Aligning Orphanet Classification to Identify Disease Characteristics among Rare Disease Clusters.

Sungrim Moon, Jessica Maine, Ewy Mathe, Qian Zhu
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引用次数: 0

Abstract

Understanding the underlying etiologies of rare diseases may facilitate research across multiple conditions, enabling basket trail design and drug repurposing. In this study, we aligned clusters of rare diseases with Orphanet classifications to represent their shared etiologies and establish a foundation for further investigation on underly biological mechanism discovery. By utilizing the linearized Orphanet categories, we connected 35 clusters of rare diseases into 18 classifications. Significant associations were found between the categories "Rare Developmental Defects During Embryogenesis" and "Rare Inborn Errors of Metabolism" and the clusters in this study, suggesting that many rare diseases originating in the prenatal period or related to metabolism may present a substantial opportunity for success in future investigation.

调整孤儿分类以识别罕见疾病群中的疾病特征。
了解罕见病的潜在病因可以促进多种疾病的研究,使篮子试验设计和药物再利用成为可能。在这项研究中,我们将罕见病的聚类与Orphanet分类相结合,以代表它们共同的病因,并为进一步研究潜在的生物学机制发现奠定基础。利用线性化的Orphanet分类,我们将35个罕见病群划分为18个类别。在本研究中,“罕见的胚胎发育缺陷”和“罕见的先天性代谢错误”这两个类别与本研究的聚类之间发现了显著的关联,这表明许多起源于产前或与代谢相关的罕见疾病可能为未来的研究提供了巨大的成功机会。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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