Department of Medical and Surgical Sciences (DIMEC), Alma Mater Studiorum-University of Bologna, I-40138 Bologna, Italy.
Interdepartmental Center Alma Mater Research Institute on Global Challenges and Climate Change (Alma Climate), Alma Mater Studiorum-University of Bologna, I-40126 Bologna, Italy.
Sensors (Basel). 2021 Sep 24;21(19):6385. doi: 10.3390/s21196385.
Cellular and subcellular spatial colocalization of structures and molecules in biological specimens is an important indicator of their co-compartmentalization and interaction. Presently, colocalization in biomedical images is addressed with visual inspection and quantified by co-occurrence and correlation coefficients. However, such measures alone cannot capture the complexity of the interactions, which does not limit itself to signal intensity. On top of the previously developed density distribution maps (DDMs), here, we present a method for advancing current colocalization analysis by introducing co-density distribution maps (cDDMs), which, uniquely, provide information about molecules absolute and relative position and local abundance. We exemplify the benefits of our method by developing cDDMs-integrated pipelines for the analysis of molecules pairs co-distribution in three different real-case image datasets. First, cDDMs are shown to be indicators of colocalization and degree, able to increase the reliability of correlation coefficients currently used to detect the presence of colocalization. In addition, they provide a simultaneously visual and quantitative support, which opens for new investigation paths and biomedical considerations. Finally, thanks to the software we developed, cDDMs become an enabling tool for the quasi real time monitoring of experiments and a potential improvement for a large number of biomedical studies.
生物样本中结构和分子的细胞和亚细胞空间共定位是它们共区室化和相互作用的重要指标。目前,生物医学图像中的共定位是通过视觉检查来解决的,并通过共现和相关系数来量化。然而,这些措施本身并不能捕捉到相互作用的复杂性,这种复杂性不仅限于信号强度。在之前开发的密度分布图(DDM)的基础上,我们在这里提出了一种通过引入共密度分布图(cDDM)来推进当前共定位分析的方法,该方法独特地提供了关于分子绝对和相对位置以及局部丰度的信息。我们通过开发用于分析三个不同真实图像数据集分子对共分布的 cDDM 集成分析管道,说明了我们方法的优势。首先,cDDM 被证明是共定位和程度的指标,能够提高当前用于检测共定位存在的相关系数的可靠性。此外,它们提供了一种同时可视化和定量的支持,为新的研究路径和生物医学考虑打开了大门。最后,由于我们开发的软件,cDDM 成为实验准实时监测的有效工具,并有可能改进大量的生物医学研究。