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Recent Advances in Conotoxin Classification by Using Machine Learning Methods

期刊

MOLECULES
卷 22, 期 7, 页码 -

出版社

MDPI
DOI: 10.3390/molecules22071057

关键词

conotoxin; superfamily; ion channel; machine learning method

资金

  1. Applied Basic Research Program of Sichuan Province [2015JY0100, LZ-LY-45]
  2. Fundamental Research Funds for the Central Universities of China [ZYGX2015J144, ZYGX2015Z006, ZYGX2016J118, ZYGX2016J125, ZYGX2016J126]
  3. Program for the Top Young Innovative Talents of Higher Learning Institutions of Hebei Province [BJ2014028]
  4. Outstanding Youth Foundation of North China University of Science and Technology [JP201502]
  5. China Postdoctoral Science Foundation [2015M582533]
  6. Scientific Research Foundation of the Education Department of Sichuan Province [11ZB122]

向作者/读者索取更多资源

Conotoxins are disulfide-rich small peptides, which are invaluable peptides that target ion channel and neuronal receptors. Conotoxins have been demonstrated as potent pharmaceuticals in the treatment of a series of diseases, such as Alzheimer's disease, Parkinson's disease, and epilepsy. In addition, conotoxins are also ideal molecular templates for the development of new drug lead compounds and play important roles in neurobiological research as well. Thus, the accurate identification of conotoxin types will provide key clues for the biological research and clinical medicine. Generally, conotoxin types are confirmed when their sequence, structure, and function are experimentally validated. However, it is time-consuming and costly to acquire the structure and function information by using biochemical experiments. Therefore, it is important to develop computational tools for efficiently and effectively recognizing conotoxin types based on sequence information. In this work, we reviewed the current progress in computational identification of conotoxins in the following aspects: (i) construction of benchmark dataset; (ii) strategies for extracting sequence features; (iii) feature selection techniques; (iv) machine learning methods for classifying conotoxins; (v) the results obtained by these methods and the published tools; and (vi) future perspectives on conotoxin classification. The paper provides the basis for in-depth study of conotoxins and drug therapy research.

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