Haas Christian P, Lübbesmeyer Maximilian, Jin Edward H, McDonald Matthew A, Koscher Brent A, Guimond Nicolas, Di Rocco Laura, Kayser Henning, Leweke Samuel, Niedenführ Sebastian, Nicholls Rachel, Greeves Emily, Barber David M, Hillenbrand Julius, Volpin Giulio, Jensen Klavs F
Department of Chemical Engineering, Massachusetts Institute of Technology, 77 Massachusetts Avenue, Cambridge, Massachusetts 02139, United States.
Research and Development, Small Molecules Technologies, Bayer AG, Crop Science Division, Industriepark Höchst, 65926 Frankfurt am Main, Germany.
ACS Cent Sci. 2023 Feb 9;9(2):307-317. doi: 10.1021/acscentsci.2c01042. eCollection 2023 Feb 22.
Automation and digitalization solutions in the field of small molecule synthesis face new challenges for chemical reaction analysis, especially in the field of high-performance liquid chromatography (HPLC). Chromatographic data remains locked in vendors' hardware and software components, limiting their potential in automated workflows and data science applications. In this work, we present an open-source Python project called MOCCA for the analysis of HPLC-DAD (photodiode array detector) raw data. MOCCA provides a comprehensive set of data analysis features, including an automated peak deconvolution routine of known signals, even if overlapped with signals of unexpected impurities or side products. We highlight the broad applicability of MOCCA in four studies: (i) a simulation study to validate MOCCA's data analysis features; (ii) a reaction kinetics study on a Knoevenagel condensation reaction demonstrating MOCCA's peak deconvolution feature; (iii) a closed-loop optimization study for the alkylation of 2-pyridone without human control during data analysis; (iv) a well plate screening of categorical reaction parameters for a novel palladium-catalyzed cyanation of aryl halides employing -protected cyanohydrins. By publishing MOCCA as a Python package with this work, we envision an open-source community project for chromatographic data analysis with the potential of further advancing its scope and capabilities.
小分子合成领域的自动化和数字化解决方案在化学反应分析上面临新挑战,尤其是在高效液相色谱(HPLC)领域。色谱数据仍被锁定在供应商的硬件和软件组件中,限制了其在自动化工作流程和数据科学应用中的潜力。在这项工作中,我们展示了一个名为MOCCA的开源Python项目,用于分析HPLC - DAD(光电二极管阵列检测器)原始数据。MOCCA提供了一套全面的数据分析功能,包括已知信号的自动峰去卷积程序,即使这些信号与意外杂质或副产物的信号重叠。我们在四项研究中突出了MOCCA的广泛适用性:(i)一项模拟研究以验证MOCCA的数据分析功能;(ii)一项关于Knoevenagel缩合反应的反应动力学研究,展示了MOCCA的峰去卷积功能;(iii)一项在数据分析过程中无需人工控制的2 - 吡啶酮烷基化闭环优化研究;(iv)一项使用 - 保护的氰醇对新型钯催化芳基卤化物氰化反应的分类反应参数的微孔板筛选。通过将MOCCA作为Python包与这项工作一起发布,我们设想了一个用于色谱数据分析的开源社区项目,有进一步扩大其范围和能力的潜力。