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A way towards analyzing high-content bioimage data bymeans of semantic annotation and visual data mining

机译:分析语义注释和视觉数据挖掘的高内容生物贴图数据的方法

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In the last years, bioimaging has turned from qualitative measurements towards a high-throughput and high-content modality, providing multiple variables for each biological sample analyzed. We present a system which combines machine learning based semantic image annotation and visual data mining to analyze such new mul-tivariate bioimage data. Machine learning is employed for automatic semantic annotation of regions of interest. The annotation is the prerequisite for a biological object-oriented exploration of the feature space derived from the image variables. With the aid of visual data mining, the obtained data can be explored simultaneously in the image as well as in the feature domain. Especially when little is known of the underlying data, for exam-ple in the case of exploring the effects of a drug treatment, visual data mining can greatly aid the process of data evaluation. We demonstrate how our system is used for image evaluation to obtain information relevant to diabetes study and screening of new anti-diabetes treatments. Cells of the Islet of Langerhans and whole pancreas in pancreas tissue samples are annotated and object specific molecular features are extracted from aligned multichannel fluorescence images. These are interactively evaluated for cell type classification in order to determine the cell number and mass. Only few parameters need to be specified which makes it usable also for non computer experts and allows for high-throughput analysis.
机译:在过去几年中,生物成像从定性测量转向高通量和高含量的模态,为分析的每个生物样本提供多个变量。我们提出了一个组合基于机器学习的语义图像注释和视觉数据挖掘的系统,分析了这种新的MUL-Tivariate生物贴图数据。机器学习用于自动语义注释的感兴趣区域。注释是对从图像变量导出的特征空间的生物对象探索的先决条件。借助视觉数据挖掘,可以在图像中同时探索所获得的数据以及特征域中。特别是当涉及潜在数据的底层数据时,对于探索药物治疗的效果的考试,可视化数据挖掘可以大大帮助数据评估过程。我们展示了我们的系统如何用于图像评估,以获取与糖尿病研究相关的信息和新的抗糖尿病治疗。胰岛胰岛的细胞和胰腺组织样品中的整个胰腺被注释,并且从对齐的多通道荧光图像中提取物体特异性分子特征。这些被互动地评估细胞类型分类,以确定细胞数和质量。只需要指定少数参数,这也使其可用于非计算机专家并允许高通量分析。

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