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Poor Correlation Between the New Statistical and the Old Empirical Algorithms for DNA Microarray Analysis
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  • Poor Correlation Between the New Statistical and the Old Empirical Algorithms for DNA Microarray Analysis
  • Poor Correlation Between the New Statistical and the Old Empirical Algorithms for DNA Microarray Analysis
저자명
Kim. Ju Han,Kuo. Winston P.,Kong. Sek-Won,Ohno-Machado. Lucila,Kohane. Isaac S.
간행물명
Genomics & informatics
권/호정보
2003년|1권 2호|pp.87-93 (7 pages)
발행정보
한국유전체학회
파일정보
정기간행물|ENG|
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이 논문은 한국과학기술정보연구원과 논문 연계를 통해 무료로 제공되는 원문입니다.
서지반출

기타언어초록

DNA microarray is currently the most prominent tool for investigating large-scale gene expression data. Different algorithms for measuring gene expression levels from scanned images of microarray experiments may significantly impact the following steps of functional genomic analyses. $Affymetrix^{(R)}$ recently introduced high-density microarrays and new statistical algorithms in Microarray Suit (MAS) version 5.0$^{(R)}$. Very high correlations (0.92 - 0.97) between the new algorithms and the old algorithms (MAS 4.0) across several species and conditions were reported. We found that the column-wise array correlations had a tendency to be much higher than the row-wise gene correlations, which may be much more meaningful in the following higher-order data analyses including clustering and pattern analyses. In this paper, not only the detailed comparison of the two sets of algorithms is illustrated, but the impact of the introducing new algorithms on the further clustering analysis of microarray data and of possible pitfalls in mixing the old and the new algorithms were also described.