Department of Computer Science and Engineering, RV Institute of Technology and Management, Bengaluru, Karnataka, India.
Department of Computer Science and Engineering, JAIN (Deemed-to-be University), Bengaluru, Karnataka, India.
Sci Rep. 2024 Feb 14;14(1):3741. doi: 10.1038/s41598-024-54465-3.
Inadequate conservation of medicinal plants can affect their productivity. Traditional assessments and strategies are often time-consuming and linked with errors. Utilizing herbs has been an integral part of the traditional system of medicine for centuries. However, its sustainability and conservation are critical due to climate change, over-harvesting and habitat loss. The study reveals how machine learning algorithms, geographic information systems (GIS) being a powerful tool for mapping and spatial analysis, and soil information can contribute to a swift decision-making approach for actual forethought and intensify the productivity of vulnerable curative plants of specific regions to promote drug discovery. The data analysis based on machine learning and data mining techniques over the soil, medicinal plants and GIS information can predict quick and effective results on a map to nurture the growth of the herbs. The work incorporates the construction of a novel dataset by using the quantum geographic information system tool and recommends the vulnerable herbs by implementing different supervised algorithms such as extra tree classifier (EXTC), random forest, bagging classifier, extreme gradient boosting and k nearest neighbor. Two unique approaches suggested for the user by using EXTC, firstly, for a given subregion type, its suitable soil classes and secondly, for soil type from the user, its respective subregion labels are revealed, finally, potential medicinal herbs and their conservation status are visualised using the choropleth map for classified soil/subregion. The research concludes on EXTC as it showcases outstanding performance for both soil and subregion classifications compared to other models, with an accuracy rate of 99.01% and 98.76%, respectively. The approach focuses on serving as a comprehensive and swift reference for the general public, bioscience researchers, and conservationists interested in conserving medicinal herbs based on soil availability or specific regions through maps.
药用植物保护不足会影响其生产力。传统的评估和策略通常耗时且容易出错。几个世纪以来,利用草药一直是传统医学体系的重要组成部分。然而,由于气候变化、过度采挖和栖息地丧失,其可持续性和保护至关重要。这项研究揭示了机器学习算法、地理信息系统(GIS)作为制图和空间分析的强大工具,以及土壤信息如何有助于快速决策方法,提前考虑并提高特定地区脆弱治疗植物的生产力,以促进药物发现。基于机器学习和数据挖掘技术对土壤、药用植物和 GIS 信息进行数据分析,可以在地图上快速有效地预测结果,促进草药的生长。这项工作通过使用量子地理信息系统工具构建了一个新的数据集,并通过实施不同的监督算法,如极端梯度提升(XGBoost)、随机森林、袋式分类器、极端梯度提升和 K 最近邻,推荐脆弱的草药。EXTC 为用户提供了两种独特的方法,首先,对于给定的子区域类型,建议其合适的土壤类别;其次,对于用户提供的土壤类型,建议其各自的子区域标签。最后,使用专题地图可视化潜在的药用植物及其保护状况,对分类后的土壤/子区域进行分类。研究得出结论,EXTC 优于其他模型,在土壤和子区域分类方面表现出色,准确率分别为 99.01%和 98.76%。该方法侧重于为普通大众、生物科学研究人员和保护主义者提供一个全面而快速的参考,他们有兴趣根据土壤可用性或特定区域通过地图来保护药用植物。