论文标题
parafac2 $ \ times $ n:多模式数据的耦合分解,在n模式下漂移
PARAFAC2$\times$N: Coupled Decomposition of Multi-modal Data with Drift in N Modes
论文作者
论文摘要
对综合二维气相色谱法的可靠分析 - 飞行时间质谱(GC $ \ times $ GC-TOFMS)数据被认为是其广泛应用的主要瓶颈。对于多个样本,特定色谱区域的GC $ \ times $ GC-TOFMS数据表现为I质谱采集,J质量通道,K调制和L样品的第四阶张量。色谱漂移沿着一维(调制)和二维(质谱采集)都是常见的,而沿着质量通道和样本维度的漂移则是所有实际目的的不存在的。已经提出了许多处理GC $ \ times $ GC-TOFMS数据的解决方案:这些解决方案涉及重塑数据,以使其适用于基于多元曲线分辨率(MCR)或第三阶分解技术的第二阶分解技术,或者是平行因子分析(例如PARAFAFAC2)。 PARAFAC2已用于沿一种模式建模色谱漂移,这使其能够用于多种GC-MS实验的强大分解。尽管可扩展,但实现沿多种模式漂移的Parafac2模型并不直接。在此提交中,我们演示了一种新的方法和一种通用理论,用于模拟沿多个模式漂移的数据,用于在具有多变量检测的多维色谱法中应用。
Reliable analysis of comprehensive two-dimensional gas chromatography - time-of-flight mass spectrometry (GC$\times$GC-TOFMS) data is considered to be a major bottleneck for its widespread application. For multiple samples, GC$\times$GC-TOFMS data for specific chromatographic regions manifests as a 4th order tensor of I mass spectral acquisitions, J mass channels, K modulations, and L samples. Chromatographic drift is common along both the first-dimension (modulations), and along the second-dimension (mass spectral acquisitions), while drift along the mass channel and sample dimensions is for all practical purposes nonexistent. A number of solutions to handling GC$\times$GC-TOFMS data have been proposed: these involve reshaping the data to make it amenable to either 2nd order decomposition techniques based on Multivariate Curve Resolution (MCR), or 3rd order decomposition techniques such as Parallel Factor Analysis 2 (PARAFAC2). PARAFAC2 has been utilised to model chromatographic drift along one mode, which has enabled its use for robust decomposition of multiple GC-MS experiments. Although extensible, it is not straightforward to implement a PARAFAC2 model that accounts for drift along multiple modes. In this submission, we demonstrate a new approach and a general theory for modelling data with drift along multiple modes, for applications in multidimensional chromatography with multivariate detection.