Drawing reproducible conclusions from observational clinical data | AI for Good Discovery

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Artificial Intelligence (AI) can improve health by empowering a community to collaboratively generate the evidence that promotes better health decisions and better care. Observational Health Data Sciences and Informatics (OHDSI) is multi-stakeholder, interdisciplinary, international collaborative with a coordinating center at Columbia University. With over 3000 researchers from 80 countries and health records on 928 million unique patients, OHDSI carries out federated studies at sufficient scale to answer questions about diagnosis and treatment. \n\nThis AI for Health Discovery presents current work addressing the bias inherent in medical literature by carrying out research at large scale, automating the analysis, correcting for confounding, and calibrating on residual confounding. Learn how OHDSI has produced evidence to inform hypertension treatment, COVID-19 therapy, and COVID-19 vaccine safety. \n\nSpeakers:\nGeorge Hripcsak\nChair and Vivian Beaumont Allen Professor of Biomedical Informatics\nColumbia University\n\nJoin the Neural Network! \nhttps://aiforgood.itu.int/neural-network/\nThe AI for Good networking community platform powered by AI. \nDesigned to help users build connections with innovators and experts, link innovative ideas with social impact opportunities, and bring the community together to advance the SDGs using AI.\n\n Watch the latest #AIforGood videos!\n\n\nExplore more #AIforGood content:\n AI for Good Top Hits\n   • Top Hits  \n\n AI for Good Webinars\n   • AI for Good Webinars  \n\n AI for Good Keynotes\n   • AI for Good Keynotes  \n\n Stay updated and join our weekly AI for Good newsletter:\nhttp://eepurl.com/gI2kJ5\n\n Discover what's next on our programme!\nhttps://aiforgood.itu.int/programme/\n\nCheck out the latest AI for Good news:\nhttps://aiforgood.itu.int/newsroom/\n\nExplore the AI for Good blog:\nhttps://aiforgood.itu.int/ai-for-good-blog/\n\n Connect on our social media:\nWebsite: https://aiforgood.itu.int/\nTwitter: https://twitter.com/AIforGood\nLinkedIn Page: https://www.linkedin.com/company/26511907 \nLinkedIn Group: https://www.linkedin.com/groups/8567748 \nInstagram: https://www.instagram.com/aiforgood \nFacebook: https://www.facebook.com/AIforGood\n\nWhat is AI for Good?\nWe have less than 10 years to solve the UN SDGs and AI holds great promise to advance many of the sustainable development goals and targets.\nMore than a Summit, more than a movement, AI for Good is presented as a year round digital platform where AI innovators and problem owners learn, build and connect to help identify practical AI solutions to advance the United Nations Sustainable Development Goals.\nAI for Good is organized by ITU in partnership with 40 UN Sister Agencies and co-convened with Switzerland.\n\nDisclaimer:\nThe views and opinions expressed are those of the panelists and do not reflect the official policy of the ITU.




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