Helixer is a deep learning tool for eukaryotic gene prediction and annotation using cross-species LSTM models. Use it to predict gene structures (UTRs, exons, introns, intergenic regions) from raw gen
Use with AI
Install the MCP server or CLI to instantly fetch Helixer documentation:
Install command
claude mcp add biocontext7 -- npx @biocontext7/mcpOr share this page: biocontext7.com/tools/helixer
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