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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蛋白质定位错误的检测

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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.
机译:动机:对于寻找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有着长期的兴趣。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位置注释而遭受重大困扰。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可能不同。

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