Rapid and accurate developmental stage recognition of C. elegans from high-throughput image data.

Amelia G White, Patricia G Cipriani, Huey-Ling Kao, Brandon Lees, Davi Geiger, Eduardo Sontag, Kristin C Gunsalus, Fabio Piano
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引用次数: 13

Abstract

We present a hierarchical principle for object recognition and its application to automatically classify developmental stages of C. elegans animals from a population of mixed stages. The object recognition machine consists of four hierarchical layers, each composed of units upon which evaluation functions output a label score, followed by a grouping mechanism that resolves ambiguities in the score by imposing local consistency constraints. Each layer then outputs groups of units, from which the units of the next layer are derived. Using this hierarchical principle, the machine builds up successively more sophisticated representations of the objects to be classified. The algorithm segments large and small objects, decomposes objects into parts, extracts features from these parts, and classifies them by SVM. We are using this system to analyze phenotypic data from C. elegans high-throughput genetic screens, and our system overcomes a previous bottleneck in image analysis by achieving near real-time scoring of image data. The system is in current use in a functioning C. elegans laboratory and has processed over two hundred thousand images for lab users.

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基于高通量图像数据的秀丽隐杆线虫发育阶段快速准确识别。
我们提出了一种目标识别的分层原则,并将其应用于秀丽隐杆线虫动物从混合阶段群体中自动分类发育阶段。目标识别机器由四个分层层组成,每个层由评估函数输出标签分数的单元组成,然后是一个分组机制,通过施加局部一致性约束来解决分数中的歧义。然后每一层输出一组单位,从这些单位中导出下一层的单位。利用这一层次原则,机器建立了要分类的对象的连续更复杂的表示。该算法对大小目标进行分割,将目标分解为多个部分,从这些部分中提取特征,并通过SVM进行分类。我们正在使用该系统分析秀丽隐杆线虫高通量遗传筛选的表型数据,我们的系统克服了以前图像分析的瓶颈,实现了图像数据的近实时评分。该系统目前在一个正常运行的秀丽隐杆线虫实验室中使用,并已为实验室用户处理了20多万张图像。
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