Cancer survival classification using integrated data sets and intermediate information

被引:18
|
作者
Kim, Shinuk [1 ,2 ,3 ]
Park, Taesung [2 ]
Kon, Mark [3 ]
机构
[1] Sangmyung Univ, Coll Liberal Arts, Cheonan 330729, Chungnam, South Korea
[2] Seoul Natl Univ, Dept Stat, Seoul 151747, South Korea
[3] Boston Univ, Dept Math & Stat, Boston, MA 02215 USA
关键词
Machine learning algorithm; Integration of data sets; Intermediate information; Survival time classification; GENE-EXPRESSION; HUMAN BREAST; PATIENT SURVIVAL; UP-REGULATION; CELL-GROWTH; MICRORNA; APOPTOSIS; PROFILES; PROTEIN; IDENTIFICATION;
D O I
10.1016/j.artmed.2014.06.003
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Objective: Although numerous studies related to cancer survival have been published, increasing the prediction accuracy of survival classes still remains a challenge. Integration of different data sets, such as microRNA (miRNA) and mRNA, might increase the accuracy of survival class prediction. Therefore, we suggested a machine learning (ML) approach to integrate different data sets, and developed a novel method based on feature selection with Cox proportional hazard regression model (FSCOX) to improve the prediction of cancer survival time. Methods: FSCOX provides us with intermediate survival information, which is usually discarded when separating survival into 2 groups (short- and long-term), and allows us to perform survival analysis. We used an ML-based protocol for feature selection, integrating information from miRNA and mRNA expression profiles at the feature level. To predict survival phenotypes, we used the following classifiers, first, existing ML methods, support vector machine (SVM) and random forest (RF), second, a new median-based classifier using FSCOX (FSCOX_median), and third, an SVM classifier using FSCOX (FSCOX_SVM). We compared these methods using 3 types of cancer tissue data sets: (i) miRNA expression, (ii) mRNA expression, and (iii) combined miRNA and mRNA expression. The latter data set included features selected either from the combined miRNA/mRNA profile or independently from miRNAs and mRNAs profiles (IFS). Results: In the ovarian data set, the accuracy of survival classification using the combined miRNA/mRNA profiles with IFS was 75% using RF, 86.36% using SVM, 84.09% using FSCOX_median, and 88.64% using FSCOX_SVM with a balanced 22 short-term and 22 long-term survivor data set. These accuracies are higher than those using miRNA alone (70.45%, RF; 75%, SVM; 75%, FSCOX_median; and 75%, FSCOX_SVM) or mRNA alone (65.91%, RF; 63.64%, SVM; 72.73%, FSCOX_median; and 70.45%, FSCOX_SVM). Similarly in the glioblastoma multiforme data, the accuracy of miRNA/mRNA using IFS was 75.51% (RF), 87.76% (SVM) 85.71% (FSCOX_median), 85.71% (FSCOX_SVM). These results are higher than the results of using miRNA expression and mRNA expression alone. In addition we predict 16 hsa-miR-23b and hsa-miR-27b target genes in ovarian cancer data sets, obtained by SVM-based feature selection through integration of sequence information and gene expression profiles. Conclusion: Among the approaches used, the integrated miRNA and mRNA data set yielded better results than the individual data sets. The best performance was achieved using the FSCOX_SVM method with independent feature selection, which uses intermediate survival information between short-term and long-term survival time and the combination of the 2 different data sets. The results obtained using the combined data set suggest that there are some strong interactions between miRNA and mRNA features that are not detectable in the individual analyses. (C) 2014 Elsevier B.V. All rights reserved.
引用
收藏
页码:23 / 31
页数:9
相关论文
共 50 条
  • [31] The Text Classification for Imbalanced Data Sets
    Li, Yanling
    Zhu, Yehang
    Yang, Ping
    ISISE 2008: INTERNATIONAL SYMPOSIUM ON INFORMATION SCIENCE AND ENGINEERING, VOL 2, 2008, : 778 - +
  • [32] Separate and conquer heuristic allows robust mining of contrast sets in classification, regression, and survival data
    Gudys, Adam
    Sikora, Marek
    Wrobel, Lukasz
    EXPERT SYSTEMS WITH APPLICATIONS, 2024, 248
  • [33] Cancer Classification Using Microarray Data By DPCAForest
    Deng, Xiaoheng
    Xu, Yuebin
    2019 IEEE 31ST INTERNATIONAL CONFERENCE ON TOOLS WITH ARTIFICIAL INTELLIGENCE (ICTAI 2019), 2019, : 1081 - 1087
  • [34] Cancer classification using gene expression data
    Lu, Y
    Han, JW
    INFORMATION SYSTEMS, 2003, 28 (04) : 243 - 268
  • [35] OrthoPhy: A Program to Construct Ortholog Data Sets Using Taxonomic Information
    Watanabe, Tomoaki
    Kure, Akinori
    Horiike, Tokumasa
    GENOME BIOLOGY AND EVOLUTION, 2023, 15 (03):
  • [36] Cancer Classification Using Gene Expression Data
    Sonsare, Pravinkumar
    Mujumdar, Aarya
    Joshi, Pranjali
    Morayya, Nipun
    Hablani, Sachal
    Khergade, Vedant
    SMART TRENDS IN COMPUTING AND COMMUNICATIONS, VOL 1, SMARTCOM 2024, 2024, 945 : 1 - 11
  • [37] Classification method in integrated information network using vector image comparison
    Yuan, Zhou, 1600, International Frequency Sensor Association (170):
  • [38] A New Knowledge Measure of Information Carried by Intuitionistic Fuzzy Sets and Application in Data Classification Problem
    Hoang Nguyen
    INFORMATION SYSTEMS ARCHITECTURE AND TECHNOLOGY, PT IV, 2016, 432 : 217 - 225
  • [39] An integrated method for cancer classification and rule extraction from microarray data
    Huang, Liang-Tsung
    JOURNAL OF BIOMEDICAL SCIENCE, 2009, 16
  • [40] Survival differences of CIMP subtypes integrated with CNA information in human breast cancer
    Wang, Huihan
    Yan, Weili
    Zhang, Shumei
    Gu, Yue
    Wang, Yihan
    Wei, Yanjun
    Liu, Hongbo
    Wang, Fang
    Wu, Qiong
    Zhang, Yan
    ONCOTARGET, 2017, 8 (30) : 48807 - 48819