从智能手机拍摄的结膜图像中筛选贫血症的机器学习方法。

Sherif H.Elgohary, Ahmed Osama Ismail, Zeiad Ayman Mohamed, Ahmed Gamal Elmahdy, Omar Ayman Mohamed, Mostafa Ibraheem Basheer
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引用次数: 0

摘要

贫血是第三世界国家最常见的健康问题之一。据世界卫生组织(世卫组织)称,近四分之一的人口患有贫血症。血红蛋白显示的贫血患病率在埃及超过三分之一的学龄前儿童中发现。与贫血相关的症状使他们更容易生病和感染。结合当前世界疫情形势;进入医疗设施是非常困难的,因为它们可能容易受到任何疾病的影响,更不用说目前标准的侵入性方法的高成本和危险。该论文旨在提供一种远程、非侵入性的标准化方法,可以使用智能手机和人工智能技术快速筛查检测血红蛋白水平。捕获眼睛图像,并自动从图像中提取眼结膜作为感兴趣区域(ROI)。然后对ROI进行处理,并从中提取特征来训练机器学习算法,以确定患者是否贫血。该模型在200名受试者中运行,准确率为85%,精密度为86%,召回率为81%。
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A Machine Learning Method to Screen Anemia From Conjunctiva Images Taken by Smartphone.
Anemia is one of the most common health issues in third world countries. According to the World Health Organization (WHO), nearly a quarter of the human population suffers from anemia. The prevalence of anemia as indicated by hemoglobin was found among more than a third of preschool children in Egypt. Symptoms associated with anemia make them more at risk of illness and infection. With the world′s current situation due to the pandemic; it’s very difficult to get access to medical facilities since they could be vulnerable to any diseases, not to mention the high costs and dangers of invasive methods, which are the current standard. The paper aims to provide a remote, non-invasive standardized approach that enables a quick screening to detect hemoglobin levels using smartphones and AI techniques. The image of the eye is captured and the eye conjunctiva is automatically extracted from the image as a Region of Interest (ROI). The ROI is then processed and features are extracted from it to train a machine-learning algorithm to determine if the patient is anemic or not. The model was run over 200 subjects and reached an accuracy of 85%, precision of 86%, and recall of 81%.
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