Detection and diagnosis of bacterial pathogens in urine using laser-induced breakdown spectroscopy

IF 3.2 2区 化学 Q1 SPECTROSCOPY
E.J. Blanchette , E.A. Tracey , A. Baughan , G.E. Johnson , H. Malik , C.N. Alionte , I.G. Arthur , M.E.S. Pontoni , S.J. Rehse
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引用次数: 0

Abstract

The presence of bacterial cells from three species has been detected in clinical specimens of human urine using laser-induced breakdown spectroscopy (LIBS) by using a partial least squares discriminant analysis (PLS-DA) of 360 spectra obtained from 12 specimens of infected urine and 239 spectra obtained from eight specimens of sterile urine. Nominally sterile urine specimens obtained from four patients at a local hospital after being screened negative for the presence of bacterial pathogens were spiked with known aliquots of Escherichia coli, Staphylococcus aureus, and Enterobacter cloacae to simulate clinical urinary tract infections. Fifteen emission line intensities measured from the LIBS spectra and 92 ratios of those line intensities were used as 107 independent variables in the PLS-DA for discrimination between bacteria-containing specimens and sterile specimens. The PLS-DA models possessed a 98.3% sensitivity and a 97.9% specificity for the detection of pathogenic cells in urine when single-shot LIBS spectra were tested. To increase the signal to noise ratio, thirty spectra acquired from a single specimen were also averaged together and the averaged spectra were used to construct a model. When each averaged spectrum was withheld from the model individually for testing, the diagnostic test possessed a 100% sensitivity and a 100% specificity for the detection of bacterial cells in urine, although the number of test spectra was necessarily reduced.

The entire LIBS spectrum from 200 nm – 590 nm was input into an artificial neural network analysis with principal component analysis pre-processing (PCA-ANN) to diagnose the bacterial species once detected. This PCA-ANN test possessed an overall sensitivity of 97.2%, an overall specificity of 98.6%, and an overall classification accuracy of 97.9% when using 80% of the data to build a model and withholding 20% for cross-validation testing. The PCA-ANN was also performed on each of the 12 bacteria-containing filters individually, using the other 11 filters to build the model. The average sensitivity of this test, calculated by averaging the sensitivities measured for each of the three bacterial species, was 70.9% and the average specificity was 85.5%. Based on these results, the average classification accuracy for the test when used to discriminate between the three microorganisms was 80.6%. These results indicate the potential usefulness of LIBS for rapidly detecting and possibly diagnosing urinary tract infections in a clinical setting.

Abstract Image

Abstract Image

利用激光诱导击穿光谱检测和诊断尿液中的细菌病原体
利用激光诱导击穿光谱法(LIBS)对从 12 份感染尿液标本中获得的 360 个光谱和从 8 份无菌尿液标本中获得的 239 个光谱进行偏最小二乘判别分析(PLS-DA),检测出临床人体尿液标本中存在三种细菌细胞。从当地一家医院的四名病人身上采集的标称无菌的尿液标本经细菌病原体筛查为阴性,在标本中添加了已知的大肠杆菌、金黄色葡萄球菌和泄殖腔肠杆菌的等分试样,以模拟临床尿路感染。在 PLS-DA 中,从 LIBS 光谱中测得的 15 条发射线强度和这些发射线强度的 92 个比率被用作 107 个自变量,用于区分含菌标本和无菌标本。在检测尿液中的病原细胞时,PLS-DA 模型的灵敏度为 98.3%,特异度为 97.9%。为了提高信噪比,还将从单个样本中获取的 30 个光谱平均到一起,并利用平均光谱构建模型。将 200 nm - 590 nm 的整个 LIBS 光谱输入经过主成分分析预处理的人工神经网络分析(PCA-ANN),以诊断检测到的细菌种类。当使用 80% 的数据建立模型并预留 20% 的数据进行交叉验证测试时,该 PCA-ANN 测试的总体灵敏度为 97.2%,总体特异度为 98.6%,总体分类准确率为 97.9%。PCA-ANN 还对 12 个含菌滤波器中的每个滤波器单独进行了测试,并使用其他 11 个滤波器来建立模型。该测试的平均灵敏度为 70.9%,平均特异度为 85.5%。根据这些结果,该测试用于区分三种微生物的平均分类准确率为 80.6%。这些结果表明,LIBS 可用于在临床环境中快速检测和诊断尿路感染。
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来源期刊
CiteScore
6.10
自引率
12.10%
发文量
173
审稿时长
81 days
期刊介绍: Spectrochimica Acta Part B: Atomic Spectroscopy, is intended for the rapid publication of both original work and reviews in the following fields: Atomic Emission (AES), Atomic Absorption (AAS) and Atomic Fluorescence (AFS) spectroscopy; Mass Spectrometry (MS) for inorganic analysis covering Spark Source (SS-MS), Inductively Coupled Plasma (ICP-MS), Glow Discharge (GD-MS), and Secondary Ion Mass Spectrometry (SIMS). Laser induced atomic spectroscopy for inorganic analysis, including non-linear optical laser spectroscopy, covering Laser Enhanced Ionization (LEI), Laser Induced Fluorescence (LIF), Resonance Ionization Spectroscopy (RIS) and Resonance Ionization Mass Spectrometry (RIMS); Laser Induced Breakdown Spectroscopy (LIBS); Cavity Ringdown Spectroscopy (CRDS), Laser Ablation Inductively Coupled Plasma Atomic Emission Spectroscopy (LA-ICP-AES) and Laser Ablation Inductively Coupled Plasma Mass Spectrometry (LA-ICP-MS). X-ray spectrometry, X-ray Optics and Microanalysis, including X-ray fluorescence spectrometry (XRF) and related techniques, in particular Total-reflection X-ray Fluorescence Spectrometry (TXRF), and Synchrotron Radiation-excited Total reflection XRF (SR-TXRF). Manuscripts dealing with (i) fundamentals, (ii) methodology development, (iii)instrumentation, and (iv) applications, can be submitted for publication.
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