Faculty Member
Eleanor Pullenayegum
- Email Address(es)
- eleanor.pullenayegum(at)sickkids.ca
- Office Phone
- 416-813-7654 x301031
- Office Address
- Hospital for Sick Children 555 University Avenue Toronto, ON M5G 1X8
- Website(s)
- The STRIVE lab @ SickKids
- Division(s)/Institute(s)
- Biostatistics Division
- Position
- Professor
- SGS Status
- Full Member
- Appointment Status
- Status Only
- Currently Accepting Doctoral Students?
- Yes
Research Interests
I help ensure that healthcare is based on high-quality evidence by:
- developing new statistical methods to handle the complex data that often arise in medical research
- working with colleagues to choose the most appropriate design and analysis for research
- training graduate students in statistical methods
I have several projects in these areas that are suitable for students considering Master’s or Doctoral work; see the instructions here to inquire about openings.
Education & Training History
PhD, Biostatistics, University of Toronto
Certificate of Advanced Studies in Mathematics, University of Cambridge
BA, Mathematics, University of Cambridge
Other Affiliations
Senior Scientist, The Hospital for Sick Children
Primary Teaching Responsibilities
Statistical Analysis of Health Economic Data (co-taught with Dr Anna Heath)
Professional Summary & Appointments
- Professor, Dalla Lana School of Public Health, University of Toronto (2023-present)
- Senior Scientist, Child Health Evaluative Sciences, Hospital for Sick Children (2016-present)
- Scientist, Child Health Evaluative Sciences, Hospital for Sick Children (2013-2016)
- Associate Professor, Dalla Lana School of Public Health, University of Toronto (2013-2023)
- Biostatistician, St Joseph’s Healthcare Hamilton (2007-2013)
- Associate Professor, Depeartment of Clinical Epidemiology & Biostatistics, McMaster University (2012-2013)
- Assistant Professor, Depeartment of Clinical Epidemiology & Biostatistics, McMaster University (2007-2012)
- Postdoctoral Fellow, Department of Statistics and Actuarial Science, University of Waterloo (2006)
- Medical Statistician, Centre for Applied Medical Statistics, Department of Public Health and Primary Care, University of Cambridge (2000-2002))
Honours & Awards
CIHR New Investigator Award (2012-2018)
Young Investigator Award of the Section on Teaching Statistics in the Health Sciences, American Statistical Association (2008)
Schuldham Plate, Gonville & Caius College, University of Cambridge (1999)
Current Research Projects
- Methodology for irregularly observed longitudinal data
Longitudinal data are useful for understanding how disease evolves over time. Often longitudinal data can be collected through clinic based cohorts in which patients are enrolled in the cohort at diagnosis, followed up as medically necessary, and data are gathered through a chart review. This is an efficient and low cost approach to data collection. However, since patients tend to visit more often when unwell, this can lead to overestimation of the burden of disease unless accounted for appropriately. I develop analytic methods to handle the informative nature of the visit process.
- Methodology for health utilities
Health utilities are used in economic evaluations to help assess cost-effectiveness of treatments, and so ultimately contribute to decisions on which treatments should be publicly funded. I am interested in measurement of health utilities, in particular a) correctly quantifying the statistical uncertainty in these measurements, and b) reducing the extent of uncertainty. This is important as it reduces the risk of funding treatments that are not cost-effective, this enabling better use of limited resources.
Graduate Students
Prospective students
I am currently accepting students at both the master’s and doctoral levels. I receive a high volume of requests and will respond to everyone who follows the steps below, but due to the volume am not able to respond to more casual requests to meet. So please, read carefully!
Note that in order to do thesis work with me you will first need to gain admission to the Biostatistics Division at the Dalla Lana School of Public Health at the University of Toronto. Please see their website for application details and deadlines.
If you would like to discuss potential thesis topics, I would be happy to chat with you. Please choose and read a paper from the Longitudinal data or Health Utilities sections immediately below that you feel would be helpful in setting thesis directions, and contact Poonam Dodia (poonam.dodia@sickkids.ca) to schedule a call to discuss it me. When scheduling your call, please let us know which paper you have read and would like to discuss.
The full texts are available through most university libraries, however if you do not have library access to the full texts, please contact me and I will provide them.
Longitudinal data subject to irregular observation
- Pullenayegum EM (PA), Birken C, Maguire J, The TARTGet Kids! Collaboration. Causal Inference with Longitudinal Data Subject to Irregular Assessment Times. Statistics in Medicine (accepted March 2023)
- Aghababaei Jazi O, Pullenayegum E., Variable selection in semiparametric regression models for longitudinal data with informative observation times. Stat Med. 2022 Apr 25. doi: 10.1002/sim.9417. Online ahead of print. PMID: 35468658
- Pullenayegum EM, Birken C, Maguire J; TARGet Kids! Collaboration, Clustered longitudinal data subject to irregular observation. Stat Methods Med Res.2021 Apr;30(4):1081-1100. doi: 10.1177/0962280220986193. Epub 2021 Jan 29. PMID: 33509042
- Liu K*, Saarela O, Feldman BM, Pullenayegum E. Estimation of causal effects with repeatedly measured outcomes in a Bayesian framework. Stat Methods Med Res. 2020 Sep;29(9):2507-2519. doi: 10.1177/0962280219900362. Epub 2020 Jan 29. PMID: 31994451
- Pullenayegum EM. Multiple outputation for the analysis of longitudinal data subject to irregular observation. Statistics in Medicine. 2016; 35(11); 1800-18. Epub date: 2015 Dec 13. doi: 10.1002/sim.6829. PubMed PMID: 26661690.
- Pullenayegum EM, Lim LS. Longitudinal data subject to irregular observation: A review of methods with a focus on visit processes, assumptions, and study design. Statistical Methods in Medical Research. 2016 Dec; 25(6); 2992-3014. Epub date: 2014 May 21. doi: 10.1177/0962280214536537 pii: 0962280214536537. PubMed PMID: 24855119
Health Utilities
- Che M*, Xie F, Thomas S, Pullenayeugm EM (SRA). Bayesian models with spatial correlation improve the precision of EQ-5D-5L value sets. Medical Decision Making (accepted April 2023).
- Che M*, Pullenayegum E. Efficient designs for valuation studies that use time trade-off (TTO) tasks to map latent utilities from discrete choice experiments to the interval scale: selection of health states for TTO tasks. Medical Decision Making (in press)
- Shams S*, Pullenayegum E. Design and sample size considerations for valuation studies of multi-attribute utility instruments. Stat Med. 2020 Oct 15;39(23):3074-3104. doi: 10.1002/sim.8592. Epub 2020 Jul 24. PMID: 32706130
- Waudby-Smith I*, Pickard AS, Xie F, Pullenayegum EM. Using Both Time Tradeoff and Discrete Choice Experiments in Valuing the EQ-5D: Impact of Model Misspecification on Value Sets. Med Decis Making. 2020 May;40(4):483-497. doi: 10.1177/0272989X20924019. Epub 2020 Jun 9. PMID: 32517541
- Chan KKW, Pullenayegum EM. The Theoretical Relationship between Sample Size and Expected Predictive Precision for EQ-5D Valuation Studies: A Mathematical Exploration and Simulation Study. Medical Decision Making 2020 Apr;40(3):339-347. doi: 10.1177/0272989X20915452. PMID: 32428427
- Shams S*, Pullenayegum E. Reducing Uncertainty in EQ-5D Value Sets: The Role of Spatial Correlation. Medical Decision Making. 2019 Feb; 39(2):91-99. doi: 10.1177/0272989X18821368. Epub 2019 Jan 24. PubMed PMID: 30678526
- Pullenayegum EM, Chan KKW*, Xie F. Quantifying Parameter Uncertainty in EQ-5D- 3L Value Sets and Its Impact on Studies That Use the EQ-5D-3L to Measure Health Utility: A Bayesian Approach. Medical Decision Making. 2016; 36(2): 223-233. doi: 10.1177/0272989X15591966. Epub date: July 2 2015. pii: 0272989X15591966. PubMed PMID: 26139449
Current & past graduate students
PhD
- George Stefan (2022-present)
- Fatema Johara (2022-present)
- Larry Dong (2021-present); co-supervised with Dr Olli Saarela
- Naomi Chang (2021-present)
- Alexandra Bushby (2021-present)
- Rose Garrett (2018-present)
- Kuan Liu (2015-2021) Bayesian causal inference with longitudinal data
- Shahriar Shams (2014-2021) Quantifying and Reducing Uncertainty in the Measurement of Health Utilities
- Armend Lokku (2014-2020) Summary Measures for Quantifying the Extent of Visit Irregularity in Longitudinal Data
- Kelvin Chan (2012-2016) Addressing Uncertainties in Health Utilities
- Qing Guo (2008-2013) Sample size calculations in fMRI studies
MSc
- Luis Ledesma (2022-2023)
- Di Shan (2021-2023)
- Xiawen Zhang (2021-2022) The Bias of Parameters in Inverse-Intensity Weighted GEEs when Excluding Subjects with no Follow-up Visits
- Menelaos Konstantinidis (2021-2022) Design of an Accelerated Longitudinal Cohort to Estimate Employment Trajectories using Multistate Models in a Population of Young Adults with Systemic Lupus Erythematosus
Representative Publications
* indicates a student under my supervision
See here for a more complete list.
Longitudinal data subject to irregular observation
PPullenayegum EM (PA), Birken C, Maguire J, The TARTGet Kids! Collaboration. Causal Inference with Longitudinal Data Subject to Irregular Assessment Times. Statistics in Medicine (accepted March 2023)
Pullenayegum EM, Scharfstein DO. Randomized Trials with Repeatedly Measured Outcomes: Handling Irregular and Potentially Informative Assessment Times. Epidemiologic Reviews 2022 Oct 19;mxac010. doi: 10.1093/epirev/mxac010. Online ahead of print.
Aghababaei Jazi O, Pullenayegum E., Variable selection in semiparametric regression models for longitudinal data with informative observation times. Stat Med. 2022 Apr 25. doi: 10.1002/sim.9417. Online ahead of print. PMID: 35468658
Pullenayegum EM, Birken C, Maguire J; TARGet Kids! Collaboration, Clustered longitudinal data subject to irregular observation. Stat Methods Med Res.2021 Apr;30(4):1081-1100.
Lokku A*, Birken CS, Maguire JL, Pullenayegum EM; TARGet Kids! Collaboration. Quantifying the extent of visit irregularity in longitudinal data. Int J Biostat. 2021 Aug 16
Pullenayegum EM. Meeting the Assumptions of Inverse-Intensity Weighting for Longitudinal Data Subject to Irregular Follow-Up: Suggestions for the Design and Analysis of Clinic-Based Cohort Studies. Epidemiologic Methods 2020 9 (1)
Liu K*, Saarela O, Feldman BM, Pullenayegum E. Estimation of causal effects with repeatedly measured outcomes in a Bayesian framework. Stat Methods Med Res. 2020 Sep;29(9):2507-2519.
Pullenayegum EM, Lim LS. Longitudinal data subject to irregular observation: A review of methods with a focus on visit processes, assumptions, and study design. Stat Methods Med Res. 2016 Dec;25(6):2992-3014.
Pullenayegum EM. Multiple outputation for the analysis of longitudinal data subject to irregular observation. Stat Med. 2015 Dec 13. doi: 10.1002/sim.6829. [Epub ahead of print] PubMed PMID: 26661690.
Health Utilities
Che M*, Xie F, Thomas S, Pullenayeugm EM (SRA). Bayesian models with spatial correlation improve the precision of EQ-5D-5L value sets. Medical Decision Making (accepted April 2023).
Che M*, Pullenayegum E. Efficient designs for valuation studies that use time trade-off (TTO) tasks to map latent utilities from discrete choice experiments to the interval scale: selection of health states for TTO tasks. Medical Decision Making (in press)
Waudby-Smith I*, Pickard AS, Xie F, Pullenayegum EM. Using Both Time Tradeoff and Discrete Choice Experiments in Valuing the EQ-5D: Impact of Model Misspecification on Value Sets. Med Decis Making. 2020 May;40(4):483-497
Shams S*, Pullenayegum E. Design and sample size considerations for valuation studies of multi-attribute utility instruments. Stat Med. 2020 Oct 15;39(23):3074-3104
Chan KKW, Pullenayegum EM. The Theoretical Relationship between Sample Size and Expected Predictive Precision for EQ-5D Valuation Studies: A Mathematical Exploration and Simulation Study. Medical Decision Making 2020 40 (3), 339-347
Shams S*, Pullenayegum EM. Reducing Uncertainty in EQ-5D Value Sets: The Role of Spatial Correlation. Medical Decision Making. 2019 Feb; 39(2):91-99. doi: 10.1177/0272989X18821368. Epub 2019 Jan 24. PubMed PMID: 30678526
Chan KKW*, Xie F, Willan AR, Pullenayegum EM. Conducting EQ-5D Valuation Studies in Resource-Constrained Countries: The Potential Use of Shrinkage Estimators to Reduce Sample Size. Medical Decision Making. 2017 Aug 1:272989X17725748.doi: 10.1177/0272989X17725748. [Epub ahead of print] PubMed PMID: 28823185
Chan KKW*, Xie F, Willan AR, Pullenayegum EM. Underestimation of Variance of Predicted Health Utilities Derived from Multi-Attribute Utility Instruments: The Use of Multiple Imputation as a Potential Solution. Medical Decision Making. 2017 Apr;37(3):262-272. doi: 10.1177/0272989X16650181. Epub 2016 Jul 10
Pullenayegum EM, Chan KKW*, Xie F. Quantifying Parameter Uncertainty in EQ-5D-3L Value Sets and Its Impact on Studies That Use the EQ-5D-3L to Measure Health Utility: A Bayesian Approach. Med Decis Making. 2016 Feb;36(2):223-33. doi: 10.1177/0272989X15591966. Epub 2015 Jul 2. PubMed PMID: 26139449.
Knowledge Translation
Pullenayegum EM, Platt RW, Barwick M, Feldman BM, Offringa M, Thabane L. Knowledge translation in biostatistics: a survey of current practices, preferences, and barriers to the dissemination and uptake of new statistical methods. Stat Med. 2016 Mar 15;35(6):805-18. doi: 10.1002/sim.6633. Epub 2015 Aug 25. PubMed PMID: 26307183.
Software
R package IrregLong for analysing longitudinal data subject to irregular observation