石墨烯
药代动力学
量子点
材料科学
纳米技术
拉曼光谱
纳米颗粒
体内
纳米材料
药理学
医学
物理
生物技术
光学
生物
作者
Matheus Keuper Bastos,Martha Sahylí Ortega Pijeira,Ana Paula dos Santos Matos,Eduardo Ricci-Júnior,Pierre Basílio Almeida Fechine,Luciana Magalhães Rebelo Alencar,Sara Gemini-Piperni,Frank Alexis,Mohamed F. Attia,Ralph Santos-Oliveira,Juliana Helena Sobrinho
标识
DOI:10.2174/1568026622666220512150625
摘要
Nanoparticles (NPs) have gained great importance during the last decades for developing new therapeutics with improved outcomes for biomedical applications due to their nanoscale size, surface properties, loading capacity, controlled drug release, and distribution. Among the carbon-based nanomaterials, one of the most biocompatible forms of graphene is graphene quantum dots (GQDs). GQDs are obtained by converting 2D graphene into zero-dimensional graphene nanosheets. Moreover, very few reports in the literature reported the pharmacokinetic studies proving the safety and effectiveness of GQDs for in vivo applications.This study evaluated the pharmacokinetics of GQDs radiolabeled with 99mTc, administered intravenously, in rodents (Wistar rats) in two conditions: short and long periods, to compare and understand the biological behavior.The graphene quantum dots were produced and characterized by RX diffractometry, Raman spectroscopy, and atomic force microscopy. The pharmacokinetic analysis was performed following the radiopharmacokinetics concepts, using radiolabeled graphene quantum dots with technetium 99 metastable (99mTc). The radiolabeling process of the graphene quantum dots with 99mTc was performed by the direct via.The results indicate that the pharmacokinetic analyses with GQDs over a longer period were more accurate. Following a bicompartmental model, the long-time analysis considers each pharmacokinetic phase of drugs into the body. Furthermore, the data demonstrated that short-time analysis could lead to distortions in pharmacokinetic parameters, leading to misinterpretations.The evaluation of the pharmacokinetics of GQDs over long periods is more meaningful than the evaluation over short periods.
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