基于MedWGAN模型的葡萄膜炎病理合成数据集生成

IF 0.4 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS
Heithem Sliman, I. Megdiche, Sami Yangui, Aida Drira, Ines Drira, E. Lamine
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引用次数: 0

摘要

人工智能(AI)近年来在医学领域,特别是在决策支持诊断方面取得了长足的发展。然而,这种算法的发展依赖于足够大的数据量来提供可靠的结果。不幸的是,在医学上,不可能总是提供所有病理的如此多的数据。这个问题在罕见疾病中尤为明显。葡萄膜炎是一种罕见的眼科疾病,是世界上致盲的第三大原因。这种病理很难诊断,因为其病因的患病率存在差异。为了给医生提供一个诊断辅助系统,有必要拥有一个在这一领域已经研究了很长时间的具有代表性的流行病学概况数据集。这项工作提出了一个突破,提出了一个基于几种流行病学概况交叉和使用数据增强技术生成开源数据集的方法框架。这些合成数据的结果已由眼科专科医生进行了定性验证。我们的结果非常有希望,并且是推动人工智能在葡萄膜炎疾病研究中的第一块砖。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Synthetic Dataset Generation for the Uveitis Pathology Based on MedWGAN Model
Artificial Intelligence (AI) has undergone considerable development in recent years in the field of medicine and in particular in decision support diagnostic. However, the development of such algorithms depends on the presence of a sufficiently large amount of data to provide reliable results. Unfortunately in medicine, it is not always possible to provide so much data on all pathologies. This problem is particularly true for rare diseases. In this paper we focus on uveitis, a rare disease in ophthalmology which is the third cause of blindness worldwide. This pathology is difficult to diagnose because of the disparity in prevalence of its etiologies. In order to provide physicians with a diagnostic aid system, it would be necessary to have a representative dataset of epidemiological profiles that have been studied for a long time in this domain. This work proposes a breakthrough in this field by suggesting a methodological framework for the generation of an open source dataset based on the crossing of several epidemiological profiles and using data augmentation techniques. The results of these generated synthetic data have been qualitatively validated by specialist physicians in ophthalmology. Our results are very promising and consist in a first brick to promote research in AI on Uveitis disease.
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来源期刊
Applied Computing Review
Applied Computing Review COMPUTER SCIENCE, INFORMATION SYSTEMS-
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