Nadimi Mohammad, Divyanth L G, Chaudhry Muhammad Mudassir Arif, Singh Taranveer, Loewen Georgia, Paliwal Jitendra
Department of Biosystems Engineering, University of Manitoba, Winnipeg, MB R3T 5V6, Canada.
Center for Precision and Automated Agricultural Systems, Washington State University, Prosser, WA 99350, USA.
Foods. 2023 Dec 29;13(1):120. doi: 10.3390/foods13010120.
The high demand for flax as a nutritious edible oil source combined with increasingly restrictive import regulations for oilseeds mandates the exploration of novel quantity and quality assessment methods. One pervasive issue that compromises the viability of flaxseeds is the mechanical damage to the seeds during harvest and post-harvest handling. Currently, mechanical damage in flax is assessed via visual inspection, a time-consuming, subjective, and insufficiently precise process. This study explores the potential of hyperspectral imaging (HSI) combined with chemometrics as a novel, rapid, and non-destructive method to characterize mechanical damage in flaxseeds and assess how mechanical stresses impact the germination of seeds. Flaxseed samples at three different moisture contents (MCs) (6%, 8%, and 11.5%) were subjected to four levels of mechanical stresses (0 mJ (i.e., control), 2 mJ, 4 mJ, and 6 mJ), followed by germination tests. Herein, we acquired hyperspectral images across visible to near-infrared (Vis-NIR) (450-1100 nm) and short-wave infrared (SWIR) (1000-2500 nm) ranges and used principal component analysis (PCA) for data exploration. Subsequently, mean spectra from the samples were used to develop partial least squares-discriminant analysis (PLS-DA) models utilizing key wavelengths to classify flaxseeds based on the extent of mechanical damage. The models developed using Vis-NIR and SWIR wavelengths demonstrated promising performance, achieving precision and recall rates >85% and overall accuracies of 90.70% and 93.18%, respectively. Partial least squares regression (PLSR) models were developed to predict germinability, resulting in R-values of 0.78 and 0.82 for Vis-NIR and SWIR ranges, respectively. The study showed that HSI could be a potential alternative to conventional methods for fast, non-destructive, and reliable assessment of mechanical damage in flaxseeds.
亚麻作为一种营养食用油来源的高需求,再加上对油籽进口规定日益严格,这就要求探索新的数量和质量评估方法。一个影响亚麻籽活力的普遍问题是在收获和收获后处理过程中种子受到机械损伤。目前,亚麻籽的机械损伤是通过目视检查来评估的,这是一个耗时、主观且不够精确的过程。本研究探索了高光谱成像(HSI)结合化学计量学作为一种新颖、快速且无损的方法来表征亚麻籽中的机械损伤,并评估机械应力如何影响种子的发芽。对三种不同水分含量(MCs)(6%、8%和11.5%)的亚麻籽样品施加四种水平的机械应力(0毫焦(即对照)、2毫焦、4毫焦和6毫焦),随后进行发芽试验。在此,我们获取了可见光至近红外(Vis-NIR)(450 - 1100纳米)和短波红外(SWIR)(1000 - 2500纳米)范围内的高光谱图像,并使用主成分分析(PCA)进行数据探索。随后,利用样品的平均光谱开发偏最小二乘判别分析(PLS-DA)模型,利用关键波长根据机械损伤程度对亚麻籽进行分类。使用Vis-NIR和SWIR波长开发的模型表现出良好的性能,精度和召回率均>85%,总体准确率分别为90.70%和93.18%。开发了偏最小二乘回归(PLSR)模型来预测发芽能力,Vis-NIR和SWIR范围的R值分别为0.78和0.82。该研究表明,高光谱成像可以成为传统方法的一种潜在替代方法,用于快速、无损且可靠地评估亚麻籽中的机械损伤。