Title :
Genome-Wide Protein Function Prediction through Multi-Instance Multi-Label Learning
Author :
Jian-Sheng Wu ; Sheng-Jun Huang ; Zhi-Hua Zhou
Author_Institution :
Nat. Key Lab. for Novel Software Technol., Nanjing Univ., Nanjing, China
fDate :
Sept.-Oct. 1 2014
Abstract :
Automated annotation of protein function is challenging. As the number of sequenced genomes rapidly grows, the vast majority of proteins can only be annotated computationally. Nature often brings several domains together to form multi-domain and multi-functional proteins with a vast number of possibilities, and each domain may fulfill its own function independently or in a concerted manner with its neighbors. Thus, it is evident that the protein function prediction problem is naturally and inherently Multi-Instance Multi-Label (MIML) learning tasks. Based on the state-of-the-art MIML algorithm MIMLNN, we propose a novel ensemble MIML learning framework EnMIMLNN and design three algorithms for this task by combining the advantage of three kinds of Hausdorff distance metrics. Experiments on seven real-world organisms covering the biological three-domain system, i.e., archaea, bacteria, and eukaryote, show that the EnMIMLNN algorithms are superior to most state-of-the-art MIML and Multi-Label learning algorithms.
Keywords :
biology computing; genomics; learning (artificial intelligence); microorganisms; molecular biophysics; molecular configurations; proteins; Hausdorff distance metrics; MIML learning framework EnMIMLNN; archaea; automated annotation; bacteria; biological three-domain system; eukaryote; genome sequence; genome-wide protein function prediction; multidomain proteins; multifunctional proteins; multiinstance multilabel learning; multiinstance multilabel learning tasks; protein function; protein function prediction problem; real-world organisms; Bioinformatics; Genomics; Organisms; Prediction algorithms; Proteins; Hausdorff distances; Protein function prediction; ensemble learning; genome wide; machine learning; multi-instance multi-label learning;
Journal_Title :
Computational Biology and Bioinformatics, IEEE/ACM Transactions on
DOI :
10.1109/TCBB.2014.2323058