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首页> 外文期刊>Journal of biomolecular screening: The official journal of the Society for Biomolecular Screening >Active Learning Strategies for Phenotypic Profiling of High-Content Screens
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Active Learning Strategies for Phenotypic Profiling of High-Content Screens

机译:高内涵屏幕表型分析的主动学习策略

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High-content screening is a powerful method to discover new drugs and carry out basic biological research. Increasingly, high-content screens have come to rely on supervised machine learning (SML) to perform automatic phenotypic classification as an essential step of the analysis. However, this comes at a cost, namely, the labeled examples required to train the predictive model. Classification performance increases with the number of labeled examples, and because labeling examples demands time from an expert, the training process represents a significant time investment. Active learning strategies attempt to overcome this bottleneck by presenting the most relevant examples to the annotator, thereby achieving high accuracy while minimizing the cost of obtaining labeled data. In this article, we investigate the impact of active learning on single-cell–based phenotype recognition, using data from three large-scale RNA interference high-content screens representing diverse phenotypic profiling problems. We consider several combinations of active learning strategies and popular SML methods. Our results show that active learning significantly reduces the time cost and can be used to reveal the same phenotypic targets identified using SML. We also identify combinations of active learning strategies and SML methods which perform better than others on the phenotypic profiling problems we studied.
机译:高含量筛选是发现新药和进行基础生物学研究的有力方法。作为分析的重要步骤,高内涵屏幕越来越多地依靠监督机器学习(SML)来执行自动表型分类。然而,这是有代价的,即训练预测模型所需的标记示例。分类性能随标记示例的数量而增加,并且由于标记示例需要专家花费时间,因此培训过程代表了大量的时间投入。主动学习策略试图通过向注释者展示最相关的示例来克服这一瓶颈,从而在降低获取标签数据成本的同时实现高精度。在本文中,我们使用来自代表各种表型分析问题的三个大规模RNA干扰高内涵筛选的数据,研究了主动学习对基于单细胞的表型识别的影响。我们考虑主动学习策略和流行的SML方法的几种组合。我们的结果表明,主动学习可显着减少时间成本,并可用于揭示使用SML识别出的相同表型靶标。我们还确定了主动学习策略和SML方法的组合,它们在我们研究的表型分析问题上比其他方法表现更好。

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