Title of article :
PredAmyl-MLP: Prediction of Amyloid Proteins Using Multilayer Perceptron
Author/Authors :
Li, Yanjuan Northeast Forestry University - Harbin, China , Zhang, Zitong Northeast Forestry University - Harbin, China , Teng, Zhixia Northeast Forestry University - Harbin, China , Liu, Xiaoyan Harbin Institute of Technology - Harbin, China
Abstract :
Amyloid is generally an aggregate of insoluble fibrin; its abnormal deposition is the pathogenic mechanism of various diseases, such
as Alzheimer’s disease and type II diabetes. Therefore, accurately identifying amyloid is necessary to understand its role in
pathology. We proposed a machine learning-based prediction model called PredAmyl-MLP, which consists of the following
three steps: feature extraction, feature selection, and classification. In the step of feature extraction, seven feature extraction
algorithms and different combinations of them are investigated, and the combination of SVMProt-188D and tripeptide
composition (TPC) is selected according to the experimental results. In the step of feature selection, maximum relevant
maximum distance (MRMD) and binomial distribution (BD) are, respectively, used to remove the redundant or noise features,
and the appropriate features are selected according to the experimental results. In the step of classification, we employed
multilayer perceptron (MLP) to train the prediction model. The 10-fold cross-validation results show that the overall accuracy
of PredAmyl-MLP reached 91.59%, and the performance was better than the existing methods.
Keywords :
PredAmyl-MLP , Multilayer , MRMD
Journal title :
Computational and Mathematical Methods in Medicine