Cancer subtypes recognition and its gene expression profiles analysis based on geometrical learning


Autoria(s): Cao WM (Cao Wenming); Ding LJ (Ding Lijun)
Data(s)

2006

Resumo

The accurate recognition of cancer subtypes is very significant in clinic. Especially, the DNA microarray gene expression technology is applied to diagnosing and recognizing cancer types. This paper proposed a method of that recognized cancer subtypes based on geometrical learning. Firstly, the cancer genes expression profiles data was pretreated and selected feature genes by conventional method; then the expression data of feature genes in the training samples was construed each convex hull in the high-dimensional space using training algorithm of geometrical learning, while the independent test set was tested by the recognition algorithm of geometrical learning. The method was applied to the human acute leukemia gene expression data. The accuracy rate reached to 100%. The experiments have proved its efficiency and feasibility.

Identificador

http://ir.semi.ac.cn/handle/172111/10294

http://www.irgrid.ac.cn/handle/1471x/64340

Idioma(s)

英语

Fonte

Cao WM (Cao Wenming); Ding LJ (Ding Lijun) .Cancer subtypes recognition and its gene expression profiles analysis based on geometrical learning ,CHINESE JOURNAL OF ELECTRONICS,2006,15(4A):891-894

Palavras-Chave #人工智能 #gene expression profiles #cancer subtypes #geometrical learning #convex hull #CLASSIFICATION #PREDICTION
Tipo

期刊论文