Radiography image analysis using cat swarm optimized deep belief networks

Author:

Elameer Amer S.1,Jaber Mustafa Musa23,Abd Sura Khalil2

Affiliation:

1. Biomedical Informatics College, University of Information Technology and Communications (UOITC) , Baghdad , Iraq

2. Department of Computer Science, Dijlah University Collage , Baghdad , 00964 , Iraq

3. Department of Computer Science, Al-Turath University College , Baghdad , Iraq

Abstract

Abstract Radiography images are widely utilized in the health sector to recognize the patient health condition. The noise and irrelevant region information minimize the entire disease detection accuracy and computation complexity. Therefore, in this study, statistical Kolmogorov–Smirnov test has been integrated with wavelet transform to overcome the de-noising issues. Then the cat swarm-optimized deep belief network is applied to extract the features from the affected region. The optimized deep learning model reduces the feature training cost and time and improves the overall disease detection accuracy. The network learning process is enhanced according to the AdaDelta learning process, which replaces the learning parameter with a delta value. This process minimizes the error rate while recognizing the disease. The efficiency of the system evaluated using image retrieval in medical application dataset. This process helps to determine the various diseases such as breast, lung, and pediatric studies.

Publisher

Walter de Gruyter GmbH

Subject

Artificial Intelligence,Information Systems,Software

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