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TZID:America/New_York
X-LIC-LOCATION:America/New_York
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DTSTART:20241103T020000
RRULE:FREQ=YEARLY;BYDAY=1SU;BYMONTH=11
TZNAME:EST
TZOFFSETFROM:-0400
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BEGIN:DAYLIGHT
DTSTART:20250309T020000
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DESCRIPTION:Registration is required Brief description of training In this
  training session\, we will work with R inside the Jupyter Notebook envir
 onment within All of Us to conduct commonly used statistical data analysi
 s for clinical research data Learning objectives By the end of this cours
 e\, participants will be able to: Import data from a workspace bucket usi
 ng code snippets Identify appropriate statistical tests to use for their 
 clinic data Be able to perform the following statistical tests using R an
 d Jupyter Notebooks:Chi-square test T-test Logistic regression Linear reg
 ressions Hazard Ratios And maybe more... Technical requirements (software
  packages\, BYO computer\, etc.) BYO Computer Class prerequisites (if any
 ) All of Us account (required)If you need to create an account: [link to 
 previous training ] All of Us workspace setup and proof of account verifi
 cation (required)Create a workspace and complete your verification form h
 ere: https://forms.cloud.microsoft/r/raC0q3zix5 Questions? Email Maximili
 an.wegener@yale.edu\n\nSpeaker:\nMaximilian Wegener\n\nAdmission:\nFree: 
 Open\; Registration is required\n\nDetails URL:\nhttps://medicine.yale.ed
 u/event/nih-all-of-us-data-training-series-statistical-data-analysis-for-
 clinical-research/\n
DTEND;TZID=America/New_York:20260512T120000
DTSTAMP:20260512T210334Z
DTSTART;TZID=America/New_York:20260512T100000
LOCATION:URL: https://schedule.yale.edu/event/16745841
SEQUENCE:0
STATUS:Confirmed
SUMMARY:NIH All of Us Data Training Series
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