Sing Dilip, Banerjee Subhadip, Jana Shibu Narayan, Mallik Ranajoy, Dastidar Sudarshana Ghosh, Majumdar Kalyan, Bandyopadhyay Amitabha, Bandyopadhyay Rajib, Mukherjee Pulok K
Department of Instrumentation and Electronics Engineering, Jadavpur University, Salt Lake Campus, Kolkata, India.
School of Natural Product Studies, Jadavpur University, Kolkata, India.
Front Pharmacol. 2021 May 6;12:629833. doi: 10.3389/fphar.2021.629833. eCollection 2021.
(Burm. F) Nees, has been widely used for upper respiratory tract and several other diseases and general immunity for a historically long time in countries like India, China, Thailand, Japan, and Malaysia. The vegetative productivity and quality with respect to pharmaceutical properties of varies considerably across production, ecologies, and genotypes. Thus, a field deployable instrument, which can quickly assess the quality of the plant material with minimal processing, would be of great use to the medicinal plant industry by reducing waste, and quality grading and assurance. In this paper, the potential of near infrared reflectance spectroscopy (NIR) was to estimate the major group active molecules, the andrographolides in , from dried leaf samples and leaf methanol extracts and grade the plant samples from different sources. The calibration model was developed first on the NIR spectra obtained from the methanol extracts of the samples as a proof of concept and then the raw ground samples were estimated for gradation. To grade the samples into three classes: good, medium and poor, a model based on a machine learning algorithm - support vector machine (SVM) on NIR spectra was built. The tenfold classification results of the model had an accuracy of 83% using standard normal variate (SNV) preprocessing.
(缅甸文:F)内斯,在印度、中国、泰国、日本和马来西亚等国家,长期以来一直被广泛用于治疗上呼吸道疾病和其他几种疾病以及增强总体免疫力。穿心莲在不同产地、生态环境和基因型下,其营养生产力和药用特性质量差异很大。因此,一种可在田间部署的仪器,能够以最少的加工快速评估植物材料的质量,通过减少浪费以及进行质量分级和保证,将对药用植物产业非常有用。在本文中,近红外反射光谱(NIR)的潜力在于从干燥叶片样品和叶片甲醇提取物中估计穿心莲中的主要活性分子穿心莲内酯,并对不同来源的植物样品进行分级。首先,以从样品甲醇提取物获得的近红外光谱建立校准模型作为概念验证,然后对原始磨碎样品进行分级估计。为了将样品分为三类:优、中、差,基于机器学习算法——近红外光谱上的支持向量机(SVM)构建了一个模型。使用标准正态变量(SNV)预处理,该模型的十倍交叉分类结果准确率为83%。