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Dr Quan Nguyen
Dr

Quan Nguyen

Email: 
Phone: 
+61 7 334 62394

Overview

Background

Dr Quan Nguyen is a Group Leader at the Institute for Molecular Bioscience (IMB), The University of Queensland. He is leading the Genomics and Machine Learning (GML) lab to study neuroinflammation and cancer-immune cells at single-cell resolution and within spatial morphological tissue context. His research interest is about revealing gene and cell regulators that determine the states of the complex cancer and neuronal ecosystems. Particularly, he is interested in quantifying cellular diversity and the dynamics of cell-cell interactions within the tissues to find ways to improve cancer diagnosis or cell-type specific treatments or the immunoinflammation responses that cause neuronal disease.

Using machine learning and genomic approaches, his group are integrating single-cell spatiotemporal sequencing data with tissue imaging data to find causal links between cellular genotypes, tissue microenvironment, and disease phenotypes. GML lab is also developing experimental technologies that enable large-scale profiling of spatial gene and protein expression (spatial omics) in a range of cancer tissues (focusing on brain and skin cancer) and in mouse brain and spinal cord.

Dr Quan Nguyen completed a PhD in Bioengineering at the University of Queensland in 2013, postdoctoral training in Bioinformatics at RIKEN institute in Japan in 2015, a CSIRO Office of Chief Executive (OCE) Research Fellowship in 2016, an IMB Fellow in 2018, an Australian Research Council DECRA fellowship (2019-2021), and is currently a National Health and Medical Research Council leadership fellow (EL2). He has published in top-tier journals, including Cell, Cell Stem Cell, Nature Methods, Nature Protocols, Nature Communications, Genome Research, Genome Biology and a prize-winning paper in GigaScience. In the past three years, he has contributed to the development of x8 open-source software, x2 web applications, and x4 databases for analysis of single-cell data and spatial transcriptomics. He is looking for enthusiastic research students and research staff to join his group.

Availability

Dr Quan Nguyen is:
Available for supervision
Media expert

Qualifications

  • Doctor of Philosophy, The University of Queensland

Research interests

  • Biomedical Machine Learning

    His research focusses on integrating single cell spatiotemporal data with large-scale population genomics data to find causal relationship between DNA variants, gene expression and diseases. Using machine learning approaches to analyse multidimensional sequencing and imaging data, he computationally reconstructs biological regulatory networks between genes in a cell and cells within a tissue. The systematic understanding of regulatory networks and biomarkers that are specific to individuals and cell types will contribute to early disease diagnosis, targeted drug discovery and precision medicine.

Research impacts

Genomics research for the past decade has relied on data from bulk sequencing of dissociated tissues. The problem with this approach is it discards both intercellular variation among cancer cells and spatial information within a tumour. Dr Nguyen's Cancer Spatial Omics (CSO) program applied spatial omics and machine learning to contextualise cellular genomics landscape within tumour biopsies and across patients. CSO's reach is well entrenched within national and international clinical collaborations where it is already having clinical impact by improving cancer histological diagnosis, and it is empowering a wide field of researchers and clinicians.

His CSO program has advanced understandings of cellular ecosystems in health and disease:

- resolved intra- and inter-patient heterogeneity (Genome Biol, 2019 & 2021)

- spatially maped cellular microenvironment (Cell, 2020; bioRxiv125658v1, 2020; J Immunother Cancer, 2020)

- discovered gene (dys)regulations underlying cell differentiation and proliferation (Cell Stem Cell, 2018; Nat communs 2017, 2017, 2021)

- found new cell types (Genome Res, 2018; EMBO journal, 2019; Genome Biol, 2021)

- transformed digital pathology diagnosis applications (Bioinformatics, 2020; Artificial Neural Networks, 2020; bioRxiv436004; bioRxiv125658v1)

- produced software to enhance analysis capability (GigaScience, 2018; Genome Biol 2019 & 2019; Cell Systems, 2020; Bioinformatics, 2020; bioRxiv125658v1)

- developed new genomics technologies (Nat Prot, 2018; Cell, 2020; Genome Biol, 2021).

Works

Search Professor Quan Nguyen’s works on UQ eSpace

97 works between 2000 and 2024

81 - 97 of 97 works

2017

Journal Article

A damaged genome's transcriptional landscape through multilayered expression profiling around in situ-mapped DNA double-strand breaks

Iannelli, Fabio, Galbiati, Alessandro, Capozzo, Ilaria, Nguyen, Quan, Magnuson, Brian, Michelini, Flavia, D'Alessandro, Giuseppina, Cabrini, Matteo, Roncador, Marco, Francia, Sofia, Crosetto, Nicola, Ljungman, Mats, Carninci, Piero and di Fagagna, Fabrizio d'Adda (2017). A damaged genome's transcriptional landscape through multilayered expression profiling around in situ-mapped DNA double-strand breaks. Nature Communications, 8 (1) 15656, 15656. doi: 10.1038/ncomms15656

A damaged genome's transcriptional landscape through multilayered expression profiling around in situ-mapped DNA double-strand breaks

2017

Journal Article

DNA damage response inhibition at dysfunctional telomeres by modulation of telomeric DNA damage response RNAs

Rossiello, Francesca, Aguado, Julio, Sepe, Sara, Iannelli, Fabio, Nguyen, Quan, Pitchiaya, Sethuramasundaram, Carninci, Piero and Di Fagagna, Fabrizio d’Adda (2017). DNA damage response inhibition at dysfunctional telomeres by modulation of telomeric DNA damage response RNAs. Nature Communications, 8 (1) 13980, 13980. doi: 10.1038/ncomms13980

DNA damage response inhibition at dysfunctional telomeres by modulation of telomeric DNA damage response RNAs

2016

Journal Article

In vitro production of baculoviruses: identifying host and virus genes associated with high productivity

Nguyen, Quan, Tran, Trinh Tb, Chan, Leslie C. L., Nielsen, Lars K. and Reid, Steven (2016). In vitro production of baculoviruses: identifying host and virus genes associated with high productivity. Applied Microbiology and Biotechnology, 100 (21), 1-15. doi: 10.1007/s00253-016-7774-3

In vitro production of baculoviruses: identifying host and virus genes associated with high productivity

2016

Conference Publication

S0125 Changing patterns of genomic variability following domestication of sheep

Sanchez, M. Naval, Brauning, R., Clarke, S. M., Nguyen, Q., McCulloch, A., Cockett, N. E., Zamani, W., Pompanon, F., Taberlet, P., McWilliam, S., Daetwyler, H. and Kijas, J. (2016). S0125 Changing patterns of genomic variability following domestication of sheep. Cary, NC, United States: Oxford University Press. doi: 10.2527/jas2016.94supplement413x

S0125 Changing patterns of genomic variability following domestication of sheep

2016

Conference Publication

Predicting regulatory SNPs within enhancers and promoters in cattle

Nguyen, Q., Tellam, R. L., Kijas, J., Barendse, W. and Dalrymple, B. P. (2016). Predicting regulatory SNPs within enhancers and promoters in cattle. Functional Annotation of Animal Genomes (FAANG) Joint ASAS-ISAG Symposium, Salt Lake City, Utah, United States, July 23 2016. Cary, NC United States: Oxford University Press (OUP). doi: 10.2527/jas2016.94supplement432a

Predicting regulatory SNPs within enhancers and promoters in cattle

2015

Book Chapter

Expression specificity of disease-associated lncRNAs: toward personalized medicine

Nguyen, Quan and Carninci, Piero (2015). Expression specificity of disease-associated lncRNAs: toward personalized medicine. Long non-coding RNAs in human disease. (pp. 237-258) edited by Kevin V. Morris. Cham, Switerland: Springer International Publishing. doi: 10.1007/82_2015_464

Expression specificity of disease-associated lncRNAs: toward personalized medicine

2014

Journal Article

Farmer portfolios, strategic diversity management and climate-change adaptation - implications for policy in Vietnam and Kenya

Hoang, M. H., Namirembe, S., van Noordwijk, M., Catacutan, D., Öborn, I., Perez-Teran, A. S., Nguyen, H. Q. and Dumas-Johansen, M. K. (2014). Farmer portfolios, strategic diversity management and climate-change adaptation - implications for policy in Vietnam and Kenya. Climate and Development, 6 (3), 216-225. doi: 10.1080/17565529.2013.857588

Farmer portfolios, strategic diversity management and climate-change adaptation - implications for policy in Vietnam and Kenya

2013

Journal Article

Genome scale transcriptomics of baculovirus-insect interactions

Nguyen,Quan, Nielsen, Lars K. and Reid, Steven (2013). Genome scale transcriptomics of baculovirus-insect interactions. Viruses, 5 (11), 2721-2747. doi: 10.3390/v5112721

Genome scale transcriptomics of baculovirus-insect interactions

2013

Journal Article

Genome scale analysis of differential mRNA expression of Helicoverpa zea insect cells infected with a H. armigera baculovirus

Nguyen, Quan, Chan, Leslie C. L., Nielsen, Lars K. and Reid, Steven (2013). Genome scale analysis of differential mRNA expression of Helicoverpa zea insect cells infected with a H. armigera baculovirus. Virology, 444 (1-2), 158-170. doi: 10.1016/j.virol.2013.06.004

Genome scale analysis of differential mRNA expression of Helicoverpa zea insect cells infected with a H. armigera baculovirus

2013

Other Outputs

Genome-scale transcriptomic study of Helicoverpa Zea host cells and H. armigera baculovirus infections in vitro

Nguyen, Hoang Quan (2013). Genome-scale transcriptomic study of Helicoverpa Zea host cells and H. armigera baculovirus infections in vitro. PhD Thesis, Australian Institute For Bioengineering and Nanotechnology, The University of Queensland.

Genome-scale transcriptomic study of Helicoverpa Zea host cells and H. armigera baculovirus infections in vitro

2013

Journal Article

Multipurpose agroforestry as a climate change resiliency option for farmers: an example of local adaptation in Vietnam

Nguyen, Quan, Hoang, Minh Ha, Oborn, Ingrid and Noordwijk, Meine (2013). Multipurpose agroforestry as a climate change resiliency option for farmers: an example of local adaptation in Vietnam. Climatic Change, 117 (1-2), 241-257. doi: 10.1007/s10584-012-0550-1

Multipurpose agroforestry as a climate change resiliency option for farmers: an example of local adaptation in Vietnam

2012

Journal Article

Transcriptome sequencing of and microarray development for a Helicoverpa zea cell line to investigate in vitro insect cell-baculovirus interactions

Nguyen, Quan, Palfreyman, Robin W., Chan, Leslie C. L., Reid, Steven and Nielsen, Lars K. (2012). Transcriptome sequencing of and microarray development for a Helicoverpa zea cell line to investigate in vitro insect cell-baculovirus interactions. PLoS One, 7 (5) e36324, e36324.1-e36324.15. doi: 10.1371/journal.pone.0036324

Transcriptome sequencing of and microarray development for a Helicoverpa zea cell line to investigate in vitro insect cell-baculovirus interactions

2011

Journal Article

Control of B cell development by the histone H2A deubiquitinase MYSM1

Jiang, Xiao-Xia, Nguyen, Quan, Chou, YuChia, Wang, Tao, Nandakumar, Vijayalakshmi, Yates, Peter, Jones, Lindsey, Wang, Lifeng, Won, Haejung, Lee, Hye-Ra, Jung, Jae U., Müschen, Markus, Huang, Xue F. and Chen, Si-Yi (2011). Control of B cell development by the histone H2A deubiquitinase MYSM1. Immunity, 35 (6), 883-896. doi: 10.1016/j.immuni.2011.11.010

Control of B cell development by the histone H2A deubiquitinase MYSM1

2011

Journal Article

In vitro production of Helicoverpa baculovirus biopesticides: Automated selection of insect cell clones for manufacturing and systems biology studies

Nguyen, Quan, Qi, Ying Mei, Wu, Yang, Chan, Leslie C. L., Nielsen, Lars K. and Reid, Steven (2011). In vitro production of Helicoverpa baculovirus biopesticides: Automated selection of insect cell clones for manufacturing and systems biology studies. Journal of Virological Methods, 175 (2), 197-205. doi: 10.1016/j.jviromet.2011.05.011

In vitro production of Helicoverpa baculovirus biopesticides: Automated selection of insect cell clones for manufacturing and systems biology studies

2011

Conference Publication

Optimising in vitro production of baculovirus biopesticides – a transcriptomics approach to establish a platform for expression analysis and bioengineering of virus and insect cells

Nguyen, Quan, Prasath, Daniel B., Palfreyman, Robin W., Nielsen, Lars K., Chan, Leslie C. L. and Reid, Steven (2011). Optimising in vitro production of baculovirus biopesticides – a transcriptomics approach to establish a platform for expression analysis and bioengineering of virus and insect cells. Chemeca 2011: Australasian Conference on Chemical Engineering, Sydney, Australia, 18-21 September 2011. Barton, ACT, Australia: Engineers Australia.

Optimising in vitro production of baculovirus biopesticides – a transcriptomics approach to establish a platform for expression analysis and bioengineering of virus and insect cells

2003

Journal Article

A Light-Activated Probe of Intracellular Protein Kinase Activity

Veldhuyzen, WF, Nguyen, Q, McMaster, G and Lawrence, DS (2003). A Light-Activated Probe of Intracellular Protein Kinase Activity. Journal of the American Chemical Society, 125 (44), 13358-13359. doi: 10.1021/ja037801x

A Light-Activated Probe of Intracellular Protein Kinase Activity

2000

Journal Article

Multiplex detection and quantitation of proteins on Western blots using fluorescent probes

Gingrich, JC, Davis, DR and Nguyen, Q (2000). Multiplex detection and quantitation of proteins on Western blots using fluorescent probes. Biotechniques, 29 (3), 636-642.

Multiplex detection and quantitation of proteins on Western blots using fluorescent probes

Funding

Current funding

  • 2023 - 2025
    Characterization and validation of a new mouse model of spontaneous endometriosis to implement translation of basic research to the clinic
    United States Congressionally Directed Medical Research Programs - Peer Reviewed Medical Research Program
    Open grant
  • 2023 - 2025
    The molecular basis of breast cancer in young women
    National Breast Cancer Foundation Investigator Initiated Research Scheme
    Open grant
  • 2022 - 2025
    PREDICT: PREcision DIagnostiCs for early melanoma detection using spaTial biology and AI-guided image analysis
    United States Congressionally Directed Medical Research Programs - Melanoma Research Program
    Open grant
  • 2021 - 2024
    Advanced technological approach to predicting survival in patients diagnosed with locally invasive cutaneous melanoma
    Cancer Council Queensland
    Open grant

Past funding

  • 2022 - 2024
    LUNG PREDICT Study
    Cancer Australia
    Open grant
  • 2022 - 2023
    New Predictive Capabilities to Cancer Tissue Image Diagnosis
    Innovation Connections
    Open grant
  • 2022 - 2024
    Deciphering disease heterogeneity: Spatiotemporal analysis of molecular and cellular pathology in HBSL
    ELA International
    Open grant
  • 2022 - 2023
    SPatially ACcurate Evaluation (SPACE) of Cancer Biopsies
    NHMRC Investigator Grants
    Open grant
  • 2021 - 2022
    MND in space and time: deciphering the spatio-temporal landscape of cell-autonomous and non-cell-autonomous drivers of motor neuron death in MND
    Motor Neurone Disease Research Institute of Australia Inc
    Open grant
  • 2021 - 2023
    Vietnamese Genome-based Prediction of Disease Risks (VGP) (Vingroup Innovation Foundation grant administered by Hanoi Medical University)
    Hanoi Medical University
    Open grant
  • 2021 - 2024
    Identification of therapy-resistant cells driving relapse in Medulloblastoma from integrated spatial transcriptomics and tissue imaging
    NHMRC IDEAS Grants
    Open grant
  • 2021 - 2022
    Rab GTPase regulation in Ciliogenesis and Polycystic Kidney Disease
    PKD Foundation of Australia Limited
    Open grant
  • 2020 - 2021
    Applying Spatial Transcriptomics to Discover Kidney Disease Pathways and Optimize Clinical Kidney Biopsy Assessment
    Metro North Hospital and Health Service
    Open grant
  • 2019 - 2021
    Cell types and cell states revealed by single-cell regulatory networks
    ARC Discovery Early Career Researcher Award
    Open grant
  • 2018
    Identifying novel biomarkers for genetic diseases from single-cell and population genomics data
    UQ Development Fellowships
    Open grant
  • 2018 - 2019
    Identifying cancer biomarkers from single-cell and population genomics data
    UQ Early Career Researcher
    Open grant

Supervision

Availability

Dr Quan Nguyen is:
Available for supervision

Before you email them, read our advice on how to contact a supervisor.

Available projects

  • Analysis of Spatial Data (Multiple student projects)

    Nguyen group’s research is focused on understanding cancer complexity at tissue level by applying single-cell sequencing, spatial transcriptomics and tissue imaging, statistical learning and deep learning, and high performance computing. Most molecular biological data are from dissociated cells, which were separated from their original tissues, and thus the spatial connectin information is missing. Furthermore, these data often represent average measurements of millions of cells, which mask subtle differences that are specific for individual cells. From sequencing and imaging data, the group aims to computationally reconstruct biological regulatory networks underlying human diseases in every single cell within an indissociated tissue, like a tumour. The group develops both experimental and analytical methods to integrate genomics and imaging data for earlier and more accurate diagnosis and prognosis of diseases in tissue biopsies. Particularly, the group focuses on cancer (brain and skin cancer) and neuronal inflammation responses. Through advancing the understanding of biomarkers and cellular regulatory networks that are specific to individuals and cell types, the group contributes to early disease diagnosis, targeted drug discovery and precision medicine.

    Traineeships, honours and PhD projects include

    • Analyse spatial transcriptomics data of brain and skin cancer tissue to find cell-cell interactions, cell-type specific responses and cancer microenvironment evolution
    • Develop experimental approaches to study spatial transcriptomics of human cancer cells in brain cancer xenograft models
    • Develop experimental approaches to study formalin-fixed tissue sections for human skin cancer tissue sections
    • Develop analysis methods to combine sequencing and imaging data from spatial transcriptomics experiments of skin cancer tissue sections
    • Develop analysis methods to combine spatial transcriptomics, immuno-fluorescence images and histopathological images
    • Find single cell gene regulatory networks in healthy and diseased cells from single cell and spatial datasets of human skin cancer samples

  • Regulatory Networks Determining Cell Types and Cell States

    This project aims to use single-cell gene regulation networks to predict cell types and cell states in healthy and diseased tissues.

    Through cell differentiation and division, a single fertilised egg gives rise to ~37.2 trillion cells with remarkable variation in forms and functions to make up the human body. A long-sought research goal over the past 150 years is to understand cell types and their properties and how they affect health and respond to environments. Conventional methods to assess cell type variability often rely on a small number of pre-characterised biomarkers and use population average measurements of millions of cells per sample, which is limited in resolution, accuracy, sensitivity, specificity, and comprehensiveness. Diverse cellular phenotypes encoded by the same genome are results from the differential regulation of large gene expression networks with about 22,000 genes. ‘Cell type’ and ‘cell state’ represent persistent and transient cellular properties, which can be defined by data-driven, network-based approaches. A systems-biology approach, which utilises advances in the computational analysis of big biological data and single-cell technologies, can be the key to decode the biological program in every cell type in the human body, thereby leading to better understanding and control of organismal phenotypes at the single-cell level.

    The international Human Cell Atlas consortium (HCA) will release the first draft atlas comprising ~30-100 million cells for 15 organ systems in 1-2 years. Although at least 10 billion cells representing all tissues will be generated for the complete Atlas (Regev et al., 2017), the number is still marginal, accounting for 0.02% of the total 37 trillion cells in the body. Therefore, computational approaches are needed to recapitulate how the cells program the shared genome sequence in a human body to create astoundingly diverse forms and functions. From quantitative measurements of thousands of genes expressed in every cell, it is possible to reconstruct gene regulatory networks (GRN), the cellular programs. Regulatory ‘rules/patterns’ for molecular interactions are universally applicable in both population and single-cell data, and thus can be used to integrate datasets at single-cell and bulk-sample levels to infer GRN. This project will use gene expression regulatory networks to systematically quantify differences between cell types and cell states at single-cell resolution based. We will apply established analysis methods as well as develop new algorithms and software to integrate high-resolution scRNA-Seq data with large-scale population transcriptomics, genetics and epigenetics data to reconstruct gene regulatory networks. The ultimate aim is to predict the cell type and cell state of an unknown cell, by comparing the cell’s gene expression values to the largest single-cell regulatory network database generated in this project. The research would enable to predict cellular programs for thousands of cell types, which should contribute to the unprecedented ability to control and reprogram cells, to detect aberrant cells, and to understand how cells respond to the environment. Particularly, this project will contribute to studying cancer cell types and cell states at single-cell levels.

  • Spatial omics and machine learning to study heterogeneity and interaction between cells in primary tissues

    This project aims at studying cell-cell and gene-gene regulatory networks in primary tissues by deep machine learning analysis of population, single-cell and spatial omics data.

    Advances in genomics technologies enable data generation at an unprecedented speed, both in scale (hundreds of thousands of samples) and resolution (single cell). Machine learning in human genomics is an emerging field, which uses the power of statistics and high-performance computers in combination with biological knowledge to extract new information relevant to disease diagnosis and treatment.

    Personalised and precision medicine require system genomics research to resolve variability at the cell, tissue and inter-individual level (e.g. different genetic background, age, exposure to environment). While big data integration of population genetics and single-cell omics studies can address variability between isolated cells and between individuals, a particularly important information dimension that is currently lacking is the heterogeneity in cell type composition and cell-cell interaction within the physiological context of a tissue. Such information is lost due to cell dissociation, a requirement for almost all molecular genomics assays.

    We will contribute to research in personalised and precision medicine through deciphering the complex heterogeneity between cell types, tissues, and individuals by comprehensively integrating single-cell and population genetics with spatial transcriptomics, a novel type of information that is just beginning to be measured at a genome scale. Traditional machine learning and recent deep learning approaches for integrating multimodal genomics datatypes from bulk and single cells and image data will be applied. The systematic understanding of regulatory networks and biomarkers in a physiological context, which is specific to individuals and cell types will contribute to early disease diagnosis, targeted drug discovery and precision medicine. The research will generate an important understanding of variation in molecular networks inside individual cells and among neighbouring cells in specific microenvironments and among distant cell types involved in multi-organ communication, all of which underlie causal relationships between genotype and phenotype. The student will enjoy a conducive learning and research environment to develop a unique combination of multidisciplinary expertise in experimental biology, systems biology, biostatistics, and bioinformatics, and artificial intelligence.

Supervision history

Current supervision

Completed supervision

Media

Enquiries

Contact Dr Quan Nguyen directly for media enquiries about:

  • ad cancer treatment
  • cancer
  • cancer diagnosis
  • cancer prognosis
  • gene regulatory networks
  • genomics
  • precision medicine
  • single cell
  • tissue biology

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