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Interactive Computer-Assisted Approach for Evaluation of Ultrastructural Cilia Abnormalities

机译:交互式计算机辅助方法评估超微结构纤毛异常

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Introduction - Diagnosis of abnormal cilia function is based on ultrastructural analysis of axoneme defects, especialy the features of inner and outer dynein arms which are the motors of ciliar motility. Sub-optimal biopsy material, methodical, and intrinsic electron microscopy factors pose difficulty in ciliary defects evaluation. We present a computer-assisted approach based on state-of-the-art image analysis and object recognition methods yielding a time-saving and efficient diagnosis of cilia dysfunction. Method - The presented approach is based on a pipeline of basal image processing methods like smoothing, thresholding and ellipse fitting. However, integration of application specific knowledge results in robust segmentations even in cases of image artifacts. The method is build hierarchically starting with the detection of cilia within the image, followed by the detection of nine doublets within each analyzable cilium, and ending with the detection of dynein arms of each doublet. The process is concluded by a rough classification of the dynein arms as basis for a computer-assisted diagnosis. Additionally, the interaction possibilities are designed in a way, that the results are still reproducible given the completion report. Results - A qualitative evaluation showed reasonable detection results for cilia, doublets and dynein arms. However, since a ground truth is missing, the variation of the computer-assisted diagnosis should be within the subjective bias of human diagnosticians. The results of a first quantitative evaluation with five human experts and six images with 12 analyzable cilia showed, that with default parameterization 91.6% of the cilia and 98% of the doublets were found. The computer-assisted approach rated 66% of those inner and outer dynein arms correct, where all human experts agree. However, especially the quality of the dynein arm classification may be improved in future work.
机译:简介-纤毛功能异常的诊断是基于对轴突缺损的超微结构分析,特别是内侧和外侧达因臂的特征,它们是纤毛运动的动力。次优的活检材料,方法学和内在电子显微镜因素难以评估睫状体缺陷。我们提出了一种基于最新图像分析和对象识别方法的计算机辅助方法,该方法可节省时间并有效地诊断纤毛功能障碍。方法-提出的方法基于一系列基础图像处理方法,例如平滑,阈值和椭圆拟合。但是,即使在出现图像伪像的情况下,特定于应用程序的知识的集成也会导致可靠的分割。该方法是分层构建的,首先检测图像中的纤毛,然后检测每个可分析纤毛中的九个双合体,最后检测每个双合体的动力蛋白臂。该过程以对动力蛋白臂的粗略分类作为计算机辅助诊断的基础而结束。此外,交互可能性的设计方式是,在完成报告的情况下,结果仍可重现。结果-定性评估显示纤毛,双峰和达因臂的合理检测结果。但是,由于缺少基本事实,因此计算机辅助诊断的变化应在人类诊断医生的主观偏见之内。由五位人类专家和六幅具有12个可分析纤毛的图像进行的首次定量评估的结果表明,默认设置下,纤毛的91.6%和双峰的98%被发现。在所有人类专家都同意的情况下,计算机辅助方法对66%的内部和外部动力因臂的正确性进行了评估。但是,尤其是在将来的工作中,动力蛋白臂分类的质量可能会得到改善。

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