Pharmaceutical Data Exploration Laboratory, Department of Pharmacy, National University of Singapore, Blk S4, 18 Science Drive 4, 117543, Singapore.
Analyst. 2011 Aug 7;136(15):3130-5. doi: 10.1039/c0an00778a. Epub 2011 Jun 20.
Baseline correction is one of the pre-processing steps in the analysis of metabolite signals from chemometric analytical instruments. Fully automated baseline correction techniques, although more convenient to use, tend to be less accurate than semi-automated baseline correction. A fully automated baseline correction algorithm, the automated iterative moving averaging algorithm (AIMA), is presented and compared with three recently introduced semi-automated algorithms, namely the adaptive iteratively reweighted penalized least squares (airPLS), Asymmetric Least Squares baseline correction (ALS) and a parametric method, using NMR, Raman and HPLC chromatograms. AIMA's potential in increasing the accuracy of multivariate analysis via SELTI-TOF and LCMS chromatograms was also assessed. The results show that the AIMA's accuracy is comparable to these semi-automated algorithms and has the advantage of ease of use. An AIMA plug-in for an open source metabolomics analysis tool, MZmine, was also developed. The AIMA plug-in is available at http://padel.nus.edu.sg/software/padelaima.
基线校正(Baseline correction)是化学计量分析仪器中代谢物信号分析的预处理步骤之一。全自动化的基线校正技术虽然使用起来更加方便,但准确性往往不如半自动化的基线校正技术。本文提出了一种全自动化的基线校正算法,即自动迭代移动平均算法(AIMA),并将其与三种最近引入的半自动化算法,即自适应迭代重加权惩罚最小二乘法(airPLS)、不对称最小二乘法基线校正(ALS)和一种参数方法进行了比较,该方法使用了 NMR、拉曼和 HPLC 色谱图。还评估了 AIMA 通过 SELTI-TOF 和 LCMS 色谱图提高多元分析准确性的潜力。结果表明,AIMA 的准确性可与这些半自动化算法相媲美,并且具有易于使用的优势。还为一个开源代谢组学分析工具 MZmine 开发了 AIMA 插件。AIMA 插件可在 http://padel.nus.edu.sg/software/padelaima 上获得。