Title
Classification of Dengue Serotypes Using Protein Sequence Based on Rule Extraction from Neural Network.
Abstract
Dengue virus is a growing problem in tropical countries. It serves disease, especially in children. Some exiting clinical methods CIMSiM, DENSiM, ELISA, SPSS, SARIMA, PCR and RT-PCR need a volume of blood cells which cannot be obtained from children. Meanwhile, some existing machine learning algorithms are used to diagnose the dengue infection based on the date of dengue fever, days, current temperature, white blood cell count, joint muscles, metallic taste in mouth, appetite, abdomen pain, hemoglobin, mild bleeding, vomiting, headaches, rainfall, and relative humidity attributes. These methods are used to diagnose the dengue in later stages. Sometimes these methods could not identify the correct results. To overcome these problems, this paper proposes the stable method of classifying dengue serotypes based on amino acids in the protein sequences. It needs only skin cells or hair or nail which can be easily obtained from any person including children also. The proposed method classifies dengue serotypes using entropy-based feature selection and rule extracted from the neural network. Results of the experiments show that the proposed method for classifying dengue fevers with its serotypes.
Year
DOI
Venue
2018
10.1007/978-3-030-05918-7_12
MIKE
Field
DocType
Citations 
Feature selection,Pattern recognition,Protein sequencing,Serotype,Dengue virus,Artificial intelligence,Artificial neural network,Medicine,Headaches,Dengue fever,Abdomen pain
Conference
0
PageRank 
References 
Authors
0.34
5
2