Add dna-claude-analysis to Biology section#491
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Summary
Adds dna-claude-analysis to the Biology section.
What it is: Personal genome analysis toolkit with Python scripts that analyze raw DNA data across 17 categories — ancestry, health risks, nutrition, sports/fitness, pharmacogenomics, carrier status, longevity, sleep, immunity, pain sensitivity, detoxification, skin, vision/hearing, physical traits, psychology, cognitive, and more — and generate a terminal-style single-page HTML visualization from the results.
Why it fits: The project works directly with raw DNA data files (e.g. from consumer genetic tests), provides structured genomic analysis pipelines, and produces human-readable reports from personal genome data. It complements existing entries like OpenSNP genotypes data and the Human Genome Diversity Project.
Entry added (alphabetically after CytoImageNet):