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   a new parallel deep learning algorithm for breast cancer classification  
   
نویسنده kazemi ahmad ,shiri mohammad ebrahim ,sheikhahmadi amir ,khodamoradi mohamad
منبع international journal of nonlinear analysis and applications - 2021 - دوره : 12 - شماره : Special Is - صفحه:1269 -1282
چکیده    Now diagnostic methods with the help of machine learning have been able to help doctors in this field. one of the most important of these methods is deep learning, which has gotten good answers in images containing cancer. increasing the accuracy of deep neural network classifiers can increase the diagnosis of breast cancer. in this paper, we have tried to achieve higher accuracy than non-parallel models with the help of a parallel model of a deep neural network. the proposed method is a parallel hybrid method combining alexnet and vggnet networks applied in parallel to mammographic images. the database used in this article is inbreast. the results obtained from this method show a 4% increase compared to some other classification models so that in the type of density 1, it has achieved about 99.7%. in the case of other densities, an accuracy of nearly 99% has been obtained.
کلیدواژه medical image ,magnetic resonance imaging ,parallel convolutional neural network
آدرس islamic azad university, sanandaj branch, department of computer engineering, iran, amirkabir university of technology, computer science department, iran, islamic azad university, sanandaj branch, department of computer engineering, iran, islamic azad university, izeh branch, department of mathematics, iran
پست الکترونیکی mohammad_moradi57@yahoo.com
 
     
   
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