Department of Biomedical Engineering, Boston University, 44 Cummington Mall, Boston, MA 02215, USA; Division of Materials Science and Engineering, Boston University, 15 St. Mary's Street, Brookline, MA 02446, USA.
Department of Biomedical Engineering, Boston University, 44 Cummington Mall, Boston, MA 02215, USA.
Microvasc Res. 2021 Jan;133:104102. doi: 10.1016/j.mvr.2020.104102. Epub 2020 Nov 6.
This study describes a computational algorithm to determine vascular permeability constants from time-lapse imaging data without concurrent knowledge of the arterial input function. The algorithm is based on "blind" deconvolution of imaging data, which were generated with analytical and finite-element models of bidirectional solute transport between a capillary and its surrounding tissue. Compared to the commonly used Patlak analysis, the blind algorithm is substantially more accurate in the presence of solute delay and dispersion. We also compared the performance of the blind algorithm with that of a simpler one that assumed unidirectional transport from capillary to tissue [as described in Truslow et al., Microvasc. Res. 90, 117-120 (2013)]. The algorithm based on bidirectional transport was more accurate than the one based on unidirectional transport for more permeable vessels and smaller extravascular distribution volumes, and less accurate for less permeable vessels and larger extravascular distribution volumes. Our results indicate that blind deconvolution is superior to Patlak analysis for permeability mapping under clinically relevant conditions, and can thus potentially improve the detection of tissue regions with a compromised vascular barrier.
本研究描述了一种计算算法,可在没有动脉输入函数的情况下,根据时变成像数据确定血管通透性常数。该算法基于对成像数据的“盲目”反卷积,这些数据是通过毛细血管与其周围组织之间的双向溶质传输的分析和有限元模型生成的。与常用的 Patlak 分析相比,在存在溶质延迟和弥散的情况下,盲目算法的准确性要高得多。我们还比较了盲目算法与假设从毛细血管单向向组织传输的简单算法的性能[如 Truslow 等人所述,Microvasc. Res. 90, 117-120 (2013)]。对于更具通透性的血管和较小的血管外分布容积,基于双向传输的算法比基于单向传输的算法更准确,而对于通透性较低的血管和较大的血管外分布容积,则准确性较低。我们的结果表明,在临床相关条件下,盲目反卷积优于 Patlak 分析,可潜在改善对血管屏障受损组织区域的检测。