使用机器学习模型量化高尔基体的扩散和分类。

IF 2.5 3区 工程技术 Q1 MICROSCOPY
Rutika Sansaria , Krishanu Dey Das , Alwin Poulose
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引用次数: 0

摘要

高尔基体是真核细胞中负责处理和修饰蛋白质和脂质的关键细胞器。在某些条件下,如压力、疾病或衰老,高尔基体结构会发生变化。因此,了解高尔基体分散的调控机制对识别疾病有着重要的研究贡献。然而,缺乏量化高尔基体离散度数据集的工具。在本文中,我们的目标是自动化高尔基体分散的量化过程,并使用提取的特征使用机器学习模型从未分散的高尔基体图像中分类分散的高尔基体图像。首先,我们收集了表达半乳糖-1-磷酸尿苷基转移酶(GALT)-绿色荧光蛋白(GFP)的瞬时转染HeLa细胞的共聚焦显微镜图像,以量化高尔基体的扩散和分类。对于量化,我们引入了通过应用均值和高斯滤波器的自动图像处理和分割。然后,我们对预处理后的图像使用Otsu阈值和分水岭分割来细化分散的高尔基粒子的分割。在分类的情况下,我们从高尔基体扩散图像中提取特征,并将其分类为空载体(EV)与CARP1环突变体(CARP1 RM)和空载体(EV:CARP1野生型(CARP1 WT)类别。我们的方法使用了机器学习模型,包括逻辑回归、决策树、随机森林、朴素贝叶斯、k-最近邻(KNN)和用于分散高尔基图像分类的梯度增强。实验结果表明,当系统使用梯度增强分类器进行EV与CARP1 WT分类时,我们对高尔基体扩散图像的量化技术达到了65%的分类准确率。此外,我们的方法使用EV与CARP1 RM分类的随机森林分类器实现了65%的分类准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Quantification of golgi dispersal and classification using machine learning models

Quantification of golgi dispersal and classification using machine learning models

The Golgi body is a critical organelle in eukaryotic cells responsible for processing and modifying proteins and lipids. Under certain conditions, such as stress, disease, or ageing, the Golgi structure alters. Therefore, understanding the mechanisms that regulate Golgi dispersion has significant research contributions to identifying disease. However, there is a lack of tools to quantify the Golgi dispersion datasets. In this paper, we aim to automate the process of quantification of Golgi dispersion and use extracted features to classify dispersed Golgi images from undispersed Golgi images using machine learning models. First, we collected confocal microscopy images of transiently transfected HeLa cells expressing Galactose-1-phosphate uridylyltransferase (GALT)- green fluorescent protein (GFP) to quantify Golgi dispersal and classification. For the quantification, we introduced automated image processing and segmentation by applying mean and Gaussian filters. Then we used Otsu thresholding on preprocessed images and watershed segmentation to refine the segmentation of dispersed Golgi particles. In the case of classification, we extracted features from the Golgi dispersal images and classified them into empty vector (EV) versus CARP1 ring mutant (CARP1 RM) and empty vector (EV) versus CARP1 wildtype (CARP1 WT) classes. Our approach used machine-learning models, including logistic regression, decision tree, random forest, Naive Bayes, k-Nearest Neighbor (KNN), and gradient boosting for dispersed Golgi image classification. The experiment results show that our quantification technique on Golgi dispersal images reached 65% classification accuracy when the system uses a gradient boosting classifier for EV vs. CARP1 WT classification. Furthermore, our approach achieved 65% classification accuracy using a random forest classifier for EV vs. CARP1 RM classification.

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来源期刊
Micron
Micron 工程技术-显微镜技术
CiteScore
4.30
自引率
4.20%
发文量
100
审稿时长
31 days
期刊介绍: Micron is an interdisciplinary forum for all work that involves new applications of microscopy or where advanced microscopy plays a central role. The journal will publish on the design, methods, application, practice or theory of microscopy and microanalysis, including reports on optical, electron-beam, X-ray microtomography, and scanning-probe systems. It also aims at the regular publication of review papers, short communications, as well as thematic issues on contemporary developments in microscopy and microanalysis. The journal embraces original research in which microscopy has contributed significantly to knowledge in biology, life science, nanoscience and nanotechnology, materials science and engineering.
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