Model-based inference from microvascular measurements: Combining experimental measurements and model predictions using a Bayesian probabilistic approach

被引:7
|
作者
Rasmussen, Peter M. [1 ,2 ]
Smith, Amy F. [3 ]
Sakadzic, Sava [4 ]
Boas, David A. [4 ,5 ]
Pries, Axel R. [6 ]
Secomb, Timothy W. [7 ]
Ostergaard, Leif [1 ,2 ,8 ]
机构
[1] Aarhus Univ Hosp, Dept Clin Med, Ctr Functionally Integrat Neurosci, Aarhus, Denmark
[2] Aarhus Univ Hosp, MINDLab, Aarhus, Denmark
[3] Univ Toulouse, CNRS INPT UPS, IMFT, Toulouse, France
[4] Harvard Med Sch, Massachusetts Gen Hosp, Dept Radiol, Athinoula A Martinos Ctr Biomed Imaging, Charlestown, MA USA
[5] Harvard MIT Div Hlth Sci & Technol, Cambridge, MA USA
[6] Charite, Dept Physiol, Berlin, Germany
[7] Univ Arizona, Dept Physiol, Tucson, AZ USA
[8] Aarhus Univ Hosp, Dept Neuroradiol, Aarhus, Denmark
关键词
Bayesian analysis; flow simulation; microcirculatory measurements; network-oriented analysis; TRANSIT-TIME HETEROGENEITY; OPTICAL COHERENCE TOMOGRAPHY; ENDOTHELIAL SURFACE-LAYER; MONTE-CARLO-SIMULATION; CEREBRAL-BLOOD-FLOW; 2-PHOTON MICROSCOPY; IN-VIVO; BRAIN OXYGENATION; NETWORKS; MICROCIRCULATION;
D O I
10.1111/micc.12343
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
ObjectiveIn vivo imaging of the microcirculation and network-oriented modeling have emerged as powerful means of studying microvascular function and understanding its physiological significance. Network-oriented modeling may provide the means of summarizing vast amounts of data produced by high-throughput imaging techniques in terms of key, physiological indices. To estimate such indices with sufficient certainty, however, network-oriented analysis must be robust to the inevitable presence of uncertainty due to measurement errors as well as model errors. MethodsWe propose the Bayesian probabilistic data analysis framework as a means of integrating experimental measurements and network model simulations into a combined and statistically coherent analysis. The framework naturally handles noisy measurements and provides posterior distributions of model parameters as well as physiological indices associated with uncertainty. ResultsWe applied the analysis framework to experimental data from three rat mesentery networks and one mouse brain cortex network. We inferred distributions for more than 500 unknown pressure and hematocrit boundary conditions. Model predictions were consistent with previous analyses, and remained robust when measurements were omitted from model calibration. ConclusionOur Bayesian probabilistic approach may be suitable for optimizing data acquisition and for analyzing and reporting large data sets acquired as part of microvascular imaging studies.
引用
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页数:16
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