This paper investigates the effectiveness of an expert system based on K-nearest neighbors algorithm for laser speckle image sampling applied to the early detection of diabetes. With the latest developments in artificial intelligent guided laser speckle imaging technologies, it may be possible to optimise laser parameters, such as wavelength, energy level and image texture measures in association with a suitable AI technique to interact effectively with the subcellular properties of a skin tissue to detect early signs of diabetes. The new approach is potentially more effective than the classical skin glucose level observation because of its optimised combination of laser physics and AI techniques, and additionally, it allows non-expert individuals to perform more frequent skin tissue tests for an early detection of diabetes.
翻译:本文探讨基于K型近邻激光光谱图像取样算法的专家系统的有效性,该算法适用于糖尿病的早期检测,随着人工智能制导激光光谱成像技术的最新发展,有可能优化激光参数,如波长、能量水平和图像纹理措施,同时采用适当的人工智能技术,与皮肤组织子细胞特性有效互动,以发现糖尿病的早期征兆,新的方法可能比古典皮肤葡萄糖水平观测法更为有效,因为它优化地结合了激光物理学和人工智能成像技术,此外,它允许非专家个人进行更频繁的皮肤组织测试,以便及早检测糖尿病。