4.8 Article

Artificial intelligence velocimetry reveals in vivo flow rates, pressure gradients, and shear stresses in murine perivascular flows

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NATL ACAD SCIENCES
DOI: 10.1073/pnas.2217744120

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deep learning; perivascular space; particle tracking velocimetry; cerebrospinal fluid flow

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This study demonstrates the use of artificial intelligence velocimetry (AIV) to quantify the flow of cerebrospinal fluid (CSF) in pial perivascular spaces (PVSs) by integrating sparse velocity measurements with physics-informed neural networks. AIV infers three-dimensional high-resolution velocity, pressure, and shear stress, and the results are validated and analyzed for sensitivity. The findings contribute to improving fluid dynamic models and potentially providing insights into how CSF flow changes in aging, Alzheimer's disease, and small vessel disease.
Quantifying the flow of cerebrospinal fluid (CSF) is crucial for understanding brain waste clearance and nutrient delivery, as well as edema in pathological conditions such as stroke. However, existing in vivo techniques are limited to sparse velocity measurements in pial perivascular spaces (PVSs) or low-resolution measurements from brain-wide imaging. Additionally, volume flow rate, pressure, and shear stress variation in PVSs are essentially impossible to measure in vivo. Here, we show that artificial intelligence velocimetry (AIV) can integrate sparse velocity measurements with physics -informed neural networks to quantify CSF flow in PVSs. With AIV, we infer three-dimensional (3D), high-resolution velocity, pressure, and shear stress. Validation comes from training with 70% of PTV measurements and demonstrating close agreement with the remaining 30%. A sensitivity analysis on the AIV inputs shows that the uncertainty in AIV inferred quantities due to uncertainties in the PVS boundary locations inherent to in vivo imaging is less than 30%, and the uncertainty from the neural net initialization is less than 1%. In PVSs of N = 4 wild-type mice we find mean flow speed 16.33 +/- 11.09 mu m/s, volume flow rate 2.22 +/- 1.983 x 103 mu m3/s, axial pressure gradient (-2.75 +/- 2.01) x 10-4 Pa/mu m (-2.07 +/- 1.51 mmHg/m), and wall shear stress (3.00 +/- 1.45) x 10-3 Pa (all mean +/- SE). Pressure gradients, flow rates, and resistances agree with prior predictions. AIV infers in vivo PVS flows in remarkable detail, which will improve fluid dynamic models and potentially clarify how CSF flow changes with aging, Alzheimer's disease, and small vessel disease.

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