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首页> 外文期刊>Journal of Microscopy >Information content analysis in automated microscopy imaging using an adaptive autofocus algorithm for multimodal functions.
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Information content analysis in automated microscopy imaging using an adaptive autofocus algorithm for multimodal functions.

机译:使用多模态功能的自适应自动聚焦算法,在自动显微镜成像中进行信息内容分析。

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摘要

We present a new algorithm to analyse information content in images acquired using automated fluorescence microscopy. The algorithm belongs to the group of autofocusing methods, but differs from its predecessors in that it can handle thick specimens and operate also in confocal mode. It measures the information content in images using a 'content function', which is essentially the same concept as a focus function. Unlike previously presented algorithms, this algorithm tries to find all significant axial positions in cases where the content function applied to real data is not unimodal, which is often the case. This requirement precludes using algorithms that rely on unimodality. Moreover, choosing a content function requires careful consideration, because some functions suppress local maxima. First, we test 19 content functions and evaluate their ability to show local maxima clearly. The results show that only six content functions succeed. To save time, the acquisition procedure needs to vary the step size adaptively, because a wide range of possible axial positions has to be passed so as not to miss a local maximum. The algorithm therefore has to assess the steepness of the content function online so that it can decide to use a bigger or smaller step size to acquire the next image. Therefore, the algorithm needs to know about typical behaviour of content functions. We show that for normalized variance, one of the most promising content functions, this knowledge can be obtained after normalizing with respect to the theoretical maximum of this function, and using hierarchical clustering. The resulting algorithm is more reliable and efficient than a simple procedure with constant steps.
机译:我们提出了一种新的算法来分析使用自动荧光显微镜获得的图像中的信息内容。该算法属于自动聚焦方法组,但与之前的算法不同之处在于,它可以处理较厚的样本,并且也可以共焦模式操作。它使用“内容功能”来测量图像中的信息内容,该功能本质上与聚焦功能相同。与以前介绍的算法不同,在应用于实际数据的内容函数不是单峰的情况下(通常是这种情况),该算法尝试查找所有重要的轴向位置。该要求排除了使用依赖于单峰性的算法。此外,选择内容功能需要仔细考虑,因为某些功能会抑制局部最大值。首先,我们测试19个内容函数,并评估它们清楚显示局部最大值的能力。结果表明,只有六个内容功能成功。为了节省时间,采集程序需要适应性地改变步长,因为必须传递大范围的可能的轴向位置,以免错过局部最大值。因此,该算法必须在线评估内容函数的陡度,以便可以决定使用更大或更小的步长来获取下一个图像。因此,该算法需要了解内容功能的典型行为。我们表明,对于归一化方差(最有前途的内容函数之一),可以在相对于该函数的理论最大值进行归一化之后并使用层次聚类来获得此知识。所得算法比具有恒定步骤的简单过程更可靠,更有效。

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