Selected article for: "blood group distribution and meta analysis"

Author: Michael Zietz; Nicholas P. Tatonetti
Title: Testing the association between blood type and COVID-19 infection, intubation, and death
  • Document date: 2020_4_11
  • ID: 3xvphg52_22
    Snippet: [ 3 ] and conducted a meta-analysis. Zhao et al. used a random effects model to weight and pool effects between three different hospitals (Wuhan Jinyintan, Renmin Hospital in Wuhan, and Shenzhen Third People's Hospital), comparing each hospital's COV+ blood group distribution to the general population distribution for each city. We performed a similar analysis-including NYP/CUIMC data-to assess the effect of blood type in the combined data from a.....
    Document: [ 3 ] and conducted a meta-analysis. Zhao et al. used a random effects model to weight and pool effects between three different hospitals (Wuhan Jinyintan, Renmin Hospital in Wuhan, and Shenzhen Third People's Hospital), comparing each hospital's COV+ blood group distribution to the general population distribution for each city. We performed a similar analysis-including NYP/CUIMC data-to assess the effect of blood type in the combined data from all four sources (full counts in Table 3 ).

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