Artificial intelligence use in diabetes

D. Pelayes, Josephine A. Mendoza, A. Folgar
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Abstract

Diabetic retinopathy (DR) affects the small vessels of the eye and is the leading cause of blindness in people on reproductive age; however, less than half of patients are aware of their condition; therefore, early detection and treatment is essential to combat it. There are currently multiple technologies for DR detection, some of which are already commercially available. To understand how these technologies work, we must know first some basic concepts about artificial intelligence (AI) such as machine learning (ML) and deep learning (DL). ML is the basic process by which AI incorporates new data using different algorithms and thus creates new knowledge on its base, learns from it, and makes determinations and predictions on some subject based on all that information. AI can be presented at various levels. DL is a specific type of ML, which trains a computer to perform tasks as humans do, such as speech recognition, image identification, or making predictions. DL has shown promising diagnostic performance in image recognition, being widely adopted in many domains, including medicine. For general image analysis, it has achieved strong results in various medical specialties such as radiology dermatology and in particular for ophthalmology. We will review how this technology is constantly evolving which are the available systems and their task in real world as well as the several challenges, such as medicolegal implications, ethics, and clinical deployment model needed to accelerate the translation of these new algorithms technologies into the global health-care environment.
人工智能在糖尿病中的应用
糖尿病视网膜病变(DR)影响眼睛的小血管,是育龄人群失明的主要原因;然而,不到一半的患者意识到自己的病情;因此,早期发现和治疗对抗击疟疾至关重要。目前有多种DR检测技术,其中一些已经商业化。为了理解这些技术是如何工作的,我们必须首先了解一些关于人工智能(AI)的基本概念,如机器学习(ML)和深度学习(DL)。ML是AI使用不同算法合并新数据的基本过程,从而在其基础上创造新知识,从中学习,并根据所有这些信息对某些主题做出决定和预测。人工智能可以在不同的层次上呈现。深度学习是一种特定类型的机器学习,它训练计算机像人类一样执行任务,比如语音识别、图像识别或做出预测。深度学习在图像识别方面表现出了良好的诊断性能,被广泛应用于包括医学在内的许多领域。对于一般的图像分析,它已经在各种医学专业,如放射学,皮肤科,特别是眼科取得了强有力的成果。我们将回顾这项技术是如何不断发展的,哪些是可用的系统及其在现实世界中的任务,以及一些挑战,如医学法律影响、伦理和加速将这些新算法技术转化为全球卫生保健环境所需的临床部署模型。
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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