Title :
Incremental Tumor Diagnosis Algorithm Using New Unlabeled Microarray
Author :
Yu, Hualong ; Gu, Guochang ; Liu, Haibo ; Shen, Jing ; Zhu, Changming ; Ni, Jun
Author_Institution :
Coll. of Comput. Sci. & Technol., Harbin Eng. Univ., Harbin
Abstract :
This paper presents an implementation of incremental tumor diagnosis algorithm (ITDA) on microarray data for improving diagnostic accuracy of tumor. A classifier (BP or KNN) was used in the algorithm to estimate confidences of a new unlabeled sample in different classes. When one confidence is higher than the threshold, the sample will be labeled; otherwise, the sample will be diagnosed by medical expert with other approaches. With more and more new labeled samples adding in the labeled samples list, the classifier will be better and will provide more accurate diagnosis for new sample. Strictly speaking, it is a particular active learning algorithm. By applying this algorithm on Colon tumor dataset, we demonstrated that our incremental tumor diagnosis algorithm can be used to successfully improve diagnostic accuracy of tumor. The performance of different parameters was tested in our experiments to verify the applicability of the method.
Keywords :
genomics; learning (artificial intelligence); medical computing; tumours; K-nearest-neighbor classifier; back-propagate network classifier; colon tumor dataset; incremental tumor diagnosis algorithm; learning algorithm; unlabeled microarray; Cancer; Cells (biology); Computer science; Costs; Data mining; Diseases; Educational institutions; Gene expression; Medical diagnostic imaging; Neoplasms;
Conference_Titel :
Computer and Computational Sciences, 2008. IMSCCS '08. International Multisymposiums on
Conference_Location :
Shanghai
Print_ISBN :
978-0-7695-3430-5
DOI :
10.1109/IMSCCS.2008.30