Department of Biomedical Physics, Physics Faculty, Babes-Bolyai University, No. 1 M. Kogalniceanu Street, 400084 Cluj-Napoca, Romania.
Comput Math Methods Med. 2012;2012:482565. doi: 10.1155/2012/482565. Epub 2012 May 14.
Neurological disorders represent major causes of lost years of healthy life and mortality worldwide. Development of their quantitative interdisciplinary in vivo evaluation is required. Compartment modeling (CM) of brain data acquired in vivo using magnetic resonance imaging techniques with clinically available contrast agents can be performed to quantitatively assess brain perfusion. Transport of (1)H spins in water molecules across physiological compartmental brain barriers in three different pools was mathematically modeled and theoretically evaluated in this paper and the corresponding theoretical compartment modeling of dynamic contrast enhanced magnetic resonance imaging (DCE-MRI) data was analyzed. The pools considered were blood, tissue, and cerebrospinal fluid (CSF). The blood and CSF data were mathematically modeled assuming continuous flow of the (1)H spins in these pools. Tissue data was modeled using three CMs. Results in this paper show that transport across physiological brain barriers such as the blood to brain barrier, the extracellular space to the intracellular space barrier, or the blood to CSF barrier can be evaluated quantitatively. Statistical evaluations of this quantitative information may be performed to assess tissue perfusion, barriers' integrity, and CSF flow in vivo in the normal or disease-affected brain or to assess response to therapy.
神经紊乱是造成全球健康寿命年损失和死亡的主要原因。需要开发其定量的跨学科体内评估方法。可以使用临床可用的对比剂,通过磁共振成像技术对活体采集的脑数据进行容积模型分析(CM),以定量评估脑灌注。本文对水分子中(1)H 自旋在三个不同池中的生理腔室脑屏障中的转运进行了数学建模和理论评估,并对动态对比增强磁共振成像(DCE-MRI)数据的相应理论容积模型进行了分析。所考虑的池分别是血液、组织和脑脊液(CSF)。血液和 CSF 数据通过假设这些池中的(1)H 自旋连续流动进行数学建模。组织数据使用三种 CM 进行建模。本文的结果表明,可以定量评估穿过生理脑屏障(如血脑屏障、细胞外空间到细胞内空间屏障或血脑脊液屏障)的转运。可以对这种定量信息进行统计评估,以评估正常或患病大脑中的组织灌注、屏障完整性和 CSF 流,或评估治疗反应。