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Automated Bioinformatics Analysis via AutoBA

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arxiv 2309.03242 v1 pith:ELHDXMSR submitted 2023-09-06 q-bio.GN cs.AIcs.LGcs.MA

Automated Bioinformatics Analysis via AutoBA

classification q-bio.GN cs.AIcs.LGcs.MA
keywords analysisautobadatabioinformaticsomicsadaptabilityinputrna-seq
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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With the fast-growing and evolving omics data, the demand for streamlined and adaptable tools to handle the analysis continues to grow. In response to this need, we introduce Auto Bioinformatics Analysis (AutoBA), an autonomous AI agent based on a large language model designed explicitly for conventional omics data analysis. AutoBA simplifies the analytical process by requiring minimal user input while delivering detailed step-by-step plans for various bioinformatics tasks. Through rigorous validation by expert bioinformaticians, AutoBA's robustness and adaptability are affirmed across a diverse range of omics analysis cases, including whole genome sequencing (WGS), RNA sequencing (RNA-seq), single-cell RNA-seq, ChIP-seq, and spatial transcriptomics. AutoBA's unique capacity to self-design analysis processes based on input data variations further underscores its versatility. Compared with online bioinformatic services, AutoBA deploys the analysis locally, preserving data privacy. Moreover, different from the predefined pipeline, AutoBA has adaptability in sync with emerging bioinformatics tools. Overall, AutoBA represents a convenient tool, offering robustness and adaptability for complex omics data analysis.

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