A New Screening Method for COVID-19 based on Ocular Feature Recognition by Machine Learning Tools
Yanwei Fu, Feng Li, Wenxuan Wang, Haicheng Tang, Xuelin Qian, Mengwei, Gu, Xiangyang Xue

TL;DR
This paper proposes a rapid, non-invasive COVID-19 screening method using ocular feature recognition from eye-region images, achieving high accuracy and potentially aiding clinical triage.
Contribution
It introduces a novel machine learning-based screening approach analyzing eye images for COVID-19 detection, leveraging ocular manifestations associated with the disease.
Findings
High sensitivity and specificity in COVID-19 detection
Effective differentiation between COVID-19, pulmonary, ocular, and healthy cases
Potential for rapid, camera-based screening using common devices
Abstract
The Coronavirus disease 2019 (COVID-19) has affected several million people. With the outbreak of the epidemic, many researchers are devoting themselves to the COVID-19 screening system. The standard practices for rapid risk screening of COVID-19 are the CT imaging or RT-PCR (real-time polymerase chain reaction). However, these methods demand professional efforts of the acquisition of CT images and saliva samples, a certain amount of waiting time, and most importantly prohibitive examination fee in some countries. Recently, some literatures have shown that the COVID-19 patients usually accompanied by ocular manifestations consistent with the conjunctivitis, including conjunctival hyperemia, chemosis, epiphora, or increased secretions. After more than four months study, we found that the confirmed cases of COVID-19 present the consistent ocular pathological symbols; and we propose a new…
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Taxonomy
TopicsRetinal and Optic Conditions · Retinal Imaging and Analysis · Ocular Diseases and Behçet’s Syndrome
