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Identifying spatially similar gene expression patterns in early stage fruit fly embryo images: binary feature versus invariant moment digital representations

机译:识别早期果蝇胚胎图像中的空间相似基因表达模式:二元特征与不变矩数字表示

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Background Modern developmental biology relies heavily on the analysis of embryonic gene expression patterns. Investigators manually inspect hundreds or thousands of expression patterns to identify those that are spatially similar and to ultimately infer potential gene interactions. However, the rapid accumulation of gene expression pattern data over the last two decades, facilitated by high-throughput techniques, has produced a need for the development of efficient approaches for direct comparison of images, rather than their textual descriptions, to identify spatially similar expression patterns. Results The effectiveness of the Binary Feature Vector (BFV) and Invariant Moment Vector (IMV) based digital representations of the gene expression patterns in finding biologically meaningful patterns was compared for a small (226 images) and a large (1819 images) dataset. For each dataset, an ordered list of images, with respect to a query image, was generated to identify overlapping and similar gene expression patterns, in a manner comparable to what a developmental biologist might do. The results showed that the BFV representation consistently outperforms the IMV representation in finding biologically meaningful matches when spatial overlap of the gene expression pattern and the genes involved are considered. Furthermore, we explored the value of conducting image-content based searches in a dataset where individual expression components (or domains) of multi-domain expression patterns were also included separately. We found that this technique improves performance of both IMV and BFV based searches. Conclusions We conclude that the BFV representation consistently produces a more extensive and better list of biologically useful patterns than the IMV representation. The high quality of results obtained scales well as the search database becomes larger, which encourages efforts to build automated image query and retrieval systems for spatial gene expression patterns.
机译:背景技术现代发育生物学严重依赖于胚胎基因表达模式的分析。研究人员手动检查数百或数千种表达模式,以识别在空间上相似的表达模式,并最终推断潜在的基因相互作用。然而,在过去的二十年中,由于高通量技术的促进,基因表达模式数据的迅速积累,需要开发一种有效的方法来直接比较图像,而不是用文字描述来识别空间相似的表达。模式。结果比较了小型(226张图像)和大型(1819张图像)数据集的基于二进制特征向量(BFV)和不变矩向量(IMV)的基因表达模式数字表示在寻找生物学上有意义的模式方面的有效性。对于每个数据集,生成了与查询图像有关的图像的有序列表,以识别重叠和相似的基因表达模式,其方式与发育生物学家可能采取的方式相当。结果表明,当考虑基因表达模式和所涉及基因的空间重叠时,在寻找生物学上有意义的匹配方面,BFV表现始终优于IMV表现。此外,我们探索了在数据集中进行基于图像内容的搜索的价值,在该数据集中还单独包含了多域表达模式的各个表达成分(或域)。我们发现该技术提高了基于IMV和BFV的搜索的性能。结论我们得出的结论是,BFV表示比IMV表示始终产生更广泛和更好的生物学上有用的模式。随着搜索数据库的扩大,获得的高质量结果的比例也很好,这鼓励了人们为空间基因表达模式建立自动图像查询和检索系统的努力。

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