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相关概念视频

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Genetic Information Flows from DNA to RNA to Protein
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The gene expression in cells is regulated at different stages: (i) transcription, (ii) RNA processing, (iii) RNA localization, and (iv) translation. Transcriptional regulation is mediated by regulatory proteins such as transcription factors, activators, or repressors—these control gene expression by initiating or inhibiting the transcription of genes. Once a precursor or pre-mRNA is produced, it undergoes post-transcriptional modification, including 5' capping, splicing, and the...
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Microarrays are high-throughput and relatively inexpensive assays that can be automated to analyze large quantities of data at a time. They are used in genome-wide studies to compare gene or protein expression under two varied conditions, such as healthy and diseased states. Microarrays consist of glass or silica slides on which probe molecules are covalently attached through surface functionalization. Most commonly, the slides are prepared through the chemisorption of silanes to silica...
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    科学领域:

    • 基因组学就是基因组学.
    • 计算生物学 计算生物学
    • 发展生物学 发展生物学

    背景情况:

    • 单细胞RNA测序 (scRNAseq) 提供高分辨率的转录组数据,但标准分析往往忽略了基因相互作用.
    • 基因协同表达分析对于理解细胞过程中的协调基因表达至关重要,如发育.
    • 目前分析沿着时间轨迹的基因共同表达的方法受到线性变化假设的限制.

    研究的目的:

    • 开发一个灵活的统计框架,用于模拟scRNAseq数据中的非线性基因共同表达变化,沿着细胞时间轨迹.
    • 为了解决scRNAseq固有的数据特征,如过度分散和零通胀.
    • 识别差异性共同表达模式,为发育过程提供更深入的生物学见解.

    主要方法:

    • 提出了基于copula的统计方法,其中包含了数据驱动的平滑函数.
    • 开发了一个模拟框架,能够处理scRNAseq数据中常见的过度分散和零通胀.
    • 通过模拟研究和将其应用于真实scRNAseq数据集来评估算法的性能.

    主要成果:

    • 提出的基于的方法有效地模拟了非线性基因共同表达动态.
    • 该方法成功地将scRNAseq数据中的过度分散和零通货膨胀纳入并考虑在内.
    • 在使用小鼠模型的 pituitary 胚胎发育中,沿细胞时轨迹确定了差异性共同表达基因对.

    结论:

    • 这种基于囊的新方法通过捕获非线性关系来推进scRNAseq数据中基因协同表达的分析.
    • 这种方法提供了一种更具生物现实的方法来研究在发育过程中协调的基因表达变化.
    • 这些发现为了解复杂生物系统中的遗传相互作用和调节机制提供了新的途径.