A novel PINK1- and PARK2-dependent protective neuroimmune pathway in lethal sepsis

Rui Kang(University of Pittsburgh), Ling Zeng(Army Medical University), Yangchun Xie(University of Pittsburgh), Zhengwen Yan(Sun Yat-sen University), Bo Zhou(Third Affiliated Hospital of Guangzhou Medical University), Lizhi Cao(Central South University), Daniel J. Klionsky(University of Michigan), Kevin J. Tracey(Feinstein Institute for Medical Research), Jianhua Li(Feinstein Institute for Medical Research), Haichao Wang(Feinstein Institute for Medical Research), Timothy R. Billiar(University of Pittsburgh), Jianxin Jiang(Army Medical University), Daolin Tang(University of Pittsburgh)
Autophagy
October 18, 2016
Cited by 122Open Access
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Abstract

Although the PINK1-PARK2 pathway contributes to the pathogenesis of Parkinson disease, its roles in sepsis (a major challenge for critical care) were previously unknown. Here, we show that pink1−/− and park2−/− mice are more sensitive to polymicrobial sepsis-induced multiple organ failure and death. The decrease in the circulating level of the neurotransmitter dopamine in pink1−/− and park2−/− mice accelerates the release of a late sepsis mediator, HMGB1, via HIF1A-dependent anaerobic glycolysis and subsequent NLRP3-dependent inflammasome activation. Genetic depletion of Nlrp3 or Hif1a in pink1−/− and park2−/− mice confers protection against lethal polymicrobial sepsis. Moreover, pharmacological administration of dopamine agonist (e.g., pramipexole), HMGB1-inhibitor (e.g., neutralizing antibody or glycyrrhizin), or NLRP3-inhibitor (e.g., MCC950) reduces septic death in pink1−/− and park2−/− mice. The mRNA expression of HIF1A and NLRP3 is upregulated, whereas the mRNA expression of PINK1 and PARK2 is downregulated in peripheral blood mononuclear cells of patients with sepsis. Thus, an impaired PINK1-PARK2-mediated neuroimmunology pathway contributes to septic death and may represent a novel therapeutic target in critical care medicine.


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