Application of multiscale algebra and topology to understanding heterogeneity in the immune response to SARS CoV 2 infection

Lead Research Organisation: University of Oxford
Department Name: Wellcome Trust Centre for Human Genetics

Abstract

The basis of variability between patients in their immune response and outcome from acute SARS-Cov-2 infection remains poorly defined, limiting opportunities for targetted intervention. The generation of multi-modal molecular and immunological data sets profiling the immune response across individuals and over time provides opportunities to address this but maximising the informativeness of such datasets remains a major roadblock. Here, we propose to address this through application of state-of-the-art integrative mathematical and computational techniques to analyse data together and extract novel insights. We will use algebraic systems biology approaches to combine algebraic geometry, data tensors, topological data analysis and network theory to encode multidimensional and multi-indexed data in order to identify signatures and cellular drivers of heterogeneity in the host immune response leading to different disease severity. We will apply this to data recently generated by the Oxford COVID-19 Multi-Omic Blood ATlas (COMBAT) consortium which includes high resolution clinical phenotyping, single cell profiling of the cellular blood compartment for composition, repertoire, transcriptomics and epigenomics, the plasma secretome, serology, viral sequencing, metagenomics and host genotyping. Our application is timely and urgent given availability of data and opportunity for impact. The work will promote collaboration between medical and mathematical sciences, promoting cross-disciplinarity. The analysis will provide novel insights into pathophysiology, identify key networks and nodal points for targetted intervention that will enable development of immunmodulatory therapy, and define biomarkers informative for the individual immune response that can be taken forward for validation and enable development of a precision medicine approach to COVID-19.

Publications

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Description This work aimed to develop integrative mathematical and computational methods to analyse multimodal high dimensional biological datasets in order to address unmet needs in the current pandemic, namely to identify signatures and cellular drivers of heterogeneity in the host immune response leading to different disease severity in COVID-19. We have been able to develop an algebraic systems biology approach that advances use of data tensors to increase efficiency and informativeness in a biological context. We have applied this to data from the COVID-19 Multi-Omic Blood ATlas (COMBAT) consortium, analysing linked datsets relating to whole blood transcriptomics, flow and mass cytometry, single cell multi-omics and different plasma proteomic assays. The work has identified new ways to stratify the infection response state of an individual patient, and is being prepared for presentation at an international conference and written up for publication.
Exploitation Route The advances in methodological approach will be relevant to a wide range of complex biological problems and multi-modal datasets, with the growing availability of multi-omic dataset and how to integrate it a current roadblock in this area of science.
Sectors Healthcare