挖掘大规模RNAi-HCS图像数据库的智能接口。

Chen Lin, Wayne Mak, Pengyu Hong, Katharine Sepp, Norbert Perrimon
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引用次数: 0

摘要

近年来,高含量筛选(High-content screening, HCS)与RNA干扰(RNA interference, RNAi)相结合,成为一种基于图像的高通量方法,通过RNAi诱导的细胞表型分析来研究基因和生物网络。然而,全基因组RNAi-HCS筛选通常会产生数万张图像,由于现有HCS图像分析工具的不足,其中大部分仍未分类。到目前为止,它仍然需要训练有素的科学家浏览一个庞大的RNAi-HCS图像数据库,并且只能产生少量关于细胞形态表型的定性结果。因此,我们开发了智能接口,以促进HCS技术在生物医学研究中的应用。我们的新接口使生物学家具有计算能力,不仅可以有效和高效地探索大规模RNAi-HCS图像数据库,而且还可以将他们的知识和经验应用于使用基于内容的图像检索(CBIR)和相关反馈(RF)技术进行细胞表型的交互式挖掘。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent Interfaces for Mining Large-Scale RNAi-HCS Image Databases.

Recently, High-content screening (HCS) has been combined with RNA interference (RNAi) to become an essential image-based high-throughput method for studying genes and biological networks through RNAi-induced cellular phenotype analyses. However, a genome-wide RNAi-HCS screen typically generates tens of thousands of images, most of which remain uncategorized due to the inadequacies of existing HCS image analysis tools. Until now, it still requires highly trained scientists to browse a prohibitively large RNAi-HCS image database and produce only a handful of qualitative results regarding cellular morphological phenotypes. For this reason we have developed intelligent interfaces to facilitate the application of the HCS technology in biomedical research. Our new interfaces empower biologists with computational power not only to effectively and efficiently explore large-scale RNAi-HCS image databases, but also to apply their knowledge and experience to interactive mining of cellular phenotypes using Content-Based Image Retrieval (CBIR) with Relevance Feedback (RF) techniques.

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