Literature DB >> 34035389

Efficient and accurate identification of ear diseases using an ensemble deep learning model.

Xinyu Zeng1, Zifan Jiang2, Wen Luo3, Honggui Li4, Hongye Li5, Guo Li6, Jingyong Shi1, Kangjie Wu1, Tong Liu1, Xing Lin1, Fusen Wang7, Zhenzhang Li8.   

Abstract

Early detection and appropriate medical treatment are of great use for ear disease. However, a new diagnostic strategy is necessary for the absence of experts and relatively low diagnostic accuracy, in which deep learning plays an important role. This paper puts forward a mechanic learning model which uses abundant otoscope image data gained in clinical cases to achieve an automatic diagnosis of ear diseases in real time. A total of 20,542 endoscopic images were employed to train nine common deep convolution neural networks. According to the characteristics of the eardrum and external auditory canal, eight kinds of ear diseases were classified, involving the majority of ear diseases, such as normal, Cholestestoma of the middle ear, Chronic suppurative otitis media, External auditory cana bleeding, Impacted cerumen, Otomycosis external, Secretory otitis media, Tympanic membrane calcification. After we evaluate these optimization schemes, two best performance models are selected to combine the ensemble classifiers with real-time automatic classification. Based on accuracy and training time, we choose a transferring learning model based on DensNet-BC169 and DensNet-BC1615, getting a result that each model has obvious improvement by using these two ensemble classifiers, and has an average accuracy of 95.59%. Considering the dependence of classifier performance on data size in transfer learning, we evaluate the high accuracy of the current model that can be attributed to large databases. Current studies are unparalleled regarding disease diversity and diagnostic precision. The real-time classifier trains the data under different acquisition conditions, which is suitable for real cases. According to this study, in the clinical case, the deep learning model is of great use in the early detection and remedy of ear diseases.

Entities:  

Year:  2021        PMID: 34035389     DOI: 10.1038/s41598-021-90345-w

Source DB:  PubMed          Journal:  Sci Rep        ISSN: 2045-2322            Impact factor:   4.379


  4 in total

1.  Automated classification of otitis media with OCT: augmenting pediatric image datasets with gold-standard animal model data.

Authors:  Guillermo L Monroy; Jungeun Won; Jindou Shi; Malcolm C Hill; Ryan G Porter; Michael A Novak; Wenzhou Hong; Pawjai Khampang; Joseph E Kerschner; Darold R Spillman; Stephen A Boppart
Journal:  Biomed Opt Express       Date:  2022-05-26       Impact factor: 3.562

2.  Smartphone-based artificial intelligence using a transfer learning algorithm for the detection and diagnosis of middle ear diseases: A retrospective deep learning study.

Authors:  Yen-Chi Chen; Yuan-Chia Chu; Chii-Yuan Huang; Yen-Ting Lee; Wen-Ya Lee; Chien-Yeh Hsu; Albert C Yang; Wen-Huei Liao; Yen-Fu Cheng
Journal:  EClinicalMedicine       Date:  2022-07-12

3.  Color Dependence Analysis in a CNN-Based Computer-Aided Diagnosis System for Middle and External Ear Diseases.

Authors:  Michelle Viscaino; Matias Talamilla; Juan Cristóbal Maass; Pablo Henríquez; Paul H Délano; Cecilia Auat Cheein; Fernando Auat Cheein
Journal:  Diagnostics (Basel)       Date:  2022-04-07

4.  Automated multi-class classification for prediction of tympanic membrane changes with deep learning models.

Authors:  Yeonjoo Choi; Jihye Chae; Keunwoo Park; Jaehee Hur; Jihoon Kweon; Joong Ho Ahn
Journal:  PLoS One       Date:  2022-10-10       Impact factor: 3.752

  4 in total

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