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β-cell intrinsic dynamics rather than gap junction structure dictates subpopulations in the islet functional network.

eLife | 2023

Diabetes is caused by the inability of electrically coupled, functionally heterogeneous β-cells within the pancreatic islet to provide adequate insulin secretion. Functional networks have been used to represent synchronized oscillatory [Ca2+] dynamics and to study β-cell subpopulations, which play an important role in driving islet function. The mechanism by which highly synchronized β-cell subpopulations drive islet function is unclear. We used experimental and computational techniques to investigate the relationship between functional networks, structural (gap junction) networks, and intrinsic β-cell dynamics in slow and fast oscillating islets. Highly synchronized subpopulations in the functional network were differentiated by intrinsic dynamics, including metabolic activity and KATP channel conductance, more than structural coupling. Consistent with this, intrinsic dynamics were more predictive of high synchronization in the islet functional network as compared to high levels of structural coupling. Finally, dysfunction of gap junctions, which can occur in diabetes, caused decreases in the efficiency and clustering of the functional network. These results indicate that intrinsic dynamics rather than structure drive connections in the functional network and highly synchronized subpopulations, but gap junctions are still essential for overall network efficiency. These findings deepen our interpretation of functional networks and the formation of functional subpopulations in dynamic tissues such as the islet.

Pubmed ID: 38018905 RIS Download

Research resources used in this publication

None found

Antibodies used in this publication

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Associated grants

  • Agency: NIDDK NIH HHS, United States
    Id: R01 DK102950
  • Agency: NIH HHS, United States
    Id: DK126360
  • Agency: NIDDK NIH HHS, United States
    Id: U24 DK104162
  • Agency: NIDDK NIH HHS, United States
    Id: P30 DK116073
  • Agency: NIDDK NIH HHS, United States
    Id: R01 DK106412
  • Agency: NIH HHS, United States
    Id: R01 DK102950
  • Agency: NIH HHS, United States
    Id: R01 DK106412
  • Agency: NIDDK NIH HHS, United States
    Id: F31 DK126360
  • Agency: NLM NIH HHS, United States
    Id: R01 LM012734
  • Agency: NIH HHS, United States
    Id: LM012734

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