Literature DB >> 33624609

Classification Accuracy of Hepatitis C Virus Infection Outcome: Data Mining Approach.

Mario Frias1, Jose M Moyano2,3, Antonio Rivero-Juarez1, Jose M Luna2,3, Ángela Camacho1, Habib M Fardoun4, Isabel Machuca1, Mohamed Al-Twijri4, Antonio Rivero1, Sebastian Ventura2,3.   

Abstract

BACKGROUND: The dataset from genes used to predict hepatitis C virus outcome was evaluated in a previous study using a conventional statistical methodology.
OBJECTIVE: The aim of this study was to reanalyze this same dataset using the data mining approach in order to find models that improve the classification accuracy of the genes studied.
METHODS: We built predictive models using different subsets of factors, selected according to their importance in predicting patient classification. We then evaluated each independent model and also a combination of them, leading to a better predictive model.
RESULTS: Our data mining approach identified genetic patterns that escaped detection using conventional statistics. More specifically, the partial decision trees and ensemble models increased the classification accuracy of hepatitis C virus outcome compared with conventional methods.
CONCLUSIONS: Data mining can be used more extensively in biomedicine, facilitating knowledge building and management of human diseases. ©Mario Frias, Jose M Moyano, Antonio Rivero-Juarez, Jose M Luna, Ángela Camacho, Habib M Fardoun, Isabel Machuca, Mohamed Al-Twijri, Antonio Rivero, Sebastian Ventura. Originally published in the Journal of Medical Internet Research (http://www.jmir.org), 24.02.2021.

Entities:  

Keywords:  HIV/HCV; PART; classification accuracy; data mining; ensemble

Year:  2021        PMID: 33624609      PMCID: PMC7946589          DOI: 10.2196/18766

Source DB:  PubMed          Journal:  J Med Internet Res        ISSN: 1438-8871            Impact factor:   5.428


  9 in total

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7.  Changes in Splicing Machinery Components Influence, Precede, and Early Predict the Development of Type 2 Diabetes: From the CORDIOPREV Study.

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Authors:  David L Thomas; Chloe L Thio; Maureen P Martin; Ying Qi; Dongliang Ge; Colm O'Huigin; Judith Kidd; Kenneth Kidd; Salim I Khakoo; Graeme Alexander; James J Goedert; Gregory D Kirk; Sharyne M Donfield; Hugo R Rosen; Leslie H Tobler; Michael P Busch; John G McHutchison; David B Goldstein; Mary Carrington
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9.  HLA-B, HLA-C and KIR improve the predictive value of IFNL3 for Hepatitis C spontaneous clearance.

Authors:  Mario Frias; Antonio Rivero-Juárez; Diego Rodriguez-Cano; Ángela Camacho; Pedro López-López; María Ángeles Risalde; Bárbara Manzanares-Martín; Teresa Brieva; Isabel Machuca; Antonio Rivero
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  9 in total

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