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单分子定位显微镜的机器学习方法

Machine learning approach for single molecule localisation microscopy.

作者信息

Colabrese Silvia, Castello Marco, Vicidomini Giuseppe, Del Bue Alessio

机构信息

Visual Geometry and Modelling (VGM) Lab, Istituto Italiano di Tecnologia (IIT), Via Morego 30, Genoa, 16163, Italy.

Molecular Microscopy and Spectroscopy, Istituto Italiano di Tecnologia (IIT), Via Morego 30, Genoa, 16163, Italy.

出版信息

Biomed Opt Express. 2018 Mar 14;9(4):1680-1691. doi: 10.1364/BOE.9.001680. eCollection 2018 Apr 1.

Abstract

Single molecule localisation (SML) microscopy is a fundamental tool for biological discoveries; it provides sub-diffraction spatial resolution images by detecting and localizing "all" the fluorescent molecules labeling the structure of interest. For this reason, the effective resolution of SML microscopy strictly depends on the algorithm used to detect and localize the single molecules from the series of microscopy frames. To adapt to the different imaging conditions that can occur in a SML experiment, all current localisation algorithms request, from the microscopy users, the choice of different parameters. This choice is not always easy and their wrong selection can lead to poor performance. Here we overcome this weakness with the use of machine learning. We propose a parameter-free pipeline for SML learning based on support vector machine (SVM). This strategy requires a short supervised training that consists in selecting by the user few fluorescent molecules (∼ 10-20) from the frames under analysis. The algorithm has been extensively tested on both synthetic and real acquisitions. Results are qualitatively and quantitatively consistent with the state of the art in SML microscopy and demonstrate that the introduction of machine learning can lead to a new class of algorithms competitive and conceived from the user point of view.

摘要

单分子定位(SML)显微镜是生物学发现的一项基本工具;它通过检测和定位标记感兴趣结构的“所有”荧光分子来提供亚衍射空间分辨率图像。因此,SML显微镜的有效分辨率严格取决于用于从一系列显微镜图像帧中检测和定位单分子的算法。为了适应SML实验中可能出现的不同成像条件,所有当前的定位算法都要求显微镜用户选择不同的参数。这种选择并不总是容易的,错误的选择可能导致性能不佳。在这里,我们通过使用机器学习克服了这一弱点。我们提出了一种基于支持向量机(SVM)的无参数SML学习管道。该策略需要一个简短的监督训练,即由用户从分析的图像帧中选择少量(约10 - 20个)荧光分子。该算法已在合成图像和真实采集图像上进行了广泛测试。结果在定性和定量上与SML显微镜的现有技术水平一致,并表明引入机器学习可以产生一类从用户角度来看具有竞争力且构思新颖的算法。

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Fluorescence nanoscopy in cell biology.荧光纳米显微镜在细胞生物学中的应用。
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