Benchmarking AI scientists in omics data-driven biological research

The rise of large language models and multi-agent systems has sparked growing interest in AI scientists capable of autonomous biological research. However, existing benchmarks either focus on reasoning without data or on data analysis with predefined statistical answers, lacking realistic, data-driven evaluation settings. Here, we introduce the Biological AI Scientist Benchmark (BaisBench), a benchmark designed to assess AI scientists' ability to generate biological discoveries through data analysis and reasoning with external knowledge. BaisBench comprises two tasks: cell type annotation on 31 expert-labeled single-cell datasets, and scientific discovery through answering 198 multiple-choice questions derived from the biological insights of 41 recent single-cell studies. Systematic experiments on state-of-the-art AI scientists and LLM agents showed that while promising, current models still substantially underperform human experts on both tasks. We hope BaisBench will fill this gap and serve as a foundation for advancing and evaluating AI models for scientific discovery. The benchmark can be found at:this https URL.
View on arXiv@article{luo2025_2505.08341, title={ Benchmarking AI scientists in omics data-driven biological research }, author={ Erpai Luo and Jinmeng Jia and Yifan Xiong and Xiangyu Li and Xiaobo Guo and Baoqi Yu and Lei Wei and Xuegong Zhang }, journal={arXiv preprint arXiv:2505.08341}, year={ 2025 } }