Stanley Natalie, Dhawka Luvna, Jaikumar Sneha, Huang Yu-Chen, Zannas Anthony S
Department of Computer Science and Computational Medicine Program, The University of North Carolina at Chapel Hill, Chapel Hill, North Carolina, USA.
Department of Genetics, The University of North Carolina at Chapel Hill, Chapel Hill, North Carolina, USA.
Aging Cell. 2025 Aug;24(8):e70095. doi: 10.1111/acel.70095. Epub 2025 May 15.
"Biological aging clocks"-composite molecular markers thought to capture an individual's biological age-have been traditionally developed through bulk-level analyses of mixed cells and tissues. However, recent evidence highlights the importance of gaining single-cell-level insights into the aging process. Microglia are key immune cells in the brain shown to adapt functionally in aging and disease. Recent studies have generated single-cell RNA-sequencing (scRNA-seq) datasets that transcriptionally profile microglia during aging and development. Leveraging such datasets in humans and mice, we develop and compare computational approaches for generating transcriptome-wide summaries from microglia to establish robust and applicable aging clocks. Our results reveal that unsupervised, frequency-based summarization approaches, which encode distributions of cells across molecular subtypes, strike a balance in accuracy, interpretability, and computational efficiency. Notably, our computationally derived microglia markers achieve strong accuracy in predicting chronological age across three diverse single-cell datasets, suggesting that microglia exhibit characteristic changes in gene expression during aging and development that can be computationally summarized to create robust markers of biological aging. We further extrapolate and demonstrate the applicability of single-cell-based microglia clocks to readily available bulk RNA-seq data with an environmental input (early life stress), indicating the potential for broad utility of our models across genomic modalities and for testing hypotheses about how environmental inputs affect brain age. Such single-cell-derived markers can yield insights into the determinants of brain aging, ultimately promoting interventions that beneficially modulate health and disease trajectories.
“生物衰老时钟”——被认为能够捕捉个体生物年龄的复合分子标记——传统上是通过对混合细胞和组织进行整体水平分析而开发出来的。然而,最近的证据凸显了在单细胞水平深入了解衰老过程的重要性。小胶质细胞是大脑中的关键免疫细胞,已被证明在衰老和疾病过程中会发生功能适应性变化。最近的研究生成了单细胞RNA测序(scRNA-seq)数据集,对衰老和发育过程中的小胶质细胞进行了转录组分析。利用人类和小鼠的此类数据集,我们开发并比较了从小胶质细胞生成全转录组摘要的计算方法,以建立稳健且适用的衰老时钟。我们的结果表明,无监督的、基于频率的摘要方法,即对跨分子亚型的细胞分布进行编码,在准确性、可解释性和计算效率之间取得了平衡。值得注意的是,我们通过计算得出的小胶质细胞标记在预测三个不同单细胞数据集的实际年龄方面具有很高的准确性,这表明小胶质细胞在衰老和发育过程中表现出基因表达的特征性变化,这些变化可以通过计算进行总结,以创建稳健的生物衰老标记。我们进一步推断并证明了基于单细胞的小胶质细胞时钟在具有环境输入(早期生活压力)的现成批量RNA-seq数据中的适用性,这表明我们的模型在跨基因组模式方面具有广泛应用的潜力,并且可以用于检验关于环境输入如何影响脑年龄的假设。这种源自单细胞的标记可以深入了解脑衰老的决定因素,最终促进有益地调节健康和疾病轨迹的干预措施。