Section for Biotherapeutic Engineering and Drug Targeting, Department of Health Technology, Technical University of Denmark, Lyngby, Denmark.
Core Facility for Integrated Microscopy, Department of Biomedical Sciences, University of Copenhagen, Copenhagen, Denmark.
Commun Biol. 2021 Jul 1;4(1):815. doi: 10.1038/s42003-021-02275-y.
Precise methods for quantifying drug accumulation in brain tissue are currently very limited, challenging the development of new therapeutics for brain disorders. Transcardial perfusion is instrumental for removing the intravascular fraction of an injected compound, thereby allowing for ex vivo assessment of extravasation into the brain. However, pathological remodeling of tissue microenvironment can affect the efficiency of transcardial perfusion, which has been largely overlooked. We show that, in contrast to healthy vasculature, transcardial perfusion cannot remove an injected compound from the tumor vasculature to a sufficient extent leading to considerable overestimation of compound extravasation. We demonstrate that 3D deep imaging of optically cleared tumor samples overcomes this limitation. We developed two machine learning-based semi-automated image analysis workflows, which provide detailed quantitative characterization of compound extravasation patterns as well as tumor angioarchitecture in large three-dimensional datasets from optically cleared samples. This methodology provides a precise and comprehensive analysis of extravasation in brain tumors and allows for correlation of extravasation patterns with specific features of the heterogeneous brain tumor vasculature.
目前,精确量化脑组织中药物积累的方法非常有限,这给脑部疾病的新疗法的发展带来了挑战。心脏灌注对于去除注射化合物的血管内部分非常重要,从而可以在体外评估其向脑组织的渗漏。然而,组织微环境的病理性重塑会影响心脏灌注的效率,但这一点在很大程度上被忽视了。我们发现,与健康的血管不同,心脏灌注不能从肿瘤血管中充分去除注射的化合物,导致化合物渗漏的严重高估。我们证明,通过对光学清除的肿瘤样本进行 3D 深度成像,可以克服这一限制。我们开发了两种基于机器学习的半自动图像分析工作流程,可在来自光学清除样本的大型三维数据集上提供化合物渗漏模式以及肿瘤血管生成结构的详细定量特征描述。这种方法为脑肿瘤中的渗漏提供了精确和全面的分析,并允许将渗漏模式与脑肿瘤血管的异质性的特定特征相关联。