差异表达和共表达揭示了与遗传疾病表型相关的细胞类型。

Sergio Alías-Segura, Florencio Pazos, Monica Chagoyen
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引用次数: 0

摘要

动机了解罕见病中受基因改变影响的特定细胞类型对于促进诊断和治疗至关重要。尽管取得了重大进展,但大多数罕见病表现所涉及的细胞类型在很大程度上仍然未知。在这项研究中,我们整合了来自非患病样本的scRNA-seq数据、已知遗传紊乱基因和表型信息,预测了482种疾病表型中被致病突变破坏的特定细胞类型:结果:我们发现了表型与细胞类型之间的重要关联,重点是差异表达和共表达机制。我们的分析表明,文献中记载的关联有 13% 是通过差异表达捕获的,而 42% 是通过共表达分析阐明的,同时还发现了潜在的新关联。这些发现强调了细胞环境在疾病表现中的关键作用,并凸显了单细胞数据在开发细胞感知诊断和罕见病靶向疗法方面的潜力:本研究中生成的所有代码可在 https://github.com/SergioAlias/sc-coex.Supplementary 信息中获取:补充数据可在 Bioinformatics online 上获取。
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Differential expression and co-expression reveal cell types relevant to genetic disorder phenotypes.

Motivation: Knowledge of the specific cell types affected by genetic alterations in rare diseases is crucial for advancing diagnostics and treatments. Despite significant progress, the cell types involved in the majority of rare disease manifestations remain largely unknown. In this study, we integrated scRNA-seq data from non-diseased samples with known genetic disorder genes and phenotypic information to predict the specific cell types disrupted by pathogenic mutations for 482 disease phenotypes.

Results: We found significant phenotype-cell type associations focusing on differential expression and co-expression mechanisms. Our analysis revealed that 13% of the associations documented in the literature were captured through differential expression, while 42% were elucidated through co-expression analysis, also uncovering potential new associations. These findings underscore the critical role of cellular context in disease manifestation and highlight the potential of single-cell data for the development of cell-aware diagnostics and targeted therapies for rare diseases.

Availability and implementation: All code generated in this work is available at https://github.com/SergioAlias/sc-coex.

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