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Computational modeling provides a powerful tool for identifying optimal phantom-based test methods in NIRS oximetry. We implemented a Monte Carlo model to enable the simulation of NIRS devices with specific illumination-collection geometries and to identify appropriate performance test methods. Initially, we validated that our in silico approach provided adequate convergence and identified a phantom size that was optically semi-infinite. We then assessed the impact of NIRS sensor orientations and positions on a simulated channel-array phantom. Additional simulations are currently underway to extract oxygen saturation and determine the effect of phantom layer thicknesses, vessel spacing, and diameter.
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Brandon Gaitan, Alice Truong, Mousa Moradi, Yu Chen, Joshua Pfefer, "Development of an in silico NIRS model to inform the development of performance test methods," Proc. SPIE PC11951, Design and Quality for Biomedical Technologies XV, PC1195107 (7 March 2022); https://doi.org/10.1117/12.2609971