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Pre-treatment of soil X-ray powder diffraction data for cluster analysis

机译:土壤X射线粉末衍射数据的预处理以进行聚类分析

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摘要

X-ray powder diffraction (XRPD) is widely applied for the qualitative and quantitative analysis of soil mineralogy. In recent years, high-throughput XRPD has resulted in soil XRPD datasets containing thousands of samples. The efforts required for conventional approaches of soil XRPD data analysis are currently restrictive for such large data sets, resulting in a need for computational methods that can aid in defining soil property – soil mineralogy relationships. Cluster analysis of soil XRPD data represents a rapid method for grouping data into discrete classes based on mineralogical similarities, and thus allows for sets of mineralogically distinct soils to be defined and investigated in greater detail. Effective cluster analysis requires minimisation of sample-independent variation and maximisation of sample-dependent variation, which entails pre-treatment of XRPD data in order to correct for common aberrations associated with data collection.A 24 factorial design was used to investigate the most effective data pre-treatment protocol for the cluster analysis of XRPD data from 12 African soils, each analysed once by five different personnel. Sample-independent effects of displacement error, noise and signal intensity variation were pre-treated using peak alignment, binning and scaling, respectively. The sample-dependent effect of strongly diffracting minerals overwhelming the signal of weakly diffracting minerals was pre-treated using a square-root transformation. Without pre-treatment, the 60 XRPD measurements failed to provide informative clusters. Pre-treatment via peak alignment, square-root transformation, and scaling each resulted in significantly improved partitioning of the groups (p < 0.05). Data pre-treatment via binning reduced the computational demands of cluster analysis, but did not significantly affect the partitioning (p > 0.1). Applying all four pre-treatments proved to be the most suitable protocol for both non-hierarchical and hierarchical cluster analysis. Deducing such a protocol is considered a prerequisite to the wider application of cluster analysis in exploring soil property – soil mineralogy relationships in larger datasets.
机译:X射线粉末衍射(XRPD)被广泛用于土壤矿物学的定性和定量分析。近年来,高通量XRPD导致土壤XRPD数据集包含数千个样本。传统的土壤XRPD数据分析方法目前需要的工作仅限于如此庞大的数据集,因此需要能够帮助定义土壤特性-土壤矿物学关系的计算方法。土壤XRPD数据的聚类分析代表了一种根据矿物学相似性将数据分为离散类的快速方法,因此可以定义和详细研究矿物学上不同的土壤。有效的聚类分析要求最小化样本无关变异和最大化样本依赖性变异,这需要对XRPD数据进行预处理,以校正与数据收集相关的常见像差。2 4 析因设计用于研究对来自12种非洲土壤的XRPD数据进行聚类分析的最有效数据预处理方案,每种方案均由五名不同人员进行了一次分析。分别使用峰对齐,装仓和缩放来预处理位移误差,噪声和信号强度变化的与样本无关的影响。使用平方根变换预处理了强衍射矿物压倒弱衍射矿物信号的样品依赖性效应。如果不进行预处理,则60个XRPD测量值无法提供有用的信息。通过峰比对,平方根变换和缩放的预处理均显着改善了组的分配(p <0.05)。通过分箱进行的数据预处理减少了聚类分析的计算需求,但并未显着影响分区(p> 0.1)。事实证明,对非分层和聚类分析均采用四种预处理方法是最合适的协议。推论出这样的协议被认为是在更大的数据集中探索土壤性质-土壤矿物学关系的聚类分析更广泛应用的前提。

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