| Literature DB >> 31727921 |
Ozden O Dalgic1, Sumeyye Samur1, Anne C Spaulding2, Susana Llerena3, Carmen Cobo4, Turgay Ayer5, Mark S Roberts6, Javier Crespo3, Jagpreet Chhatwal7.
Abstract
Hepatitis C virus (HCV) is 15 times more prevalent among persons in Spain's prisons than in the community. Recently, Spain initiated a pilot program, JAILFREE-C, to treat HCV in prisons using direct-acting antivirals (DAAs). Our aim was to identify a cost-effective strategy to scale-up HCV treatment in all prisons. Using a validated agent-based model, we simulated the HCV landscape in Spain's prisons considering disease transmission, screening, treatment, and prison-community dynamics. Costs and disease outcomes under status quo were compared with strategies to scale-up treatment in prisons considering prioritization (HCV fibrosis stage vs. HCV prevalence of prisons), treatment capacity (2,000/year vs. unlimited) and treatment initiation based on sentence lengths (>6 months vs. any). Scaling-up treatment by treating all incarcerated persons irrespective of their sentence length provided maximum health benefits-preventing 10,200 new cases of HCV, and 8,300 HCV-related deaths between 2019-2050; 90% deaths prevented would have occurred in the community. Compared with status quo, this strategy increased quality-adjusted life year (QALYs) by 69,700 and costs by €670 million, yielding an incremental cost-effectiveness ratio of €9,600/QALY. Scaling-up HCV treatment with DAAs for the entire Spanish prison population, irrespective of sentence length, is cost-effective and would reduce HCV burden.Entities:
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Year: 2019 PMID: 31727921 PMCID: PMC6856347 DOI: 10.1038/s41598-019-52564-0
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1Model schematic showing the prison population and general population and the dynamic movement between the two groups (dashed arrows). Individuals are defined by demographic characteristics, liver disease stage, and injection drug use (IDU) status. Throughout the simulation, several characteristics are updated: age, IDU status, HCV infection status (infected individuals shown in blue), liver disease stage, and location (inside or outside prison). HCV-infected individuals can transmit disease to others in their immediate network (solid arrows). The natural history of chronic HCV disease is represented by Markov states (top right inset). Stages of chronic HCV disease are defined by METAVIR fibrosis scores. Advanced liver diseases stages are DC, HCC, LT, and LRDs. DC = decompensated cirrhosis; F0 = no fibrosis; F1 = portal fibrosis without septa; F2 = portal fibrosis with few septa; F3 = numerous septa without cirrhosis; F4 = compensated cirrhosis; HCC = hepatocellular carcinoma; HCV = hepatitis C virus; IDU = injection drug use; LRD = liver-related death; LT = liver transplantation.
Figure 2Spain’s regions were divided in seven zones shown by different colors. Numbers in the parenthesis correspond to HCV prevalence in each zone. The region shaded in black was not included.
Baseline population characteristics and model parameters used in TapHCV model for Spain.
| Model Parameter | Value | Range | |
|---|---|---|---|
| Population | |||
| General population | 46,560,000 | — | |
| Inmates[ | 41,020 | — | |
| Gender (male %) | |||
| General population[ | 49% | — | |
| Prisons[ | 96.2% | — | |
| Transmission probability[ | 0.000255 | 0.000085–0.000425 | |
| Self-clearance probability[ | 0.25 | 0.23–0.28 | |
| Newborn infection rate[ | 0.0093% | 0.0061%–0.018% | |
| PWID–non-PWID interaction probability[ | 0.012 | — | |
| Status quo treatment capacity in the prisons | 160 (calibrated) | — | |
| Prevalence of PWID | |||
| In prisons (Active PWID[ | 37.2%; 20.5% | — | |
| Outside of prisons (Active PWID[ | 0.03%; 1.3% | — | |
| Birth-rate per 1,000 population (annual)[ | 15 | — | |
| Standardized mortality ratio (SMR) | |||
| PWID[ | 2.54 | — | |
| Inmates[ | 0.85 | — | |
| HCV genotype[ | [50.2%; 2.37%; 27.8%; 19.7%] | — | |
| Chronic hepatitis C disease stage distribution[ | |||
| [F0; F1; F2; F3; F4; DC; HCC] | [14.2%; 31.6%; 16.5%; 14.1%; 20.4%; 3.09%; 0.29%] | — | |
| Proportion of patients aware of their HCV status | |||
| In general population[ | 30% | 0.7–0.9 | |
| In prisons[ | 80% | 0.05–0.55 | |
| Proportion of treatment-experienced patients in prisons[ | 23.1% | 0.131–0.331 | |
| Agent’s behavior[ | |||
| F0 HCV diagnosis probability (annual) | 0.037 | 0.028–0.046 | |
| F1 HCV diagnosis probability (annual) | 0.030 | 0.022–0.037 | |
| F2 HCV diagnosis probability (annual) | 0.042 | 0.032–0.052 | |
| F3 HCV diagnosis probability (annual) | 0.046 | 0.035–0.057 | |
| F4 HCV diagnosis probability (annual) | 0.163 | 0.124–0.199 | |
| Aware reduction factor | 0.5 | 0.25–0.75 | |
| Treatment reduction factor | 0.0 | 0.0–1.0 | |
| Transition probabilities (annual) | |||
| F0 to F1[ | |||
| F1 to F2[ | |||
| F2 to F3[ | |||
| F3 to F4[ | |||
| F3 to HCC[ | 0.008 | 0.003–0.014 | |
| F4 to DC[ | 0.039 | 0.01–0.079 | |
| F4 to HCC[ | 0.014 | 0.01–0.079 | |
| SVR after cirrhosis to DC[ | 0.008 | 0.002–0.036 | |
| SVR after cirrhosis to HCC[ | 0.005 | 0.002–0.013 | |
| DC to HCC[ | 0.068 | 0.03–0.083 | |
| DC to LT[ | 0.023 | 0.01–0.062 | |
| DC (first year) to LRD[ | 0.182 | 0.065–0.19 | |
| DC (subsequent year) to LRD[ | 0.112 | 0.065–0.19 | |
| HCC to LT[ | 0.040 | 0–0.14 | |
| HCC to LRD[ | 0.427 | 0.33–0.86 | |
| LT (first year) to LRD[ | 0.116 | 0.06–0.42 | |
| LT (subsequent year) to LRD[ | 0.044 | 0.024–0.11 | |
| Health state costs (annual) (€)[ | |||
| F0, F1 | 365 | 182.5–547.5 | |
| F2, F3 | 280 | 140–420 | |
| F4 | 560 | 280–840 | |
| DC | 2,280 | 1,140–3,420 | |
| HCC | 6,700 | 3,350–10,050 | |
| LT, first year | 104,000 | 52,000–156,000 | |
| LT, subsequent year | 17,800 | 89,00–267,00 | |
| Testing cost (one-time) (€)[ | |||
| HCV ELISA test (anti-HCV antibody test) | 3 | 1.5–4.5 | |
| Quantitative HCV RNA | 40 | 20–60 | |
| Fibroscan test | 60 | 30–90 | |
| HCV treatment costs (one-time) (€)[ | 17,126 | 3,333–12,083 | |
| Health-related quality-of-life weights[ | |||
| F0, F1 | 0.93 | 0.99–0.837 | |
| F2, F3 | 0.93 | 0.99–0.837 | |
| F4 | 0.9 | 0.99–0.81 | |
| DC | 0.8 | 0.88–0.72 | |
| HCC | 0.79 | 0.869–0.711 | |
| First-year post-LT | 0.84 | 0.924–0.756 | |
| Post SVR (F0-F1) | 1 | 0.99–0.9 | |
| Post SVR (F2-F4) | 0.93 | 0.99–0.837 | |
| Age-related quality-of-life weights[ | |||
| Age group | Male | Female | |
| 0–29 | 0.928 | 0.913 | — |
| 30–39 | 0.918 | 0.893 | — |
| 40–49 | 0.887 | 0.863 | — |
| 50–59 | 0.861 | 0.837 | — |
| 60–69 | 0.84 | 0.811 | — |
f(male) = 1, if patient is male; and 0 if patient is female.
f(G1) = 1, if patient has hepatitis C virus (HCV) genotype 1; and 0 otherwise.
f(excess alcohol) = 1, if patients has excess alcohol consumption; and 0 otherwise. The prevalence of excess alcohol consumption was 24% for male inmates, 17% for female inmates, and 23% for general population.
f(PWID) = 1, if patients are active injection drug users; and 0 otherwise.
Abbreviations: HCV; hepatitis C virus; PWID, person who injects drug; SVR, sustained virology response; METAVIR, meta-analysis of histologic data in viral hepatitis; F0–F4, METAVIR fibrosis score. DC, decompensated cirrhosis; HCC, hepatocellular carcinoma; ELISA, enzyme-linked immunosorbant analysis; RNA, ribonucleic acid.
Figure 3Base case cost-effectiveness analysis results. Abbreviations: QALYs: Quality adjusted life years; ICER: Incremental cost effectiveness ratio.
Annual HCV–associated cost in Spain’s prisons for years 2019, 2020, 2025, 2030, 2035, 2040, 2045, and 2050 under status quo and different strategies for scaling-up treatment to all prisons.
| Cost Type | Strategy | 2019 | 2020 | 2025 | 2030 | 2035 | 2040 | 2045 | 2050 |
|---|---|---|---|---|---|---|---|---|---|
| Screening (€) | 7,907 | 5,876 | 6,868 | 2,698 | 2,150 | 1,925 | 1,265 | 802 | |
| 7,907 | 13,440 | 13,380 | 6,024 | 4,118 | 2,550 | 1,929 | 687 | ||
| 7,907 | 9,658 | 12,295 | 6,641 | 4,564 | 2,782 | 1,532 | 689 | ||
| 7,907 | 14,412 | 13,733 | 6,960 | 4,478 | 2,624 | 1,732 | 1,205 | ||
| 7,907 | 14,695 | 14,814 | 5,821 | 4,302 | 2,236 | 1,730 | 803 | ||
| Treatment (€) | 8.1 M | 7.9 M | 7 M | 5.9 M | 5.1 M | 4.3 M | 3.7 M | 3.1 M | |
| 93.1 M | 91.2 M | 80 M | 40 M | 23.3 M | 13 M | 8.4 M | 5.8 M | ||
| 93 M | 90.5 M | 80.3 M | 39.6 M | 23.4 M | 12.8 M | 8.3 M | 5.8 M | ||
| 315.4 M | 118.4 M | 67.9 M | 37.8 M | 22.9 M | 13 M | 8.3 M | 5.8 M | ||
| 404.6 M | 180.2 M | 81.7 M | 44.7 M | 26.2 M | 14.7 M | 8.9 M | 6.1 M | ||
| Disease management (€) | 3.7 M | 3.5 M | 2.8 M | 2 M | 1.5 M | 0.9 M | 0.6 M | 0.4 M | |
| 3.1 M | 2.6 M | 1.4 M | 0.7 M | 0.4 M | 0.2 M | 0.2 M | 0.1 M | ||
| 3.2 M | 2.7 M | 1.4 M | 0.7 M | 0.4 M | 0.2 M | 0.2 M | 0.1 M | ||
| 2.1 M | 1.7 M | 1.1 M | 0.6 M | 0.4 M | 0.2 M | 0.2 M | 0.1 M | ||
| 1.9 M | 1.5 M | 0.9 M | 0.5 M | 0.3 M | 0.2 M | 0.1 M | 0.1 M | ||
| Total (€) | 11.8 M | 11.5 M | 9.8 M | 7.9 M | 6.6 M | 5.2 M | 4.3 M | 3.5 M | |
| 96.2 M | 93.8 M | 81.4 M | 40.7 M | 23.7 M | 13.2 M | 8.5 M | 5.9 M | ||
| 96.2 M | 93.3 M | 81.8 M | 40.3 M | 23.9 M | 13 M | 8.5 M | 5.9 M | ||
| 317.5 M | 120.2 M | 69.1 M | 38.4 M | 23.4 M | 13.2 M | 8.4 M | 5.9 M | ||
| 406.5 M | 181.7 M | 82.7 M | 45.2 M | 26.5 M | 14.9 M | 9 M | 6.2 M |
Under status quo, 160 inmates were treated regardless of their fibrosis stages or prisons’ HCV prevalence. Strategy 1 prioritizes inmates by their fibrosis stages (fibrosis scores F4, F3, F2, F1, and F0) with a treatment capacity of 2,000/year, irrespective of the prison or region. Strategy 2 prioritizes prisons by their HCV prevalence with a treatment capacity of 2,000/year, irrespective of fibrosis stages. Strategy 3 considers unlimited capacity. In Strategies 1–3, only those sentenced with more than six months are eligible for treatment. Strategy 4 considers unlimited treatment capacity and assumed everyone, irrespective of their sentence length, is eligible for treatment.
Figure 4Hepatitis C virus (HCV) prevalence in Spain’s prisons from 2019 to 2050 under status quo and different strategies for scaling-up treatment to all prisons.
Figure 5Reduction in hepatitis C disease burden between 2019 and 2050 by scaling-up HCV treatment to all prisons in Spain compared with status quo.
Figure 6Cumulative reduction in prison-related HCV incidence and prison-related HCV deaths from 2019 to 2050 by scaling-up HCV treatment compared with status quo.