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Calorimetry-Derived Composition Vectors to Resolve Component Raman Spectra in Phospholipid Phase Transitions

机译:量热法得出的成分向量可解决磷脂相变中的拉曼光谱

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Multidimensional least squares analysis is a well-established technique for resolving component vibrational spectra from mixed samples or systems. Component resolution of temperature-dependent vibrational spectra is challenging, however, due to the lack of a suitable model for the variation in sample composition with temperature. In this work, analysis of temperature-dependent Raman spectra of lipid membranes is accomplished by using concentration vectors independently derived from enthalpy changes determined by differential scanning calorimetry. Specifically, the lipid-bilayer phase transitions of DMPC (1,2-dipalmitoyl-sn-glycero-3-phosphocholine) are investigated through Raman spectra acquired from individual, optically trapped vesicles in suspension as a function of temperature. Heat capacity profiles of the same vesicle suspension are measured using differential scanning calorimetry and numerically integrated to generate enthalpy change curves of each phase transition, which are in turn used to construct composition vectors. Multidimensional least squares analysis optimized for a fit to these composition vectors allows resolution of the component spectra corresponding to gel, ripple, and liquid-crystalline phases of the DMPC. The quality of fit of the calorimetry-derived results is confirmed by unstructured residual differences between the data and the model, and a composition variation predicted by the resolved spectra that matches the calorimetry results. This approach to analysis of temperature-dependent spectral data could be readily applied in other areas of materials characterization, where one is seeking to learn about structural changes that occur through temperature-dependent phase transitions.
机译:多维最小二乘分析是一种成熟的技术,用于解决来自混合样本或系统的组件振动谱。然而,由于缺乏适用于样品组成随温度变化的模型,因此依赖于温度的振动光谱的组分分辨率具有挑战性。在这项工作中,通过使用独立于衍生自差示扫描量热法确定的焓变的浓度矢量来完成脂膜的温度依赖性拉曼光谱分析。具体而言,通过从悬浮液中各个被光学捕获的囊泡中获得的拉曼光谱(随温度变化)研究了DMPC(1,2-二棕榈酰-sn-甘油-3-磷酸胆碱)的脂质双层相变。使用差示扫描量热法测量相同囊泡悬浮液的热容曲线,并对其进行数值积分以生成每个相变的焓变曲线,进而将其用于构建成分载体。为适合这些成分向量而优化的多维最小二乘法分析允许解析与DMPC的凝胶,波纹和液晶相相对应的组分光谱。量热法得出的结果的拟合质量由数据和模型之间的非结构化残差以及由与量热法结果匹配的解析光谱预测的成分变化所证实。这种对温度相关的光谱数据进行分析的方法可以很容易地应用于材料表征的其他领域,在该领域中,人们正在寻求了解通过温度相关的相变而发生的结构变化。

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