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Application of the Laguerre Deconvolution Method for Time-Resolved Fluorescence Spectroscopy to the Characterization of Atherosclerotic Plaques

机译:时间分辨荧光光谱的拉盖尔反褶积方法在动脉粥样硬化斑块表征中的应用

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This study investigates the ability of time-resolved laser-induced fluorescence spectroscopy (TR-LIFS) to detect inflammation in atherosclerotic lesion, a key feature of plaque vulnerability. A total of 348 TR-LIFS measurements were taken from carotid plaques of 30 patients, and subsequently analyzed using the Laguerre deconvolution technique. The investigated spots were classified as early, fibrotic/calcified or inflamed lesions. A stepwise linear discriminant analysis algorithm was developed using spectral and TR features (normalized intensity values and Laguerre expansion coefficients at discrete emission wavelengths, respectively). Features from only three emission wavelengths (390, 450 and 500 nm) were used in the classifier. The inflamed lesions were discriminated with sensitivity 80% and specificity 90 %, when the Laguerre expansion coefficients were included in the feature space. These results indicate that TR-LIFS information derived from the Laguerre expansion coefficients at few selected emission wavelengths can discriminate inflammation in atherosclerotic plaques. We believe that TR-LIFS derived Laguerre expansion coefficients can provide a valuable additional dimension for the detection of vulnerable plaques
机译:这项研究调查了时间分辨激光诱导荧光光谱(TR-LIFS)检测动脉粥样硬化病变(斑块易损性的关键特征)中炎症的能力。从30例患者的颈动脉斑块中总共进行了348次TR-LIFS测量,随后使用Laguerre解卷积技术进行了分析。被调查的斑点被分类为早期,纤维化/钙化或发炎的病变。使用光谱和TR特征(分别在离散发射波长处的归一化强度值和Laguerre膨胀系数)开发了逐步线性判别分析算法。分类器仅使用来自三个发射波长(390、450和500 nm)的特征。当在特征空间中包括Laguerre膨胀系数时,以> 80%的特异性和> 90%的特异性来区分发炎的病变。这些结果表明,在几个选定的发射波长处,从Laguerre膨胀系数得出的TR-LIFS信息可以区分动脉粥样硬化斑块中的炎症。我们认为,TR-LIFS得出的Laguerre膨胀系数可以为检测易损斑块提供有价值的附加维度

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