Normal ve Kronik Hastalıklı Orta Kulak İmgelerinin Evrişimsel Sinir Ağları Yöntemiyle Tespit Edilmesi
Year 2020,
Volume: 13 Issue: 1, 1 - 10, 13.04.2020
Erdal Başaran
,
Zafer Cömert
,
Abdulkadir Sengur
,
Ümit Budak
,
Yuksel Celık
,
Mesut Toğaçar
Abstract
Orta kulak iltihabı kulak zarının arkasında sıvı birikmesi olarak bilinmektedir. Orta kulak iltihabının uzun süreli tedaviye yanıt vermemesi ve kulak zarının delinmesi ile karakterize olan kronik orta kulak iltihabı işitme kaybına bile sebep olabilen ciddi bir rahatsızlıktır. Bu çalışmada gerekli etik kurulu izni alındıktan sonra Özel Van Akdamar Hastanesinde gönüllü hastalardan otoskop cihazı ile elde edilen 598 adet normal orta kulak görüntüsü ve kronik hastalıklı orta kulak görüntüleri ile sınıflandırma işlemi gerçekleştirilmiştir. Son yıllarda yapay zekâ kapsamında değerlendirilen algoritmalar hemen her alanda kullanılmaktadır. Sağlık alanında da tanı ve karar destek sistemleri geliştirilerek başarılı çalışmalar yapılmaktadır. Bu çalışmada yapay zekâ algoritmalarından olan ve özellikle biyomedikal görüntü sınıflandırma çalışmalarında da iyi sonuçlar elde edilen evrişimsel sinir ağı mimarilerinden olan AlexNet, VGG16, VGG19, GoogleNet, ResNet18, ResNet50, ResNet101 modelleri kullanılmıştır. Deneysel çalışmalar sonucu VGG19 mimarisi ile %97.2067 başarı oranı elde edilmiştir. Evrişimsel sinir ağları yöntemi normal ve kronik orta kulak görüntülerini ayırt etmede başarılı bir yöntemdir.
Thanks
UBMK19'da sunmus oldugumuz "Chronic Tympanic Membrane Diagnosis based on Deep Convolutional Neural Network" baslikli bildirimiz, TBV Bilgisayar Bilimleri ve Muhendisligi dergisinde secilip davet edildiğinden dolayı teşekkür ederiz, Saygılarımızla
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Year 2020,
Volume: 13 Issue: 1, 1 - 10, 13.04.2020
Erdal Başaran
,
Zafer Cömert
,
Abdulkadir Sengur
,
Ümit Budak
,
Yuksel Celık
,
Mesut Toğaçar
References
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- [4] O. Pakır, “Kronik süpüratif otitis mediada medikal Tedavinin cerrahi tedavinin zamanlamasındaki Rolü,” Zonguldak Üniversitesi, 2015.
- [5] Z. Cömert and A. F. Kocamaz, “Fetal Hypoxia Detection Based on Deep Convolutional Neural Network with Transfer Learning Approach,” in Software Engineering and Algorithms in Intelligent Systems, 2019, pp. 239–248.
- [6] E. Deniz, A. Sengür, Z. Kadiroğuglu, Y. Guo, V. Bajaj, and Ü. Budak, “Transfer learning based histopathologic image classification for breast cancer detection,” Heal. Inf. Sci. Syst., vol. 6, no. 1, p. 18, 2018.
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- [19] M. Toğaçar and B. Ergen, “Deep Learning Approach for Classification of Breast Canser,” in 2018 International Conference on Artificial Intelligence and Data Processing (IDAP), 2018, pp. 1–5.
- [20] A. Feng-Ping and L. Zhi-Wen, “Medical image segmentation algorithm based on feedback mechanism convolutional neural network,” Biomed. Signal Process. Control, vol. 53, p. 101589, Aug. 2019.
- [21] A. Krizhevsky, I. Sutskever, and G. E. Hinton, “ImageNet Classification with Deep Convolutional Neural Networks,” in Proceedings of the 25th International Conference on Neural Information Processing Systems - Volume 1, 2012, pp. 1097–1105.
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