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1.
Pak J Pharm Sci ; 32(3 Special): 1395-1408, 2019 May.
Article in English | MEDLINE | ID: mdl-31551221

ABSTRACT

Numerous cancer studies have combined different datasets for the prognosis of patients. This study incorporated four networks for significant directed random walk (sDRW) to predict cancerous genes and risk pathways. The study investigated the feasibility of cancer prediction via different networks. In this study, multiple micro array data were analysed and used in the experiment. Six gene expression datasets were applied in four networks to study the effectiveness of the networks in sDRW in terms of cancer prediction. The experimental results showed that one of the proposed networks is outstanding compared to other networks. The network is then proposed to be implemented in sDRW as a walker network. This study provides a foundation for further studies and research on other networks. We hope these finding will improve the prognostic methods of cancer patients.


Subject(s)
Computational Biology/methods , Gene Expression Regulation, Neoplastic , Neoplasms/genetics , Algorithms , Biomarkers, Tumor/genetics , Databases, Genetic , Humans , Microarray Analysis , Protein Interaction Maps/genetics , Random Allocation , Reproducibility of Results , Transcriptome
2.
Saudi J Biol Sci ; 24(8): 1828-1841, 2017 Dec.
Article in English | MEDLINE | ID: mdl-29551932

ABSTRACT

Microarray technology has become one of the elementary tools for researchers to study the genome of organisms. As the complexity and heterogeneity of cancer is being increasingly appreciated through genomic analysis, cancerous classification is an emerging important trend. Significant directed random walk is proposed as one of the cancerous classification approach which have higher sensitivity of risk gene prediction and higher accuracy of cancer classification. In this paper, the methodology and material used for the experiment are presented. Tuning parameter selection method and weight as parameter are applied in proposed approach. Gene expression dataset is used as the input datasets while pathway dataset is used to build a directed graph, as reference datasets, to complete the bias process in random walk approach. In addition, we demonstrate that our approach can improve sensitive predictions with higher accuracy and biological meaningful classification result. Comparison result takes place between significant directed random walk and directed random walk to show the improvement in term of sensitivity of prediction and accuracy of cancer classification.

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