معلومات البحث الكاملة في مستودع بيانات الجامعة

عنوان البحث(Papers / Research Title)


Classification of medical datasets using back propagation neural network powered by genetic-based features elector


الناشر \ المحرر \ الكاتب (Author / Editor / Publisher)

 
نور كاظم ايوب مهدي المهدي

Citation Information


نور,كاظم,ايوب,مهدي,المهدي ,Classification of medical datasets using back propagation neural network powered by genetic-based features elector , Time 28/12/2020 10:11:29 : كلية العلوم للبنات

وصف الابستركت (Abstract)


تشخيص السرطان باستخدام الحاسوب

الوصف الكامل (Full Abstract)

The classification is a one of the most indispensable domains in the data mining and machine learning. The classification process has a good reputation in the area of diseases diagnosis by computer systems where the progress in smart technologies of computer can be invested in diagnosing various diseases based on data of real patients documented in databases. The paper introduced a methodology for diagnosing a set of diseases including two types of cancer (breast cancer and lung), two datasets for diabetes and heart attack. Back Propagation Neural Network plays the role of classifier. The performance of neural net is enhanced by using the genetic algorithm which provides the classifier with the optimal features to raise the classification rate to the highest possible. The system showed high efficiency in dealing with databases differs from each other in size, number of features and nature of the data and this is what the results illustrated, where the ratio of the classification reached to 100% in most datasets

تحميل الملف المرفق Download Attached File

تحميل الملف من سيرفر شبكة جامعة بابل (Paper Link on Network Server) repository publications

البحث في الموقع

Authors, Titles, Abstracts

Full Text




خيارات العرض والخدمات


وصلات مرتبطة بهذا البحث