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The squared distance approach to frequency domain time-resolved fluorescence analysis

机译:平方距离频域时分辨荧光分析

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A frequency-domain (FD) analysis of fluorescence lifetime (FLT) is a unique and rapid method for cellular and intracellular classifications that can serve for medical diagnostics purposes. Nevertheless, its data analysis process demands nonlinear fitting algorithms that may distort the resolution of the FLT data and hence diminish the classification ability of the method. This research suggests a sample classification technique that is unaffected by the analysis process as it is based on the squared distance (D-2) between the raw frequency response data (FRD). In addition, it presents the theory behind this technique and its validation in two simulated data sets of six groups with similar widely and closely spaced FLT data as well as in experimental data of 43 samples from bacterial and viral infected and non-infected patients. In the two simulated tests, the classification accuracy was above 95% for all six groups. In the experimental data, the classification of 41 out of 43 samples matched earlier report and 29 out of 31 agreed with preliminary physician diagnosis. The D-2 approach has the potential to promote FD-time resolved fluorescence measurements as a medical diagnostic technique with high specifity and high sensitivity for many of today's conventional diagnostic procedures.
机译:荧光寿命(FLT)的频率域(FD)分析是用于细胞和细胞内分类的独特且快速的方法,可用于医疗诊断目的。然而,其数据分析过程需要可能扭曲FLT数据的分辨率的非线性拟合算法,因此减少了方法的分类能力。该研究表明,样品分类技术,其不受分析过程的影响,因为它基于原始频率响应数据(FRD)之间的平方距离(D-2)。此外,它介绍了这种技术背后的理论及其在两个模拟数据组中的验证,其六组具有类似广泛且密切地间隔的FLT数据以及来自细菌和病毒感染和无感染患者的43个样本的实验数据。在两个模拟测试中,所有六组的分类准确度高于95%。在实验数据中,43个样品中的41个分类符合前面的报告和31人,其中29个与初步医生诊断同意。 D-2方法有可能促进FD-TIME已解决的荧光测量作为具有高规格和高灵敏度的医学诊断技术,对于今天的许多传统诊断程序。

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