Litcius/Paper detail

Streamline automated biomedical discoveries with agentic bioinformatics

Juexiao Zhou, Jindong Jiang, Zhongyi Han, Zijian Wang, Xin Gao

2025Briefings in Bioinformatics8 citationsDOIOpen Access PDF

Abstract

The emergence of artificial intelligence agents powered by large language models marks a transformative shift in computational biology. In this new paradigm, autonomous, adaptive, and intelligent agents are deployed to tackle complex biological challenges, leading to a new research field named agentic bioinformatics. Here, we explore the core principles, evolving methodologies, and diverse applications of agentic bioinformatics. We examine how agentic bioinformatics systems work synergistically to facilitate data-driven decision-making and enable self-directed exploration of biological datasets. Furthermore, we highlight the integration of agentic frameworks in key areas such as personalized medicine, drug discovery, and synthetic biology, illustrating their potential to revolutionize healthcare and biotechnology. In addition, we address the ethical, technical, and scalability challenges associated with agentic bioinformatics, identifying key opportunities for future advancements. By emphasizing the importance of interdisciplinary collaboration and innovation, we envision agentic bioinformatics as a major force in overcoming the grand challenges of modern biology, ultimately advancing both research and clinical applications.

Topics & Concepts

Transformative learningComputer scienceField (mathematics)Key (lock)ScalabilityData scienceGrand ChallengesArtificial intelligenceParadigm shiftWork (physics)Emerging technologiesPersonalized medicineHealth careDrug discoveryScope (computer science)BioinformaticsBig dataComputational modelBiomedical Text Mining and Ontologies