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An image score inference system for RNAi genome-wide screening based on fuzzy mixture regression modeling

机译:基于模糊混合回归模型的RNAi全基因组筛选图像评分推断系统

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摘要

With recent advances in fluorescence microscopy imaging techniques and methods of gene knock down by RNA interference (RNAi), genome-scale high-content screening (HCS) has emerged as a powerful approach to systematically identify all parts of complex biological processes. However, a critical barrier preventing fulfillment of the success is the lack of efficient and robust methods for automating RNAi image analysis and quantitative evaluation of the gene knock down effects on huge volume of HCS data. Facing such opportunities and challenges, we have started investigation of automatic methods towards the development of a fully automatic RNAi-HCS system. Particularly important are reliable approaches to cellular phenotype classification and image-based gene function estimation.We have developed a HCS analysis platform that consists of two main components: fluorescence image analysis and image scoring. For image analysis, we used a two-step enhanced watershed method to extract cellular boundaries from HCS images. Segmented cells were classified into several predefined phenotypes based on morphological and appearance features. Using statistical characteristics of the identified phenotypes as a quantitative description of the image, a score is generated that reflects gene function. Our scoring model integrates fuzzy gene class estimation and single regression models. The final functional score of an image was derived using the weighted combination of the inference from several support vector-based regression models. We validated our phenotype classification method and scoring system on our cellular phenotype and gene database with expert ground truth labeling.We built a database of high-content, 3-channel, fluorescence microscopy images of Drosophila Kc167 cultured cells that were treated with RNAi to perturb gene function. The proposed informatics system for microscopy image analysis is tested on this database. Both of the two main components, automated phenotype classification and image scoring system, were evaluated. The robustness and efficiency of our system were validated in quantitatively predicting the biological relevance of genes.
机译:随着荧光显微镜成像技术和通过RNA干扰(RNAi)敲除基因的方法的最新发展,基因组规模的高内涵筛选(HCS)已成为一种有系统的方法,可以系统地识别复杂生物过程的所有部分。然而,阻碍成功实现的一个关键障碍是缺乏有效和鲁棒的方法来自动化RNAi图像分析和定量评估基因敲除对大量HCS数据的影响。面对这样的机遇和挑战,我们已经开始研究用于开发全自动RNAi-HCS系统的自动方法。可靠的细胞表型分类和基于图像的基因功能估计方法尤为重要。我们开发了一个HCS分析平台,该平台由两个主要部分组成:荧光图像分析和图像评分。对于图像分析,我们使用了两步增强分水岭方法从HCS图像提取细胞边界。根据形态和外观特征,将分割的细胞分为几种预定义的表型。使用识别出的表型的统计特征作为图像的定量描述,可以生成反映基因功能的得分。我们的评分模型整合了模糊基因类别估计和单一回归模型。图像的最终功能评分是使用来自几种基于支持向量的回归模型的推断的加权组合得出的。我们在细胞表型和基因数据库上通过专家地面真相标记验证了我们的表型分类方法和评分系统,并建立了果蝇Kc167培养细胞的高含量,3通道荧光显微镜图像数据库,该细胞经RNAi干扰后进行了扰动基因功能。在此数据库上测试了用于显微镜图像分析的建议信息系统。评价了两个主要组成部分,即自动表型分类和图像评分系统。我们的系统的鲁棒性和效率在定量预测基因的生物学相关性方面得到了验证。

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