10.6084/M9.FIGSHARE.21340477
Qian Zhu
Qian
Zhu
Guangdong Provincial People's Hospital
South China University of Technology
Min Qin
Min
Qin
Guangdong Provincial People's Hospital
South China University of Technology
Zixian Wang
Zixian
Wang
Guangdong Provincial People's Hospital
Yonglin Wu
Yonglin
Wu
Guangdong Provincial People's Hospital
Xiaoping Chen
Xiaoping
Chen
Xiangya Hospital Central South University
Chen Liu
Chen
Liu
First Affiliated Hospital of Sun Yat-sen University
Qilin Ma
Qilin
Ma
Xiangya Hospital Central South University
Yibin Liu
Yibin
Liu
Guangdong Provincial People's Hospital
South China University of Technology
Weihua Lai
Weihua
Lai
Guangdong Provincial People's Hospital
Hui Chen
Hui
Chen
Guangdong Provincial People's Hospital
South China University of Technology
Jingjing Cai
Jingjing
Cai
Wuhan University
Yemao Liu
Yemao
Liu
Wuhan University
Fang Lei
Fang
Lei
Wuhan University
Bin Zhang
Bin
Zhang
Guangdong Provincial People's Hospital
South China University of Technology
Shuyao Zhang
Shuyao
Zhang
Jinan University
Guodong He
Guodong
He
Guangdong Provincial People's Hospital
South China University of Technology
Hanping Li
Hanping
Li
Guangdong Provincial People's Hospital
Mingliang Zhang
Mingliang
Zhang
Hui Zheng
Hui
Zheng
Jiyan Chen
Jiyan
Chen
Guangdong Provincial People's Hospital
Min Huang
Min
Huang
Sun Yat-sen University
Shilong Zhong
Shilong
Zhong
Guangdong Provincial People's Hospital
South China University of Technology
Additional file 2 of Plasma metabolomics provides new insights into the relationship between metabolites and outcomes and left ventricular remodeling of coronary artery disease
Additional file 2. Additional Methods. Fig. S1. The Kaplan–Meier curves of LVEF (A-B) and LVMI (C-D) for risks of death and MACE in the discovery cohort. Fig. S2. Correlation network of metabolic signatures for MACE risk and clinical factors. Fig. S3. Representative total ion flow diagrams between different QC samples under positive ion mode (A) and negative ion mode (B). Fig. S4. The visualization image analysis of the quality improvement procedures for typical features (Kynurenine) in metabolomics data. Fig. S5. Comparison of the cumulative frequency of RSD% of all features in QC samples before and after batch correction by QC-RLSC. Fig. S6. Diagram of Mendelian randomization analysis and mediation analysis.
Biochemistry
Medicine
Cell Biology
Genetics
Molecular Biology
Physiology
Biotechnology
Chemical Sciences not elsewhere classified
Biological Sciences not elsewhere classified
Mathematical Sciences not elsewhere classified
Cancer
Virology
Computational Biology
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2022-10-15
2023-06-30
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