使用卷积神经网络的圆锥角膜检测算法:挑战

A. Lavric, V. Popa, Cristina David, Cristian Costel Paval
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引用次数: 11

摘要

在过去的几年里,我们见证了图像处理算法的发展,这些算法与神经网络和人工智能(A.I.)一起,使它们能够在各种医学领域得到应用。更安全、更快速的诊断有很大的潜力,这通常意味着挽救更多的生命。利用机器视觉类型的最新机器视觉技术以及神经网络,开发适合圆锥角膜诊断的新机制是非常必要的。这篇科学论文的主要贡献在于分析和研究了在眼科领域中使用神经网络的重要性,以及在圆锥角膜检测中神经元算法的表示。检测算法需要帮助眼科医生通过促进早期圆锥角膜的正确诊断,从而帮助圆锥角膜的有效长期治疗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Keratoconus Detection Algorithm using Convolutional Neural Networks: Challenges
Over the last few years, we are witnessing a development of image processing algorithms, which, alongside neuronal networks and Artificial Intelligence (A.I.) allowed their application in various medical fields. There is a great potential in having a safer, faster diagnosis, which oftentimes means saving more lives. The development of new mechanisms tailored to diagnosing keratoconus which make use of the latest machine vision technologies of a machine vision type as well as neuronal networks is of utmost necessity. The main contribution of this scientific paper lies in its analysis and study dealing with the importance of using neural networks within the field of ophthalmology, as well as in the representation of the neuronal algorithm when it comes to the detection of keratoconus. The detection algorithm needs to help the ophthalmologist by facilitating the correct diagnosis of early keratoconus, thus helping with the effective long-term management of keratoconus.
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