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An empirical approach to estimate near-infra-red photon propagation and optically induced drug release in brain tissues

机译:估计近红外线光子繁殖和脑组织中的光学诱导药物释放的实证方法

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Purpose: The purpose of this study is to develop an alternate empirical approach to estimate near-infra-red (NIR) photon propagation and quantify optically induced drug release in brain metastasis, without relying on computationally expensive Monte Carlo techniques (gold standard). Targeted drug delivery with optically induced drug release is a non-invasive means to treat cancers and metastasis. This study is part of a larger project to treat brain metastasis by delivering lapatinib-drug-nanocomplexes and activating NIR-induced drug release. The empirical model was developed using a weighted approach to estimate photon scattering in tissues and calibrated using a GPU based 3D Monte Carlo. The empirical model was developed and tested against Monte Carlo in optical brain phantoms for pencil beams (width 1mm) and broad beams (width 10mm). The empirical algorithm was tested against the Monte Carlo for different albedos along with diffusion equation and in simulated brain phantoms resembling white-matter (μ_s'=8.25mm~(-1), μ_a=0.005mm~(-1)) and gray-matter (μ_s'=2.45mm~(-1), μ_a=0.035mm~(-1)) at wavelength 800nm. The goodness of fit between the two models was determined using coefficient of determination (R-squared analysis). Preliminary results show the Empirical algorithm matches Monte Carlo simulated fluence over a wide range of albedo (0.7 to 0.99), while the diffusion equation fails for lower albedo. The photon fluence generated by empirical code matched the Monte Carlo in homogeneous phantoms (R~2=0.99). While GPU based Monte Carlo achieved 300X acceleration compared to earlier CPU based models, the empirical code is 700X faster than the Monte Carlo for a typical super-Gaussian laser beam.
机译:目的:本研究的目的是开发一种替代的经验方法来估计近红外红色(NIR)光子繁殖,并量化脑转移中的光学诱导的药物释放,而不依赖于计算昂贵的蒙特卡罗技术(金标准)。具有光学诱导的药物释放的靶向药物递送是治疗癌症和转移的非侵入性手段。该研究是通过递送菌替尼 - 药物纳米复合和激活NIR诱导的药物释放来治疗脑转移的较大项目的一部分。经验模型是使用加权方法开发的,以估计组织中的光子散射并使用基于GPU的3D蒙特卡罗校准。在光学脑模具中开发和测试了经验模型,用于铅笔梁(宽度1mm)和宽梁(宽度为10mm)。经验算法对不同的Albedos的蒙特卡洛以及扩散方程和模拟脑模具的测试,类似于白物(μ_s'= 8.25mm〜(-1),μ_a= 0.005mm〜(-1))和灰色 - 在波长800nm处,物质(μ_s'= 2.45mm〜(-1),μ_a= 0.035mm〜(-1))。使用判定系数(R角分析)确定两种模型之间的适合度。初步结果表明,经验算法与Monte Carlo匹配在宽范围的Albedo(0.7至0.99)上模拟流量,而扩散方程则可用于下部反照学。经过经验代码产生的光子注量与均匀幽灵中的蒙特卡罗(R〜2 = 0.99)匹配。虽然基于GPU的Monte Carlo与早期CPU的模型相比实现了300x加速度,但经验代码比典型超高斯激光束的蒙特卡洛快700倍。

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