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首页> 外文期刊>Investigative ophthalmology & visual science >Automated discovery and quantification of image-based complex phenotypes: A twin study of drusen phenotypes in age-related macular degeneration
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Automated discovery and quantification of image-based complex phenotypes: A twin study of drusen phenotypes in age-related macular degeneration

机译:基于图像的复杂表型的自动发现和定量:与年龄相关的黄斑变性中玻璃疣表型的双胞胎研究

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摘要

Purpose. Determining the relationships between phenotype and genotype of many disorders can improve clinical diagnoses, identify disease mechanisms, and enhance therapy. Most genetic disorders result from interaction of many genes that obscure the discovery of such relationships. The hypothesis for this study was that image analysis has the potential to enable formalized discovery of new visible phenotypes. It was tested in twins affected with age-related macular degeneration (AMD). Methods. Fundus images from 43 monozygotic (MZ) and 32 dizygotic (DZ) twin pairs with AMD were examined. First, soft and hard drusen were segmented. Then newly defined phenotypes were identified by using drusen distribution statistics that significantly separate MZ from DZ twins. The ACE model was used to identify the contributions of additive genetic (A), common environmental (C), and nonshared environmental (E) effects on drusen distribution phenotypes. Results. Four drusen distribution characteristics significantly separated MZ from DZ twin pairs. One encoded the quantity, and the remaining three encoded the spatial distribution of drusen, achieving a zygosity prediction accuracy of 76%, 74%, 68%, and 68%. Three of the four phenotypes had a 55% to 77% genetic effect in an AE model, and the fourth phenotype showed a nonshared environmental effect (E model). Conclusions. Computational discovery of genetically determined features can reveal quantifiable AMD phenotypes that are genetically determined without explicitly linking them to specific genes. In addition, it can identify phenotypes that appear to result predominantly from environmental exposure. The approach is rapid and unbiased, suitable for large datasets, and can be used to reveal unknown phenotype-genotype relationships.
机译:目的。确定许多疾病的表型和基因型之间的关系可以改善临床诊断,确定疾病机制并增强治疗。大多数遗传疾病是由于许多基因的相互作用所致,这些基因使这种关系的发现难以理解。这项研究的假设是图像分析具有实现新的可见表型形式化发现的潜力。在患有年龄相关性黄斑变性(AMD)的双胞胎中进行了测试。方法。检查来自43个单卵(MZ)和32个双卵(DZ)双胞胎与AMD的眼底图像。首先,将软性和硬性玻璃疣分为两部分。然后通过使用玻璃疣分布统计来识别新定义的表型,玻璃疣显着将MZ与DZ双胞胎区分开。 ACE模型用于确定附加遗传(A),共同环境(C)和非共享环境(E)对玻璃疣分布表型的贡献。结果。四个玻璃疣分布特征将MZ与DZ双胞胎对显着分离。其中一个对数量进行了编码,其余三个对玻璃疣的空间分布进行了编码,实现了接合度预测精度为76%,74%,68%和68%。在AE模型中,四种表型中的三种具有55%至77%的遗传效应,而第四种表型表现出非共享的环境效应(E模型)。结论遗传确定的特征的计算发现可以揭示通过遗传确定的可量化的AMD表型,而无需将它们明确链接到特定基因。此外,它可以识别似乎主要由环境暴露引起的表型。该方法快速且无偏见,适用于大型数据集,可用于揭示未知的表型-基因型关系。

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