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Open-source python module for automated preprocessing of near infrared spectroscopic data

机译:开源Python模块,用于近红外光谱数据的自动预处理

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Near infrared spectroscopy (NIRS) is an analytical technique for determining the chemical composition or structure of a given sample. For several decades, NIRS has been a frequently used analysis tool in agriculture, pharmacology, medicine, and petrochemistry. The popularity of NIRS is constantly growing as new application areas are discovered. Contrary to mid infrared spectral region, the absorption bands in near infrared spectral region are often non-specific, broad, and overlapping. Analysis of NIR spectra requires multivariate methods which are highly subjective to noise arising from instrumentation, scattering effects, and measurement setup. NIRS measurements are also frequently performed outside of a laboratory which further contributes to the presence of noise. Therefore, preprocessing is a critical step in NIRS as it can vastly improve the performance of multivariate models. While extensive research regarding various preprocessing methods exists, selection of the best preprocessing method is often determined through trial-and-error. A more powerful approach for optimizing preprocessing in NIRS models would be to automatically compare a large number of preprocessing techniques (e.g., through grid-search or hyperparameter tuning). To enable this, we present, nippy, an open-source Python module for semi-automatic comparison of NIRS preprocessing methods (available at https://githup.com/uef-bbc/nippy). We provide here a brief overview of the capabilities of nippy and demonstrate the typical usage through two examples with public datasets. (C) 2020 Elsevier B.V. All rights reserved.
机译:近红外光谱(NIRS)是用于确定给定样品的化学成分或结构的分析技术。几十年来,NIRS是农业,药理学,医学和石化的常用分析工具。由于发现新的应用领域,NIRS的普及不断发展。与中红外光谱区域相反,近红外光谱区域中的吸收带通常是非特异性的,宽的和重叠的。 NIR光谱的分析需要多变量方法,这些方法是由仪表,散射效应和测量设置产生的高度主观噪声。在实验室之外还经常在实验室之外进行NIRS测量,该实验室进一步有助于噪声的存在。因此,预处理是NIRS的关键步骤,因为它可以大大提高多变量模型的性能。虽然存在关于各种预处理方法的广泛研究,但是通过试验和错误通常确定最佳预处理方法的选择。一种更强大的方法,用于在NIRS模型中优化预处理的预处理是可以自动比较大量预处理技术(例如,通过网格搜索或HyperParameter调整)。要启用此功能,我们呈现,Nippy是一个开源python模块,用于网德预处理方法的半自动比较(在https://githup.com/uef-bbc/nippy中提供)。我们在此提供了Nippy功能的简要概述,并通过两个示例用公共数据集演示了典型用途。 (c)2020 Elsevier B.V.保留所有权利。

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