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      Automated Segmentation of Optical Coherence Tomography Images of the Human Tympanic Membrane Using Deep Learning

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          Abstract

          Optical Coherence Tomography (OCT) is a light-based imaging modality that is used widely in the diagnosis and management of eye disease, and it is starting to become used to evaluate for ear disease. However, manual image analysis to interpret the anatomical and pathological findings in the images it provides is complicated and time-consuming. To streamline data analysis and image processing, we applied a machine learning algorithm to identify and segment the key anatomical structure of interest for medical diagnostics, the tympanic membrane. Using 3D volumes of the human tympanic membrane, we used thresholding and contour finding to locate a series of objects. We then applied TensorFlow deep learning algorithms to identify the tympanic membrane within the objects using a convolutional neural network. Finally, we reconstructed the 3D volume to selectively display the tympanic membrane. The algorithm was able to correctly identify the tympanic membrane properly with an accuracy of ~98% while removing most of the artifacts within the images, caused by reflections and signal saturations. Thus, the algorithm significantly improved visualization of the tympanic membrane, which was our primary objective. Machine learning approaches, such as this one, will be critical to allowing OCT medical imaging to become a convenient and viable diagnostic tool within the field of otolaryngology.

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          A survey on Image Data Augmentation for Deep Learning

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            Otitis media

            Otitis media (OM) or middle ear inflammation is a spectrum of diseases, including acute otitis media (AOM), otitis media with effusion (OME; ‘glue ear’) and chronic suppurative otitis media (CSOM). OM is among the most common diseases in young children worldwide. Although OM may resolve spontaneously without complications, it can be associated with hearing loss and life-long sequelae. In developing countries, CSOM is a leading cause of hearing loss. OM can be of bacterial or viral origin; during ‘colds’, viruses can ascend through the Eustachian tube to the middle ear and pave the way for bacterial otopathogens that reside in the nasopharynx. Diagnosis depends on typical signs and symptoms, such as acute ear pain and bulging of the tympanic membrane (eardrum) for AOM and hearing loss for OME; diagnostic modalities include (pneumatic) otoscopy, tympanometry and audiometry. Symptomatic management of ear pain and fever is the mainstay of AOM treatment, reserving antibiotics for children with severe, persistent or recurrent infections. Management of OME largely consists of watchful waiting, with ventilation (tympanostomy) tubes primarily for children with chronic effusions and hearing loss, developmental delays or learning difficulties. The role of hearing aids to alleviate symptoms of hearing loss in the management of OME needs further study. Insertion of ventilation tubes and adenoidectomy are common operations for recurrent AOM to prevent recurrences, but their effectiveness is still debated. Despite reports of a decline in the incidence of OM over the past decade, attributed to the implementation of clinical guidelines that promote accurate diagnosis and judicious use of antibiotics and to pneumococcal conjugate vaccination, OM continues to be a leading cause for medical consultation, antibiotic prescription and surgery in high-income countries. Supplementary information The online version of this article (doi:10.1038/nrdp.2016.63) contains supplementary material, which is available to authorized users.
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              Artificial Intelligence-based methods in head and neck cancer diagnosis: an overview

              Background This paper reviews recent literature employing Artificial Intelligence/Machine Learning (AI/ML) methods for diagnostic evaluation of head and neck cancers (HNC) using automated image analysis. Methods Electronic database searches using MEDLINE via OVID, EMBASE and Google Scholar were conducted to retrieve articles using AI/ML for diagnostic evaluation of HNC (2009–2020). No restrictions were placed on the AI/ML method or imaging modality used. Results In total, 32 articles were identified. HNC sites included oral cavity ( n  = 16), nasopharynx ( n  = 3), oropharynx ( n  = 3), larynx ( n  = 2), salivary glands ( n  = 2), sinonasal ( n  = 1) and in five studies multiple sites were studied. Imaging modalities included histological ( n  = 9), radiological ( n  = 8), hyperspectral ( n  = 6), endoscopic/clinical ( n  = 5), infrared thermal ( n  = 1) and optical ( n  = 1). Clinicopathologic/genomic data were used in two studies. Traditional ML methods were employed in 22 studies (69%), deep learning (DL) in eight studies (25%) and a combination of these methods in two studies (6%). Conclusions There is an increasing volume of studies exploring the role of AI/ML to aid HNC detection using a range of imaging modalities. These methods can achieve high degrees of accuracy that can exceed the abilities of human judgement in making data predictions. Large-scale multi-centric prospective studies are required to aid deployment into clinical practice.
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                Author and article information

                Journal
                101508612
                36569
                Algorithms
                Algorithms
                Algorithms
                1999-4893
                28 January 2024
                September 2023
                17 September 2023
                05 August 2024
                : 16
                : 9
                : 445
                Affiliations
                [1 ]Department of Electrical and Computer Engineering, University of Wisconsin-Madison, Madison, WI 53706, USA
                [2 ]Caruso Department of Otolaryngology-Head and Neck Surgery, University of Southern California, Los Angeles, CA 90033, USA
                Author notes

                Author Contributions: Conceptualization, T.P.O. and J.S.O.; methodology, T.P.O.; software, T.P.O.; writing—original draft preparation, T.P.O.; writing—review and editing, T.P.O., R.L., W.K., B.E.A. and J.S.O.; visualization, R.L. and W.K.; funding acquisition, J.S.O. and B.E.A. All authors have read and agreed to the published version of the manuscript.

                [* ] Correspondence: oghalai@ 123456usc.edu
                Author information
                http://orcid.org/0000-0003-4241-6189
                Article
                NIHMS1962563
                10.3390/a16090445
                11299891
                39104565
                e117f42a-0d30-49bc-a7ad-bf9779e520f0

                This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license ( https://creativecommons.org/licenses/by/4.0/).

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                deep learning algorithm,tympanic membrane,tensorflow,optical coherence tomography,convolutional neural network

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