Artificial intelligence to classify ear disease from otoscopy: A systematic review and meta-analysis

被引:30
作者
Habib, Al-Rahim [1 ,2 ,3 ]
Kajbafzadeh, Majid [1 ]
Hasan, Zubair [3 ]
Wong, Eugene [3 ]
Gunasekera, Hasantha [1 ,4 ]
Perry, Chris [2 ,5 ]
Sacks, Raymond [1 ]
Kumar, Ashnil [6 ]
Singh, Narinder [1 ,3 ]
机构
[1] Univ Sydney, Fac Med & Hlth, Sydney, NSW, Australia
[2] Princess Alexandra Hosp, Dept Otolaryngol Head & Neck Surg, Woolloongabba, Qld, Australia
[3] Westmead Hosp, Dept Otolaryngol Head & Neck Surg, Westmead, NSW, Australia
[4] Childrens Hosp Westmead, Westmead, NSW, Australia
[5] Univ Queensland, Med Sch, Brisbane, Qld, Australia
[6] Univ Sydney, Fac Engn, Sch Biomed Engn, Sydney, NSW, Australia
关键词
artificial intelligence; computer vision; diagnosis; machine learning; otoscopy; TYMPANIC MEMBRANE; DIAGNOSIS; MODEL; CLASSIFICATION; VALIDATION; IMAGES;
D O I
10.1111/coa.13925
中图分类号
R76 [耳鼻咽喉科学];
学科分类号
100213 ;
摘要
Objectives To summarise the accuracy of artificial intelligence (AI) computer vision algorithms to classify ear disease from otoscopy. Design Systematic review and meta-analysis. Methods Using the PRISMA guidelines, nine online databases were searched for articles that used AI computer vision algorithms developed from various methods (convolutional neural networks, artificial neural networks, support vector machines, decision trees and k-nearest neighbours) to classify otoscopic images. Diagnostic classes of interest: normal tympanic membrane, acute otitis media (AOM), otitis media with effusion (OME), chronic otitis media (COM) with or without perforation, cholesteatoma and canal obstruction. Main outcome measures Accuracy to correctly classify otoscopic images compared to otolaryngologists (ground truth). The Quality Assessment of Diagnostic Accuracy Studies Version 2 tool was used to assess the quality of methodology and risk of bias. Results Thirty-nine articles were included. Algorithms achieved 90.7% (95%CI: 90.1-91.3%) accuracy to difference between normal or abnormal otoscopy images in 14 studies. The most common multiclassification algorithm (3 or more diagnostic classes) achieved 97.6% (95%CI: 97.3-97.9%) accuracy to differentiate between normal, AOM and OME in three studies. AI algorithms outperformed human assessors to classify otoscopy images achieving 93.4% (95%CI: 90.5-96.4%) versus 73.2% (95%CI: 67.9-78.5%) accuracy in three studies. Convolutional neural networks achieved the highest accuracy compared to other classification methods. Conclusion AI can classify ear disease from otoscopy. A concerted effort is required to establish a comprehensive and reliable otoscopy database for algorithm training. An AI-supported otoscopy system may assist health care workers, trainees and primary care practitioners with less otology experience identify ear disease.
引用
收藏
页码:401 / 413
页数:13
相关论文
共 49 条
[1]   The reliability of video otoscopy recordings and still images in the asynchronous diagnosis of middle-ear disease [J].
Alenezi, Eman M. A. ;
Jajko, Kathryn ;
Reid, Allison ;
Locatelli-Smith, Alessandra ;
Tao, Karina F. M. ;
Bright, Tess ;
Richmond, Peter C. ;
Eikelboom, Robert H. ;
Brennan-Jones, Christopher G. .
INTERNATIONAL JOURNAL OF AUDIOLOGY, 2022, 61 (11) :917-923
[2]  
[Anonymous], 2011, ISSCS 2011 INT S SIG
[3]   A survey of cross-validation procedures for model selection [J].
Arlot, Sylvain ;
Celisse, Alain .
STATISTICS SURVEYS, 2010, 4 :40-79
[4]   Convolutional neural network approach for automatic tympanic membrane detection and classification [J].
Basaran, Erdal ;
Comert, Zafer ;
Celik, Yuksel .
BIOMEDICAL SIGNAL PROCESSING AND CONTROL, 2020, 56
[5]   Pneumonia of unknown aetiology in Wuhan, China: potential for international spread via commercial air travel [J].
Bogoch, Isaac I. ;
Watts, Alexander ;
Thomas-Bachli, Andrea ;
Huber, Carmen ;
Kraemer, Moritz U. G. ;
Khan, Kamran .
JOURNAL OF TRAVEL MEDICINE, 2020, 27 (02)
[6]   Recognition of paediatric otopathology by General Practitioners [J].
Buchanan, Carolyn M. ;
Pothier, David D. .
INTERNATIONAL JOURNAL OF PEDIATRIC OTORHINOLARYNGOLOGY, 2008, 72 (05) :669-673
[7]   An Assistive Role of a Machine Learning Network in Diagnosis of Middle Ear Diseases [J].
Byun, Hayoung ;
Yu, Sangjoon ;
Oh, Jaehoon ;
Bae, Junwon ;
Yoon, Myeong Seong ;
Lee, Seung Hwan ;
Chung, Jae Ho ;
Kim, Tae Hyun .
JOURNAL OF CLINICAL MEDICINE, 2021, 10 (15)
[8]  
Cai Y., 2021, BMJ OPEN, V11, P1
[9]  
Crowley M., 2019, The Theory Behind Overfitting, Cross Validation, Regularization, Bagging, and Boosting: Tutorial
[10]   Machine Learning for Accurate Intraoperative Pediatric Middle Ear Effusion Diagnosis [J].
Crowson, Matthew G. ;
Hartnick, Christopher J. ;
Diercks, Gillian R. ;
Gallagher, Thomas Q. ;
Fracchia, Mary S. ;
Setlur, Jennifer ;
Cohen, Michael S. .
PEDIATRICS, 2021, 147 (04)