NOREVA: enhanced normalization and evaluation of time-course and multi-class metabolomic data

Qingxia Yang(Chongqing University), Yunxia Wang(Zhejiang University), Ying Zhang(Zhejiang University), Fengcheng Li(Zhejiang University), Weiqi Xia(Zhejiang University), Ying Zhou(First Affiliated Hospital Zhejiang University), Yunqing Qiu(First Affiliated Hospital Zhejiang University), Honglin Li(East China University of Science and Technology), Feng Zhu(Chongqing University)
Nucleic Acids Research
April 4, 2020
Cited by 187Open Access
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Abstract

Biological processes (like microbial growth & physiological response) are usually dynamic and require the monitoring of metabolic variation at different time-points. Moreover, there is clear shift from case-control (N=2) study to multi-class (N>2) problem in current metabolomics, which is crucial for revealing the mechanisms underlying certain physiological process, disease metastasis, etc. These time-course and multi-class metabolomics have attracted great attention, and data normalization is essential for removing unwanted biological/experimental variations in these studies. However, no tool (including NOREVA 1.0 focusing only on case-control studies) is available for effectively assessing the performance of normalization method on time-course/multi-class metabolomic data. Thus, NOREVA was updated to version 2.0 by (i) realizing normalization and evaluation of both time-course and multi-class metabolomic data, (ii) integrating 144 normalization methods of a recently proposed combination strategy and (iii) identifying the well-performing methods by comprehensively assessing the largest set of normalizations (168 in total, significantly larger than those 24 in NOREVA 1.0). The significance of this update was extensively validated by case studies on benchmark datasets. All in all, NOREVA 2.0 is distinguished for its capability in identifying well-performing normalization method(s) for time-course and multi-class metabolomics, which makes it an indispensable complement to other available tools. NOREVA can be accessed at https://idrblab.org/noreva/.


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