to proceed with parallelized adjustment. If the number of batches is smaller, adjustment will be performed sequentially to avoid communication overheads.

  • backend: The backend to use for inter-process communication. Possible choices are default and file, where the former refers to the default communication backend of the requested parallelization mode and the latter will create temporary .rds files for data communication. ‘default’ is usually faster for small to medium sized datasets.

  • method: The method to use for the underlying batch effect correction steps. Should be either ComBat, limma for limma::removeBatchEffects or ref for adjustment using specified references (cf. Data Preparation). The underlying batch effect adjustment method for ref is a modified version of the limma method.

  • qualitycontrol: A boolean to (de)activate the ASW computation. Deactivating the ASW computations accelerates the computations.

  • verify: A boolean to (de)activate the initial format check of the input data. Deactivating this verification step accelerates the computations.

  • labelname: A string containing the name of the column to use as class labels. The default is “Label”.

  • batchname: A string containing the name of the column to use as batch labels. The default is “Batch”.

  • referencename: A string containing the name of the column to use as reference labels. The default is “Reference”.

  • covariatename: A vector containing the names of columns with categorical covariables.The default is NULL, in which case all column names are matched agains the pattern “Cov”.

  • BPPARAM: An instance of BiocParallelParam that will be used for parallelization. The default is null, in which case the value of cores determines the behaviour of BERT.

  • assayname: If the user chooses to pass a SummarizedExperiment object, they need to specify the name of the assay that they want to apply BERT to here. BERT then returns the input SummarizedExperiment with an additional assay labeled assayname_BERTcorrected.

Verbosity

BERT utilizes the logging package for output. The user can easily specify the verbosity of BERT by setting the global logging level in the script. For instance

logging::setLevel("WARN") # set level to warn and upwards
result <- BERT(data,cores = 1) # BERT executes silently

Choosing the Optimal Number of Cores

BERT exhibits a large number of parameters for parallelisation as to provide users with maximum flexibility. For typical scenarios, however, the default parameters are well suited. For very large experiments (\(>15\) batches), we recommend to increase the number of cores (a reasonable value is \(4\) but larger values may be possible on your hardware). Most users should leave all parameters to their respective default.

Examples

In the following, we present simple cookbook examples for BERT usage. Note that ASWs (and runtime) will most likely differ on your machine, since the data generating process involves multiple random choices.

Sequential Adjustment with limma

Here, BERT uses limma as underlying batch effect correction algorithm (method='limma') and performs all computations on a single process (cores parameter is left on default).

# import BERT
library(BERT)
# generate data with 30 batches, 60 features, 15 samples per batch, 15% missing values and 2 classes
dataset_raw <- generate_dataset(features=60, batches=20, samplesperbatch=15, mvstmt=0.15, classes=2)
# BERT
dataset_adjusted <- BERT(dataset_raw, method="limma")
#> 2025-11-02 14:40:51.342942 INFO::Formatting Data.
#> 2025-11-02 14:40:51.343484 INFO::Replacing NaNs with NAs.
#> 2025-11-02 14:40:51.344312 INFO::Removing potential empty rows and columns
#> 2025-11-02 14:40:51.346095 INFO::Found  2700  missing values.
#> 2025-11-02 14:40:51.364938 INFO::Introduced 0 missing values due to singular proteins at batch/covariate level.
#> 2025-11-02 14:40:51.365346 INFO::Done
#> 2025-11-02 14:40:51.36571 INFO::Acquiring quality metrics before batch effect correction.
#> 2025-11-02 14:40:51.373915 INFO::Starting hierarchical adjustment
#> 2025-11-02 14:40:51.374433 INFO::Found  20  batches.
#> 2025-11-02 14:40:51.37483 INFO::Cores argument is not defined or BPPARAM has been specified. Argument corereduction will not be used.
#> 2025-11-02 14:40:51.375274 INFO::Using default BPPARAM
#> 2025-11-02 14:40:51.375623 INFO::Processing subtree level 1
#> 2025-11-02 14:40:51.697845 INFO::Processing subtree level 2
#> 2025-11-02 14:40:52.005228 INFO::Processing subtree level 3
#> 2025-11-02 14:40:52.326641 INFO::Adjusting the last 1 batches sequentially
#> 2025-11-02 14:40:52.32841 INFO::Done
#> 2025-11-02 14:40:52.329018 INFO::Acquiring quality metrics after batch effect correction.
#> 2025-11-02 14:40:52.340323 INFO::ASW Batch was 0.474989158343249 prior to batch effect correction and is now -0.112652325784885 .
#> 2025-11-02 14:40:52.340799 INFO::ASW Label was 0.303799200334054 prior to batch effect correction and is now 0.815258542548703 .
#> 2025-11-02 14:40:52.341422 INFO::Total function execution time is  0.998554706573486  s and adjustment time is  0.954053401947021 s ( 95.54 )

Parallel Batch Effect Correction with ComBat

Here, BERT uses ComBat as underlying batch effect correction algorithm (method is left on default) and performs all computations on a 2 processes (cores=2).

# import BERT
library(BERT)
# generate data with 30 batches, 60 features, 15 samples per batch, 15% missing values and 2 classes
dataset_raw <- generate_dataset(features=60, batches=20, samplesperbatch=15, mvstmt=0.15, classes=2)
# BERT
dataset_adjusted <- BERT(dataset_raw, cores=2)
#> 2025-11-02 14:40:52.369168 INFO::Formatting Data.
#> 2025-11-02 14:40:52.369709 INFO::Replacing NaNs with NAs.
#> 2025-11-02 14:40:52.370487 INFO::Removing potential empty rows and columns
#> 2025-11-02 14:40:52.372204 INFO::Found  2700  missing values.
#> 2025-11-02 14:40:52.390815 INFO::Introduced 0 missing values due to singular proteins at batch/covariate level.
#> 2025-11-02 14:40:52.391219 INFO::Done
#> 2025-11-02 14:40:52.391586 INFO::Acquiring quality metrics before batch effect correction.
#> 2025-11-02 14:40:52.399829 INFO::Starting hierarchical adjustment
#> 2025-11-02 14:40:52.400337 INFO::Found  20  batches.
#> 2025-11-02 14:40:52.899977 INFO::Set up parallel execution backend with 2 workers
#> 2025-11-02 14:40:52.901025 INFO::Processing subtree level 1 with 20 batches using 2 cores.
#> 2025-11-02 14:40:54.870484 INFO::Adjusting the last 2 batches sequentially
#> 2025-11-02 14:40:54.871536 INFO::Adjusting sequential tree level 1 with 2 batches
#> 2025-11-02 14:40:55.925269 INFO::Done
#> 2025-11-02 14:40:55.925715 INFO::Acquiring quality metrics after batch effect correction.
#> 2025-11-02 14:40:55.932842 INFO::ASW Batch was 0.504423319328513 prior to batch effect correction and is now -0.111581782296065 .
#> 2025-11-02 14:40:55.933208 INFO::ASW Label was 0.280797311750818 prior to batch effect correction and is now 0.849187378805877 .
#> 2025-11-02 14:40:55.933661 INFO::Total function execution time is  3.56457233428955  s and adjustment time is  3.524817943573 s ( 98.88 )

Batch Effect Correction Using SummarizedExperiment

Here, BERT takes the input data using a SummarizedExperiment instead. Batch effect correction is then performed using ComBat as underlying algorithm (method is left on default) and all computations are performed on a single process (cores parameter is left on default).

nrows <- 200
ncols <- 8
# SummarizedExperiments store samples in columns and features in rows (in contrast to BERT).
# BERT will automatically account for this.
expr_values <- matrix(runif(nrows * ncols, 1, 1e4), nrows)
# colData also takes further metadata information, such as Label, Sample,
# Reference or Covariables
colData <- data.frame("Batch"=c(1,1,1,1,2,2,2,2), "Label"=c(1,2,1,2,1,2,1,2), "Sample"=c(1,2,3,4,5,6,7,8))
dataset_raw = SummarizedExperiment::SummarizedExperiment(assays=list(expr=expr_values), colData=colData)
dataset_adjusted = BERT(dataset_raw, assayname = "expr")
#> 2025-11-02 14:40:55.969656 INFO::Formatting Data.
#> 2025-11-02 14:40:55.97014 INFO::Recognized SummarizedExperiment
#> 2025-11-02 14:40:55.970455 INFO::Typecasting input to dataframe.
#> 2025-11-02 14:40:55.990443 INFO::Replacing NaNs with NAs.
#> 2025-11-02 14:40:55.991108 INFO::Removing potential empty rows and columns
#> 2025-11-02 14:40:55.993181 INFO::Found  0  missing values.
#> 2025-11-02 14:40:55.997152 INFO::Introduced 0 missing values due to singular proteins at batch/covariate level.
#> 2025-11-02 14:40:55.997492 INFO::Done
#> 2025-11-02 14:40:55.997843 INFO::Acquiring quality metrics before batch effect correction.
#> 2025-11-02 14:40:56.000267 INFO::Starting hierarchical adjustment
#> 2025-11-02 14:40:56.000712 INFO::Found  2  batches.
#> 2025-11-02 14:40:56.001055 INFO::Cores argument is not defined or BPPARAM has been specified. Argument corereduction will not be used.
#> 2025-11-02 14:40:56.001413 INFO::Using default BPPARAM
#> 2025-11-02 14:40:56.001714 INFO::Adjusting the last 2 batches sequentially
#> 2025-11-02 14:40:56.00228 INFO::Adjusting sequential tree level 1 with 2 batches
#> 2025-11-02 14:40:56.031359 INFO::Done
#> 2025-11-02 14:40:56.031779 INFO::Acquiring quality metrics after batch effect correction.
#> 2025-11-02 14:40:56.034154 INFO::ASW Batch was -0.0137951796340189 prior to batch effect correction and is now -0.0899033252382161 .
#> 2025-11-02 14:40:56.034507 INFO::ASW Label was 0.00698947066940158 prior to batch effect correction and is now 0.0196868045979055 .
#> 2025-11-02 14:40:56.034996 INFO::Total function execution time is  0.065333366394043  s and adjustment time is  0.0307295322418213 s ( 47.03 )

BERT with Covariables

BERT can utilize categorical covariables that are specified in columns Cov_1, Cov_2, .... These columns are automatically detected and integrated into the batch effect correction process.

# import BERT
library(BERT)
# set seed for reproducibility
set.seed(1)
# generate data with 5 batches, 60 features, 30 samples per batch, 15% missing values and 2 classes
dataset_raw <- generate_dataset(features=60, batches=5, samplesperbatch=30, mvstmt=0.15, classes=2)
# create covariable column with 2 possible values, e.g. male/female condition
dataset_raw["Cov_1"] = sample(c(1,2), size=dim(dataset_raw)[1], replace=TRUE)
# BERT
dataset_adjusted <- BERT(dataset_raw)
#> 2025-11-02 14:40:56.075832 INFO::Formatting Data.
#> 2025-11-02 14:40:56.076362 INFO::Replacing NaNs with NAs.
#> 2025-11-02 14:40:56.076965 INFO::Removing potential empty rows and columns
#> 2025-11-02 14:40:56.078199 INFO::Found  1350  missing values.
#> 2025-11-02 14:40:56.078785 INFO::BERT requires at least 2 numeric values per batch/covariate level. This may reduce the number of adjustable features considerably, depending on the quantification technique.
#> 2025-11-02 14:40:56.090105 INFO::Introduced 0 missing values due to singular proteins at batch/covariate level.
#> 2025-11-02 14:40:56.090458 INFO::Done
#> 2025-11-02 14:40:56.090793 INFO::Acquiring quality metrics before batch effect correction.
#> 2025-11-02 14:40:56.093926 INFO::Starting hierarchical adjustment
#> 2025-11-02 14:40:56.094356 INFO::Found  5  batches.
#> 2025-11-02 14:40:56.094671 INFO::Cores argument is not defined or BPPARAM has been specified. Argument corereduction will not be used.
#> 2025-11-02 14:40:56.095053 INFO::Using default BPPARAM
#> 2025-11-02 14:40:56.095359 INFO::Processing subtree level 1
#> 2025-11-02 14:40:56.245771 INFO::Adjusting the last 2 batches sequentially
#> 2025-11-02 14:40:56.247348 INFO::Adjusting sequential tree level 1 with 2 batches
#> 2025-11-02 14:40:56.288774 INFO::Done
#> 2025-11-02 14:40:56.289304 INFO::Acquiring quality metrics after batch effect correction.
#> 2025-11-02 14:40:56.293106 INFO::ASW Batch was 0.492773245691086 prior to batch effect correction and is now -0.0377157224767566 .
#> 2025-11-02 14:40:56.293521 INFO::ASW Label was 0.40854766060101 prior to batch effect correction and is now 0.895560693013661 .
#> 2025-11-02 14:40:56.294111 INFO::Total function execution time is  0.218339920043945  s and adjustment time is  0.19444727897644 s ( 89.06 )

BERT with references

In rare cases, class distributions across experiments may be severely skewed. In particular, a batch might contain classes that other batches don’t contain. In these cases, samples of common conditions may serve as references (bridges) between the batches (method="ref"). BERT utilizes those samples as references that have a condition specified in the “Reference” column of the input. All other samples are co-adjusted. Please note, that this strategy implicitly uses limma as underlying batch effect correction algorithm.

# import BERT
library(BERT)
# generate data with 4 batches, 6 features, 15 samples per batch, 15% missing values and 2 classes
dataset_raw <- generate_dataset(features=6, batches=4, samplesperbatch=15, mvstmt=0.15, classes=2)
# create reference column with default value 0.  The 0 indicates, that the respective sample should be co-adjusted only.
dataset_raw[, "Reference"] <- 0
# randomly select 2 references per batch and class - in practice, this choice will be determined by external requirements (e.g. class known for only these samples)
batches <- unique(dataset_raw$Batch) # all the batches
for(b in batches){ # iterate over all batches
    # references from class 1
    ref_idx = sample(which((dataset_raw$Batch==b)&(dataset_raw$Label==1)), size=2, replace=FALSE)
    dataset_raw[ref_idx, "Reference"] <- 1
    # references from class 2
    ref_idx = sample(which((dataset_raw$Batch==b)&(dataset_raw$Label==2)), size=2, replace=FALSE)
    dataset_raw[ref_idx, "Reference"] <- 2
}
# BERT
dataset_adjusted <- BERT(dataset_raw, method="ref")
#> 2025-11-02 14:40:56.329796 INFO::Formatting Data.
#> 2025-11-02 14:40:56.330354 INFO::Replacing NaNs with NAs.
#> 2025-11-02 14:40:56.331037 INFO::Removing potential empty rows and columns
#> 2025-11-02 14:40:56.331784 INFO::Found  60  missing values.
#> 2025-11-02 14:40:56.33463 INFO::Introduced 0 missing values due to singular proteins at batch/covariate level.
#> 2025-11-02 14:40:56.335041 INFO::Done
#> 2025-11-02 14:40:56.335433 INFO::Acquiring quality metrics before batch effect correction.
#> 2025-11-02 14:40:56.337607 INFO::Starting hierarchical adjustment
#> 2025-11-02 14:40:56.338154 INFO::Found  4  batches.
#> 2025-11-02 14:40:56.338549 INFO::Cores argument is not defined or BPPARAM has been specified. Argument corereduction will not be used.
#> 2025-11-02 14:40:56.339006 INFO::Using default BPPARAM
#> 2025-11-02 14:40:56.339383 INFO::Processing subtree level 1
#> 2025-11-02 14:40:56.412714 INFO::Adjusting the last 2 batches sequentially
#> 2025-11-02 14:40:56.414287 INFO::Adjusting sequential tree level 1 with 2 batches
#> 2025-11-02 14:40:56.434282 INFO::Done
#> 2025-11-02 14:40:56.434822 INFO::Acquiring quality metrics after batch effect correction.
#> 2025-11-02 14:40:56.437174 INFO::ASW Batch was 0.440355021914032 prior to batch effect correction and is now -0.087480278736629 .
#> 2025-11-02 14:40:56.437611 INFO::ASW Label was 0.373906827748893 prior to batch effect correction and is now 0.919791677398366 .
#> 2025-11-02 14:40:56.438177 INFO::Total function execution time is  0.108450174331665  s and adjustment time is  0.0962138175964355 s ( 88.72 )

Issues

Issues can be reported in the GitHub forum, the BioConductor forum or directly to the authors.

License

This code is published under the GPLv3.0 License and is available for non-commercial academic purposes.

Reference

Please cite our manuscript, if you use BERT for your research: Schumann Y, Gocke A, Neumann J (2024). Computational Methods for Data Integration and Imputation of Missing Values in Omics Datasets. PROTEOMICS. ISSN 1615-9861, doi:10.1002/pmic.202400100

Session Info

sessionInfo()
#> R version 4.5.1 (2025-06-13)
#> Platform: x86_64-pc-linux-gnu
#> Running under: Ubuntu 24.04.3 LTS
#> 
#> Matrix products: default
#> BLAS:   /usr/lib/x86_64-linux-gnu/openblas-pthread/libblas.so.3 
#> LAPACK: /usr/lib/x86_64-linux-gnu/openblas-pthread/libopenblasp-r0.3.26.so;  LAPACK version 3.12.0
#> 
#> locale:
#>  [1] LC_CTYPE=en_US.UTF-8       LC_NUMERIC=C              
#>  [3] LC_TIME=en_US.UTF-8        LC_COLLATE=C              
#>  [5] LC_MONETARY=en_US.UTF-8    LC_MESSAGES=en_US.UTF-8   
#>  [7] LC_PAPER=en_US.UTF-8       LC_NAME=C                 
#>  [9] LC_ADDRESS=C               LC_TELEPHONE=C            
#> [11] LC_MEASUREMENT=en_US.UTF-8 LC_IDENTIFICATION=C       
#> 
#> time zone: Etc/UTC
#> tzcode source: system (glibc)
#> 
#> attached base packages:
#> [1] stats     graphics  grDevices utils     datasets  methods   base     
#> 
#> other attached packages:
#> [1] BERT_1.7.0       BiocStyle_2.39.0
#> 
#> loaded via a namespace (and not attached):
#>  [1] KEGGREST_1.49.2             SummarizedExperiment_1.41.0
#>  [3] xfun_0.54                   bslib_0.9.0                
#>  [5] Biobase_2.71.0              lattice_0.22-7             
#>  [7] vctrs_0.6.5                 tools_4.5.1                
#>  [9] generics_0.1.4              stats4_4.5.1               
#> [11] parallel_4.5.1              AnnotationDbi_1.71.2       
#> [13] RSQLite_2.4.3               cluster_2.1.8.1            
#> [15] blob_1.2.4                  logging_0.10-108           
#> [17] Matrix_1.7-4                S4Vectors_0.49.0           
#> [19] lifecycle_1.0.4             compiler_4.5.1             
#> [21] stringr_1.5.2               Biostrings_2.79.1          
#> [23] statmod_1.5.1               janitor_2.2.1              
#> [25] Seqinfo_1.1.0               codetools_0.2-20           
#> [27] snakecase_0.11.1            htmltools_0.5.8.1          
#> [29] sys_3.4.3                   buildtools_1.0.0           
#> [31] sass_0.4.10                 yaml_2.3.10                
#> [33] crayon_1.5.3                jquerylib_0.1.4            
#> [35] comprehenr_0.6.10           BiocParallel_1.45.0        
#> [37] limma_3.67.0                DelayedArray_0.37.0        
#> [39] cachem_1.1.0                iterators_1.0.14           
#> [41] abind_1.4-8                 foreach_1.5.2              
#> [43] nlme_3.1-168                sva_3.59.0                 
#> [45] genefilter_1.91.0           locfit_1.5-9.12            
#> [47] tidyselect_1.2.1            digest_0.6.37              
#> [49] stringi_1.8.7               splines_4.5.1              
#> [51] maketools_1.3.2             fastmap_1.2.0              
#> [53] grid_4.5.1                  cli_3.6.5                  
#> [55] invgamma_1.2                SparseArray_1.11.1         
#> [57] magrittr_2.0.4              S4Arrays_1.11.0            
#> [59] survival_3.8-3              XML_3.99-0.19              
#> [61] edgeR_4.9.0                 bit64_4.6.0-1              
#> [63] lubridate_1.9.4             timechange_0.3.0           
#> [65] rmarkdown_2.30              XVector_0.51.0             
#> [67] httr_1.4.7                  matrixStats_1.5.0          
#> [69] bit_4.6.0                   png_0.1-8                  
#> [71] memoise_2.0.1               evaluate_1.0.5             
#> [73] knitr_1.50                  GenomicRanges_1.63.0       
#> [75] IRanges_2.45.0              mgcv_1.9-3                 
#> [77] rlang_1.1.6                 xtable_1.8-4               
#> [79] glue_1.8.0                  DBI_1.2.3                  
#> [81] BiocManager_1.30.26         BiocGenerics_0.57.0        
#> [83] annotate_1.87.0             jsonlite_2.0.0             
#> [85] R6_2.6.1                    MatrixGenerics_1.23.0

  1. Matrices and SummarizedExperiments work as well, but will automatically be converted to dataframes.↩︎

  2. In particular, the row and column names are in the same order and the optional columns are preserved.↩︎

  3. The optimum of ASW Label is 1, which is typically however not achieved on real-world datasets. Also, the optimum of ASW Batch can vary, depending on the class distributions of the batches.↩︎

  4. E.g. consider a BERT call with 8 batches and 8 processes. Further adjustment is not possible with this number of processes, since batches are always processed in pairs. With corereduction=2, the number of processes for the following adjustment steps would be set to \(8/2=4\), which is the maximum number of usable processes for this example.↩︎