Otitis Media (OM) is a type of infectious disease caused by viruses and/or bacteria in the middle ear cavity. In the current study, it is aimed to detect the eardrum region in middle ear images for diagnosing OM disease by using artificial intelligence methods. The Convolution Neural Networks (CNN) model and the deep features of this model and the images obtained with the otoscope device were used. In order to separate these images as Normal and Abnormal, the end-to-end VGG16 model was directly used in the first stage of the experimental work. In the second stage of the experimental study, the activation maps of the fc6 and fc7 layers consisting of 4096 features and the fc8 layer consisting of 1000 features of the VGG16 CNN model were obtained. Then, it was given as input to Support Vector Machines (SVM). Then, the deep features obtained from all activation maps were combined and a new feature set was obtained. In the last stage, this feature set is given as an input to SVM. Thus, the effect of the VGG16 model and the features obtained from the layers of this model on the success of distinguishing images of the eardrum was investigated. Experimental studies show that, the best performance results were obtained for the fc6 layer with an accuracy rate of 82.17%. In addition, 71.43%, 90.62% and 77.92% performance criteria were obtained for sensitivity, specificity and f-score values, respectively. Consequently, it has been shown that OM disease could be accurately detected by using a deep CNN architecture. The proposed deep learning-based classification system promises highly accurate results for disease detection.
Convolution Neural Networks VGG16 Tympanic Membrane Otitis Media Classification Support Vector Machines
Primary Language | English |
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Subjects | Artificial Intelligence, Software Engineering, Computer Software |
Journal Section | Articles |
Authors | |
Publication Date | May 31, 2022 |
Acceptance Date | March 31, 2022 |
Published in Issue | Year 2022 Volume: 5 Issue: 1 |