Early detection of glaucoma integrated with deep learning models over medical devices

IF 2 4区 生物学 Q2 BIOLOGY
DilipKumar Jang Bahadur Saini , Siddhartha Choubey , Abha Choubey , Mariyam Kidwai , Monica Mehrotra , Sagar Kolekar , Yudhishthir Raut
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Abstract

The early detection of some diseases can be a decisive factor in postponing or stabilizing their most adverse effects on the people who suffer from them. In the case of glaucoma, which is an ocular pathology that is the second leading cause of blindness in the world, early detection can make the difference between a patient’s complete losses of vision, or preserve their sight, as well as improve their subsequent treatment. It is for this reason that there are currently medical campaigns for the early detection of pathologies with these characteristics in a certain study population, called screening, which have shown very good results. In addition, the application of telemedicine to these processes has allowed remote evaluation of cases by clinical experts and numerous initiatives have emerged for its use in new screening strategies. On the other hand, biomedical image processing techniques based on deep learning have undergone great development in recent years, and there are several works that have demonstrated their possible application in the automatic detection of glaucoma with fundus images. The article has consisted of the development of a web platform that integrates both scenarios: on the one hand, the remote evaluation of fundus images by medical specialists, and on the other, the application of a tool based on Deep Learning for the automatic detection of glaucoma in the case studies.

在医疗设备上集成深度学习模型的青光眼早期检测。
某些疾病的早期发现对于推迟或稳定这些疾病对患者造成的最不利影响具有决定性的作用。青光眼是一种眼部病变,是世界上第二大致盲眼病,早期发现青光眼可以使患者完全丧失视力或保留视力,并改善后续治疗。正因为如此,目前在一定的研究人群中开展了早期发现具有这些特征的病症的医疗活动,即筛查,并取得了很好的效果。此外,远程医疗在这些过程中的应用使得临床专家可以对病例进行远程评估,并出现了许多将其用于新筛查策略的倡议。另一方面,基于深度学习的生物医学图像处理技术近年来也有了长足的发展,有几项研究表明,这些技术可以应用于眼底图像的青光眼自动检测。这篇文章包括开发一个网络平台,该平台整合了两种应用场景:一方面,由医学专家对眼底图像进行远程评估;另一方面,在案例研究中应用基于深度学习的工具自动检测青光眼。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Biosystems
Biosystems 生物-生物学
CiteScore
3.70
自引率
18.80%
发文量
129
审稿时长
34 days
期刊介绍: BioSystems encourages experimental, computational, and theoretical articles that link biology, evolutionary thinking, and the information processing sciences. The link areas form a circle that encompasses the fundamental nature of biological information processing, computational modeling of complex biological systems, evolutionary models of computation, the application of biological principles to the design of novel computing systems, and the use of biomolecular materials to synthesize artificial systems that capture essential principles of natural biological information processing.
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