Literature DB >> 22910106

Synergistic effect of different levels of genomic data for cancer clinical outcome prediction.

Dokyoon Kim1, Hyunjung Shin, Young Soo Song, Ju Han Kim.   

Abstract

There have been many attempts in cancer clinical-type classification by using a dataset from a number of molecular layers of biological system. Despite these efforts, however, it still remains difficult to elucidate the cancer phenotypes because the cancer genome is neither simple nor independent but rather complicated and dysregulated by multiple molecular mechanisms. Recently, heterogeneous types of data, generated from all molecular levels of 'omic' dimensions from genome to phenome, for instance, copy number variants at the genome level, DNA methylation at the epigenome level, and gene expression and microRNA at the transcriptome level, have become available. In this paper, we propose an integrated framework that uses multi-level genomic data for prediction of clinical outcomes in brain cancer (glioblastoma multiforme, GBM) and ovarian cancer (serous cystadenocarcinoma, OV). From empirical comparison results on individual genomic data, we provide some preliminary insights about which level of data is more informative to a given clinical-type classification problem and justify these perceptions with the corresponding biological implications for each type of cancer. For GBM, all clinical outcomes had a better the area under the curve (AUC) of receiver operating characteristic when integrating multi-layers of genomic data, 0.876 for survival to 0.832 for recurrence. Moreover, the better AUCs were achieved from the integration approach for all clinical outcomes in OV as well, ranging from 0.787 to 0.893. We found that the opportunity for success in prediction of clinical outcomes in cancer was increased when the prediction was based on the integration of multi-layers of genomic data. This study is expecting to improve comprehension of the molecular pathogenesis and underlying biology of both cancer types.
Copyright © 2012 Elsevier Inc. All rights reserved.

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Year:  2012        PMID: 22910106     DOI: 10.1016/j.jbi.2012.07.008

Source DB:  PubMed          Journal:  J Biomed Inform        ISSN: 1532-0464            Impact factor:   6.317


  43 in total

1.  Using knowledge-driven genomic interactions for multi-omics data analysis: metadimensional models for predicting clinical outcomes in ovarian carcinoma.

Authors:  Dokyoon Kim; Ruowang Li; Anastasia Lucas; Shefali S Verma; Scott M Dudek; Marylyn D Ritchie
Journal:  J Am Med Inform Assoc       Date:  2017-05-01       Impact factor: 4.497

2.  Predicting censored survival data based on the interactions between meta-dimensional omics data in breast cancer.

Authors:  Dokyoon Kim; Ruowang Li; Scott M Dudek; Marylyn D Ritchie
Journal:  J Biomed Inform       Date:  2015-06-03       Impact factor: 6.317

3.  Incorporating inter-relationships between different levels of genomic data into cancer clinical outcome prediction.

Authors:  Dokyoon Kim; Hyunjung Shin; Kyung-Ah Sohn; Anurag Verma; Marylyn D Ritchie; Ju Han Kim
Journal:  Methods       Date:  2014-02-18       Impact factor: 3.608

Review 4.  Methods of integrating data to uncover genotype-phenotype interactions.

Authors:  Marylyn D Ritchie; Emily R Holzinger; Ruowang Li; Sarah A Pendergrass; Dokyoon Kim
Journal:  Nat Rev Genet       Date:  2015-01-13       Impact factor: 53.242

5.  Cohort selection for clinical trials using hierarchical neural network.

Authors:  Ying Xiong; Xue Shi; Shuai Chen; Dehuan Jiang; Buzhou Tang; Xiaolong Wang; Qingcai Chen; Jun Yan
Journal:  J Am Med Inform Assoc       Date:  2019-11-01       Impact factor: 4.497

6.  An Empirical Study for Impacts of Measurement Errors on EHR based Association Studies.

Authors:  Rui Duan; Ming Cao; Yonghui Wu; Jing Huang; Joshua C Denny; Hua Xu; Yong Chen
Journal:  AMIA Annu Symp Proc       Date:  2017-02-10

Review 7.  Text Mining for Precision Medicine: Bringing Structure to EHRs and Biomedical Literature to Understand Genes and Health.

Authors:  Michael Simmons; Ayush Singhal; Zhiyong Lu
Journal:  Adv Exp Med Biol       Date:  2016       Impact factor: 2.622

8.  Graph- and rule-based learning algorithms: a comprehensive review of their applications for cancer type classification and prognosis using genomic data.

Authors:  Saurav Mallik; Zhongming Zhao
Journal:  Brief Bioinform       Date:  2020-03-23       Impact factor: 11.622

9.  Outcome Prediction in Clinical Treatment Processes.

Authors:  Zhengxing Huang; Wei Dong; Lei Ji; Huilong Duan
Journal:  J Med Syst       Date:  2015-10-29       Impact factor: 4.460

10.  A novel artificial neural network method for biomedical prediction based on matrix pseudo-inversion.

Authors:  Binghuang Cai; Xia Jiang
Journal:  J Biomed Inform       Date:  2013-12-18       Impact factor: 6.317

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