Centre for Biotechnology, Siksha O Anusandhan University, Kalinga Nagar, Ghatikia, Bhubaneswar, Odisha, India.
Institute of Dental Sciences, Siksha 'O' Anusandhan University, Bhubaneswar, Odisha, India.
PLoS One. 2023 May 8;18(5):e0283766. doi: 10.1371/journal.pone.0283766. eCollection 2023.
Propolis is a promising natural product that has been extensively researched and studied for its potential health and medical benefits. The lack of requisite high oil-containing propolis and existing variation in the quality and quantity of essential oil within agro-climatic regions pose a problem in the commercialization of essential oil. As a result, the current study was carried out to optimize and estimate the essential oil yield of propolis. The essential oil data of 62 propolis samples from ten agro-climatic areas of Odisha, as well as an investigation of their soil and environmental parameters, were used to construct an artificial neural network (ANN) based prediction model. The influential predictors were determined using Garson's algorithm. To understand how the variables interact and to determine the optimum value of each variable for the greatest response, the response surface curves were plotted. The results revealed that the most suited model was multilayer-feed-forward neural networks with an R2 value of 0.93. According to the model, altitude was found to have a very strong influence on response, followed by phosphorous & maximum average temperature. This research shows that using an ANN-based prediction model with a response surface methodology technique to estimate oil yield at a new site and maximize propolis oil yield at a specific site by adjusting variable parameters is a viable commercial option. To our knowledge, this is the first report on the development of a model to optimize and estimate the essential oil yield of propolis.
蜂胶是一种很有前途的天然产物,因其潜在的健康和医疗益处而被广泛研究。缺乏必要的高含油蜂胶以及农艺气候带内精油的质量和数量存在差异,这给精油的商业化带来了问题。因此,目前进行了这项研究,以优化和估计蜂胶的精油产量。利用来自奥里萨邦十个农艺气候区的 62 个蜂胶样本的精油数据以及对其土壤和环境参数的调查,构建了基于人工神经网络(ANN)的预测模型。使用 Garson 的算法确定了有影响力的预测因子。为了了解变量如何相互作用以及确定每个变量的最佳值以获得最大响应,绘制了响应面曲线。结果表明,最合适的模型是具有 0.93 的 R2 值的多层前馈神经网络。根据该模型,海拔对响应的影响非常大,其次是磷和最高平均温度。这项研究表明,使用基于 ANN 的预测模型和响应面方法技术来估计新地点的油产量,并通过调整变量参数在特定地点最大化蜂胶油产量,是一种可行的商业选择。据我们所知,这是第一个开发优化和估计蜂胶精油产量模型的报告。