VacQuant: a tool to quantify neurodegeneration and associated vacuolation in brain tissue.

IF 2.2 4区 生物学 Q3 BIOCHEMISTRY & MOLECULAR BIOLOGY
Fly Pub Date : 2025-12-01 Epub Date: 2025-09-24 DOI:10.1080/19336934.2025.2558387
Kate L Jordan, Colin D Veal, Charalambos P Kyriacou, Flaviano Giorgini
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引用次数: 0

Abstract

Neurodegenerative diseases are devastating conditions characterized by progressive cognitive decline with few available treatments. Neurodegeneration can be quantified in vertebrate and invertebrate models of disease by analysis of vacuolation - the formation of empty spaces within brain tissue. Previous approaches for quantifying this phenotype have required time-consuming methods such as manual counting and measuring of vacuole dimensions, which can be subjective. Here we describe VacQuant, a novel application that can be paired with existing machine learning software to automatically measure the area of vacuolation in brain tissue. Using Drosophila brain sections from tauopathy model flies, a well-described model of dementia-related neurodegeneration, we quantified a significant increase in brain vacuolation at several timepoints in adult flies with the aid of VacQuant. When compared with quantification by five blinded volunteers, the machine learning method positively correlated with their group average, confirming its accuracy and functionality. This automated method developed with VacQuant removes human bias and measurement variation, providing a consistent threshold for all brain sections and experiments. This automated pipeline will be particularly useful for high-throughput screening for genetic modifiers or therapeutic compounds in animal models of neurodegeneration.

VacQuant:一种量化脑组织神经变性和相关空泡化的工具。
神经退行性疾病是一种毁灭性的疾病,其特征是认知能力的进行性下降,而治疗方法却很少。神经退行性疾病可以通过分析空泡化(脑组织内空洞的形成)来量化脊椎动物和无脊椎动物的疾病模型。以前量化这种表型的方法需要耗时的方法,如手动计数和液泡尺寸的测量,这可能是主观的。在这里,我们描述了VacQuant,这是一种新的应用程序,可以与现有的机器学习软件配对,自动测量脑组织中空泡化的面积。使用来自脑损伤模型果蝇(一种描述良好的痴呆症相关神经变性模型)的果蝇脑切片,我们在VacQuant的帮助下量化了成年果蝇在几个时间点的脑空泡化显著增加。与五名盲法志愿者的量化结果相比,机器学习方法与他们的小组平均水平正相关,证实了其准确性和功能性。这种与VacQuant一起开发的自动化方法消除了人为偏差和测量差异,为所有脑切片和实验提供了一致的阈值。这种自动化的管道对于神经变性动物模型中基因修饰剂或治疗性化合物的高通量筛选特别有用。
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来源期刊
Fly
Fly 生物-生化与分子生物学
CiteScore
2.90
自引率
0.00%
发文量
17
审稿时长
>12 weeks
期刊介绍: Fly is the first international peer-reviewed journal to focus on Drosophila research. Fly covers a broad range of biological sub-disciplines, ranging from developmental biology and organogenesis to sensory neurobiology, circadian rhythm and learning and memory, to sex determination, evolutionary biology and speciation. We strive to become the “to go” resource for every researcher working with Drosophila by providing a forum where the specific interests of the Drosophila community can be discussed. With the advance of molecular technologies that enable researchers to manipulate genes and their functions in many other organisms, Fly is now also publishing papers that use other insect model systems used to investigate important biological questions. Fly offers a variety of papers, including Original Research Articles, Methods and Technical Advances, Brief Communications, Reviews and Meeting Reports. In addition, Fly also features two unconventional types of contributions, Counterpoints and Extra View articles. Counterpoints are opinion pieces that critically discuss controversial papers questioning current paradigms, whether justified or not. Extra View articles, which generally are solicited by Fly editors, provide authors of important forthcoming papers published elsewhere an opportunity to expand on their original findings and discuss the broader impact of their discovery. Extra View authors are strongly encouraged to complement their published observations with additional data not included in the original paper or acquired subsequently.
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