Drosophila Gene Expression Pattern Annotations via Multi-Instance Biological Relevance Learning

Authors

  • Hua Wang Colorado School of Mines
  • Cheng Deng Xidian University
  • Hao Zhang Colorado School of Mines
  • Xinbo Gao Xidian University
  • Heng Huang University of Texas at Arlington

DOI:

https://doi.org/10.1609/aaai.v30i1.10173

Keywords:

Multi-Instance Learning, Drosophila Gene Expression Pattern Annotations

Abstract

Recent developments in biologyhave produced a large number of gene expression patterns, many of which have been annotated textually with anatomical and developmental terms. These terms spatially correspond to local regions of the images, which are attached collectively to groups of images. Because one does not know which term is assigned to which region of which image in the group, the developmental stage classification and anatomical term annotation turn out to be a multi-instance learning (MIL) problem, which considers input as bags of instances and labels are assigned to the bags. Most existing MIL methods routinely use the Bag-to-Bag (B2B) distances, which, however, are often computationally expensive and may not truly reflect the similarities between the anatomical and developmental terms. In this paper, we approach the MIL problem from a new perspective using the Class-to-Bag (C2B) distances, which directly assesses the relations between annotation terms and image panels. Taking into account the two challenging properties of multi-instance gene expression data, high heterogeneity and weak label association, we computes the C2B distance by introducing class specific distance metrics and locally adaptive significance coefficients.We apply our new approach to automatic gene expression pattern classification and annotation on the Drosophila melanogaster species. Extensive experiments have demonstrated the effectiveness of our new method.

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Published

2016-02-21

How to Cite

Wang, H., Deng, C., Zhang, H., Gao, X., & Huang, H. (2016). Drosophila Gene Expression Pattern Annotations via Multi-Instance Biological Relevance Learning. Proceedings of the AAAI Conference on Artificial Intelligence, 30(1). https://doi.org/10.1609/aaai.v30i1.10173

Issue

Section

Technical Papers: Machine Learning Applications