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Detection of Neural Fates from Random Differentiation : Application of Support Vector MachineMin
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  • Detection of Neural Fates from Random Differentiation : Application of Support Vector MachineMin
  • Detection of Neural Fates from Random Differentiation : Application of Support Vector MachineMin
저자명
Lee. Min-Su,Ahn. Jeong-Hyuck,Park. Woong-Yang
간행물명
Genomics & informatics
권/호정보
2007년|5권 1호|pp.1-5 (5 pages)
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한국유전체학회
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정기간행물|ENG|
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이 논문은 한국과학기술정보연구원과 논문 연계를 통해 무료로 제공되는 원문입니다.
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기타언어초록

Embryonic stem cells can be differentiated into various types of cells, requiring a tight regulation of transcription. Biomarkers related to each lineage of cells are used to guide the differentiation into neural or any other fates. In previous experiments, we reported the guided differentiation (GD)-specific genes by comparing profiles of random differentiation (RD). Interestingly 68% of differentially expressed genes in GD overlap with that of RD, which makes it difficult for us to separate the lineages by examining several markers. In this paper, we design a prediction model to identify the differentiation into neural fates from any other lineage. From the profiles of 11,376 genes, 203 differentially expressed genes between neural and random differentiation were selected by random variance T-test with 95% confidence and 5% false discovery rate. Based on support vector machine algorithm, we could select 79 marker genes from the 203 informative genes to construct the optimal prediction model. Here we propose a prediction model for the prediction of neural fates from random differentiation which is constructed with a perfect accuracy.