Systems signatures reveal unique remission-path of Type 2 diabetes following Roux-en-Y gastric bypass surgery

Publikation: Bidrag til tidsskriftTidsskriftartikelfagfællebedømt

  • Qing-Run Li
  • Zi-Ming Wang
  • Dan-Dan Wang
  • Zhi-Duan Su
  • Xian-Fu Gao
  • Qing-Qing Wu
  • Hui-Ping Zhang
  • Li Zhu
  • Rong-Xia Li
  • SivHesse Jacobsen
  • Nils Bruun Jørgensen
  • Carsten Dirksen
  • Kirstine N. Bojsen-Møller
  • Jacob S. Petersen
  • Trine R. Clausen
  • Børge Diderichsen
  • Luo-Nan Chen
  • Rong Zeng
  • Jia-Rui Wu

Roux-en-Y Gastric bypass surgery (RYGB) is emerging as a powerful tool for treatment of obesity and may also cause remission of type 2 diabetes. However, the molecular mechanism of RYGB leading to diabetes remission independent of weight loss remains elusive. In this study, we profiled plasma metabolites and proteins of 10 normal glucose-tolerant obese (NO) and 9 diabetic obese (DO) patients before and 1-week, 3-months, 1-year after RYGB. 146 proteins and 128 metabolites from both NO and DO groups at all four stages were selected for further analysis. By analyzing a set of bi-molecular associations among the corresponding network of the subjects with our newly developed computational method, we defined the represented physiological states (called the edge-states that reflect the interactions among the bio-molecules), and the related molecular networks of NO and DO patients, respectively. The principal component analyses (PCA) revealed that the edge states of the post-RYGB NO subjects were significantly different from those of the post-RYGB DO patients. Particularly, the time-dependent changes of the molecular hub-networks differed between DO and NO groups after RYGB. In conclusion, by developing molecular network-based systems signatures, we for the first time reveal that RYGB generates a unique path for diabetes remission independent of weight loss.

OriginalsprogEngelsk
TidsskriftEBioMedicine
Vol/bind28
Sider (fra-til)234-240
Antal sider7
ISSN2352-3964
DOI
StatusUdgivet - 2018

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