There is an urgent need amongst healthcare researchers to introduce creative solutions to address the challenges of caring for our growing aging population in diverse healthcare settings, including the need to predict disease development and treatment outcomes.
The availability of genetic, imaging and behavioural data allow the leveraging of machine learning to predict and distinguish different disease processes and phenotypes. The powerful and multi-faceted manner in which Artificial Intelligence (AI) enhances our knowledge of the human brain will help us develop better tools for detecting neurodegeneration in a cost-effective manner.
However, challenges exist in the acceleration of the impact of AI in clinical settings. One barrier is a lack of multidisciplinary integration for AI design, implementation, refinement and decision making for maximum impact. For example, a data scientist who is an expert in AI algorithms will likely not have the clinical expertise or sufficient knowledge of the clinical workflows to design the most feasible tools for existing healthcare models. Furthermore, hospital leadership teams need to consult with both scientists and clinicians to make the best decisions regarding AI. The importance of involving key stakeholders cannot be understated in turning the dial in the application of AI in healthcare.
Advancing Aging and Neurodegeneration Research through Data Science, a Data Sciences Institute Emergent Data Science Program, aims to provide a suite of training opportunities which address such challenges and cater to diverse audiences. The training program will provide a diverse set of learning and collaborative opportunities to bring together data scientists, clinicians, educators, to discuss the development of new areas of research which can ultimately benefit the treatment, care, and healthcare service delivery for older adults.
The following topics will be addressed:
To be announced!
Scientist, Rotman Research Institute (RRI), Baycrest; Associate Professor, Status Only, University of Toronto
Statistician Scientist, Rotman Research Institute (RRI), Baycrest; Assistant Professor, Department of Public Health Sciences, University of Toronto
Senior Scientist, Rotman Research Institute (RRI), Baycrest; Associate Professor, Department of Psychology, University of Toronto
Senior Scientist, Associate Professor, Department of Medical Biophysics, Baycrest, University of Toronto
Senior Scientist, Krembil Brain Institute, University Health Network; Professor, Department of Medical Biophysics, Temerty Faculty of Medicine, University of Toronto