日本語
 
Help Privacy Policy ポリシー/免責事項
  詳細検索ブラウズ

アイテム詳細

  Positive-unlabeled ensemble learning for kinase substrate prediction from dynamic phosphoproteomics data

Yang, P., Humphrey, S. J., James, D. E., Yang, Y. H., & Jothi, R. (2016). Positive-unlabeled ensemble learning for kinase substrate prediction from dynamic phosphoproteomics data. Bioinformatics, 32(2), 252-259. doi:10.1093/bioinformatics/btv550.

Item is

基本情報

表示: 非表示:
資料種別: 学術論文

ファイル

表示: ファイル

関連URL

表示:

作成者

表示:
非表示:
 作成者:
Yang, Pengyi1, 著者
Humphrey, Sean J.2, 著者           
James, David E.1, 著者
Yang, Yee Hwa1, 著者
Jothi, Raja1, 著者
所属:
1external, ou_persistent22              
2Mann, Matthias / Proteomics and Signal Transduction, Max Planck Institute of Biochemistry, Max Planck Society, ou_1565159              

内容説明

表示:
非表示:
キーワード: SPECTROMETRY-BASED PROTEOMICS; PHOSPHORYLATION SITES; MASS-SPECTROMETRY; IN-VIVO; PROTEIN-PHOSPHORYLATION; SIGNALING NETWORKS; WIDE PREDICTION; REVEALS; MOTIFS; TOOL
 要旨: Motivation: Protein phosphorylation is a post-translational modification that underlines various aspects of cellular signaling. A key step to reconstructing signaling networks involves identification of the set of all kinases and their substrates. Experimental characterization of kinase substrates is both expensive and time-consuming. To expedite the discovery of novel substrates, computational approaches based on kinase recognition sequence (motifs) from known substrates, protein structure, interaction and co-localization have been proposed. However, rarely do these methods take into account the dynamic responses of signaling cascades measured from in vivo cellular systems. Given that recent advances in mass spectrometry-based technologies make it possible to quantify phosphorylation on a proteome-wide scale, computational approaches that can integrate static features with dynamic phosphoproteome data would greatly facilitate the prediction of biologically relevant kinase-specific substrates. Results: Here, we propose a positive-unlabeled ensemble learning approach that integrates dynamic phosphoproteomics data with static kinase recognition motifs to predict novel substrates for kinases of interest. We extended a positive-unlabeled learning technique for an ensemble model, which significantly improves prediction sensitivity on novel substrates of kinases while retaining high specificity. We evaluated the performance of the proposed model using simulation studies and subsequently applied it to predict novel substrates of key kinases relevant to insulin signaling. Our analyses show that static sequence motifs and dynamic phosphoproteomics data are complementary and that the proposed integrated model performs better than methods relying only on static information for accurate prediction of kinase-specific substrates.

資料詳細

表示:
非表示:
言語: eng - English
 日付: 2016
 出版の状態: 出版
 ページ: 8
 出版情報: -
 目次: -
 査読: 査読あり
 識別子(DOI, ISBNなど): ISI: 000368360100013
DOI: 10.1093/bioinformatics/btv550
 学位: -

関連イベント

表示:

訴訟

表示:

Project information

表示:

出版物 1

表示:
非表示:
出版物名: Bioinformatics
種別: 学術雑誌
 著者・編者:
所属:
出版社, 出版地: Oxford : Oxford University Press
ページ: - 巻号: 32 (2) 通巻号: - 開始・終了ページ: 252 - 259 識別子(ISBN, ISSN, DOIなど): ISSN: 1367-4803
CoNE: https://pure.mpg.de/cone/journals/resource/954926969991