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Classification of diffusion modes in single-particle tracking data: Feature-based versus deep-learning approach

机译:单粒跟踪数据中扩散模式的分类:基于特征与深度学习方法

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摘要

Single-particle trajectories measured in microscopy experiments contain important information about dynamic processes occurring in a range of materials including living cells and tissues. However, extracting that information is not a trivial task due to the stochastic nature of the particles' movement and the sampling noise. In this paper, we adopt a deep-learning method known as a convolutional neural network (CNN) to classify modes of diffusion from given trajectories. We compare this fully automated approach working with raw data to classical machine learning techniques that require data preprocessing and extraction of human-engineered features from the trajectories to feed classifiers like random forest or gradient boosting. All methods are tested using simulated trajectories for which the underlying physical model is known. From the results it follows that CNN is usually slightly better than the feature-based methods, but at the cost of much longer processing times. Moreover, there are still some borderline cases in which the classical methods perform better than CNN.
机译:在显微镜实验中测量的单粒子轨迹包含有关在一系列材料中发生的动态过程的重要信息,包括活细胞和组织。然而,由于粒子运动的随机性质和采样噪声,提取该信息不是琐碎的任务。在本文中,我们采用一种被称为卷积神经网络(CNN)的深度学习方法来对给定轨迹的扩散模式进行分类。我们将这种完全自动化的方法与原始数据进行了比较,以古典机器学习技术,需要数据预处理和提取来自轨迹的人工工程特征,以馈送随机森林或梯度提升等分类器。使用底层物理模型已知的模拟轨迹测试所有方法。从结果中,CNN通常比基于特征的方法略好,但在更长的加工时间内的成本略高。此外,仍然存在一些临界案例,其中经典方法比CNN更好。

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