PhageBench: Can LLMs Understand Raw Bacteriophage Genomes?

arXiv cs.CL / 4/8/2026

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Key Points

  • The paper introduces PhageBench, a new benchmark for evaluating how well LLMs can understand raw bacteriophage genomes using an expert bioinformatics workflow.
  • It provides 5,600 high-quality samples spanning five tasks across three stages—Screening, Quality Control, and Phenotype Annotation.
  • Experiments with eight general-purpose LLMs show they outperform random baselines on tasks like phage contig identification and host prediction.
  • The study finds notable weaknesses for more demanding problems requiring long-range dependency reasoning and fine-grained functional localization.
  • Overall results suggest that better next-generation models with stronger biological sequence reasoning are needed for reliable genomic interpretation.

Abstract

Bacteriophages, often referred to as the dark matter of the biosphere, play a critical role in regulating microbial ecosystems and in antibiotic alternatives. Thus, accurate interpretation of their genomes holds significant scientific and practical value. While general-purpose Large Language Models (LLMs) excel at understanding biological texts, their ability to directly interpret raw nucleotide sequences and perform biological reasoning remains underexplored. To address this, we introduce PhageBench, the first benchmark designed to evaluate phage genome understanding by mirroring the workflow of bioinformatics experts. The dataset contains 5,600 high-quality samples covering five core tasks across three stages: Screening, Quality Control, and Phenotype Annotation. Our evaluation of eight LLMs reveals that general-purpose reasoning models significantly outperform random baselines in phage contig identification and host prediction, demonstrating promising potential for genomic understanding. However, they exhibit significant limitations in complex reasoning tasks involving long-range dependencies and fine-grained functional localization. These findings highlight the necessity of developing next-generation models with enhanced reasoning capabilities for biological sequences.