| Literature DB >> 31323921 |
Amrita K Cheema1,2, Khyati Y Mehta1, Meena U Rajagopal1, Stephen Y Wise3,4, Oluseyi O Fatanmi3,4, Vijay K Singh5,6.
Abstract
Exposure to ionizing radiation induces a complex cascade of systemic and tissue-specific responses that lead to functional impairment over time in the surviving population. However, due to the lack of predictive biomarkers of tissue injury, current methods for the management of survivors of radiation exposure episodes involve monitoring of individuals over time for the development of adverse clinical symptoms and death. Herein, we report on changes in metabolomic and lipidomic profiles in multiple tissues of nonhuman primates (NHPs) that were exposed to a single dose of 7.2 Gy whole-body 60Co γ-radiation that either survived or succumbed to radiation toxicities over a 60-day period. This study involved the delineation of the radiation effects in the liver, kidney, jejunum, heart, lung, and spleen. We found robust metabolic changes in the kidney and liver and modest changes in other tissue types at the 60-day time point in a cohort of NHPs. Remarkably, we found significant elevation of long-chain acylcarnitines in animals that were exposed to radiation across multiple tissue types underscoring the role of this class of metabolites as a generic indicator of radiation-induced normal tissue injury. These studies underscore the utility of a metabolomics approach for delineating anticipatory biomarkers of exposure to ionizing radiation.Entities:
Keywords: acute radiation syndrome; biomarker; gamma-radiation; lipidomes; metabolites; nonhuman primates; tissue
Mesh:
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Year: 2019 PMID: 31323921 PMCID: PMC6651211 DOI: 10.3390/ijms20133360
Source DB: PubMed Journal: Int J Mol Sci ISSN: 1422-0067 Impact factor: 5.923
Figure 1Percent survival for the nonhuman primate (NHP) study cohort over the course of 60 days of the follow-up period.
Figure 2Exposure to ionizing radiation leads to robust changes in liver metabolomic and lipidomic profiles. Panel (A): Three dimensional PLS-DA plot showing separation of healthy NHPs (N = 8) from those who either survived (N = 18) or succumbed to radiation-induced (N = 14) tissue injury within 60 days. The prediction accuracy for 100 permutations yielded a p-value of 0.04. Panels (B and C): Relative abundance of significantly dysregulated metabolites and lipids in the three study groups, respectively.
Figure 3Metabolite correlates of radiation response in NHP liver. Panel A. Circos plot visualization of Spearman correlation values between 18 top cut-off point p-value < 1 × 10−30. Panel B. The ROC curve with a six-metabolite panel predictive of post-irradiation survival in NHPs liver. The classification algorithm showed sensitivity = 0.833, specificity= 0.875, AUC: 0.869, and a predictive accuracy of 0.846.
Figure 4Metabolomic and Lipidomic profiles of kidney in NHPs pre and post-irradiation. Panel A: Three dimensional PLS-DA plot showing separation of healthy NHPs (N = 8) from those who either survived (N = 18) or succumbed to radiation-induced (N = 14) tissue injury within 60 days.Prediction accuracy for 100 permutations yielded a p-value of 0.07. Panels B and C: the relative abundance of significantly dysregulated metabolites and lipids in the threes study groups, respectively.
Figure 5Metabolite correlates of radiation response in NHP kidney. Panel (A) Circos plot of Spearman correlation values between 18 top cut-off point p-value < 1 × 10−30. Panel (B) the ROC curve with a six-metabolite panel predictive of post-irradiation survival in NHP kidney. The classification algorithm showed sensitivity = 0.833, specificity = 0.875, AUC: 0.924 and a predictive accuracy of 0.849.
Figure 6Overlapping patterns of metabolite abundance in the three NHP study groups across different tissue types. The Y-axis shows mean values for the log-transformed and Pareto scaled relative abundances.