Sheen David A, Shen Vincent K, Brinson Robert G, Arbogast Luke W, Marino John P, Delaglio Frank
Chemical Sciences Division, National Institute of Standards and Technology, Gaithersburg, MD 20899, USA.
Institute for Bioscience and Biotechnology Research, National Institute of Standards and Technology and the University of Maryland, 9600 Gudelsky Drive, Rockville, Maryland 20850 USA.
Chemometr Intell Lab Syst. 2020;199. doi: 10.1016/j.chemolab.2020.103973.
Protein therapeutics are vitally important clinically and commercially, with monoclonal antibody (mAb) therapeutic sales alone accounting for $115 billion in revenue for 2018.[1] In order for these therapeutics to be safe and efficacious, their protein components must maintain their high order structure (HOS), which includes retaining their three-dimensional fold and not forming aggregates. As demonstrated in the recent NISTmAb Interlaboratory nuclear magnetic resonance (NMR) Study[2], NMR spectroscopy is a robust and precise approach to address this HOS measurement need. Using the NISTmAb study data, we benchmark a procedure for automated outlier detection used to identify spectra that are not of sufficient quality for further automated analysis. When applied to a diverse collection of all 252 H,C gHSQC spectra from the study, a recursive version of the automated procedure performed comparably to visual analysis, and identified three outlier cases that were missed by the human analyst. In total, this method represents a distinct advance in chemometric detection of outliers due to variation in both measurement and sample.
蛋白质疗法在临床和商业上都至关重要,仅2018年单克隆抗体(mAb)疗法的销售额就达1150亿美元。[1] 为使这些疗法安全有效,其蛋白质成分必须保持其高级结构(HOS),这包括保持其三维折叠且不形成聚集体。正如最近的美国国家标准与技术研究院单克隆抗体实验室间核磁共振(NMR)研究[2]所表明的,核磁共振光谱法是满足这种高级结构测量需求的一种强大而精确的方法。利用美国国家标准与技术研究院单克隆抗体研究数据,我们对一种用于自动异常值检测的程序进行了基准测试,该程序用于识别质量不足以进行进一步自动分析的光谱。当将该程序应用于该研究中所有252个H、C gHSQC光谱的不同集合时,该自动程序的递归版本与目视分析的效果相当,并识别出了人类分析人员遗漏的三个异常值情况。总体而言,由于测量和样品的变化,该方法在化学计量学异常值检测方面代表了一项显著进展。