Nissenken Quality Evaluation Center, Taito-ku, Tokyo, Japan.
Department of Pharmaceutical Microbiology, Faculty of Life Sciences, Kumamoto University, Chuo-ku, Kumamoto, Japan.
Electrophoresis. 2022 Jun;43(11):1233-1241. doi: 10.1002/elps.202200002. Epub 2022 Apr 20.
The accurate identification of animal species used for fur is important for conserving endangered animals, stopping illegal fur distribution, and addressing consumer concerns. Animal species used for fur are currently differentiated by observing species-specific morphological fur-hair features through a microscope. Although this method is simple, the results may differ among inspectors owing to its subjective nature. To develop an objective approach for differentiating animal species based on fur, we utilized the electrophoretic patterns of fur-hair proteins. First, we optimized protein extraction methods to produce clear electrophoretic patterns from fur-hair proteins. Then, we obtained 324 electrophoretic patterns from 54 fur samples belonging to 24 different animals; 216 of the 324 patterns were used for the construction of a discrimination model using two-way orthogonal partial least squares discriminant analysis. The model correctly discriminated between all the remaining 108 patterns without any false negatives or positives. Moreover, this model could discriminate between fur samples from closely related species that are difficult to distinguish using conventional microscopic identification because of the visual similarity of the fur hairs.
准确识别用于毛皮的动物物种对于保护濒危动物、阻止非法毛皮分销以及解决消费者的担忧至关重要。目前,通过在显微镜下观察特定物种的形态学毛皮毛发特征来区分用于毛皮的动物物种。尽管这种方法很简单,但由于其主观性,结果可能因检验员而异。为了基于毛皮开发一种区分动物物种的客观方法,我们利用了毛皮毛发蛋白质的电泳模式。首先,我们优化了蛋白质提取方法,以从毛皮毛发蛋白质中产生清晰的电泳模式。然后,我们从属于 24 个不同动物的 54 个毛皮样本中获得了 324 个电泳模式;其中 216 个模式用于使用双向正交偏最小二乘判别分析构建判别模型。该模型正确地区分了所有其余的 108 个模式,没有任何假阴性或阳性。此外,该模型还可以区分来自密切相关的物种的毛皮样本,这些样本由于毛皮毛发的视觉相似性,使用传统的显微镜鉴定很难区分。