2020
DOI: 10.23851/mjs.v31i4.902
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Classification the Mammograms Based on Hybrid Features Extraction Techniques Using Multilayer Perceptron Classifier

Abstract: Cancer of the breast is one of the world's most prevalent causes of death for women. Early and efficient identification is important for can care choices and reducing mortality. Mammography is the most effective early breast cancer detection process. Radiologists cannot however make a detailed and reliable assessment of mammograms due to fatigue or poor image quality. The main aim of this work is to establish a new approach to help radiologists identify anomalies and improve diagnostic precision. The proposed … Show more

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Cited by 4 publications
(2 citation statements)
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“…Algorithms and methods from the first group may be used in artificial intelligence algorithms [3,4]. The other group of algorithms is used especially for data encryption, for example, stream ciphers [5,6]. Therefore, the discrete values are often connected with binary values generation based on a uniform distribution.…”
Section: Literature Review and Problem Statementmentioning
confidence: 99%
“…Algorithms and methods from the first group may be used in artificial intelligence algorithms [3,4]. The other group of algorithms is used especially for data encryption, for example, stream ciphers [5,6]. Therefore, the discrete values are often connected with binary values generation based on a uniform distribution.…”
Section: Literature Review and Problem Statementmentioning
confidence: 99%
“…Through them, the algorithm is built by dividing the solution groups into 2 groups, and all operations have been carried out on the foraging group. Sentry is the optimal solution [12], [13]. There are many early studies that were carried out with the aim of identifying relevant samples and excluding weak, repetitive, and noiseless samples because of their significant impact on classification processes and the accuracy of cadastral joins ,they are listed in order from oldest to newest.…”
Section: Introductionmentioning
confidence: 99%