Sagar Md Abdul Kader, Cheng Kevin P, Ouellette Jonathan N, Williams Justin C, Watters Jyoti J, Eliceiri Kevin W
Department of Biomedical Engineering, University of Wisconsin-Madison, Madison, WI, United States.
Laboratory for Optical and Computational Instrumentation, University of Wisconsin-Madison, Madison, WI, United States.
Front Neurosci. 2020 Sep 3;14:931. doi: 10.3389/fnins.2020.00931. eCollection 2020.
Automated computational analysis techniques utilizing machine learning have been demonstrated to be able to extract more data from different imaging modalities compared to traditional analysis techniques. One new approach is to use machine learning techniques to existing multiphoton imaging modalities to better interpret intrinsically fluorescent cellular signals to characterize different cell types. Fluorescence Lifetime Imaging Microscopy (FLIM) is a high-resolution quantitative imaging tool that can detect metabolic cellular signatures based on the lifetime variations of intrinsically fluorescent metabolic co-factors such as nicotinamide adenine dinucleotide [NAD(P)H]. NAD(P)H lifetime-based discrimination techniques have previously been used to develop metabolic cell signatures for diverse cell types including immune cells such as macrophages. However, FLIM could be even more effective in characterizing cell types if machine learning was used to classify cells by utilizing FLIM parameters for classification. Here, we demonstrate the potential for FLIM-based, label-free NAD(P)H imaging to distinguish different cell types using Artificial Neural Network (ANN)-based machine learning. For our biological use case, we used the challenge of differentiating microglia from other glia cell types in the brain. Microglia are the resident macrophages of the brain and spinal cord and play a critical role in maintaining the neural environment and responding to injury. Microglia are challenging to identify as most fluorescent labeling approaches cross-react with other immune cell types, are often insensitive to activation state, and require the use of multiple specialized antibody labels. Furthermore, the use of these extrinsic antibody labels prevents application in animal models and possible future clinical adaptations such as neurodegenerative pathologies. With the ANN-based NAD(P)H FLIM analysis approach, we found that microglia in cell culture mixed with other glial cells can be identified with more than 0.9 True Positive Rate (TPR). We also extended our approach to identify microglia in fixed brain tissue with a TPR of 0.79. In both cases the False Discovery Rate was around 30%. This method can be further extended to potentially study and better understand microglia's role in neurodegenerative disease with improved detection accuracy.
与传统分析技术相比,利用机器学习的自动化计算分析技术已被证明能够从不同的成像模态中提取更多数据。一种新方法是将机器学习技术应用于现有的多光子成像模态,以更好地解释内在荧光细胞信号,从而表征不同的细胞类型。荧光寿命成像显微镜(FLIM)是一种高分辨率定量成像工具,它可以基于诸如烟酰胺腺嘌呤二核苷酸[NAD(P)H]等内在荧光代谢辅因子的寿命变化来检测细胞代谢特征。基于NAD(P)H寿命的鉴别技术此前已被用于为包括巨噬细胞等免疫细胞在内的多种细胞类型开发代谢细胞特征。然而,如果利用机器学习通过FLIM参数对细胞进行分类,FLIM在表征细胞类型方面可能会更有效。在这里,我们展示了基于FLIM的无标记NAD(P)H成像利用基于人工神经网络(ANN)的机器学习来区分不同细胞类型的潜力。对于我们的生物学用例,我们选择了区分脑内小胶质细胞与其他神经胶质细胞类型这一难题。小胶质细胞是脑和脊髓中的常驻巨噬细胞,在维持神经环境和对损伤作出反应方面发挥着关键作用。小胶质细胞很难识别,因为大多数荧光标记方法会与其他免疫细胞类型发生交叉反应,通常对激活状态不敏感,并且需要使用多种专门的抗体标记。此外,这些外源性抗体标记的使用妨碍了在动物模型中的应用以及未来可能的临床应用,如神经退行性疾病的研究。通过基于ANN的NAD(P)H FLIM分析方法,我们发现,在与其他神经胶质细胞混合的细胞培养物中,小胶质细胞的真阳性率(TPR)超过0.9时能够被识别出来。我们还将我们的方法扩展到识别固定脑组织中的小胶质细胞,其TPR为0.79。在这两种情况下,错误发现率约为30%。该方法可以进一步扩展,以潜在地研究并更好地理解小胶质细胞在神经退行性疾病中的作用,并提高检测准确性。