Publications by authors named "Ivan Brugere"

Article Synopsis
  • Machine learning applications in healthcare have potential benefits, but their real-world accuracy, especially for different patient groups, is still uncertain, prompting a community challenge focused on predicting all-cause mortality.
  • The challenge involved 345 participants forming 25 teams from across 10 countries, who created 25 models trained on a dataset of over 1.1 million patients, with the best model achieving a high performance score.
  • Analysis showed significant variability in model accuracy based on patient subpopulations, indicating both the possibilities and limitations of using AI in clinical settings.
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Importance: Machine learning could be used to predict the likelihood of diagnosis and severity of illness. Lack of COVID-19 patient data has hindered the data science community in developing models to aid in the response to the pandemic.

Objectives: To describe the rapid development and evaluation of clinical algorithms to predict COVID-19 diagnosis and hospitalization using patient data by citizen scientists, provide an unbiased assessment of model performance, and benchmark model performance on subgroups.

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In many animal societies, groups of individuals form stable social units that are shaped by well-delineated dominance hierarchies and a range of affiliative relationships. How do socially complex groups maintain cohesion and achieve collective movement? Using high-resolution GPS tracking of members of a wild baboon troop, we test whether collective movement in stable social groups is governed by interactions among local neighbours (commonly found in groups with largely anonymous memberships), social affiliates, and/or by individuals paying attention to global group structure. We construct candidate movement prediction models and evaluate their ability to predict the future trajectory of focal individuals.

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