通过高含量成像将自闭症风险基因与形态学和药物筛选联系起来:未来的方向和观点。

IF 5 3区 医学 Q1 CLINICAL NEUROLOGY
Reza K Arta, Yuichiro Watanabe, Jun Egawa, Vance P Lemmon, Toshiyuki Someya
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引用次数: 0

摘要

下一代测序已经确定了自闭症谱系障碍(ASD)的风险基因。尽管个体风险基因的功能分析取得了进展,但ASD发病机制的整体情况尚不清楚。因此,有必要对这些基因的变异进行形态学分析,以充分了解其在培养细胞中的病理机制。高含量分析(HCA)是一种强有力的方法,可以彻底分析包括ASD在内的许多疾病中基因修饰后的细胞改变。我们首先回顾了ASD风险变异的最新表型描述和不同的ASD细胞模型,这为在基于图像的分析中选择提取特征提供了基础,以最好地捕捉ASD机制。然后,我们描述了最近使用HCA系统进行ASD的遗传和药理学筛查活动。一般来说,HCA可以通过测量细胞增殖、分化、过程生长、突触数量以及神经元、星形胶质细胞和小胶质细胞的其他形态学变化来实现asd衍生细胞模型的成像。机器学习的进步正在减少特征识别和提取中的偏见。这些数据可以转换为下游分析和可视化,例如使用热图进行形态学分析。这提供了基于图像的分析数据,可用于确定遗传修饰的作用机制。此外,综合方法,如基于混合物和共同结构排序方法,可以系统地检查数百万种化合物的影响,可以通过形态学分析识别可能改善ASD风险基因突变影响的化合物。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Linking autism risk genes to morphological and pharmaceutical screening by high-content imaging: Future directions and opinion.

Next-generation sequencing has identified risk genes with large effect sizes for autism spectrum disorders (ASD). Although functional analysis of individual risk genes has progressed, the overall picture of ASD pathogenesis is unclear. Therefore, there is a need for morphological profiling of variants in these genes to fully comprehend their pathomechanism in cultured cells. High-content analysis (HCA) is a powerful approach to thoroughly analyze cellular alterations following genetic modifications in many disorders, including ASD. We begin this review with the latest phenotypic descriptions of ASD risk variants and different ASD cell models, which provide a basis to select features for extraction in image-based analysis to best capture ASD mechanisms. We then describe recent genetic and pharmacological screening campaigns for ASD using HCA systems. Generally, HCA enables imaging of ASD-derived cell models using measurements such as cell proliferation, differentiation, process growth, synapse numbers, and other morphological changes to neurons, astrocytes, and microglia. Advances in machine learning are reducing bias in feature identification and extraction. These data can be transformed for downstream analyses and visualization, such as clustering using heatmaps for morphological profiling. This provides image-based profiling data that can be used to determine the mechanisms of action of genetic modifications. Additionally, comprehensive methods, such as mixture-based and common structure ranking approaches, which can systematically examine the effects of millions of compounds, could identify compounds that might ameliorate the effects of ASD risk gene mutations using morphological profiling.

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来源期刊
CiteScore
7.40
自引率
4.20%
发文量
181
审稿时长
6-12 weeks
期刊介绍: PCN (Psychiatry and Clinical Neurosciences) Publication Frequency: Published 12 online issues a year by JSPN Content Categories: Review Articles Regular Articles Letters to the Editor Peer Review Process: All manuscripts undergo peer review by anonymous reviewers, an Editorial Board Member, and the Editor Publication Criteria: Manuscripts are accepted based on quality, originality, and significance to the readership Authors must confirm that the manuscript has not been published or submitted elsewhere and has been approved by each author
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