| Literature DB >> 23961428 |
Fabiano Hahn Souza1, Carísi Anne Polanczyk.
Abstract
OBJECTIVE: The present paper estimates the cost-effectiveness of population-based breast cancer (BC) screening strategies in Brazil for women under 50 years from the perspective of the Brazilian public health system.Entities:
Year: 2013 PMID: 23961428 PMCID: PMC3736082 DOI: 10.1186/2193-1801-2-366
Source DB: PubMed Journal: Springerplus ISSN: 2193-1801
Figure 1The disease process model for breast cancer.
Main parameters used in the base case and sensitivity analyses
| Variables | Screening test performance | Distribution/comments | Reference | ||
|---|---|---|---|---|---|
| Mean | Minimum | Maximum | |||
| Mammography coverage | 18% | 10% | 30% | Uniform | (Ministério_Saúde_Brasil, DATASUS |
| Mammography coverage ǁ | 70% | 55% | 85% | Uniform | (Lilliu et al. |
| Sensitivity of SFM (40–49 years) | 76% | 60% | 85% | Effectiveness data from large population | (Kerlikowske et al. |
| Sensitivity of FFDM (40–49 years) | 82% | 65% | 90% | Effectiveness data from large population | (Kerlikowske et al. |
| Sensitivity of SFM (50–59 years) | 85% | 65% | 90% | Effectiveness data from large population | (Kerlikowske et al. |
| Sensitivity of FFDM (50–59 years) | 80% | 65% | 90% | Effectiveness data from large population | (Kerlikowske et al. |
| Sensitivity of SFM (60–69 years) | 83% | 65% | 90% | Effectiveness data from large population | (Kerlikowske et al. |
| Sensitivity of FFDM (60–69 years) | 90% | 65% | 95% | Effectiveness data from large population | (Kerlikowske et al. |
| Treatment complication (yearly) - Chemotherapy | 16% | 10% | 20% | Resource utilization database | (Hassett et al. |
| Treatment complication (yearly) – Endocrine therapy | 5% | 1% | 10% | Resource utilization database | (Hassett et al. |
| Overdiagnosis | 5% | 0 | 30% | Systematic review estimate | (Smith & Duffy |
| DCIS (clinical diagnostic) | 6.1% | 4.9–7.3% | Beta (α = 97; β = 1494) | (INCA | |
| State 1 (clinical diagnostic) | 14% | 13.1–16.6% | Beta (α = 232; β = 1329) | (INCA | |
| State 2 (clinical diagnostic) | 38.6% | 36.5–40.5% | Beta (α = 915; β = 1455) | (INCA | |
| State 3 (clinical diagnostic) | 34.7% | 32.4–37.1% | Beta (α = 546; β = 1028) | (INCA | |
| State 4 (clinical diagnostic) | 10.8% | NA | Complementary | (INCA | |
| CDIS (screening diagnostic) | 6.1% | NA | Dynamic range ∫ | (Kerlikowske et al. | |
| State 1 (screening diagnostic) | 58%Ξ | NA | Effectiveness data from large population | (Kerlikowske et al. | |
| State 2 (screening diagnostic) | 32.4%Ξ | NA | Effectiveness data from large population | (Kerlikowske et al. | |
| State 3 (screening diagnostic) | 8.3%Ξ | NA | Effectiveness data from large population | (Kerlikowske et al. | |
| State 4 (screening diagnostic) | 1.3%Ξ | NA | Effectiveness data from large population | (Kerlikowske et al. | |
| CDIS | 0.008/y | 0.002–0.014/y | 50–98% | 2–50% | (Baxter et al. |
| Stage 1 | 0.030/y | NA | 16–47% | 53–84% | (Hirsch et al. |
| Stage 2 | 0.087/y | NA | 19–56% | 44–81% | (Wapnir et al. |
| Stage 3 | 0.283/y | 0,11–0,28/y | 19–56% | 19–56% | (Wapnir et al. |
| CDIS | 0.002/y | 0.002–0.003/y | (Ernster et al. | ||
| Stage 1 | 0.009/y | NA | (de Oliveira et al. | ||
| Stage 2 | 0.031/y | NA | (de Oliveira et al. | ||
| Stage 3 | 0.090/y | NA | (de Oliveira et al. | ||
| Stage 4 | 0.270/y | 0.20–0.34 | (de Oliveira et al. | ||
| Adjuvant Taxane chemotherapy§ | 0.86 | Log-Normal (μ = −0.15;σ=0.07) | (Peto et al. | ||
| Adjuvant Aromatase inhibitor§¶ | 0.82 | Log-Normal (μ = −0.20;σ=0.12) | (Dowsett et al. | ||
| Adjuvant Trastuzumab therapy §‡ | 0.61 | Log-Normal (μ = −0.49;σ=0.06) | (Perez et al. | ||
| Screening vs. non-screening cancer casesΦ | 0,62 | Log-Normal (μ= − 0.48;σ=0.12) | (Mook et al. | ||
| Advanced disease - Luminal A vs. Luminal B¥ | 1.42 | Log-Normal (μ = 0.34;σ=0.12) | (Kennecke et al. | ||
| Advanced disease - Luminal A vs. HER2 + ¥ | 1.90 | Log-Normal (μ=0.64;σ=0.11) | (Kennecke et al. | ||
| Advanced disease - Luminal A vs. Triple negative¥ | 1.62 | Log-Normal (μ = 0.48;σ=0.11) | (Kennecke et al. | ||
| Diagnostic cancer downstage (FFDM under 50 years) | 0.54 | Log-Normal (μ= − 0.654;σ=0.307) | (Souza et al. | ||
| Discount rate | 5% | 0% | 10% | Brazilian Health Economic Guidelines | (Ministério_Saúde_Brasil |
| Medical visit | 10 | 5 | 25 | DATASUS | (Ministério_Saúde_Brasil, DATASUS |
| FFDM | 68 | 45 | 90 | Estimated∀ | (Souza |
| SFM | 45 | 30 | 60 | DATASUS | (Ministério_Saúde_Brasil, DATASUS |
| Biopsy | 429 | 150 | 700 | Gamma (α = 14.93; λ = 0.03) | (Souza |
| Recall SFM | 152 | 50 | 250 | Aggregate costs | (Souza |
| Recall FFDM | 197 | 100 | 300 | Aggregate costs | (Souza |
| Staging early BCΨ | 509 | 250 | 750 | Gamma (α = 3.09 λ=0.01) | (Souza |
| Staging locally and advanced cancerΔ | 592 | 200 | 800 | Gamma (α = 2.52 λ=0.04) | (Souza |
| Invasive cancer stage 1 (first year) | 6,502 | 2,500 | 11,500 | Aggregate costs | (Souza |
| Invasive cancer stage 2 (first year) | 15,610 | 6,500 | 24,500 | Aggregate costs | (Souza |
| Invasive cancer stage 3 (first year) | 18,638 | 9,500 | 27,500 | Aggregate costs | (Souza |
| Invasive cancer stage 4 (first year) | 12,452 | 6,500 | 20,500 | Aggregate costs | (Souza |
| Invasive cancer stage 1 (≥ 2 year) | 602 | 200 | 1,000 | Aggregate costs | (Souza |
| Invasive cancer stage 2 (≥ 2 year) | 677 | 200 | 1,200 | Aggregate costs | (Souza |
| Invasive cancer stage 3 (≥ 2 year) | 742 | 200 | 1,600 | Aggregate costs | (Souza |
| Invasive cancer stage 4 (≥ 2 year) | 12,439 | 4000 | 20,000 | Aggregate costs | (Souza |
| Healthy woman | 0.800 | NA | South of Brazil population⊥ | (Cruz | |
| Healthy woman – false positive mammography | 0.795 | NA | Estimated∴ | (Cruz | |
| Non metastatic BCχ – follow-up | 0.772 | 0.63–0.90 | Normal distribution | (Souza | |
| Early BCχ – Adjuvant Endocrine Therapy | 0.762 | 0.62–0.91 | Normal distribution | (Souza | |
| Early BCχ – Adjuvant Chemotherapy | 0.739 | 0.61–0.87 | Normal distribution | (Cruz | |
| Clinical Stage 3 – Adjuvant Endocrine Therapy | 0.760 | 0.59–0.95 | Normal distribution | (Souza | |
| Clinical Stage 3 – Adjuvant Chemotherapy | 0.700 | 0.63–0.78 | Normal distribution | (Souza | |
| Clinical Stage 4 – Advanced disease | 0.680 | 0.57–0.80 | Normal distribution | (Souza | |
ǁ Screening strategies; NA: not applicable; ∫ time and screening coverage-dependent (increase in the DCIS rate with the introduction of the screening program); Ξ relative to invasive cancer (excluding DCIS); § Relative risk of BC death in clinical stage 2 and 3 patients; ¶ hormone-positive patients; ‡ HER2-positive patients; Φ Relative risk of BC death; ¥ Relative risk of BC death in advanced disease (stage 4) according to prognostic subtype; ∀ Plausible estimate 50% above SFM reimbursement value; Ψ clinical stages 1 and 2; Δ clinical stages 3 and 4; * confidence interval; ⊥ Porto Alegre city; ∴Considering the mean of non-metastatic BC utility (0.77) and a false positive as a 2-month period of disutility (0.80–0.77= [(0.03)*(0.16 year)=0.005] →0.80–0.005=0.795; χin situ, stage 1, stage 2, and stage 3 patients.
Figure 2Model predicted life expectancy and 95% confidence interval for women 40 years and older, and estimates from the Brazilian Institute of Geography and Statistics Cencus.
Base-case incremental cost effectiveness results
| Strategy | Discounted costs (Brazilian Real) | Discounted effect (QALY) | Order of non-dominated strategies | ICER (R$/QALY) |
|---|---|---|---|---|
| 2,075 | 14,498 | 1 | — | |
| 2,318 | 14,546 | 3 | 13,131 | |
| 2,125 | 14,532 | 2 | 1,509 | |
| 2,564 | 14,548 | |||
| 2,259 | 14,533 | |||
| 2,393 | 14,549 | 4 | 30,520 | |
| 2,254 | 14,538 |
Figure 3Cost Effectiveness plane (base-case).
Figure 4Sensitivity analysis. Shown is the range of the incremental cost-effectiveness ratios (ICERs) as a result of varying parameters and assumptions for screening strategy (breast cancer incidence, populational age distribution and mammography coverage).
Figure 5Cost Effectiveness acceptability curve (dominated strategies not shown).