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交互式机器学习可实现快速而稳健的细胞分析。

Interactive machine learning for fast and robust cell profiling.

机构信息

School of Computing Science, University of Glasgow, Glasgow, Scotland.

School of Engineering, Biomedical Engineering, University of Glasgow, Glasgow, Scotland.

出版信息

PLoS One. 2020 Sep 11;15(9):e0237972. doi: 10.1371/journal.pone.0237972. eCollection 2020.

Abstract

Automated profiling of cell morphology is a powerful tool for inferring cell function. However, this technique retains a high barrier to entry. In particular, configuring image processing parameters for optimal cell profiling is susceptible to cognitive biases and dependent on user experience. Here, we use interactive machine learning to identify the optimum cell profiling configuration that maximises quality of the cell profiling outcome. The process is guided by the user, from whom a rating of the quality of a cell profiling configuration is obtained. We use Bayesian optimisation, an established machine learning algorithm, to learn from this information and automatically recommend the next configuration to examine with the aim of maximising the quality of the processing or analysis. Compared to existing interactive machine learning tools that require domain expertise for per-class or per-pixel annotations, we rely on users' explicit assessment of output quality of the cell profiling task at hand. We validated our interactive approach against the standard human trial-and-error scheme to optimise an object segmentation task using the standard software CellProfiler. Our toolkit enabled rapid optimisation of an object segmentation pipeline, increasing the quality of object segmentation over a pipeline optimised through trial-and-error. Users also attested to the ease of use and reduced cognitive load enabled by our machine learning strategy over the standard approach. We envision that our interactive machine learning approach can enhance the quality and efficiency of pipeline optimisation to democratise image-based cell profiling.

摘要

细胞形态的自动分析是推断细胞功能的有力工具。然而,这种技术仍然存在很高的进入门槛。特别是,为了获得最佳的细胞分析效果,配置图像处理参数容易受到认知偏差的影响,并且依赖于用户的经验。在这里,我们使用交互式机器学习来确定最佳的细胞分析配置,以最大化细胞分析结果的质量。这个过程由用户引导,用户需要对细胞分析配置的质量进行评分。我们使用贝叶斯优化(一种已建立的机器学习算法)来学习这些信息,并自动推荐下一个要检查的配置,以达到最大化处理或分析质量的目的。与现有的交互式机器学习工具相比,我们不需要针对每类或每个像素进行注释的领域专业知识,而是依赖于用户对当前细胞分析任务输出质量的明确评估。我们使用标准软件 CellProfiler 来验证我们的交互式方法在优化对象分割任务方面的有效性,该方法通过标准的人工反复试验来优化。我们的工具包能够快速优化对象分割管道,提高对象分割的质量,超过了通过反复试验优化的管道。用户还证明了我们的机器学习策略相对于标准方法具有易用性和降低认知负担的优势。我们设想我们的交互式机器学习方法可以提高管道优化的质量和效率,使基于图像的细胞分析更加普及。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/951a/7485821/16b4d1267a82/pone.0237972.g001.jpg

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