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Bioimaging-based detection of mislocalized proteins in human cancers by semi-supervised learning

机译:通过半监督学习基于生物成像的人类癌症中错误定位的蛋白质检测

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摘要

>Motivation: There is a long-term interest in the challenging task of finding translocated and mislocated cancer biomarker proteins. Bioimages of subcellular protein distribution are new data sources which have attracted much attention in recent years because of their intuitive and detailed descriptions of protein distribution. However, automated methods in large-scale biomarker screening suffer significantly from the lack of subcellular location annotations for bioimages from cancer tissues. The transfer prediction idea of applying models trained on normal tissue proteins to predict the subcellular locations of cancerous ones is arbitrary because the protein distribution patterns may differ in normal and cancerous states.>Results: We developed a new semi-supervised protocol that can use unlabeled cancer protein data in model construction by an iterative and incremental training strategy. Our approach enables us to selectively use the low-quality images in normal states to expand the training sample space and provides a general way for dealing with the small size of annotated images used together with large unannotated ones. Experiments demonstrate that the new semi-supervised protocol can result in improved accuracy and sensitivity of subcellular location difference detection.>Availability and implementation: The data and code are available at: .>Contact: >Supplementary information: are available at Bioinformatics online.
机译:>动机:寻找具有易位和错位的癌症生物标志物蛋白质这一具有挑战性的任务引起了人们的长期兴趣。亚细胞蛋白质分布的生物图像是新的数据来源,近年来由于其对蛋白质分布的直观和详细描述而备受关注。然而,大规模生物标志物筛选中的自动化方法由于缺乏来自癌组织的生物图像的亚细胞定位注释而遭受了极大的困扰。应用在正常组织蛋白质上训练的模型来预测癌性蛋白质的亚细胞位置的转移预测思想是任意的,因为蛋白质分布模式在正常状态和癌性状态下可能会有所不同。>结果:可以通过迭代和增量训练策略在模型构建中使用未标记的癌症蛋白质数据的监督协议。我们的方法使我们能够选择性地使用正常状态下的低质量图像来扩展训练样本空间,并提供了一种用于处理小尺寸注释图像和大尺寸未注释图像的通用方法。实验表明,新的半监督协议可以提高亚细胞位置差异检测的准确性和灵敏性。>可用性和实现:数据和代码可在以下网址获得:。>联系方式: >补充信息:可从Bioinformatics在线获得。

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