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Molecular Basis for Vulnerability to Mitochondrial and Oxidative Stress in a Neuroendocrine CRI-G1 Cell Line

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  • Natasha Chandiramani
  • Xianhong Wang
  • Marta Margeta

Abstract

Background: Many age-associated disorders (including diabetes, cancer, and neurodegenerative diseases) are linked to mitochondrial dysfunction, which leads to impaired cellular bioenergetics and increased oxidative stress. However, it is not known what genetic and molecular pathways underlie differential vulnerability to mitochondrial dysfunction observed among different cell types. Methodology/Principal Findings: Starting with an insulinoma cell line as a model for a neuronal/endocrine cell type, we isolated a novel subclonal line (named CRI-G1-RS) that was more susceptible to cell death induced by mitochondrial respiratory chain inhibitors than the parental CRI-G1 line (renamed CRI-G1-RR for clarity). Compared to parental RR cells, RS cells were also more vulnerable to direct oxidative stress, but equally vulnerable to mitochondrial uncoupling and less vulnerable to protein kinase inhibition-induced apoptosis. Thus, differential vulnerability to mitochondrial toxins between these two cell types likely reflects differences in their ability to handle metabolically generated reactive oxygen species rather than differences in ATP production/utilization or in downstream apoptotic machinery. Genome-wide gene expression analysis and follow-up biochemical studies revealed that, in this experimental system, increased vulnerability to mitochondrial and oxidative stress was associated with (1) inhibition of ARE/Nrf2/Keap1 antioxidant pathway; (2) decreased expression of antioxidant and phase I/II conjugation enzymes, most of which are Nrf2 transcriptional targets; (3) increased expression of molecular chaperones, many of which are also considered Nrf2 transcriptional targets; (4) increased expression of β cell-specific genes and transcription factors that specify/maintain β cell fate; and (5) reconstitution of glucose-stimulated insulin secretion. Conclusions/Significance: The molecular profile presented here will enable identification of individual genes or gene clusters that shape vulnerability to mitochondrial dysfunction and thus represent potential therapeutic targets for diabetes and neurodegenerative diseases. In addition, the newly identified CRI-G1-RS cell line represents a new experimental model for investigating how endogenous antioxidants affect glucose sensing and insulin release by pancreatic β cells.

Suggested Citation

  • Natasha Chandiramani & Xianhong Wang & Marta Margeta, 2011. "Molecular Basis for Vulnerability to Mitochondrial and Oxidative Stress in a Neuroendocrine CRI-G1 Cell Line," PLOS ONE, Public Library of Science, vol. 6(1), pages 1-18, January.
  • Handle: RePEc:plo:pone00:0014485
    DOI: 10.1371/journal.pone.0014485
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    1. Nicholas Houstis & Evan D. Rosen & Eric S. Lander, 2006. "Reactive oxygen species have a causal role in multiple forms of insulin resistance," Nature, Nature, vol. 440(7086), pages 944-948, April.
    2. Smyth Gordon K, 2004. "Linear Models and Empirical Bayes Methods for Assessing Differential Expression in Microarray Experiments," Statistical Applications in Genetics and Molecular Biology, De Gruyter, vol. 3(1), pages 1-28, February.
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    1. Yuanyuan Zhao & Di Hu & Rihua Wang & Xiaoyan Sun & Philip Ropelewski & Zita Hubler & Kathleen Lundberg & Quanqiu Wang & Drew J. Adams & Rong Xu & Xin Qi, 2022. "ATAD3A oligomerization promotes neuropathology and cognitive deficits in Alzheimer’s disease models," Nature Communications, Nature, vol. 13(1), pages 1-20, December.

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