Chromosome visualization for the web
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Updated
May 20, 2025 - JavaScript
Chromosome visualization for the web
Easy genetic ancestry predictions in Python
A tool to create genomic reports based on 23andMe data.
Whole genome sequencing analysis pipeline for consumer hardware. 100% local, Docker-powered, free and open source.
Telomere-2-Telomere Genome from Saudi Arabia
Tool and library with ui to compute polygenic risk scores
Self-hosted genetics processing platform: VCF generation, imputation merging, PGS calculation. 60× faster than R, LUKS encrypted, air-gapped worker. Rust + PostgreSQL.
🧬 Open-source genetic analysis toolkit. Analyze your WGS/VCF data locally and privately. 500+ variants across fitness, health, traits & more. For education & fun only - not for clinical use.
Local-first 23andMe and DTC DNA raw data to VCF 4.2 converter with PySide6 GUI, GRCh37/GRCh38 detection, and dbSNP/FASTA REF lookup
Open-source, privacy-first DNA analyzer — upload your raw DNA data (23andMe, AncestryDNA, MyHeritage) and get AI-powered health & trait insights. All processing runs in your browser.
Personal genomics analysis platform for 23andMe raw data (fork).
Yale Gradute School module CBB752 final group project by Jiaqi Li, Keyi Li, and Anna Su.
Personal genomics analysis toolkit: ingest consumer DNA raw data, impute against 1000 Genomes, and produce an evidence-graded ledger of pharmacogenomic, carrier-screening, trait, polygenic-score, and haplogroup findings — all locally.
Privacy-first polygenic risk score analysis. Upload your DNA, get trait scores — all processing happens on your device. Built on DuckDB WASM, Web Components, and the PGS Catalog. No accounts, no servers, no data leaves your browser.
Analyze whole genome sequencing data on consumer hardware with no cloud accounts, subscriptions, or bioinformatics degree needed
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