Integrative classification and analysis of multiple arrayCGH datasets with probe alignment ( supplementary document )
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Integrative classification and analysis of multiple arrayCGH datasets with probe alignment
MOTIVATION Array comparative genomic hybridization (arrayCGH) is widely used to measure DNA copy numbers in cancer research. ArrayCGH data report log-ratio intensities of thousands of probes sampled along the chromosomes. Typically, the choices of the locations and the lengths of the probes vary in different experiments. This discrepancy in choosing probes poses a challenge in integrated classi...
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