English

COMET: Benchmark for Comprehensive Biological Multi-omics Evaluation Tasks and Language Models

Biomolecules 2024-12-16 v1 Artificial Intelligence Machine Learning

Abstract

As key elements within the central dogma, DNA, RNA, and proteins play crucial roles in maintaining life by guaranteeing accurate genetic expression and implementation. Although research on these molecules has profoundly impacted fields like medicine, agriculture, and industry, the diversity of machine learning approaches-from traditional statistical methods to deep learning models and large language models-poses challenges for researchers in choosing the most suitable models for specific tasks, especially for cross-omics and multi-omics tasks due to the lack of comprehensive benchmarks. To address this, we introduce the first comprehensive multi-omics benchmark COMET (Benchmark for Biological COmprehensive Multi-omics Evaluation Tasks and Language Models), designed to evaluate models across single-omics, cross-omics, and multi-omics tasks. First, we curate and develop a diverse collection of downstream tasks and datasets covering key structural and functional aspects in DNA, RNA, and proteins, including tasks that span multiple omics levels. Then, we evaluate existing foundational language models for DNA, RNA, and proteins, as well as the newly proposed multi-omics method, offering valuable insights into their performance in integrating and analyzing data from different biological modalities. This benchmark aims to define critical issues in multi-omics research and guide future directions, ultimately promoting advancements in understanding biological processes through integrated and different omics data analysis.

Keywords

Cite

@article{arxiv.2412.10347,
  title  = {COMET: Benchmark for Comprehensive Biological Multi-omics Evaluation Tasks and Language Models},
  author = {Yuchen Ren and Wenwei Han and Qianyuan Zhang and Yining Tang and Weiqiang Bai and Yuchen Cai and Lifeng Qiao and Hao Jiang and Dong Yuan and Tao Chen and Siqi Sun and Pan Tan and Wanli Ouyang and Nanqing Dong and Xinzhu Ma and Peng Ye},
  journal= {arXiv preprint arXiv:2412.10347},
  year   = {2024}
}
R2 v1 2026-06-28T20:34:28.601Z