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Image-based crystal detection: a machine-learning approach

机译:基于图像的晶体检测:一种机器学习方法

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摘要

The ability of computers to learn from and annotate large databases of crystallization-trial images provides not only the ability to reduce the workload of crystallization studies, but also an opportunity to annotate crystallization trials as part of a framework for improving screening methods. Here, a system is presented that scores sets of images based on the likelihood of containing crystalline material as perceived by a machine-learning algorithm. The system can be incorporated into existing crystallization-analysis pipelines, whereby specialists examine images as they normally would with the exception that the images appear in rank order according to a simple real-valued score. Promising results are shown for 319 112 images associated with 150 structures solved by the Joint Center for Structural Genomics pipeline during the 2006–2007 year. Overall, the algorithm achieves a mean receiver opera­ting characteristic score of 0.919 and a 78% reduction in human effort per set when considering an absolute score cutoff for screening images, while incurring a loss of five out of 150 structures.
机译:计算机从大型结晶试验图像数据库中学习和注释的能力不仅提供了减少结晶研究工作量的能力,而且还提供了对结晶试验进行注释的机会,以此作为改进筛选方法的框架的一部分。在这里,提出了一种系统,该系统根据机器学习算法感知到的包含结晶物质的可能性对图像集进行评分。该系统可以合并到现有的结晶分析流水线中,从而专家可以像通常那样检查图像,只是图像根据简单的实值得分按等级顺序显示。在2006-2007年期间,通过结构基因组学联合研究中心解决的与150个结构相关的319×112张图像显示了有希望的结果。总的来说,当考虑筛选图像的绝对分数截止值时,该算法获得的平均接收机操作特性得分为0.919,每套系统的人工工作量减少了78%,同时导致150种结构中的五种损失。

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