2024-03-28T17:48:24Zhttps://uvadoc.uva.es/oai/requestoai:uvadoc.uva.es:10324/229362021-06-23T10:10:52Zcom_10324_1151com_10324_931com_10324_894col_10324_1280
00925njm 22002777a 4500
dc
Larriba González, Yolanda
author
Rueda Sabater, María Cristina
author
Fernández Temprano, Miguel Alejandro
author
Peddada, Shyamal
author
2016
High-throughput microarray technologies are a widely used research tool in gene expression analysis. A large variety of preprocessing methods
for raw intensity measures is available to establish gene expression values. Normalization is the key stage in preprocessing methods, since it
removes systematic variations in microarray data. Then, the choice of the normalization strategy can make a substantial impact to the final results.
Additionally, we have observed that the identification of rhythmic circadian genes depends not only on the normalization strategy but also on
the rhythmicity detection algorithm employed. We analyze three different rhythmicity detection algorithms. On the one hand, JTK and RAIN
which are widely extended among biologists. On the other hand, ORIOS, a novel statistical methodology which heavily relies on Order Restricted
Inference and that we propose to detect rhythmic signal for Oscillatory Systems. Results on the determination of circadian rhythms are compared
using artificial microarray data and publicly available circadian data bases.
http://uvadoc.uva.es/handle/10324/22936
Influence of microarray normalization strategies and rhythmicity detection algorithms to detect circadian rhythms