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Detection of Diffusion Heterogeneity in Single Particle Tracking Trajectories Using a Hidden Markov Model with Measurement Noise Propagation

机译:使用带测量噪声传播的隐马尔可夫模型检测单粒子跟踪轨迹中的扩散异质性

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摘要

We develop a Bayesian analysis framework to detect heterogeneity in the diffusive behaviour of single particle trajectories on cells, implementing model selection to classify trajectories as either consistent with Brownian motion or with a two-state (diffusion coefficient) switching model. The incorporation of localisation accuracy is essential, as otherwise false detection of switching within a trajectory was observed and diffusion coefficient estimates were inflated. Since our analysis is on a single trajectory basis, we are able to examine heterogeneity between trajectories in a quantitative manner. Applying our method to the lymphocyte function-associated antigen 1 (LFA-1) receptor tagged with latex beads (4 s trajectories at 1000 frames s−1), both intra- and inter-trajectory heterogeneity were detected; 12–26% of trajectories display clear switching between diffusive states dependent on condition, whilst the inter-trajectory variability is highly structured with the diffusion coefficients being related by D 1 = 0.68D 0 − 1.5 × 104 nm2 s−1, suggestive that on these time scales we are detecting switching due to a single process. Further, the inter-trajectory variability of the diffusion coefficient estimates (1.6 × 102 − 2.6 × 105 nm2 s−1) is very much larger than the measurement uncertainty within trajectories, suggesting that LFA-1 aggregation and cytoskeletal interactions are significantly affecting mobility, whilst the timescales of these processes are distinctly different giving rise to inter- and intra-trajectory variability. There is also an ‘immobile’ state (defined as D < 3.0 × 103 nm2 s−1) that is rarely involved in switching, immobility occurring with the highest frequency (47%) under T cell activation (phorbol-12-myristate-13-acetate (PMA) treatment) with enhanced cytoskeletal attachment (calpain inhibition). Such ‘immobile’ states frequently display slow linear drift, potentially reflecting binding to a dynamic actin cortex. Our methods allow significantly more information to be extracted from individual trajectories (ultimately limited by time resolution and time-series length), and allow statistical comparisons between trajectories thereby quantifying inter-trajectory heterogeneity. Such methods will be highly informative for the construction and fitting of molecule mobility models within membranes incorporating aggregation, binding to the cytoskeleton, or traversing membrane microdomains.
机译:我们开发了一种贝叶斯分析框架,以检测单个粒子轨迹在细胞上的扩散行为中的异质性,实现模型选择以将轨迹分类为与布朗运动一致或与两种状态(扩散系数)切换模型一致。定位精度的结合是必不可少的,因为否则会观察到轨迹内切换的错误检测,并且扩散系数估计值会被夸大。由于我们的分析是基于单个轨迹的,因此我们能够以定量的方式检查轨迹之间的异质性。将我们的方法应用于乳胶珠标记的淋巴细胞功能相关抗原1(LFA-1)受体(在1000帧s -1 处的4 s轨迹),检测到轨迹内和轨迹间异质性; 12–26%的轨迹显示出取决于条件的扩散状态之间的清晰切换,而轨迹间的变异性高度结构化,其扩散系数与D 1 = 0.68D 0 − 1.5×10 4 相关nm 2 s −1 ,表明在这些时间范围内,我们正在检测由于单个过程引起的切换。此外,扩散系数估计值的轨迹间变异性为(1.6×10 2 -2.6×10 5 nm 2 s - 1 )比轨迹内的测量不确定度大得多,这表明LFA-1聚集和细胞骨架相互作用会显着影响流动性,而这些过程的时间尺度明显不同,从而导致轨迹间和轨迹内变化。还存在很少参与切换的“固定”状态(定义为D <3.0×10 3 nm 2 s -1 ) ,在T细胞活化(phorbol-12-肉豆蔻酸酯13-醋酸酯(PMA)处理)下,细胞骨架附着增强(钙蛋白酶抑制)的发生频率最高(47%)。这种“固定”状态经常显示出缓慢的线性漂移,可能反映了与动态肌动蛋白皮层的结合。我们的方法允许从单个轨迹中提取大量信息(最终受时间分辨率和时间序列长度的限制),并允许轨迹之间的统计比较,从而量化轨迹间的异质性。此类方法对于整合和聚集,结合至细胞骨架或横穿膜微区的膜内分子迁移模型的构建和拟合具有很高的参考价值。

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