Table 3.
Source | Were important strategies included? | Was the potential impact of uncertainty in the evidence determined? | How strong is the evidence? | Do the probabilities fit the U.S. population? | Do the utilities* reflect the values of older women in the U.S.? |
---|---|---|---|---|---|
Mandelblatt, 1992 | Yes - compared screening for women ≥65 years with no screening | Conducted sensitivity analyses by varying quality of life, breast cancer incidence rates, perioperative death rate, sensitivity and specificity of mammography test, stage distribution of detected breast cancer | The evidence is strong, as the model assumes U.S. breast cancer stage distribution and stage-specific survival data | All measures used in models were based on U.S. population estimates | Yes |
Messecar, 2000 | Yes - compared 1 mammography screening in women ≥75 years with and without cognitive impairment, who (a) underwent regular screening, or (b) had no prior screening | Conducted sensitivity analyses by varying prior probabilities, quality of life, costs of recurrence, sensitivity and specificity of mammography test | The evidence is strong, as the model assumes U.S. breast cancer stage distribution and stage-specific survival data | All measures used in models were based on U.S. population estimates | Yes |
Lansdorp-Vogelaar, 2014 | Yes - compared biennial mammography screening from age 50 to a range of cessation ages from 66 to 90 | Assessed the robustness of choice of metric by considering other harms (false-positive tests, over-diagnosed cancers) and benefits (cancer deaths prevented). Also varied method of extrapolating comorbidity-specific life tables | The evidence is strong, as the models assume U.S. breast cancer stage distribution and stage-specific survival data | All measures used in models were based on U.S. population estimates | Yes |
* Weights used to adjust life expectancy gains for impact on quality of life