Title :
Mining Gene Expression Data Focusing Cancer Therapeutics: A Digest
Author :
Jauhari, Shaurya ; Rizvi, S.A.M.
Author_Institution :
Dept. of Comput. Sci., Jamia Millia Islamia, New Delhi, India
Abstract :
An understanding towards genetics and epigenetics is essential to cope up with the paradigm shift which is underway. Personalized medicine and gene therapy will confluence the days to come. This review highlights traditional approaches as well as current advancements in the analysis of the gene expression data from cancer perspective. Due to improvements in biometric instrumentation and automation, it has become easier to collect a lot of experimental data in molecular biology. Analysis of such data is extremely important as it leads to knowledge discovery that can be validated by experiments. Previously, the diagnosis of complex genetic diseases has conventionally been done based on the non-molecular characteristics like kind of tumor tissue, pathological characteristics, and clinical phase. The microarray data can be well accounted for high dimensional space and noise. Same were the reasons for ineffective and imprecise results. Several machine learning and data mining techniques are presently applied for identifying cancer using gene expression data. While differences in efficiency do exist, none of the well-established approaches is uniformly superior to others. The quality of algorithm is important, but is not in itself a guarantee of the quality of a specific data analysis.
Keywords :
bioinformatics; biomedical engineering; cancer; data analysis; data mining; genetics; learning (artificial intelligence); medical computing; cancer therapeutics; data mining techniques; data noise; epigenetics; gene expression data analysis; gene expression data mining; gene therapy; genetic disease diagnosis; high dimensional space; knowledge discovery; machine learning techniques; microarray data; molecular biology; personalized medicine; Bioinformatics; Cancer; Computational biology; DNA; Diseases; Gene expression; Association rules; cancer; classification; clinicopathology; clustering; data mining; epigenetics; gene expression data; gene therapy; next generation sequencing;
Journal_Title :
Computational Biology and Bioinformatics, IEEE/ACM Transactions on
DOI :
10.1109/TCBB.2014.2312002