4.8 Article

Kernel-based machine learning protocol for predicting DNA-binding proteins

期刊

NUCLEIC ACIDS RESEARCH
卷 33, 期 20, 页码 6486-6493

出版社

OXFORD UNIV PRESS
DOI: 10.1093/nar/gki949

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资金

  1. NATIONAL HEART, LUNG, AND BLOOD INSTITUTE [T32HL007692] Funding Source: NIH RePORTER
  2. NATIONAL INSTITUTE OF ALLERGY AND INFECTIOUS DISEASES [R01AI069015] Funding Source: NIH RePORTER
  3. NHLBI NIH HHS [T32 HL007692, T32HL07692] Funding Source: Medline
  4. NIAID NIH HHS [R01 AI069015, P01 AI69015] Funding Source: Medline

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DNA-binding proteins (DNA-BPs) play a pivotal role in various intra- and extra-cellular activities ranging from DNA replication to gene expression control. Attempts have been made to identify DNA-BPs based on their sequence and structural information with moderate accuracy. Here we develop a machine learning protocol for the prediction of DNA-BPs where the classifier is Support Vector Machines (SVMs). Information used for classification is derived from characteristics that include surface and overall composition, overall charge and positive potential patches on the protein surface. In total 121 DNA-BPs and 238 non-binding proteins are used to build and evaluate the protocol. In self-consistency, accuracy value of 100% has been achieved. For cross-validation (CV) optimization over entire dataset, we report an accuracy of 90%. Using leave 1-pair holdout evaluation, the accuracy of 86.3% has been achieved. When we restrict the dataset to less than 20% sequence identity amongst the proteins, the holdout accuracy is achieved at 85.8%. Furthermore, seven DNA-BPs with unbounded structures are all correctly predicted. The current performances are better than results published previously. The higher accuracy value achieved here originates from two factors: the ability of the SVM to handle features that demonstrate a wide range of discriminatory power and, a different definition of the positive patch. Since our protocol does not lean on sequence or structural homology, it can be used to identify or predict proteins with DNA-binding function(s) regardless of their homology to the known ones.

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