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Table 4 Model parameters* for function describing the decline in all causes mortality after quitting

From: The Quit Benefits Model: a Markov model for assessing the health benefits and health care cost savings of quitting smoking

Sex

Age

Estimated τ

Asymptotic Standard Error

Asymptotic 95% CI

rr

Male

< 50

63

60

-60 – 186

0.427

 

50 – 59

110

22

64 – 156

0.355

 

60 – 69

150

16

117 – 184

0.357

 

70 – 79

187

22

143 – 231

0.397

 

≥ 80

202

57

86 – 318

0.553

Female

< 50

101

143

-191 – 393

0.595

 

50 – 59

71

31

7 – 134

0.431

 

60 – 69

132

22

88 – 176

0.398

 

70 – 79

146

21

103 – 190

0.407

 

≥ 80

190

52

84 – 296

0.553

  1. * The model fitted was: ln(RR(t)) = ln((RR0-1)*e-t/ τ+ 1) + ε, where RR(t) = the risk of death for an ex-smoker who ceased smoking t months ago relative to a never-smoker; RR0= RR(0), the relative risk of death for a current smoker versus a never-smoker. rr = the relative risk of death for a never-smoker versus a current smoker (By definition, RR0 = 1/rr). τ is a slope parameter which is inversely proportional to the rate at which the relative risk decreases with time since quitting.