Detecting the degree of malignancy in prostate and breast cancer using deep neural network

سال انتشار: 1401
نوع سند: مقاله کنفرانسی
زبان: انگلیسی
مشاهده: 120

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SECONGRESS01_169

تاریخ نمایه سازی: 1 بهمن 1401

چکیده مقاله:

Cancer is a group of diseases involving abnormal cell growth with the potential to invade or spread to other parts of the body. These contrast with benign tumors, which do not spread. Possible signs and symptoms include a lump, abnormal bleeding, prolonged cough, unexplained weight loss, and a change in bowel movements. While these symptoms may indicate cancer, they can also have other causes. Over ۱۰۰ types of cancers affect humans. In recent years, interest in research into the application of intelligent algorithms for diagnosis and categorization of diseases, especially cancer has increased dramatically. Tumor classification is an important task in medical diagnosis. Technological calculations are important due to their classification function in diagnosis of medical illnesses. Diagnosing and classifying medical images is a challenging task. To detect the malignancy of prostate cancer and the opioid or malignant breast cancer, deep neural network classifier, which is based on Tensor flow framework and Keras library, is used. In the training phase, educational images are considered along with the output class for the network. During training, the weight of the filter is updated every time. However, after several replications, optimal weights are updated and the network is trained to extract the best feature from the images. In this research, the proposed method due to using deep neural network and accurate feature extraction provides detection accuracy about ۹۵.۸۳% and ۹۹.۵% for breast and prostate cancers, respectively, which is more than ۷% compared to other methods. Cancer is one of the most prevalent diseases in the world. Cancer is started from the cells, which are the basic building blocks making the tissue. One of the challenges in medical diagnostic techniques is the difficulty in analyzing dense tissues. Since the detection of the diagnosis by human is time-consuming and has a higher probability of error, the researchers have been trying to detect it automatically by using different algorithms.

نویسندگان

Donia Pishdad

Master of Information Technology Engineering, Faculty of Computer Engineering and Information Technology, Shahid Madani University of Azerbaijan, Tabriz, Iran