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Preemie-Predict

Data-Driven Neuroprognostication for Children Born Preterm

Preemie‑Predict is a publicly accessible clinical outcome prediction tool developed to support clinicians with a standardized, data‑driven approach to neuroprognostication for children born preterm.  

The incidence of preterm birth is 8 per cent in Canada and is a leading cause of childhood disability. Children born preterm are at increased risk for neurodevelopmental challenges, including cognitive, language, and motor impairments, as well as cerebral palsy. These outcomes can vary as they are influenced by multiple clinical and environmental factors, making neuroprognostication difficult. The variability in outcomes and limitations of neuroprognostication pose significant challenges for risk-stratification and clinical decision-making for children born preterm.    


About Preemie-Predict

What is Preemie‑Predict?  

Preemie‑Predict is an innovative clinical outcome prediction tool that uses supervised machine‑learning models trained on a well‑characterized prospective cohort of children born preterm (N = 545). The model was trained on a preterm cohort dataset, which includes detailed clinical, neuroimaging, and developmental data, to capture the complex, nonlinear relationships that influence neurodevelopmental outcomes.   

Access Preemie-Predict

Who is Preemie‑Predict for?  

Preemie‑Predict is intended for healthcare providers involved in the care and follow‑up of children born preterm, including: 

Paediatric Neurologists

Neonatologists

Developmental Paediatricians

General Paediatricians


Using Preemie-Predict 

  • Clinical information including gestational age, birth weight, sex, socioeconomic status and brain imaging findings can be entered 
  • If data is not available for a particular category, this can be marked as “unknown”.  
  • Once the data is entered, click “Generate Prediction. This will provide predicted cognitive, language and motor outcomes (normal or abnormal) 
  • The output will also include the model confidence for the predicted outcomes, based on probability distributions.  

  • Preemie-Predict is a clinical support tool to help guide neuroprognostication. Its predictions are intended to inform clinicians on expected neurodevelopmental outcomes and assist with risk-stratification and family counselling.  
  • This tool is not intended to serve as a diagnostic instrument.  
  • Results should always be interpreted in the context of clinical judgment. 

Development of Preemie-Predict 

This clinical outcome prediction tool was developed using data from a prospective preterm cohort (N=545), followed from birth to 4 years of age. The cohort is well characterized with clinical, neuroimaging and developmental data. The Preemie-Predict algorithm was developed using supervised machine learning with the preterm cohort data. Machine learning models included regression, random forests, neural networks, with an emphasis on gradient-boosted decision tree models (XGBoost). XGBoost performs well on clinical data and can model nonlinear relationships and interactions. Model performance was evaluated using leave-one-out cross-validation for internal validation, and external validation is underway.  


About the Team

Preemie‑Predict was developed by an interdisciplinary team of clinicians, researchers, and bioinformaticians with expertise in paediatric neurology, neonatology, biomedical engineering, and bioinformatics, spanning academic and clinical institutions in Canada. 

Dr. Rhandi Christensen

Paediatric Neurologist, The Hospital for Sick Children

Dr. Steven Miller

Paediatric Neurologist, BC Children’s Hospital

Katherine Langille

Biomedical Engineering Student, University of Waterloo

Vinicius Furlan

Bioinformatician, SickKids Research Institute

Dr. Aasthaa Bansal

Bioinformatician and Associate Professor, University of Toronto


References

  1. Christensen R, Chau V, Synnes A, Guo T, Grunau RE, Miller SP. Preterm Neurodevelopmental Trajectories from 18 Months to 4.5 Years. J Pediatr. 2023 Jul;258:113401doi:10.1016/j.jpeds.2023.113401 
  2. Chau V, Brant R, Poskitt KJ, Tam EWY, Synnes A, Miller SP. Postnatal infection is associated with widespread abnormalities of brain development in premature newborns.PediatrRes. 2012 Mar;71(3):274–9. doi:10.1038/pr.2011.40 PubMed PMID: 22278180; PubMed Central PMCID: PMC3940469. 
  3. Christensen R, Chau V, Synnes A, Guo T, Ufkes S, Grunau RE, et al. Preterm Sex Differences in Neurodevelopment and Brain Development from Early Life to 8 Years of Age. JPediatr. 2024 Aug30;276:114271doi:10.1016/j.jpeds.2024.114271 PubMed PMID: 39218208. 
  4. Guo T, Duerden EG, Adams E, Chau V, Branson HM, Chakravarty MM, et al. Quantitative assessment of white matter injury in preterm neonates: Association with outcomes. Neurology. 2017 Feb 14;88(7):614–22. doi:10.1212/WNL.0000000000003606 PubMed PMID: 28100727; PubMed Central PMCID: PMC5317385.
  5. Christensen R, Konwar C, Zhuang BC, Kobor MS, Chau V, Synnes A, et al. Epigenetic age and neurodevelopmental outcomes in children born preterm. Genet Med Open. 2026 Jan 1;4:103479doi:10.1016/j.gimo.2025.103479 
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