Classification of cancer patients using pathway analysis and network clustering.

NETWORK BIOLOGY: METHODS AND APPLICATIONS(2011)

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摘要
Molecular expression patterns have often been used for patient classification in oncology in an effort to improve prognostic prediction and treatment compatibility. This effort is, however, hampered by the highly heterogeneous data often seen in the molecular analysis of cancer. The lack of overall similarity between expression profiles makes it difficult to partition data using conventional data mining tools. In this chapter, the authors introduce a bioinformatics protocol that uses REACTOME pathways and patient-protein network structure (also called topology) as the basis for patient classification.
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关键词
iTRAQ-mass spectrometry data,Network clustering,Patient classification,REACTOME pathways
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