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    Please use this identifier to cite or link to this item: https://ir.csmu.edu.tw:8080/ir/handle/310902500/21063


    Title: k-Skip-n-Gram-RF: A Random Forest Based Method for Alzheimer's Disease Protein 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
    Date: 2019-02-12
    Issue Date: 2020-08-10T09:33:24Z (UTC)
    Publisher: Front. Genet
    Abstract: In this paper, a computational method based on machine learning technique for identifying Alzheimer's disease genes is proposed. Compared with most existing machine learning based methods, existing methods predict Alzheimer's disease genes by using structural magnetic resonance imaging (MRI) technique. Most methods have attained acceptable results, but the cost is expensive and time consuming. Thus, we proposed a computational method for identifying Alzheimer disease genes by use of the sequence information of proteins, and classify the feature vectors by random forest. In the proposed method, the gene protein information is extracted by adaptive k-skip-n-gram features. The proposed method can attain the accuracy to 85.5% on the selected UniProt dataset, which has been demonstrated by the experimental results.
    URI: https://ir.csmu.edu.tw:8080/ir/handle/310902500/21063
    Relation: Front. Genet. 10:33
    Appears in Collections:[應用資訊科學學系暨碩士班] 期刊論文

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