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    Please use this identifier to cite or link to this item: https://ir.csmu.edu.tw:8080/ir/handle/310902500/21062


    Title: An Efficient Classifier for Alzheimer’s Disease Genes Identification
    Authors: Lei Xu;Guangmin Liang;Changrui Liao;Gin-Den Chen;Chi-Chang Chang
    Contributors: 應用資訊科學學系暨碩士班
    Keywords: Alzheimer’s disease, gene coding protein, sequence information, support vector machine, classification
    Date: 2018-11-29
    Issue Date: 2020-08-10T09:27:55Z (UTC)
    Publisher: Molecules.
    Abstract: Abstract
    Alzheimer’s disease (AD) is considered to one of 10 key diseases leading to death in humans. AD is considered the main cause of brain degeneration, and will lead to dementia. It is beneficial for affected patients to be diagnosed with the disease at an early stage so that efforts to manage the patient can begin as soon as possible. Most existing protocols diagnose AD by way of magnetic resonance imaging (MRI). However, because the size of the images produced is large, existing techniques that employ MRI technology are expensive and time-consuming to perform. With this in mind, in the current study, AD is predicted instead by the use of a support vector machine (SVM) method based on gene-coding protein sequence information. In our proposed method, the frequency of two consecutive amino acids is used to describe the sequence information. The accuracy of the proposed method for identifying AD is 85.7%, which is demonstrated by the obtained experimental results. The experimental results also show that the sequence information of gene-coding proteins can be used to predict AD.
    URI: https://ir.csmu.edu.tw:8080/ir/handle/310902500/21062
    Relation: Molecules. 2018 Dec; 23(12): 3140.
    Appears in Collections:[應用資訊科學學系暨碩士班] 期刊論文

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