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利用红外光谱分析人工神经网络对尿结石成分的预测。

Artificial neural network predictions of urinary calculus compositions analyzed with infrared spectroscopy.

作者信息

Volmer M, Wolthers B G, Metting H J, de Haan T H, Coenegracht P M, van der Slik W

机构信息

Central Laboratory for Clinical Chemistry, University Hospital Groningen, The Netherlands.

出版信息

Clin Chem. 1994 Sep;40(9):1692-7.

PMID:8070077
Abstract

Infrared (IR) spectroscopy is used to analyze urinary calculus (renal stone) constituents. However, interpretation of IR spectra for quantifying urinary calculus constituents in mixtures is difficult, requiring expert knowledge by trained technicians. In our laboratory IR spectra of unknown calculi are compared with references spectra in a computerized library search of 235 reference spectra from various mixtures of constituents in different proportions, followed by visual interpretation of band intensities for more precise semiquantitative determination of the composition. To minimize the need for this last step, we tested artificial neural network models for detecting the most frequently occurring compositions of urinary calculi. Using constrained mixture designs, we prepared various samples containing ammonium hydrogen urate, brushite, carbonate apatite, cystine, struvite, uric acid, weddellite, and whewellite for use as a training set. We assayed known artificial mixtures as well as selected patients' samples from which the semiquantitative compositions were determined by computerized library search followed by visual interpretation. Neural network analysis was more accurate than the library search and required less expert knowledge because careful visual inspection of the band intensities could be omitted. We conclude that neural networks are promising tools for routine quantification of urinary calculus compositions and for other related types of analyses in the clinical laboratory.

摘要

红外(IR)光谱法用于分析尿结石(肾结石)的成分。然而,解释用于量化混合物中尿结石成分的红外光谱是困难的,需要经过培训的技术人员具备专业知识。在我们实验室中,未知结石的红外光谱与计算机化库中的参考光谱进行比较,该库中有来自不同比例成分的各种混合物的235个参考光谱,随后通过目视解释谱带强度以更精确地半定量测定成分。为了尽量减少最后这一步的需求,我们测试了用于检测最常见尿结石成分的人工神经网络模型。使用受限混合物设计,我们制备了各种含有尿酸氢铵、透钙磷石、碳酸磷灰石、胱氨酸、鸟粪石、尿酸、草酸钙二水合物和草酸钙一水合物的样品用作训练集。我们分析了已知的人工混合物以及从患者中选取的样品,这些样品的半定量成分通过计算机化库搜索然后目视解释来确定。神经网络分析比库搜索更准确,并且需要的专业知识更少,因为可以省略对谱带强度的仔细目视检查。我们得出结论,神经网络是临床实验室中用于尿结石成分常规定量分析以及其他相关类型分析的有前途的工具。

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