Microglial morphometric analysis: so many options, so little consistency.

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2023-08-10 eCollection Date: 2023-01-01 DOI:10.3389/fninf.2023.1211188
Jack Reddaway, Peter Eulalio Richardson, Ryan J Bevan, Jessica Stoneman, Marco Palombo
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Abstract

Quantification of microglial activation through morphometric analysis has long been a staple of the neuroimmunologist's toolkit. Microglial morphological phenomics can be conducted through either manual classification or constructing a digital skeleton and extracting morphometric data from it. Multiple open-access and paid software packages are available to generate these skeletons via semi-automated and/or fully automated methods with varying degrees of accuracy. Despite advancements in methods to generate morphometrics (quantitative measures of cellular morphology), there has been limited development of tools to analyze the datasets they generate, in particular those containing parameters from tens of thousands of cells analyzed by fully automated pipelines. In this review, we compare and critique the approaches using cluster analysis and machine learning driven predictive algorithms that have been developed to tackle these large datasets, and propose improvements for these methods. In particular, we highlight the need for a commitment to open science from groups developing these classifiers. Furthermore, we call attention to a need for communication between those with a strong software engineering/computer science background and neuroimmunologists to produce effective analytical tools with simplified operability if we are to see their wide-spread adoption by the glia biology community.

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小胶质细胞形态计量分析:选择太多,一致性太差。
长期以来,通过形态计量分析对小胶质细胞活化进行量化一直是神经免疫学家的主要工具。小胶质细胞形态表型组学可通过人工分类或构建数字骨架并从中提取形态计量数据来进行。有多种开放获取和付费软件包可通过半自动和/或全自动方法生成这些骨架,准确度各不相同。尽管生成形态计量学(细胞形态的定量测量)的方法有了进步,但分析它们生成的数据集的工具开发却很有限,特别是那些包含通过全自动管道分析的成千上万个细胞参数的数据集。在这篇综述中,我们比较并批评了使用聚类分析和机器学习驱动的预测算法来处理这些大型数据集的方法,并提出了改进这些方法的建议。我们特别强调,开发这些分类器的团体需要致力于开放科学。此外,我们还呼吁具有强大软件工程/计算机科学背景的人员与神经免疫学家之间需要进行交流,以便开发出具有简化操作性的有效分析工具,这样我们才能看到神经胶质生物学界广泛采用这些工具。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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