论文标题
护理点糖尿病性视网膜病变诊断:独立的移动应用方法
Point-of-Care Diabetic Retinopathy Diagnosis: A Standalone Mobile Application Approach
论文作者
论文摘要
尽管在过去的十年中,深度学习研究和应用迅速发展,但它显示出医疗保健应用的限制及其对偏远地区人的可达性。将深度学习纳入医学数据分类或预测中的挑战之一是医疗保健行业注释的培训数据的短缺。医疗数据共享隐私问题和有限的患者人群可以说是培训医疗保健数据不足的某些原因。在本文中,已经提出并实施了利用医疗保健深度学习应用程序的方法。 糖尿病性视网膜病的传统诊断需要训练有素的眼科医生和昂贵的成像设备才能到达医疗保健中心,以便为治疗可预防失明的设施提供设施。居住在医疗服务不足的偏远地区的糖尿病患者和眼科医生通常无法定期诊断糖尿病性视网膜病变,从而面临视力丧失或障碍的可能性。深度学习和移动应用程序的开发已集成到本文中,以提供易于使用的基于护理智能手机的糖尿病性视网膜病变的诊断。为了解决缺乏医疗保健中心和训练有素的眼科医生的挑战,建立了独立的诊断服务,以便由没有互联网连接的非专家经营。该方法可以转移到医学图像分类的其他领域。
Although deep learning research and applications have grown rapidly over the past decade, it has shown limitation in healthcare applications and its reachability to people in remote areas. One of the challenges of incorporating deep learning in medical data classification or prediction is the shortage of annotated training data in the healthcare industry. Medical data sharing privacy issues and limited patient population size can be stated as some of the reasons for training data insufficiency in healthcare. Methods to exploit deep learning applications in healthcare have been proposed and implemented in this dissertation. Traditional diagnosis of diabetic retinopathy requires trained ophthalmologists and expensive imaging equipment to reach healthcare centres in order to provide facilities for treatment of preventable blindness. Diabetic people residing in remote areas with shortage of healthcare services and ophthalmologists usually fail to get periodical diagnosis of diabetic retinopathy thereby facing the probability of vision loss or impairment. Deep learning and mobile application development have been integrated in this dissertation to provide an easy to use point-of-care smartphone based diagnosis of diabetic retinopathy. In order to solve the challenge of shortage of healthcare centres and trained ophthalmologists, the standalone diagnostic service was built so as to be operated by a non-expert without an internet connection. This approach could be transferred to other areas of medical image classification.