Predicting β-Turns in Protein Using Kernel Logistic Regression

被引:3
|
作者
Elbashir, Murtada Khalafallah [1 ]
Sheng, Yu [1 ]
Wang, Jianxin [1 ]
Wu, FangXiang [2 ]
Li, Min [1 ]
机构
[1] Cent South Univ, Sch Informat Sci & Engn, Changsha 410083, Hunan, Peoples R China
[2] Univ Saskatchewan, Dept Mech Engn, Saskatoon, SK S7N 5A9, Canada
基金
中国国家自然科学基金;
关键词
GAMMA-TURNS; ACCURACY; DATABASE; SET;
D O I
10.1155/2013/870372
中图分类号
Q81 [生物工程学(生物技术)]; Q93 [微生物学];
学科分类号
071005 ; 0836 ; 090102 ; 100705 ;
摘要
A beta-turn is a secondary protein structure type that plays a significant role in protein configuration and function. On average 25% of amino acids in protein structures are located in beta-turns. It is very important to develope an accurate and efficient method for beta-turns prediction. Most of the current successful beta-turns prediction methods use support vector machines (SVMs) or neural networks (NNs). The kernel logistic regression (KLR) is a powerful classification technique that has been applied successfully in many classification problems. However, it is often not found in beta-turns classification, mainly because it is computationally expensive. In this paper, we used KLR to obtain sparse beta-turns prediction in short evolution time. Secondary structure information and position-specific scoring matrices (PSSMs) are utilized as input features. We achieved Q(total) of 80.7% and MCC of 50% on BT426 dataset. These results show that KLRmethod with the right algorithmcan yield performance equivalent to or even better than NNs and SVMs in beta-turns prediction. In addition, KLR yields probabilistic outcome and has a well-defined extension tomulticlass case.
引用
收藏
页数:9
相关论文
共 50 条
  • [31] Predicting In-Hospital-Death and Mortality Percentage Using Logistic Regression
    Hamilton, Steven L.
    Hamilton, James R.
    2012 COMPUTING IN CARDIOLOGY (CINC), VOL 39, 2012, 39 : 489 - 492
  • [32] Face Recognition Based on Adaptive Kernel Logistic Regression
    Wang, Ziqiang
    Sun, Xia
    ADVANCES IN FUTURE COMPUTER AND CONTROL SYSTEMS, VOL 2, 2012, 160 : 257 - 262
  • [33] Quantum kernel logistic regression based Newton method
    Ning, Tong
    Yang, Youlong
    Du, Zhenye
    PHYSICA A-STATISTICAL MECHANICS AND ITS APPLICATIONS, 2023, 611
  • [34] Revisit of Logistic Regression: Efficient Optimization and Kernel Extensions
    Kobayashi, Takumi
    Watanabe, Kenji
    Otsu, Nobuyuki
    INTERNATIONAL JOURNAL OF ADVANCED COMPUTER SCIENCE AND APPLICATIONS, 2013, 4 (05) : 138 - 147
  • [35] Formulation of the Kernel Logistic Regression based on the Confusion Matrix
    Ohsaki, Miho
    Matsuda, Kenji
    Wang, Peng
    Katagiri, Shigeru
    Watanabe, Hideyuki
    2015 IEEE CONGRESS ON EVOLUTIONARY COMPUTATION (CEC), 2015, : 2327 - 2334
  • [36] Support vector machines, kernel logistic regression and boosting
    Zhu, J
    Hastie, R
    MULTIPLE CLASSIFIER SYSTEMS, 2002, 2364 : 16 - 26
  • [37] The evidence framework applied to sparse kernel logistic regression
    Cawley, GC
    Talbot, NLC
    NEUROCOMPUTING, 2005, 64 (64) : 119 - 135
  • [38] Predicting academic achievement:: Linear regression versus logistic regression
    Jiménez, MVG
    Izquierdo, JMA
    Blanco, AJ
    PSICOTHEMA, 2000, 12 : 248 - 252
  • [39] Speaker identification and verification using support vector machines and sparse kernel logistic regression
    Katz, Marcel
    Krueger, Sven E.
    Schaffoener, Martin
    Andelic, Edin
    Wendemuth, Andreas
    ADVANCES IN MACHINE VISION, IMAGE PROCESSING, AND PATTERN ANALYSIS, 2006, 4153 : 176 - 184
  • [40] Prediction of Protein Solubility in Escherichia coli Using Logistic Regression
    Diaz, Armando A.
    Tomba, Emanuele
    Lennarson, Reese
    Richard, Rex
    Bagajewicz, Miguel J.
    Harrison, Roger G.
    BIOTECHNOLOGY AND BIOENGINEERING, 2010, 105 (02) : 374 - 383