Gene expression signatures from microarray experiments promise to provide important prognostic tools for predicting disease outcome or response to treatment. A number of microarray studies in various cancers have reported such gene signatures. However, the overlap of gene signatures in the same disease has been limited so far, and some reported signatures have not been reproduced in other populations. Clearly, the methods used for verifying novel gene signatures need improvement. In this paper, we describe an experiment in which microarrays and sample hybridization are designed according to the statistical principles of randomization, replication, and blocking. Our results show that such designs provide unbiased estimation of differential expression levels as well as powerful tests for them. Key words: Microarray experiments, experimental design, familywise error rate, multiple comparisons, sensitivity and specificity. Key points: Statistically designing microarray experiments may imp...
Jason C. Hsu, Jane Chang, Tao Wang, Eiríkur