McDonald Matthew A, Koscher Brent A, Canty Richard B, Jensen Klavs F
Department of Chemical Engineering, Massachusetts Institute of Technology Cambridge Massachusetts 02139 USA
Chem Sci. 2024 May 29;15(26):10092-10100. doi: 10.1039/d4sc01881h. eCollection 2024 Jul 3.
Reaction optimization and characterization depend on reliable measures of reaction yield, often measured by high-performance liquid chromatography (HPLC). Peak areas in HPLC chromatograms are correlated to analyte concentrations by way of calibration standards, typically pure samples of known concentration. Preparing the pure material required for calibration runs can be tedious for low-yielding reactions and technically challenging at small reaction scales. Herein, we present a method to quantify the yield of reactions by HPLC without needing to isolate the product(s) by combining a machine learning model for molar extinction coefficient estimation, and both UV-vis absorption and mass spectra. We demonstrate the method for a variety of reactions important in medicinal and process chemistry, including amide couplings, palladium catalyzed cross-couplings, nucleophilic aromatic substitutions, aminations, and heterocycle syntheses. The reactions were all performed using an automated synthesis and isolation platform. Calibration-free methods such as the presented approach are necessary for such automated platforms to be able to discover, characterize, and optimize reactions automatically.
反应优化和表征依赖于可靠的反应产率测量方法,通常通过高效液相色谱(HPLC)进行测量。HPLC色谱图中的峰面积通过校准标准品(通常是已知浓度的纯样品)与分析物浓度相关联。对于低产率反应,制备校准运行所需的纯物质可能很繁琐,而在小反应规模下技术上具有挑战性。在此,我们提出了一种通过HPLC定量反应产率的方法,无需分离产物,该方法结合了用于摩尔消光系数估计的机器学习模型以及紫外可见吸收光谱和质谱。我们展示了该方法在药物化学和过程化学中各种重要反应中的应用,包括酰胺偶联、钯催化的交叉偶联、亲核芳香取代、胺化反应和杂环合成。所有反应均使用自动化合成和分离平台进行。对于此类自动化平台能够自动发现、表征和优化反应而言,像本文所提出的这种无需校准的方法是必要的。