Classification of Ear Imagery Database using Bayesian Optimization based on CNN-LSTM Architecture

被引:0
作者
Kamel K. Mohammed
Aboul Ella Hassanien
Heba M. Afify
机构
[1] Al Azhar University,Center for Virus Research and Studies
[2] Cairo University,Faculty of Computers and Information
[3] Higher Institute of Engineering in Shorouk Academy,Systems and Biomedical Engineering Department
[4] Al Shorouk City,undefined
[5] Scientific Research Group in Egypt (SRGE),undefined
来源
Journal of Digital Imaging | 2022年 / 35卷
关键词
Ear imagery database; Convolutional neural networks (CNN); Hyperparameters; Bayesian Optimization; Long short-term memory (LSTM);
D O I
暂无
中图分类号
学科分类号
摘要
The external and middle ear conditions are diagnosed using a digital otoscope. The clinical diagnosis of ear conditions is suffered from restricted accuracy due to the increased dependency on otolaryngologist expertise, patient complaint, blurring of the otoscopic images, and complexity of lesions definition. There is a high requirement for improved diagnosis algorithms based on otoscopic image processing. This paper presented an ear diagnosis approach based on a convolutional neural network (CNN) as feature extraction and long short-term memory (LSTM) as a classifier algorithm. However, the suggested LSTM model accuracy may be decreased by the omission of a hyperparameter tuning process. Therefore, Bayesian optimization is used for selecting the hyperparameters to improve the results of the LSTM network to obtain a good classification. This study is based on an ear imagery database that consists of four categories: normal, myringosclerosis, earwax plug, and chronic otitis media (COM). This study used 880 otoscopic images divided into 792 training images and 88 testing images to evaluate the approach performance. In this paper, the evaluation metrics of ear condition classification are based on a percentage of accuracy, sensitivity, specificity, and positive predictive value (PPV). The findings yielded a classification accuracy of 100%, a sensitivity of 100%, a specificity of 100%, and a PPV of 100% for the testing database. Finally, the proposed approach shows how to find the best hyperparameters concerning the Bayesian optimization for reliable diagnosis of ear conditions under the consideration of LSTM architecture. This approach demonstrates that CNN-LSTM has higher performance and lower training time than CNN, which has not been used in previous studies for classifying ear diseases. Consequently, the usefulness and reliability of the proposed approach will create an automatic tool for improving the classification and prediction of various ear pathologies.
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页码:947 / 961
页数:14
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共 83 条
[1]  
Block SL(1998)Spectral gradient acoustic reflectometry for the detection of middle ear effusion by pediatricians and parents Pediatr. Infect. Dis. J. 17 560-564
[2]  
Mandel E(2015)Detecting tympanostomy tubes from otoscopic images via offline and online training Comput Biol Med. 61 107-118
[3]  
Mclinn S(2012)External and middle ear diseases: radiological diagnosis based on clinical signs and symptoms Insights Imaging 3 33-48
[4]  
Pichichero ME(2005)Tumours of the external ear and temporal bone Lancet Oncol 6 411-420
[5]  
Bernstein S(2018)Digital otoscopy versus microscopy: How correct and confident are ear experts in their diagnoses? J. Telemed. Telecare 24 453-459
[6]  
Kimball S(2001)Assessing diagnostic accuracy and tympanocentesis skills in the management of otitis media Arch Pediatr Adolesc Med. 155 1137-1142
[7]  
Kozikowski J(2005)Accuracy of acute otitis media diagnosis in community and hospital settings Acta Paediatr. 94 423-428
[8]  
Wang X(2005)Comparison of performance by otolaryngologists, pediatricians, and general practioners on an otoendoscopic diagnostic video examination Int J Pediatr Otorhinolaryngol. 69 361-366
[9]  
Valdez TA(2014)Otoscopy simulation training in a classroom setting: A novel approach to teaching otoscopy to medical students Laryngoscope 124 2594-2597
[10]  
Bi J(2016)Otitis media diagnosis for developing countries using tympanic membrane image analysis EBioMedicine. 5 156-160