Vascular Imaging of Matrix Metalloproteinase Activity as an Informative Preclinical Biomarker of Drug-induced Vascular Injury

医学 生物标志物 炎症 血管通透性 基质金属蛋白酶 病理 基质金属蛋白酶抑制剂 药品 免疫学 内科学 药理学 生物 生物化学
作者
Raymond J. Gonzalez,Shu-An Lin,Bohumil Bednář,Brett Connolly,Lisa LaFranco-Scheuch,Gebre M. Mesfin,Thomas M. Philip,Shetal Patel,Timothy S. Johnson,Frank D. Sistare,Warren E. Glaab
出处
期刊:Toxicologic Pathology [SAGE Publishing]
卷期号:45 (5): 633-648 被引量:9
标识
DOI:10.1177/0192623317720731
摘要

Lack of biomarkers specific to and either predictive or diagnostic of drug-induced vascular injury (DIVI) continues to be a major obstacle during drug development. Biomarkers derived from physiologic responses to vessel injury, such as inflammation and vascular remodeling, could make good candidates; however, they characteristically lack specificity for vasculature. We evaluated whether vascular remodeling-associated protease activity, as well as changes to vessel permeability resulting from DIVI, could be visualized ex vivo in affected vessels, thereby allowing for visual monitoring of the pathology to address specificity. We found that visualization of matrix metalloproteinase activation accompanied by increased vascular leakage in the mesentery of rats treated with agents known to induce vascular injury correlated well with incidence and severity of histopathological findings and associated inflammation as well as with circulating levels of tissue inhibitors of metalloproteinase 1 and neutrophil gelatinase-associated lipocalin. The weight of evidence approach reported here shows promise as a composite DIVI preclinical tool by means of complementing noninvasive monitoring of circulating biomarkers of inflammation with direct imaging of affected vasculature and thus lending specificity to its interpretation. These findings are supportive of a potential strategy that relies on translational imaging tools in conjunction with circulating biomarker data for high-specificity monitoring of VI both preclinically and clinically.

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