12 research outputs found
Defining complex rule-based models in space and over time
Computational biology seeks to understand complex spatio-temporal phenomena across multiple
levels of structural and functional organisation. However, questions raised in this context
are difficult to answer without modelling methodologies that are intuitive and approachable for
non-expert users. Stochastic rule-based modelling languages such as Kappa have been the focus
of recent attention in developing complex biological models that are nevertheless concise,
comprehensible, and easily extensible. We look at further developing Kappa, in terms of how
we might define complex models in both the spatial and the temporal axes.
In defining complex models in space, we address the assumption that the reaction mixture
of a Kappa model is homogeneous and well-mixed. We propose evolutions of the current iteration
of Spatial Kappa to streamline the process of defining spatial structures for different
modelling purposes. We also verify the existing implementation against established results in
diffusion and narrow escape, thus laying the foundations for querying a wider range of spatial
systems with greater confidence in the accuracy of the results.
In defining complex models over time, we draw attention to how non-modelling specialists
might define, verify, and analyse rules throughout a rigorous model development process. We
propose structured visual methodologies for developing and maintaining knowledge base data
structures, incorporating the information needed to construct a Kappa rule-based model. We
further extend these methodologies to deal with biological systems defined by the activity of
synthetic genetic parts, with the hope of providing tractable operations that allow multiple users
to contribute to their development over time according to their area of expertise.
Throughout the thesis we pursue the aim of bridging the divide between information sources
such as literature and bioinformatics databases and the abstracting decisions inherent in a
model. We consider methodologies for automating the construction of spatial models, providing
traceable links from source to model element, and updating a model via an iterative
and collaborative development process. By providing frameworks for modellers from multiple
domains of expertise to work with the language, we reduce the entry barrier and open the field
to further questions and new research
A Bidirectional Collaboration Framework for Bio-Model Development
High-level graph data structures have gained favour in representing biologicalknowledge in a computationally executable form, but the information containedtherein must remain accessible to all users no matter their background. Bidirectionalgraph transformations may be used to synchronise and maintain the consistencyof these graph data structures as they evolve through the process of creatingand refining a bio-model knowledge base. We outline a bidirectional collaborationframework by which users with vastly differing backgrounds may contribute to thedevelopment and evolution of such a knowledge base, and examine a simple example to illustrate its merits. We also identify avenues for further research necessary to refine the framework. No prior biological knowledge is assumed
Human and murine fibroblast single cell transcriptomics reveals fibroblast clusters are differentially affected by ageing, and serum cholesterol
Aims Specific fibroblast markers and in-depth heterogeneity analysis are currently lacking, hindering functional studies in cardiovascular diseases (CVDs). Here, we established cell-type markers and heterogeneity in murine and human arteries and studied the adventitial fibroblast response to CVD and its risk factors hypercholesterolaemia and ageing. Methods and results Murine aorta single-cell RNA-sequencing analysis of adventitial mesenchymal cells identified fibroblast-specific markers. Immunohistochemistry and flow cytometry validated platelet-derived growth factor receptor alpha (PDGFRA) and dipeptidase 1 (DPEP1) across human and murine aorta, carotid, and femoral arteries, whereas traditional markers such as the cluster of differentiation (CD)90 and vimentin also marked transgelin+ vascular smooth muscle cells. Next, pseudotime analysis showed multiple fibroblast clusters differentiating along trajectories. Three trajectories, marked by CD55 (Cd55+), Cxcl chemokine 14 (Cxcl14+), and lysyl oxidase (Lox+), were reproduced in an independent RNA-seq dataset. Gene ontology (GO) analysis showed divergent functional profiles of the three trajectories, related to vascular development, antigen presentation, and/or collagen fibril organization, respectively. Trajectory-specific genes included significantly more genes with known genome-wide associations (GWAS) to CVD than expected by chance, implying a role in CVD. Indeed, differential regulation of fibroblast clusters by CVD risk factors was shown in the adventitia of aged C57BL/6J mice, and mildly hypercholesterolaemic LDLR KO mice on chow by flow cytometry. The expansion of collagen-related CXCL14+ and LOX+ fibroblasts in aged and hypercholesterolaemic aortic adventitia, respectively, coincided with increased adventitial collagen. Immunohistochemistry, bulk, and single-cell transcriptomics of human carotid and aorta specimens emphasized translational value as CD55+, CXCL14+ and LOX+ fibroblasts were observed in healthy and atherosclerotic specimens. Also, trajectory-specific gene sets are differentially correlated with human atherosclerotic plaque traits. Conclusion We provide two adventitial fibroblast-specific markers, PDGFRA and DPEP1, and demonstrate fibroblast heterogeneity in health and CVD in humans and mice. Biological relevance is evident from the regulation of fibroblast clusters by age and hypercholesterolaemia in vivo, associations with human atherosclerotic plaque traits, and enrichment of genes with a GWAS for CVD
Abbreviated BioBrick Prefix and Suffix for More Efficient Primer Design
This Request for Comments (RFC) modifies the assembly standard for biological parts proposed in BBF RFC 10 by removing the NotI restriction site from the BioBrick Prefix and Suffix
Genomic analyses identify hundreds of variants associated with age at menarche and support a role for puberty timing in cancer risk
The timing of puberty is a highly polygenic childhood trait that is epidemiologically associated with various adult diseases. Using 1000 Genomes Project-imputed genotype data in up to similar to 370,000 women, we identify 389 independent signals (P <5 x 10(-8)) for age at menarche, a milestone in female pubertal development. In Icelandic data, these signals explain similar to 7.4% of the population variance in age at menarche, corresponding to similar to 25% of the estimated heritability. We implicate similar to 250 genes via coding variation or associated expression, demonstrating significant enrichment in neural tissues. Rare variants near the imprinted genes MKRN3 and DLK1 were identified, exhibiting large effects when paternally inherited. Mendelian randomization analyses suggest causal inverse associations, independent of body mass index (BMI), between puberty timing and risks for breast and endometrial cancers in women and prostate cancer in men. In aggregate, our findings highlight the complexity of the genetic regulation of puberty timing and support causal links with cancer susceptibility
Genomic analyses identify hundreds of variants associated with age at menarche and support a role for puberty timing in cancer risk
The timing of puberty is a highly polygenic childhood trait that is epidemiologically associated with various adult diseases. Using 1000 Genomes Project–imputed genotype data in up to ~370,000 women, we identify 389 independent signals (P < 5 × 10) for age at menarche, a milestone in female pubertal development. In Icelandic data, these signals explain ~7.4% of the population variance in age at menarche, corresponding to ~25% of the estimated heritability. We implicate ~250 genes via coding variation or associated expression, demonstrating significant enrichment in neural tissues. Rare variants near the imprinted genes MKRN3 and DLK1 were identified, exhibiting large effects when paternally inherited. Mendelian randomization analyses suggest causal inverse associations, independent of body mass index (BMI), between puberty timing and risks for breast and endometrial cancers in women and prostate cancer in men. In aggregate, our findings highlight the complexity of the genetic regulation of puberty timing and support causal links with cancer susceptibility
Single-cell transcriptomics uncovers zonation of function in the mesenchyme during liver fibrosis - Seurat objects
We profile the transcriptomes of ~30,000 mouse single cells to deconvolve the hepatic mesenchyme in healthy and fibrotic liver at high resolution. We reveal spatial zonation of hepatic stellate cells across the liver lobule, designated portal vein-associated HSC and central vein-associated HSC, and uncover an equivalent functional zonation in a mouse model of centrilobular fibrosis. Our work illustrates the power of single-cell transcriptomics to resolve key collagen-producing cells driving liver fibrosis with high precision. We provide the contents of these data as Seurat R objects.Dobie, Ross; Wilson-Kanamori, John Roger; Henderson, Neil. (2020). Single-cell transcriptomics uncovers zonation of function in the mesenchyme during liver fibrosis - Seurat objects, [dataset]. University of Edinburgh Centre for Inflammation Research. https://doi.org/10.7488/ds/2769
Genetic insights into biological mechanisms governing human ovarian ageing.
Reproductive longevity is essential for fertility and influences healthy ageing in women <sup>1,2</sup> , but insights into its underlying biological mechanisms and treatments to preserve it are limited. Here we identify 290 genetic determinants of ovarian ageing, assessed using normal variation in age at natural menopause (ANM) in about 200,000 women of European ancestry. These common alleles were associated with clinical extremes of ANM; women in the top 1% of genetic susceptibility have an equivalent risk of premature ovarian insufficiency to those carrying monogenic FMR1 premutations <sup>3</sup> . The identified loci implicate a broad range of DNA damage response (DDR) processes and include loss-of-function variants in key DDR-associated genes. Integration with experimental models demonstrates that these DDR processes act across the life-course to shape the ovarian reserve and its rate of depletion. Furthermore, we demonstrate that experimental manipulation of DDR pathways highlighted by human genetics increases fertility and extends reproductive life in mice. Causal inference analyses using the identified genetic variants indicate that extending reproductive life in women improves bone health and reduces risk of type 2 diabetes, but increases the risk of hormone-sensitive cancers. These findings provide insight into the mechanisms that govern ovarian ageing, when they act, and how they might be targeted by therapeutic approaches to extend fertility and prevent disease
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Genetic insights into biological mechanisms governing human ovarian ageing.
Reproductive longevity is essential for fertility and influences healthy ageing in women1,2, but insights into its underlying biological mechanisms and treatments to preserve it are limited. Here we identify 290 genetic determinants of ovarian ageing, assessed using normal variation in age at natural menopause (ANM) in about 200,000 women of European ancestry. These common alleles were associated with clinical extremes of ANM; women in the top 1% of genetic susceptibility have an equivalent risk of premature ovarian insufficiency to those carrying monogenic FMR1 premutations3. The identified loci implicate a broad range of DNA damage response (DDR) processes and include loss-of-function variants in key DDR-associated genes. Integration with experimental models demonstrates that these DDR processes act across the life-course to shape the ovarian reserve and its rate of depletion. Furthermore, we demonstrate that experimental manipulation of DDR pathways highlighted by human genetics increases fertility and extends reproductive life in mice. Causal inference analyses using the identified genetic variants indicate that extending reproductive life in women improves bone health and reduces risk of type 2 diabetes, but increases the risk of hormone-sensitive cancers. These findings provide insight into the mechanisms that govern ovarian ageing, when they act, and how they might be targeted by therapeutic approaches to extend fertility and prevent disease.Cambridge:
Claudia Langenberg and Nicholas J Wareham are funded by the Medical Research Council
(MC_UU_12015/1 and MC_UU_00006/1). Nicholas J Wareham is a NIHR Senior Investigator.
Ken Ong, John Perry, Stasa Stankovic and Felix Day are supported by the Medical Research Council
(Unit programmes: MC_UU_12015/2 and MC_UU_00006/2)