Department of Chemistry and Biochemistry, The University of Texas at Austin, Austin, Texas 78712, USA.
J Am Chem Soc. 2009 Sep 16;131(36):13125-31. doi: 10.1021/ja904545d.
A pattern-based recognition approach for the rapid determination of the identity, concentration, and enantiomeric excess of chiral vicinal diols, specifically threo diols, has been developed. A diverse enantioselective sensor array was generated using three chiral boronic acid receptors and three pH indicators. The optical response produced by the sensor array was analyzed by two pattern-recognition algorithms: principal component analysis and artificial neural networks. Principal component analysis demonstrated good chemoselective and enantioselective separation of the analytes, and an artificial neural network was used to accurately determine the concentrations and enantiomeric excesses of five unknown samples with an average absolute error of +/-0.08 mM in concentration and 3.6% in enantiomeric excess. The speed of the analysis was enhanced by using a 96-well plate format, portending applications in high-throughput screening for asymmetric-catalyst discovery. X-ray crystallography and (11)B NMR spectroscopy was utilized to study the enantioselective nature of the boronic acid host 2.
已开发出一种基于模式识别的方法,可快速确定手性顺式二醇(特别是苏型二醇)的身份、浓度和对映过量。使用三种手性硼酸受体和三种 pH 指示剂生成了多样化的对映选择性传感器阵列。通过两种模式识别算法:主成分分析和人工神经网络分析传感器阵列的光学响应。主成分分析显示出对分析物的良好化学选择性和对映选择性分离,并且人工神经网络用于准确测定五个未知样品的浓度和对映过量,平均浓度的绝对误差为 +/-0.08 mM,对映过量的误差为 3.6%。通过使用 96 孔板格式提高了分析速度,预示着在高通量筛选不对称催化剂发现方面的应用。X 射线晶体学和 (11)B NMR 光谱学用于研究硼酸主体 2 的对映选择性。