The Effect of Missing Values on Data Analysis and Interpretation

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DISCUSSION IN THE EFFICACY WORKING PARTY June 1999/ November 2000 TRANSMISSION TO CPMP January 2001 RELEASE FOR CONSULTATION January 2001 DEADLINE FOR COMMENTS April 2001 DISCUSSION IN THE EFFICACY WORKING PARTY October 2001 TRANSMISSION TO CPMP November 2001 ADOPTION BY CPMP November 2001 DRAFT AGREED BY EFFICACY WORKING PARTY April 2009 ADOPTION BY CHMP FOR RELEASE FOR CONSULTATION 23 April 2009 END OF CONSULTATION (DEADLINE FOR COMMENTS) 31 October 2009 *The correction includes minor spelling amendment between lines 7 and 8. 8

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تاریخ انتشار 2009