Artificial intelligence to estimate the tear film breakup time and diagnose dry eye disease

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作者
Eisuke Shimizu
Toshiki Ishikawa
Makoto Tanji
Naomichi Agata
Shintaro Nakayama
Yo Nakahara
Ryota Yokoiwa
Shinri Sato
Akiko Hanyuda
Yoko Ogawa
Masatoshi Hirayama
Kazuo Tsubota
Yasunori Sato
Jun Shimazaki
Kazuno Negishi
机构
[1] Keio University School of Medicine,Department of Ophthalmology
[2] OUI Inc.,Department of Preventive Medicine and Public Health, School of Medicine
[3] Yokohama Keiai Eye Clinic,Department of Ophthalmology
[4] Keio University School of Medicine,undefined
[5] Tokyo Dental College Ichikawa General Hospital,undefined
来源
Scientific Reports | / 13卷
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摘要
The use of artificial intelligence (AI) in the diagnosis of dry eye disease (DED) remains limited due to the lack of standardized image formats and analysis models. To overcome these issues, we used the Smart Eye Camera (SEC), a video-recordable slit-lamp device, and collected videos of the anterior segment of the eye. This study aimed to evaluate the accuracy of the AI algorithm in estimating the tear film breakup time and apply this model for the diagnosis of DED according to the Asia Dry Eye Society (ADES) DED diagnostic criteria. Using the retrospectively corrected DED videos of 158 eyes from 79 patients, 22,172 frames were annotated by the DED specialist to label whether or not the frame had breakup. The AI algorithm was developed using the training dataset and machine learning. The DED criteria of the ADES was used to determine the diagnostic performance. The accuracy of tear film breakup time estimation was 0.789 (95% confidence interval (CI) 0.769–0.809), and the area under the receiver operating characteristic curve of this AI model was 0.877 (95% CI 0.861–0.893). The sensitivity and specificity of this AI model for the diagnosis of DED was 0.778 (95% CI 0.572–0.912) and 0.857 (95% CI 0.564–0.866), respectively. We successfully developed a novel AI-based diagnostic model for DED. Our diagnostic model has the potential to enable ophthalmology examination outside hospitals and clinics.
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  • [1] Alshamrani AA(2017)Prevalence and risk factors of dry eye symptoms in a Saudi Arabian population Middle East Afr. J. Ophthalmol. 24 67-73
  • [2] Almousa AS(2003)Prevalence of dry eye among an elderly Chinese population in Taiwan: The Shihpai Eye Study Ophthalmology 110 1096-1101
  • [3] Almulhim AA(2014)Prevalence of dry eye syndrome in an adult population Clin. Exp. Ophthalmol. 42 242-248
  • [4] Lin PY(2011)Prevalence and risk factors of dry eye disease in Japan: Koumi study Ophthalmology 118 2361-2367
  • [5] Tsai SY(2018)Clinically applicable deep learning for diagnosis and referral in retinal disease Nat. Med. 24 1342-1350
  • [6] Cheng CY(2020)Artificial intelligence to detect papilledema from ocular fundus photographs N. Engl. J. Med. 382 1687-1695
  • [7] Liu JH(2020)Predicting conversion to wet age-related macular degeneration using deep learning Nat. Med. 26 892-899
  • [8] Chou P(2017)Development and validation of a deep learning system for diabetic retinopathy and related eye diseases using retinal images from multiethnic populations with diabetes JAMA 318 2211-2223
  • [9] Hsu WM(2020)Author correction: Detection of anaemia from retinal fundus images via deep learning Nat. Biomed. Eng. 4 242-164
  • [10] Hashemi H(2018)Prediction of cardiovascular risk factors from retinal fundus photographs via deep learning Nat. Biomed. Eng. 2 158-342