A C D E F G H L M N P Q S T U W misc
| proBatch-package | proBatch: A package for diagnostics and correction of batch effects, primarily in proteomics |
| adjust_batch_trend_df | Batch correction of normalized data |
| adjust_batch_trend_dm | Batch correction of normalized data |
| calculate_feature_CV | Calculate CV distribution for each feature |
| calculate_peptide_corr_distr | Calculate peptide correlation between and within peptides of one protein |
| calculate_PVCA | Calculate variance distribution by variable |
| calculate_PVCA.default | Calculate variance distribution by variable |
| calculate_PVCA.ProBatchFeatures | Calculate variance distribution by variable |
| calculate_sample_corr_distr | Calculates correlation for all pairs of the samples in data matrix, labels as replicated/same_batch/unrelated in output columns (see "Value"). |
| center_feature_batch_means_df | Batch correction of normalized data |
| center_feature_batch_means_dm | Batch correction of normalized data |
| center_feature_batch_medians_df | Batch correction of normalized data |
| center_feature_batch_medians_dm | Batch correction of normalized data |
| check_sample_consistency | Check if sample annotation is consistent with data matrix and join the two |
| convert_annotation_classes | Convert factor and numeric columns |
| correct_batch_effects | Batch correction of normalized data |
| correct_batch_effects_df | Batch correction of normalized data |
| correct_batch_effects_dm | Batch correction of normalized data |
| correct_with_ComBat_df | Batch correction of normalized data |
| correct_with_ComBat_dm | Batch correction of normalized data |
| correct_with_removeBatchEffect_dm | Batch effect correction with removeBatchEffect from limma |
| create_peptide_annotation | Prepare peptide annotation from long format data frame |
| dates_to_posix | Convert date/time to POSIXct |
| date_to_sample_order | Convert date/time to POSIXct and rank samples by it |
| define_sample_order | Defining sample order internally |
| example_ecoli_data | Example multi-center DIA LFQ E. coli proteomics (DIA-NN) |
| example_peptide_annotation | Peptide annotation data |
| example_proteome | Example protein data in long format |
| example_proteome_matrix | Example protein data in matrix |
| example_sample_annotation | Sample annotation data version 1 |
| feature_level_diagnostics | Plotting peptide measurements |
| fit_nonlinear | Fit a non-linear trend (currently optimized for LOESS) |
| get_chain | Retrieve operation chain as vector or single string "combat_on_mediannorm_on_log" |
| get_operation_log | Access the operation log (structured) |
| guess_factor_columns_if_needed | Guess factors if numeric columns were not provided |
| handle_factor_numeric_overlap | Handle factor columns that are duplicated in numeric_columns |
| handle_missing_values | Handle missing values in a data matrix |
| log_transform_df | Functions to log transform raw data before normalization and batch correction |
| log_transform_dm | Functions to log transform raw data before normalization and batch correction |
| log_transform_dm.default | Functions to log transform raw data before normalization and batch correction |
| log_transform_dm.ProBatchFeatures | Functions to log transform raw data before normalization and batch correction |
| long_to_matrix | Long to wide data format conversion |
| matrix_to_long | Wide to long conversion |
| normalize | Data normalization methods |
| normalize_data_df | Data normalization methods |
| normalize_data_dm | Data normalization methods |
| normalize_sample_medians_df | Data normalization methods |
| normalize_sample_medians_dm | Data normalization methods |
| pb_add_level | Add a new level from an external matrix and link to an existing assay |
| pb_aggregate_level | Aggregate features (e.g., peptide -> protein) and store as new level |
| pb_assay_matrix | Convenience accessor for assay matrix by name/index (returns the 'intensity' assay) |
| pb_as_long | Get current assay as LONG (via proBatch::matrix_to_long) |
| pb_as_wide | Get an assay matrix (wide) |
| pb_current_assay | Current (latest) assay name |
| pb_eval | Evaluate a pipeline and return the matrix, without storing |
| pb_filterNA | Apply 'QFeatures' missing-data helpers to stored assays |
| pb_infIsNA | Apply 'QFeatures' missing-data helpers to stored assays |
| pb_missing_helpers | Apply 'QFeatures' missing-data helpers to stored assays |
| pb_nNA | Apply 'QFeatures' missing-data helpers to stored assays |
| pb_pipeline_name | Pretty pipeline name derived from the assay |
| pb_register_step | Allow to register/override steps at runtime (e.g., map "combat" -> proBatch::combat_dm) |
| pb_transform | Compute a pipeline and optionally store only the final result |
| pb_zeroIsNA | Apply 'QFeatures' missing-data helpers to stored assays |
| plot_boxplot | Plot per-sample mean or boxplots for initial assessment |
| plot_boxplot.default | Plot per-sample mean or boxplots for initial assessment |
| plot_boxplot.ProBatchFeatures | Plot per-sample mean or boxplots for initial assessment |
| plot_corr_matrix | Visualise correlation matrix |
| plot_CV_distr | Plot CV distribution to compare various steps of the analysis |
| plot_CV_distr.df | Plot the distribution (boxplots) of per-batch per-step CV of features |
| plot_heatmap_diagnostic | Plot the heatmap of samples (cols) vs features (rows) |
| plot_heatmap_diagnostic.default | Plot the heatmap of samples (cols) vs features (rows) |
| plot_heatmap_diagnostic.ProBatchFeatures | Plot the heatmap of samples (cols) vs features (rows) |
| plot_heatmap_generic | Plot the heatmap |
| plot_heatmap_generic.default | Plot the heatmap |
| plot_heatmap_generic.ProBatchFeatures | Plot the heatmap |
| plot_hierarchical_clustering | cluster the data matrix to visually inspect which confounder dominates |
| plot_hierarchical_clustering.default | cluster the data matrix to visually inspect which confounder dominates |
| plot_hierarchical_clustering.ProBatchFeatures | cluster the data matrix to visually inspect which confounder dominates |
| plot_iRT | Plotting peptide measurements |
| plot_NA_density | Plot intensity density by missingness |
| plot_NA_density.default | Plot intensity density by missingness |
| plot_NA_density.ProBatchFeatures | Plot intensity density by missingness |
| plot_NA_frequency | Plot missing-value frequency distribution |
| plot_NA_frequency.default | Plot missing-value frequency distribution |
| plot_NA_frequency.ProBatchFeatures | Plot missing-value frequency distribution |
| plot_NA_heatmap | Plot missing-value heatmap(s) |
| plot_NA_heatmap.default | Plot missing-value heatmap(s) |
| plot_NA_heatmap.ProBatchFeatures | Plot missing-value heatmap(s) |
| plot_PCA | plot PCA plot |
| plot_PCA.default | plot PCA plot |
| plot_PCA.ProBatchFeatures | plot PCA plot |
| plot_peptides_of_one_protein | Plotting peptide measurements |
| plot_peptide_corr_distribution | Create violin plot of peptide correlation distribution |
| plot_peptide_corr_distribution.corrDF | Create violin plot of peptide correlation distribution |
| plot_protein_corrplot | Peptide correlation matrix (heatmap) |
| plot_PVCA | Plot variance distribution by variable |
| plot_PVCA.default | Plot variance distribution by variable |
| plot_PVCA.df | plot PVCA, when the analysis is completed |
| plot_PVCA.df.default | plot PVCA, when the analysis is completed |
| plot_PVCA.df.ProBatchFeatures | plot PVCA, when the analysis is completed |
| plot_PVCA.ProBatchFeatures | Plot variance distribution by variable |
| plot_sample_corr_distribution | Create violin plot of sample correlation distribution |
| plot_sample_corr_distribution.corrDF | Create violin plot of sample correlation distribution |
| plot_sample_corr_heatmap | Sample correlation matrix (heatmap) |
| plot_sample_mean | Plot per-sample mean or boxplots for initial assessment |
| plot_sample_mean.default | Plot per-sample mean or boxplots for initial assessment |
| plot_sample_mean.ProBatchFeatures | Plot per-sample mean or boxplots for initial assessment |
| plot_sample_mean_or_boxplot | Plot per-sample mean or boxplots for initial assessment |
| plot_single_feature | Plotting peptide measurements |
| plot_spike_in | Plotting peptide measurements |
| plot_split_violin_with_boxplot | Plot split violin plot (convenient to compare distribution before and after) |
| plot_with_fitting_curve | Plotting peptide measurements |
| prepare_PVCA_df | prepare the weights of Principal Variance Components |
| prepare_PVCA_df.default | prepare the weights of Principal Variance Components |
| prepare_PVCA_df.ProBatchFeatures | prepare the weights of Principal Variance Components |
| proBatch | proBatch: A package for diagnostics and correction of batch effects, primarily in proteomics |
| ProBatchFeatures | Construct a ProBatchFeatures object from a wide matrix + sample annotation. |
| ProBatchFeatures-class | ProBatchFeatures: QFeatures subclass with operation log, levels/pipelines, and lazy storage |
| ProBatchFeatures-subset | Subset 'ProBatchFeatures' objects without dropping metadata. |
| ProBatchFeatures_from_long | Construct from LONG df via proBatch::long_to_matrix |
| quantile_normalize_df | Data normalization methods |
| quantile_normalize_dm | Data normalization methods |
| sample_annotation_to_colors | Generate colors for sample annotation |
| sample_annotation_to_colors.default | Generate colors for sample annotation |
| sample_annotation_to_colors.ProBatchFeatures | Generate colors for sample annotation |
| transform_raw_data | Functions to log transform raw data before normalization and batch correction |
| unlog_df | Functions to log transform raw data before normalization and batch correction |
| unlog_dm | Functions to log transform raw data before normalization and batch correction |
| unlog_dm.default | Functions to log transform raw data before normalization and batch correction |
| unlog_dm.ProBatchFeatures | Functions to log transform raw data before normalization and batch correction |
| warn_unmapped_columns | Warn about unmapped columns |
| [-method | Subset 'ProBatchFeatures' objects without dropping metadata. |