Department of Bio-Industrial Mechatronics Engineering, National Chung Hsing University, Taichung 402, Taiwan.
Department of Physics, National Chung Hsing University, Taichung 402, Taiwan.
Sensors (Basel). 2020 Oct 21;20(20):5951. doi: 10.3390/s20205951.
The fertilized egg is an indispensable production platform for making egg-based vaccines. This study was divided into two parts. In the first part, image processing was employed to analyze the absorption spectrum of fertilized eggs; the results show that the 580-nm band had the most significant change. In the second part, a 590-nm-wavelength LED was selected as the light source for the developed detection device. Using this device, sample images (in RGB color space) of the eggs were obtained every day during the experiment. After calculating the grayscale value of the red layer, the receiver operating characteristic curve was used to analyze the daily data to obtain the area under the curve. Subsequently, the best daily grayscale value for classifying unfertilized eggs and dead-in-shell eggs was obtained. Finally, an industrial prototype of the device designed and fabricated in this study was operated and verified. The results show that the accuracy for detecting unfertilized eggs was up to 98% on the seventh day, with the sensitivity and Youden's index being 82% and 0.813, respectively. On the ninth day, both accuracy and sensitivity reached 100%, and Youden's index reached a value of 1, showing good classification ability. Considering the industrial operating conditions, this method was demonstrated to be commercially applicable because, when used to detect unfertilized eggs and dead-in-shell eggs on the ninth day, it could achieve accuracy and sensitivity of 100% at the speed of five eggs per second.
受精卵是制造基于卵的疫苗的不可或缺的生产平台。本研究分为两部分。在第一部分中,使用图像处理分析了受精卵的吸收光谱;结果表明,580nm 波段的变化最为显著。在第二部分中,选择了 590nm 波长的 LED 作为开发的检测装置的光源。使用该装置,在实验过程中每天获取鸡蛋的样本图像(在 RGB 颜色空间中)。在计算红色层的灰度值后,使用接收者操作特征曲线分析每天的数据以获得曲线下面积。随后,获得了最佳的每日灰度值,用于对未受精卵和死壳蛋进行分类。最后,对本研究设计和制造的设备的工业原型进行了操作和验证。结果表明,在第七天检测未受精卵的准确率高达 98%,灵敏度和尤登指数分别为 82%和 0.813。在第九天,准确率和灵敏度均达到 100%,尤登指数达到 1,显示出良好的分类能力。考虑到工业操作条件,该方法被证明具有商业可行性,因为当在第九天用于检测未受精卵和死壳蛋时,它可以以每秒五个鸡蛋的速度实现 100%的准确率和灵敏度。