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scientific-computing
471

bio-small-rna-seq-mirdeep2-analysis

Discover novel miRNAs and quantify known miRNAs using miRDeep2 de novo prediction from small RNA-seq data. Use when identifying new miRNAs or performing comprehensive miRNA profiling with discovery.

GPTomics
GPTomics
research
open
bioinformatics
471

bio-single-cell-scatac-analysis

Single-cell ATAC-seq analysis with Signac (R/Seurat) and ArchR. Process 10X Genomics scATAC data, perform QC, dimensionality reduction, clustering, peak calling, and motif activity scoring with chromVAR. Use when analyzing single-cell ATAC-seq data.

GPTomics
GPTomics
research
open
bioinformatics
471

bio-small-rna-seq-mirge3-analysis

Fast miRNA quantification with isomiR detection and A-to-I editing analysis using miRge3. Use when quantifying known miRNAs quickly or analyzing isomiR variants and RNA editing.

GPTomics
GPTomics
research
open
bioinformatics
471

bio-gene-regulatory-networks-multiomics-grn

Build enhancer-driven gene regulatory networks by integrating single-cell RNA-seq and ATAC-seq data using SCENIC+ to identify eRegulons linking transcription factors to enhancers and target genes. Use when analyzing 10x multiome or paired scRNA+scATAC data to infer cis-regulatory GRNs.

GPTomics
GPTomics
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open
scientific-computing
471

bio-crispr-screens-crispresso-editing

CRISPResso2 for analyzing CRISPR gene editing outcomes. Quantifies indels, HDR efficiency, and generates comprehensive editing reports. Use when analyzing amplicon sequencing data from CRISPR editing experiments to assess editing efficiency.

GPTomics
GPTomics
research
open
bioinformatics
471

bio-methylation-calling

Extract methylation calls from Bismark BAM files using bismark_methylation_extractor. Generates per-cytosine reports for CpG, CHG, and CHH contexts. Use when extracting methylation levels from aligned bisulfite sequencing data for downstream analysis.

GPTomics
GPTomics
research
open
bioinformatics
471

bio-small-rna-seq-smrna-preprocessing

Preprocess small RNA sequencing data with adapter trimming and size selection optimized for miRNA, piRNA, and other small RNAs. Use when preparing small RNA-seq reads for downstream quantification or discovery analysis.

GPTomics
GPTomics
research
open
scientific-computing
471

bio-expression-matrix-counts-ingest

Load gene expression count matrices from various formats including CSV, TSV, featureCounts, Salmon, kallisto, and 10X. Use when importing quantification results for downstream analysis.

GPTomics
GPTomics
research
open
bioinformatics
471

bio-clip-seq-binding-site-annotation

Annotate CLIP-seq binding sites to genomic features including 3'UTR, 5'UTR, CDS, introns, and ncRNAs. Use when characterizing where an RBP binds in transcripts.

GPTomics
GPTomics
research
open
bioinformatics
471

bio-rna-quantification-tximport-workflow

Import transcript-level quantifications from Salmon/kallisto into R for gene-level analysis with DESeq2/edgeR using tximport or tximeta. Use when importing transcript counts into R for DESeq2/edgeR.

GPTomics
GPTomics
research
open
bioinformatics
471

bio-multi-omics-mixomics-analysis

Supervised and unsupervised multi-omics integration with mixOmics. Includes sPLS for pairwise integration and DIABLO for multi-block discriminant analysis. Use when performing supervised multi-omics integration or identifying features that discriminate between groups.

GPTomics
GPTomics
research
open
bioinformatics
471

bio-genome-annotation-eukaryotic-gene-prediction

Predict protein-coding genes in eukaryotic genomes using BRAKER3 for combined RNA-seq and protein evidence, or GALBA for protein-only evidence. Runs Augustus with trained parameters for accurate gene models. Use when annotating a newly assembled eukaryotic genome or improving existing gene predictions.

GPTomics
GPTomics
research
open
bioinformatics
471

bio-rna-quantification-featurecounts-counting

Count reads per gene from aligned BAM files using Subread featureCounts. Use when processing BAM files from STAR/HISAT2 to generate gene-level counts for DESeq2/edgeR.

GPTomics
GPTomics
research
open
bioinformatics
471

bio-single-cell-preprocessing

Quality control, filtering, and normalization for single-cell RNA-seq using Seurat (R) and Scanpy (Python). Use for calculating QC metrics, filtering cells and genes, normalizing counts, identifying highly variable genes, and scaling data. Use when filtering, normalizing, and selecting features in single-cell data.

GPTomics
GPTomics
research
open
bioinformatics
471

bio-spatial-transcriptomics-spatial-domains

Identify spatial domains and tissue regions in spatial transcriptomics data using Squidpy and Scanpy. Cluster spots considering both expression and spatial context to define anatomical regions. Use when identifying tissue domains or spatial regions.

GPTomics
GPTomics
research
open
scientific-computing
471

bio-spatial-transcriptomics-spatial-preprocessing

Quality control, filtering, normalization, and feature selection for spatial transcriptomics data. Calculate QC metrics, filter spots/cells, normalize counts, and identify highly variable genes. Use when filtering and normalizing spatial transcriptomics data.

GPTomics
GPTomics
research
open
bioinformatics
471

bio-metagenomics-functional-profiling

Profile functional potential of metagenomes using HUMAnN3 and similar tools. Use when obtaining pathway abundances, gene family counts, or functional annotations from metagenomic data.

GPTomics
GPTomics
research
open
scientific-computing
471

bio-sra-data

Download sequencing data from NCBI SRA using the SRA toolkit. Use when downloading FASTQ files from SRA accessions, prefetching large datasets, or validating SRA downloads.

GPTomics
GPTomics
research
open
computational-chemistry
471

bio-rna-structure-secondary-structure-prediction

Predicts RNA secondary structures using minimum free energy folding and partition function analysis with ViennaRNA (RNAfold, RNAalifold, RNAcofold). Computes base-pair probabilities, centroid structures, and consensus structures from alignments. Use when predicting RNA folding, evaluating structural stability, or comparing structures across homologs.

GPTomics
GPTomics
research
open
computational-chemistry
471

bio-rna-structure-ncrna-search

Searches for non-coding RNA homologs and classifies RNA families using Infernal covariance model searches against the Rfam database. Identifies structured RNAs by sequence and secondary structure conservation. Use when querying sequences against Rfam, building custom covariance models for novel RNA families, or classifying non-coding transcripts by family.

GPTomics
GPTomics
research
open
bioinformatics
471

bio-single-cell-metabolite-communication

Analyze metabolite-mediated cell-cell communication using MeboCost for metabolic signaling inference between cell types. Predict metabolite secretion and sensing patterns from scRNA-seq data. Use when studying metabolic crosstalk between cell populations or metabolite-receptor interactions.

GPTomics
GPTomics
research
open
bioinformatics
471

bio-experimental-design-batch-design

Designs experiments to minimize and account for batch effects using balanced layouts and blocking strategies. Use when planning multi-batch experiments, assigning samples to sequencing lanes, or designing studies where technical variation could confound biological signals.

GPTomics
GPTomics
research
open
bioinformatics
471

bio-compressed-files

Read and write compressed sequence files (gzip, bzip2, BGZF) using Biopython. Use when working with .gz or .bz2 sequence files. Use BGZF for indexable compressed files.

GPTomics
GPTomics
research
open
scientific-computing
471

bio-fastq-quality

Work with FASTQ quality scores using Biopython. Use when analyzing read quality, filtering by quality, trimming low-quality bases, or generating quality reports.

GPTomics
GPTomics
research
open
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