Department of Biomedical Engineering (DEB), School of Electrical and Computer Engineering, University of Campinas, 400, Albert Einstein Avenue, Campinas, SP, 13083-852, Brazil.
Center for Biomedical Engineering (CEB), University of Campinas, Campinas, SP, Brazil.
BMC Bioinformatics. 2020 Jul 24;21(1):332. doi: 10.1186/s12859-020-03661-9.
In cell biology, increasing focus has been directed to fast events at subcellular space with the advent of fluorescent probes. As an example, voltage sensitive dyes (VSD) have been used to measure membrane potentials. Yet, even the most recently developed genetically encoded voltage sensors have demanded exhausting signal averaging through repeated experiments to quantify action potentials (AP). This analysis may be further hampered in subcellular signals defined by small regions of interest (ROI), where signal-to-noise ratio (SNR) may fall substantially. Signal processing techniques like blind source separation (BSS) are designed to separate a multichannel mixture of signals into uncorrelated or independent sources, whose potential to separate ROI signal from noise has been poorly explored. Our aims are to develop a method capable of retrieving subcellular events with minimal a priori information from noisy cell fluorescence images and to provide it as a computational tool to be readily employed by the scientific community.
In this paper, we have developed METROID (Morphological Extraction of Transmembrane potential from Regions Of Interest Device), a new computational tool to filter fluorescence signals from multiple ROIs, whose code and graphical interface are freely available. In this tool, we developed a new ROI definition procedure to automatically generate similar-area ROIs that follow cell shape. In addition, simulations and real data analysis were performed to recover AP and electroporation signals contaminated by noise by means of four types of BSS: Principal Component Analysis (PCA), Independent Component Analysis (ICA), and two versions with discrete wavelet transform (DWT). All these strategies allowed for signal extraction at low SNR (- 10 dB) without apparent signal distortion.
We demonstrate the great capability of our method to filter subcellular signals from noisy fluorescence images in a single trial, avoiding repeated experiments. We provide this novel biomedical application with a graphical user interface at https://doi.org/10.6084/m9.figshare.11344046.v1 , and its code and datasets are available in GitHub at https://github.com/zoccoler/metroid .
在细胞生物学中,随着荧光探针的出现,人们越来越关注亚细胞空间的快速事件。例如,电压敏感染料 (VSD) 已被用于测量膜电位。然而,即使是最近开发的基因编码电压传感器,也需要通过重复实验进行大量信号平均处理来量化动作电位 (AP)。在由小感兴趣区域 (ROI) 定义的亚细胞信号中,这种分析可能会进一步受到阻碍,因为信号噪声比 (SNR) 可能会大幅下降。盲源分离 (BSS) 等信号处理技术旨在将多通道信号混合物分离成不相关或独立的源,而将 ROI 信号与噪声分离的潜力尚未得到充分探索。我们的目标是开发一种能够从嘈杂的细胞荧光图像中以最小的先验信息检索亚细胞事件的方法,并将其作为一种计算工具提供给科学界,以便于使用。
在本文中,我们开发了 METROID(从感兴趣区域设备中提取跨膜电位的形态提取),这是一种从多个 ROI 过滤荧光信号的新计算工具,其代码和图形界面均可免费获得。在该工具中,我们开发了一种新的 ROI 定义程序,可自动生成遵循细胞形状的相似面积 ROI。此外,通过四种 BSS(主成分分析 (PCA)、独立成分分析 (ICA) 和两种带离散小波变换 (DWT) 的版本)进行了模拟和真实数据分析,以恢复受到噪声污染的 AP 和电穿孔信号。所有这些策略都允许在低 SNR(-10dB)下进行信号提取,而不会明显失真信号。
我们证明了我们的方法在单次试验中从嘈杂的荧光图像中过滤亚细胞信号的强大能力,避免了重复实验。我们在 https://doi.org/10.6084/m9.figshare.11344046.v1 提供了这个新的生物医学应用的图形用户界面,其代码和数据集可在 GitHub 上获得,网址为 https://github.com/zoccoler/metroid 。