Breast Cancer Diagnosis based on Joint Variable Selection and Constructive Deep Neural Network

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TitreBreast Cancer Diagnosis based on Joint Variable Selection and Constructive Deep Neural Network
Type de publicationConference Paper
Year of Publication2018
AuteursZemouri R., Omri N., Devalland C., Arnould L., Morello B., Zerhouni N., Fnaiech E.
Conference Name2018 IEEE 4TH MIDDLE EAST CONFERENCE ON BIOMEDICAL ENGINEERING (MECBME)
PublisherIEEE; IEEE Tunisia Sect; EMB; IEEE Reg 8; IEEE EMB Soc; IEEE EMB UAE Chapter; IEEE EMB Lebanon Chapter
Conference Location345 E 47TH ST, NEW YORK, NY 10017 USA
ISBN Number978-1-5386-1462-4
Mots-clésBreast cancer, Classifier, Clinical data, deep learning neural networks, Feature selection, Tumor detection
Résumé

Breast cancer is the second most common cancer (after lung cancer) that affect women both in the developed and less developed countries. Nowadays, using the Computer Aided Diagnosis (CAD) techniques becomes a necessity for several reasons: assisting and improving physicians, speed in data processing, harmonization and aid of diagnosis, better access to advanced online-medicine. Recently, several works about Breast Cancer Computer Aided Diagnosis (BC-CAD) have been published, and Neural Networks techniques, particularly deep architectures represent a significant part of these works. In this paper, we prpose a BC-CAD based on joint variable selection and a Constructive Deep Neural Network ``ConstDeepNet''. A feature variable selection method is applied to decrease the number of inputs used to train a Deep Learning Neural Network. Experiments have been conducted on two datasets, the Wisconsin Breast Cancer Dataset (WBCD) and real data from the north hospital of Belfort (France) to predict the recurrence score of the Oncotype DX. Consequently, the use of joint variable algorithm with ConstDeepNet outperforms the use of the Deep Learning arechitecture alone.