Dr Helen Mayfield

Research Fellow

UQ Centre for Clinical Research
Faculty of Medicine
h.mayfield@uq.edu.au
+61 7 336 55393

Overview

Dr Helen Mayfield is an interdisciplinary researcher whose work lies at the intersection of epidemiology, infectious diseases and environmental conservation. With a decade of experience studying zoonotic and vector-borne diseases, she employs advanced data modelling techniques like Bayesian networks and spatial models to explore the environmental drivers of disease. Helen holds a PhD in machine learning for environmental management. Her research focus is on refining and testing new disease surveillance methods and strategies, such as molecular xenomonitoring of mosquitoes, and targeted sampling to combat lymphatic filariasis in the Pacific islands. In addition, her current project collaborating with the NSW Saving our Species programme aims to facilitate adaptive management for threatened species using structured expert knowledge to improve decision outcomes for biodiversity.

Helen teaches in courses for conservation planning and practice, and conservation policy. She is currently president of the Bayesian Network Modelling Association and a member of the International Union for the Conservation of Nature (IUCN) Decision Science Working Group.

Research Interests

  • Improving indicator selection and design
    In both conservation science and infectious disease epidemiology, what we measure and how, will affect how accurately we detect changes in the system. This could be as part of a threatened species management plan or for informing programmatic decisions for disease elimination. By exploring alternative indicators and sampling methods, we can improve our understanding of the system to informed management decisions.
  • Linking local environments to infectious disease risk
    The environment where we live and work can affect our exposure to vector-borne or zoonotic diseases. This potentially creates win-win scenarios where we can optimise interventions so that they benefit both people and nature.
  • Decision support and analysis tools
    Tools and models that help to structure and analyse data from a range of sources including academic studies, monitoring and expert elicitation can facilitate informed decision making. This is equally true in data-rich and data-poor scenarios. Using the right modelling technique to suit the problem at hand, and making the tool user-friendly for the intended audience are crucial for ensuring the product is fit-for-purpose

Qualifications

  • Associate Fellow, QUT Centre for Data Science, QUT Centre for Data Science
  • Collaboration / Affiliation, Griffith University Systems Modelling Group, Griffith University Systems Modelling Group
  • Member, Centre for Biodiversity and Conservation Science, Centre for Biodiversity and Conservation Science
  • Member, Australasian Bayesian Network Society, Australasian Bayesian Network Society
  • Doctor of Philosophy, The University of Queensland

Publications

View all Publications

Supervision

  • Doctor Philosophy

  • Doctor Philosophy

  • Doctor Philosophy

View all Supervision

Available Projects

  • Location: UQ CCR, Herston

    Description: Lymphatic filariasis (LF) is a mosquito-transmitted disease which causes a significant disease burden, particularly in low-income countries. Surveillance plays a crucial role in global elimination efforts, with human antigen being the most widely used indicator. There is evidence however that antibodies may be more sensitive than antigen for detecting changes in infection prevalence. This project will use an established methodology (https://shorturl.at/fqzAP) to design and implement a data-driven Bayesian network model to evaluate the relative utility of different infection markers for detecting signals of transmission in Samoa.

    Expected outcomes and deliverables: The student will develop skills in Bayesian network modelling and an understanding of how data modelling can be applied to operational research in infectious diseases. Deliverables will be a fully parameterised Bayesian network, and a report including a sensitivity analysis and discussion. Upon completion of the project, there will be an opportunity to write up and publish the results as a scientific paper.

    Suitable for: Students with basic epidemiology, good analytical skills and in interest in data science. No previous knowledge of Bayesian networks is assumed.

View all Available Projects

Publications

Book Chapter

  • Graves, Patricia, Joseph, Hayley, Coutts, Shaun P., Mayfield, Helen J., Maiava, Fuatai, Leong-Lui, Tile Ann Ah, Toelupe, Palanitina Tupuimatagi, Iosia, Vailolo Toeaso, Loau, Siatua, Pemita, Paulo, Naseri, Take, Thomsen, Robert, Berg Soto, Alvaro Berg, Burkot, Thomas R., Wood, Peter, Melrose, Wayne, Aratchige, Padmasiri, Capuano, Corinne, Kim, Sung Hye, Ozaki, Masayo, Yajima, Aya, Lammie, Patrick J., Ottesen, Eric, Hansell, Lepaitai, Baghirov, Rasul, Lau, Colleen L. and Ichimori, Kazuyo (2021). Control and elimination of lymphatic filariasis in Oceania: prevalence, geographical distribution, mass drug administration, and surveillance in Samoa, 1998–2017. Advances in parasitology. (pp. 27-73) edited by David Rollinson and Russell Stothard. San Diego, CA, United States: Academic Press. doi: 10.1016/bs.apar.2021.03.002

  • Wyeth, Gordon, Venz, Mark, Mayfield, Helen, Akiyama, Jun and Heathwood, Rex (2002). UQ CrocaRoos: An Initial Entry to the Simulation League. RoboCup 2001: Robot Soccer World Cup V. (pp. 547-550) Berlin, Heidelberg: Springer Berlin Heidelberg. doi: 10.1007/3-540-45603-1_80

Journal Article

Conference Publication

Other Outputs

Grants (Administered at UQ)

PhD and MPhil Supervision

Current Supervision

Possible Research Projects

Note for students: The possible research projects listed on this page may not be comprehensive or up to date. Always feel free to contact the staff for more information, and also with your own research ideas.

  • Location: UQ CCR, Herston

    Description: Lymphatic filariasis (LF) is a mosquito-transmitted disease which causes a significant disease burden, particularly in low-income countries. Surveillance plays a crucial role in global elimination efforts, with human antigen being the most widely used indicator. There is evidence however that antibodies may be more sensitive than antigen for detecting changes in infection prevalence. This project will use an established methodology (https://shorturl.at/fqzAP) to design and implement a data-driven Bayesian network model to evaluate the relative utility of different infection markers for detecting signals of transmission in Samoa.

    Expected outcomes and deliverables: The student will develop skills in Bayesian network modelling and an understanding of how data modelling can be applied to operational research in infectious diseases. Deliverables will be a fully parameterised Bayesian network, and a report including a sensitivity analysis and discussion. Upon completion of the project, there will be an opportunity to write up and publish the results as a scientific paper.

    Suitable for: Students with basic epidemiology, good analytical skills and in interest in data science. No previous knowledge of Bayesian networks is assumed.