Lack of evidence for increased transcriptional noise in aged tissues
Abstract
Aging is often associated with a loss of cell type identity that results in an increase in transcriptional noise in aged tissues. If this phenomenon reflects a fundamental property of aging remains an open question. Transcriptional changes at the cellular level are best detected by single-cell RNA sequencing (scRNAseq). However, the diverse computational methods used for the quantification of age-related loss of cellular identity have prevented reaching meaningful conclusions by direct comparison of existing scRNAseq datasets. To address these issues we created Decibel, a Python toolkit that implements side-to-side four commonly used methods for the quantification of age-related transcriptional noise in scRNAseq data. Additionally, we developed Scallop, a novel computational method for the quantification of membership of single cells to their assigned cell type cluster. Cells with a greater Scallop membership score are transcriptionally more stable. Application of these computational tools to seven aging datasets showed large variability between tissues and datasets, suggesting that increased transcriptional noise is not a universal hallmark of aging. To understand the source of apparent loss of cell type identity associated with aging, we analyzed cell type-specific changes in transcriptional noise and the changes in cell type composition of the mammalian lung. No robust pattern of cell type-specific transcriptional noise alteration was found across aging lung datasets. In contrast, age-associated changes in cell type composition of the lung were consistently found, particularly of immune cells. These results suggest that claims of increased transcriptional noise of aged tissues should be reformulated.
Data availability
Code availabilityThe Decibel and Scallop repositories can be found at https://gitlab.com/olgaibanez/decibel and https: //gitlab.com/olgaibanez/scallop, respectively. The reproducible Jupyter notebooks with the analyses carried out in this study can be found in figshare (https://doi.org/10.6084/m9.figshare.20402817.v1).
-
scRNAseq dataset of murine aging lungGene Expression Omnibus, GSE124872.
-
scRNAseq dataset of murine aging lung, spleen and kidneyGene Expression Omnibus, GSE132901.
-
Human Lung Cell AtlasSynapse, syn21041850.
-
scRNAseq datasets of adult mammalian lungsGene Expression Omnibus, GSE133747.
-
scRNAseq dataset of human aging pancreasGene Expression Omnibus, GSE81547.
-
scRNAseq dataset of human aging skinGene Expression Omnibus, GSE130973.
-
scRNAseq dataset of murine aging brainGene Expression Omnibus, GSE129788.
-
scRNAseq dataset of murine aging dermal fibroblastsGene Expression Omnibus, GSE111136.
Article and author information
Author details
Funding
la Caixa" Foundation " (LCF/BQ/IN18/11660065)
- Olga Ibañez-Solé
Instituto de Salud Carlos III (AC17/00012)
- Olga Ibañez-Solé
- Alex M Ascensión
- Ander Izeta
Instituto de Salud Carlos III (PI19/01621)
- Olga Ibañez-Solé
- Alex M Ascensión
- Ander Izeta
Ministerio de Ciencia e Innovación (PID2020-119715GB-I00)
- Olga Ibañez-Solé
- Alex M Ascensión
- Ander Izeta
European Regional Development Fund (MCIN/AEI/10.13039/501100011033)
- Olga Ibañez-Solé
- Alex M Ascensión
- Ander Izeta
H2020 Marie Skłodowska-Curie Actions (713673)
- Olga Ibañez-Solé
Eusko Jaurlaritza (PRE_2020_2_0081)
- Alex M Ascensión
The funders had no role in study design, data collection and interpretation, or the decision to submit the work for publication.
Copyright
© 2022, Ibañez-Solé et al.
This article is distributed under the terms of the Creative Commons Attribution License permitting unrestricted use and redistribution provided that the original author and source are credited.
Metrics
-
- 3,548
- views
-
- 372
- downloads
-
- 20
- citations
Views, downloads and citations are aggregated across all versions of this paper published by eLife.
Download links
Downloads (link to download the article as PDF)
Open citations (links to open the citations from this article in various online reference manager services)
Cite this article (links to download the citations from this article in formats compatible with various reference manager tools)
Further reading
-
- Computational and Systems Biology
- Physics of Living Systems
Planar cell polarity (PCP) – tissue-scale alignment of the direction of asymmetric localization of proteins at the cell-cell interface – is essential for embryonic development and physiological functions. Abnormalities in PCP can result in developmental imperfections, including neural tube closure defects and misaligned hair follicles. Decoding the mechanisms responsible for PCP establishment and maintenance remains a fundamental open question. While the roles of various molecules – broadly classified into ‘global’ and ‘local’ modules – have been well-studied, their necessity and sufficiency in explaining PCP and connecting their perturbations to experimentally observed patterns have not been examined. Here, we develop a minimal model that captures the proposed features of PCP establishment – a global tissue-level gradient and local asymmetric distribution of protein complexes. The proposed model suggests that while polarity can emerge without a gradient, the gradient not only acts as a global cue but also increases the robustness of PCP against stochastic perturbations. We also recapitulated and quantified the experimentally observed features of swirling patterns and domineering non-autonomy, using only three free model parameters - rate of protein binding to membrane, the concentration of PCP proteins, and the gradient steepness. We explain how self-stabilizing asymmetric protein localizations in the presence of tissue-level gradient can lead to robust PCP patterns and reveal minimal design principles for a polarized system.
-
- Computational and Systems Biology
- Neuroscience
The basolateral amygdala (BLA) is a key site where fear learning takes place through synaptic plasticity. Rodent research shows prominent low theta (~3–6 Hz), high theta (~6–12 Hz), and gamma (>30 Hz) rhythms in the BLA local field potential recordings. However, it is not understood what role these rhythms play in supporting the plasticity. Here, we create a biophysically detailed model of the BLA circuit to show that several classes of interneurons (PV, SOM, and VIP) in the BLA can be critically involved in producing the rhythms; these rhythms promote the formation of a dedicated fear circuit shaped through spike-timing-dependent plasticity. Each class of interneurons is necessary for the plasticity. We find that the low theta rhythm is a biomarker of successful fear conditioning. The model makes use of interneurons commonly found in the cortex and, hence, may apply to a wide variety of associative learning situations.