Use of Artificial Intelligence for Mass Screening of Diabetic Retinopathy in civilian Ukrainians during the full-scaled war
Вантажиться...
Дата
ORCID
DOI
Науковий ступінь
Рівень дисертації
Шифр та назва спеціальності
Рада захисту
Установа захисту
Науковий керівник
Члени комітету
Назва журналу
Номер ISSN
Назва тому
Видавець
Анотація
PURPOSE
To create a patient-centric environment for early detection of DR with AI-driven solutions and increase the percent accuracy over 90% for mass screening of diabetic retinopathy in civilian Ukrainians during the full-scaled war.
SETTING / VENUE
SI"The Filatov Institute of Eye Diseases ans Tissue Therapy of the NAMS of Ukraine", Odesa, Ukraine
Check Eye LLC, Kyiv, Ukraine
Ukrainian Diabetic Federation, Kyiv, Ukraine
METHODS
The first stage – learning of the neural network. MedTech startup CheckEye has partnered with the Filatov Institute to conducted training of our proprietary neural network. There were used 12,000 color fundus images to train it to determine the stages and severity of DR.
The second stage is the screening of patients including internally displaced people from Eastern and Northen regions of Ukraine with diabetes mellitus using the cloud storage with artificial intelligence platform in Chernivtsi region (Western part of Ukraine). People visited screening point in outpatient department or mobile screening point (equipped bus) to take a fundus photograph. Photos were taken by trained non-medical or junior staff using a standard non-mydriatic fundus camera.
The platform analyzed photographs of the patient's eye fundus, making diagnosis of DR in few seconds. Quality control was performed by an expert group of ophthalmologists from the The Filatov Institute.
RESULTS
341 patients (682 eyes) with diabetes including internally displaced people were examined in October-December 2022. 111 patients (157 eyes) were determined the presence of DR for the first time. We achieved 92% accuracy in detecting DR and 82% accuracy in detection DR’s stage with AI-driven solution during the screening of a fundus which is better than average for humans doctors due to our comparisons.
CONCLUSIONS
There was created software environment for early detection of DR according to using solutions based on artificial intelligence. Our patient-centric environment is useful for mass screening of diabetic retinopathy in civilian Ukrainians including internally displaced people during the full-scaled war. Also it may cut shortage of healthcare by use of mobile screening point and acceleration of direction of patient to retina specialist if really needed.
Опис
Ключові слова
Бібліографічний опис
Korol Andrii, Ocheretenko Valentyna, Goncharuk Kyrylo, Nevska Alla, Kustryn Taras, Pasyechnikova Nataliya. Use of Artificial Intelligence for Mass Screening of Diabetic Retinopathy in civilian Ukrainians during the full-scaled war. EURETINA Congress 2023 Amsterdam Abstracts, https://euretina.softr.app