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首页> 外文期刊>Bulletin of the American Physical Society >APS -APS March Meeting 2017 - Event - Leveraging Time Series Analysis and Machine Learning to Quantify Intra and Inter Trajectory Heterogeneity in Particle Tracking Experiments
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APS -APS March Meeting 2017 - Event - Leveraging Time Series Analysis and Machine Learning to Quantify Intra and Inter Trajectory Heterogeneity in Particle Tracking Experiments

机译:APS -APS 2017年3月会议-活动-在粒子跟踪实验中利用时间序列分析和机器学习来量化轨道内和轨道间异质性

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摘要

Microscopy hardware is now capable of producing high accuracy position vs. time data characterizing fluorescently tagged molecules in live cells. However, analytical methods for efficiently quantifying molecular motion parameters from the raw 3D (or 2D) single particle tracking (SPT) data are underdeveloped. "Downstream" trajectory analysis methods have only begun to efficiently and reliably harness the wealth of statistical kinetic information buried in SPT time series. The lack of analytical methods is due in part to the numerous challenges facing the translation the noisy position measurement information encoded in image stacks into unambiguous and readily interpretable biophysical information quantities (e.g., instantaneous effective diffusivity, forces, molecular friction, etc.). Some of these challenges are caused by: the inherently stochastic (and often nonlinear) nature of the dynamics of molecules in live cells, the highly crowded and heterogeneous time changing micro-environment of live cells influencing the dynamics of tagged molecules, and artifacts induced by the measurement device (e.g.localization error and motion blur). This talk will demonstrate how the merging of ideas from high frequency financial time series analysis, machine learning, and nonparametric Bayesian statistics can address these challenges, overcome limitations inherent in classic SPT methods, and provide insight into various single particle tracking experiments. We will describe and illustrate the new SPT trajectory analysis methods and discuss how the methods can be used to more reliably estimate data-driven and physically interpretable models.
机译:显微镜硬件现在能够产生高精度的位置/时间数据,以表征活细胞中荧光标记的分子。但是,用于从原始3D(或2D)单粒子跟踪(SPT)数据有效地量化分子运动参数的分析方法尚不完善。 “下游”轨迹分析方法才刚刚开始有效,可靠地利用SPT时间序列中隐藏的大量统计动力学信息。分析方法的缺乏部分是由于将图像堆栈中编码的嘈杂的位置测量信息转换成清晰易懂的生物物理信息量(例如瞬时有效扩散率,作用力,分子摩擦等)面临诸多挑战。这些挑战中的一些是由以下因素引起的:活细胞中分子动力学的固有随机性(通常是非线性),活细胞高度拥挤且异质的时变微环境会影响标记分子的动力学,以及由人工诱导的假象测量设备(例如定位误差和运动模糊)。本演讲将演示如何将高频金融时间序列分析,机器学习和非参数贝叶斯统计方法的思想融合在一起,以解决这些挑战,克服经典SPT方法固有的局限性,并提供对各种单个粒子跟踪实验的洞察力。我们将描述和说明新的SPT轨迹分析方法,并讨论如何使用这些方法更可靠地估计数据驱动的和可物理解释的模型。

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