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Chemometric outlier classification of 2D-NMR spectra to enable higher order structure characterization of protein therapeutics

机译:2D-NMR光谱的化学计量异常分类,以实现蛋白质治疗剂的较高阶结构表征

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摘要

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-1, C-13 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.
机译:蛋白质治疗剂在临床上和商业上是最重要的,单克隆抗体(MAB)治疗性销售单独占2018年的1150亿美元。[1]为了使这些治疗方法是安全和有效的,它们的蛋白质组分必须保持其高阶结构(HOS),其包括保持其三维折叠而不是形成聚集体。如最近的Nistmab核磁共振(NMR)研究[2]所示,NMR光谱是一种强大而精确的方法来解决这种HOS测量需求。使用NISTMAB研究数据,我们基准用于自动化异常检测的过程,用于识别对进一步自动化分析的质量不足的光谱。当从研究中应用到所有252小时的C-13 GHSQC谱的各种收集时,与视觉分析相当执行的自动化程序的递归版本,并确定了人类分析师错过的三个异常值案件。总共,由于测量和样品的变化,该方法表示化学计量率检测的明显进展。

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