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Article

Ongoing Gaps in the Hepatitis C Care Cascade during the Direct-Acting Antiviral Era in a Large Retrospective Cohort in Canada: A Population-Based Study

by
Ana Maria Passos-Castilho
1,2,
Donald G. Murphy
3,
Karine Blouin
4,
Andrea Benedetti
5,
Dimitra Panagiotoglou
5,
Julie Bruneau
6,
Marina B. Klein
7,
Jeffrey C. Kwong
8,9,10,11,
Beate Sander
9,10,12,13,
Naveed Z. Janjua
14 and
Christina Greenaway
1,2,15,*
1
Centre for Clinical Epidemiology, Lady Davis Institute, Jewish General Hospital, Montreal, QC H3T 1E2, Canada
2
Department of Medicine, McGill University, Montreal, QC H3G 2M1, Canada
3
Laboratoire de Santé Publique du Québec, Institut National de Santé Publique du Québec, Sainte-Anne-de-Bellevue, QC H9X 3R5, Canada
4
Unité sur les Infections Transmissibles Sexuellement et par le Sang, Institut National de Santé Publique du Québec, Québec, QC H9X 3R5, Canada
5
Department of Epidemiology, Biostatistics and Occupational Health, School of Population and Global Health, McGill University, Montreal, QC H3A 1G1, Canada
6
CHUM Research Centre, Centre Hospitalier de l’Université de Montréal, Montreal, QC H2X 0A9, Canada
7
Research Institute of the McGill University Health Centre, Montreal, QC H3H 2R9, Canada
8
Dalla Lana School of Public Health, University of Toronto, Toronto, ON M5T 3M7, Canada
9
ICES, Toronto, ON M4N 3M5, Canada
10
Public Health Ontario, Toronto, ON M5G 1M1, Canada
11
Department of Family and Community Medicine, University of Toronto, Toronto, ON M5G 1V7, Canada
12
Toronto General Hospital Research Institute, University Health Network, Toronto, ON M5G 2C4, Canada
13
Institute of Health Policy, Management and Evaluation (IHPME), University of Toronto, Toronto, ON M5T 3M6, Canada
14
School of Population and Public Health, University of British Columbia, Vancouver, BC V6T 1Z3, Canada
15
Division of Infectious Diseases, Jewish General Hospital, Montreal, QC H3T 1E2, Canada
*
Author to whom correspondence should be addressed.
Viruses 2024, 16(3), 389; https://doi.org/10.3390/v16030389
Submission received: 2 February 2024 / Revised: 26 February 2024 / Accepted: 28 February 2024 / Published: 1 March 2024
(This article belongs to the Section Viral Immunology, Vaccines, and Antivirals)

Abstract

:
To achieve hepatitis C virus (HCV) elimination, high uptake along the care cascade steps for all will be necessary. We mapped engagement with the care cascade overall and among priority groups in the post-direct-acting antivirals (DAAs) period and assessed if this changed relative to pre-DAAs. We created a population-based cohort of all reported HCV diagnoses in Quebec (1990–2018) and constructed the care cascade [antibody diagnosed, RNA tested, RNA positive, genotyped, treated, sustained virologic response (SVR)] in 2013 and 2018. Characteristics associated with RNA testing and treatment initiation were investigated using marginal logistic models via generalized estimating equations. Of the 31,439 individuals HCV-diagnosed in Quebec since 1990 and alive as of 2018, there was significant progress in engagement with the care cascade post- vs. pre-DAAs; 86% vs. 77% were RNA-tested, and 64% vs. 40% initiated treatment. As of 2018, a higher risk of not being RNA-tested or treated was observed among individuals born <1945 vs. >1965 [hazard ratio (HR); 95% CI; 1.35 (1.16–1.57)], those with material and social deprivation [1.21 (1.06–1.38)], and those with alcohol use disorder [1.21 (1.08–1.360]. Overall, non-immigrants had lower rates of RNA testing [0.76 (0.67–0.85)] and treatment initiation [0.63 (0.57–0.70)] than immigrants. As of 2018, PWID had a lower risk of not being RNA tested [0.67 (0.61–0.85)] but a similar risk of not being treated, compared to non-PWID. Engagement in the HCV care cascade have improved in the post-DAA era, but inequities remain. Vulnerable subgroups, including certain older immigrants, were less likely to have received RNA testing or treatment as of 2018 and would benefit from focused interventions to strengthen these steps.

1. Introduction

The elimination of hepatitis C virus (HCV) infection as a public health threat is possible given the availability of curative, well-tolerated, oral direct-acting antivirals (DAAs). To achieve this goal, a high uptake in all steps of the HCV care cascade (diagnosis, linkage to care, treatment, cure) for all groups at risk will be necessary [1]. The populations that account for the greatest number of HCV cases in Canada [people who inject drugs (PWID), immigrants born in countries where HCV is common, and individuals born during 1945–1965] are diverse, and each have unique challenges and barriers to accessing and engaging in healthcare [2]. Knowledge of the specific gaps and predictors of loss in each step of the HCV care cascade for each priority population is needed to design effective interventions for each group [2].
Canada signed onto the World Health Organization’s (WHO) goal to eliminate hepatitis C as a public health threat by 2030. With less than 10 years left, real-world population-based data across the country are urgently needed to measure gaps and prioritize health service delivery and policy. The HCV care cascade has been reported in Canada in the provinces of British Columbia (BC) and Ontario, with overall improvements in the post-DAA era [3,4,5]. However, there are limited data stratified by PWID or immigration status, not only from Canada but globally [6,7,8,9,10,11]. Our study in Quebec, the second most populous province in Canada, reports the HCV care cascade overall and among PWIDS and immigrants in Canada in the post-DAA era. The data on immigrants disaggregated by region of origin shown in this study can inform policies not only in Canada but also in other high-income countries that receive large numbers of immigrants born in countries with higher anti-HCV prevalence [12]. We characterized the population-level HCV care cascade in a large retrospective cohort in Canada before and after the introduction of DAA treatment overall and among key priority groups. We investigated the predictors of progression through the key cascade steps to identify which subgroups were still not RNA-tested or treated as of 2018 and assess if this changed from 2013.

2. Materials and Methods

2.1. Study Design, Cohort Construction, and Variable Definitions

We conducted a population-based, retrospective cohort study of all reported hepatitis C diagnoses in Quebec, Canada, between 1 January 1990 and 31 December 2018 in the reportable disease database (MADO) or the Quebec Public Health Laboratory (LSPQ) database, linked to several provincial administrative datasets, including immigrant landing data, medical visits, hospitalizations, cancers, prescription drugs, and deaths. All reported HCV cases (based on positive antibody or RNA tests) were linked deterministically using a unique health care number to the provincial health insurance registry (FIPA) and all healthcare utilization and cancer databases (1987–2018): (1) physician billings (RAMQ-PB), (2) pharmaceutical services (RAMQ-Pharm), (3) hospitalizations (MED-ECHO), and (4) Quebec Cancer Registry (RQC). Deaths were ascertained through linkage with the Death Registry (ISQ) (1990–2015) and RAMQ-FIPA (2016–2018) databases. All immigrants present in the Quebec Permanent Landed Immigrant Database (MIFI) from 1 January 1980 to the end of the study period were linked deterministically to FIPA through a unique immigration number.
Sociodemographic characteristics at the time of HCV diagnosis included age, sex, and the public health region of residence. Urban was defined as living in Greater Montreal and Quebec City, and rural was all other regions. The Material and Social Deprivation Index (MSDI) was used for neighbourhood material and social deprivation [13]. Individuals were classified into three birth cohorts: before 1945, 1945–1965, and after 1965. Immigrants were defined as people born outside of Canada with permission to live permanently in Canada. The country of origin was grouped into regions according to the World Bank classification [14,15]. PWID (past or present) status [16], human immunodeficiency virus (HIV) co-infection [17], decompensated cirrhosis (DC), and hepatocellular carcinoma (HCC) [3] were identified using published algorithms based on the international classification of diseases (ICD) 9/10 codes and the presence of disease-specific medications (Tables S1 and S2) [16,18,19,20,21,22]. Data on HCV-specific antiviral dispensations were obtained from the RAMQ-Pharm database (Table S3) [23,24,25]. Hepatitis B virus (HBV) co-infection was obtained from laboratory-confirmed diagnoses in the MADO database. We used a three-year lookback period for identifying conditions at the time of HCV diagnosis (baseline). Second-generation, interferon-free DAA therapy was first introduced in Canada in 2014, with unrestricted access in Quebec as of March 2016 [26,27,28]. We defined the pre-DAA period as 1990–2013 and the post-DAA period as 2014–2018, as most (64%) of the treatment initiations in 2014 were DAA medications.
This study was reviewed and approved by the Quebec Information Access Commission (1018218-S) and the research ethics committee of the Integrated Health and Social Services University Network for West–Central Montreal, Quebec (MP-05-2019-1257).

2.2. Care Cascade

The HCV care cascades included all individuals diagnosed with HCV since 1990 and alive as of 31 December 2013 (pre-DAA) or 2018 (post-DAA), the years for which care cascades were constructed. The steps along the care cascade included individuals who met the following conditions at any time from HCV diagnosis (1990–2018) to December 31 of the year of the cascade: (1) HCV diagnosed included all confirmed HCV diagnoses (any confirmed positive HCV antibody or a positive HCV RNA); (2) RNA-tested was defined as the presence of the first HCV RNA test in the database after diagnosis; (3) RNA-positive included individuals with a positive HCV RNA test; (4) genotyped is HCV genotype testing performed among RNA-positive individuals, a good proxy for engagement in HCV care and treatment; (5) initiated antiviral treatment was defined as the presence of the first dispensation of any HCV-specific antiviral medications; and (6) achieved a sustained viral response (SVR) was defined as a negative RNA test at least 10 weeks after last antiviral dispensation [3,4]. The backfilling of the care cascade steps is described in Figure S1. The proportion of people at a given step (#1–6) was calculated relative to the number of people in the previous step, except for the proportion of those with an SVR, for which the denominator was the number of individuals assessed for SVR after treatment initiation. Care cascades were estimated overall, for each priority population, and by underlying medical comorbidities.

2.3. Statistical Analysis

We performed multiple imputation by chained equations with 20 iterations to address missing data, mostly due to the 11% of unlinked HCV diagnoses (Figure S1) that were assumed to be missing at random [29,30,31]. All statistical analyses were performed on the dataset after multiple imputation, and standard methods were used to pool estimates and standard errors [30,31].
The cumulative failure probability over time from HCV antibody diagnosis to RNA testing and from RNA positivity to treatment initiation was assessed using Kaplan–Meier (KM) curves overall and stratified by priority population. We estimated marginal logistic models via generalized estimating equations (GEEs) to identify characteristics associated with not having been RNA-tested or not having initiated treatment as of 2018 and tested if this changed from 2013 to 2018. Separate models with RNA testing or treatment initiation as the outcome were constructed using the longitudinal data of individuals that were alive as of 2013 and/or 2018, with an exchangeable correlation structure. Initially, all models were tested with interaction terms between the cascade calendar year (2013 or 2018) and each variable. The final models only included interaction terms that were significant at p < 0.050. Specific 2013 and 2018 adjusted odds ratios (aORs) for variables with significant interactions, or marginal aORs, are shown. The models were adjusted for baseline confounders selected a priori: sex, birth cohort, PWID status, immigrant status, MSDI, region of residence, year of HCV diagnosis, Elixhauser comorbidity index (any comorbidity/none; modified to exclude comorbidities added as separate variables in the model), and comorbidities (diabetes, liver disease, HIV, alcohol and drug use disorder, major mental health illness diagnosis, and HBV coinfection). In the immigrant-specific models, additional baseline covariates included region of birth, immigration category, and years from admission to HCV diagnosis.
In the sensitivity analysis, adjusted hazard ratios (aHRs) of factors associated with time to HCV diagnosis and HCV treatment initiation were estimated using Fine–Gray subdistribution competing risk hazard regression models with all-cause mortality as the competing event, adjusting for the same covariates as the GEE models [32]. Comorbidities were included as time-varying covariates. Individuals who were RNA-negative or who cleared the infection spontaneously were excluded from the time-to-treatment initiation analysis. The proportional hazard assumption was verified with log–log survival curves and Schoenfeld residual plots of exposure variables over time. All analyses were performed using SAS® 9.4 (SAS Institute Inc., Cary, NC, USA).

3. Results

Between 1990 and 2018, 42,514 individuals with an HCV diagnosis were identified, of whom 4565 (11%) did not link to the FIPA database (Figure S1). All the results are reported after multiple imputation. The detailed characteristics of the full cohort, imputed cohort, and individuals with unlinked diagnoses are shown in Table S4. Of all the HCV-diagnosed individuals, 31,439 (74%) were alive by the end of 2018, among whom the mean age was 41.5 years (SD 12.9), and 66% were male. A total of 55% (n = 17,220) were born during 1945–1965, 45% (n = 14,008) were PWID, and 15% (n = 4862) were immigrants. There was a significant overlap between the priority populations. PWID made up 39% of the 1945–1965 birth cohort, but only 12% of immigrants. Half (50%) of all the immigrants were born during 1945–1965 (Figure S2).
There was substantial improvement in the care cascade from 2013 to 2018 (Figure 1). Of note, 86% vs. 77% of the individuals with an HCV diagnosis received RNA testing, and 70% vs. 45% of the RNA-positive individuals initiated treatment in 2018 vs. 2013, respectively. Table 1 shows the 2018 care cascade stratified by key priority groups, sociodemographic characteristics, and comorbidities. Individuals in the 1945–1965 birth cohort showed better progression through the 2018 care cascade compared to the other birth cohorts (Figure 2A). Among all the HCV-diagnosed PWID, 88% received RNA testing (Figure 2B). The treatment uptake among the genotyped PWID was 68%, with 85% achieving an SVR. Of all the immigrants with an HCV diagnosis, 87% received RNA testing, and 76% of the participants who were genotyped initiated treatment, with 92% achieving an SVR (Figure 2C). The proportion of immigrants who received RNA testing varied greatly by birth cohort, from only 76% of the immigrants born before 1945 to 89% among the immigrants born after 1965 (Table S5).

3.1. Gaps in RNA Diagnosis and Treatment Initiation as of 2018 and Progress between Pre- (2013) and Post-DAA (2018) Periods

The median time to RNA testing after HCV diagnosis as of 2018 was 1.8 years [interquartile range (IQR): 0.3–6.2] overall and 0.2 years (IQR: 0.1–0.5) among the individuals diagnosed in the post-DAA period. The probability of receiving RNA testing after HCV diagnosis among all the HCV-diagnosed individuals was higher and occurred in a shorter period in 2018 compared to 2013. In 2013, it took 17 years to achieve an 80% probability of RNA testing, whereas this was achieved in 11 years in 2018 (Figure 3, panel A). The median time to treatment initiation after an initial positive RNA test up to 2018 was 2.4 years (IQR 0.7–6.6) overall and 0.6 years (IQR 0.2–1.3) among the individuals diagnosed in the post-DAA period. The probability of treatment initiation after a positive RNA test increased over calendar time (Figure 3, panel B). In 2013, it took 22 years to achieve a 50% probability of treatment initiation after a positive RNA test, whereas in 2018, this occurred within 7 years.
The risk of not receiving RNA testing was lower in 2018 (aORs, 95% CI: 0.67, 0.61–0.74) compared with 2013 (0.83, 0.76–0.90) among the PWID relative to the non-PWID patients. Overall, immigrants were at a 24% lower risk (0.76, 0.67–0.85, p < 0.001) of not receiving RNA testing as of 2018 relative to non-immigrants. In the sensitivity analysis, including an interaction term between immigrant status and birth cohort by cascade year, older immigrants (born < 1945) did not have this advantage and had a similar risk of not receiving RNA testing as non-immigrants (2013: 1.18, 0.90–1.55; 2018: 1.31, 0.99–1.74). In a separate model for 2018 only, immigrants born prior to 1945 had a 50% increased risk (1.50, 1.15–1.96) of not receiving RNA testing. Other predictors of not receiving RNA testing remained similar from 2013 to 2018; material deprivation, older age (born < 1945), rural residence, and alcohol use disorder (Table 2).
The risk of not receiving treatment as of 2018 decreased significantly for PWID (2013: 1.30, 1.20–1.41; 2018: 1.03, 0.96–1.11) and individuals with HIV coinfection (2013: 0.93, 0.77–1.11; 2018: 0.38, 0.31–0.46) compared to 2013. The 1945–1965 birth cohort, compared to the youngest (0.86, 0.82–0.91) and immigrants (0.63, 0.57–0.70), had a lower risk of not receiving treatment. The risk among immigrants varied significantly, however, and those from Latin America and the Caribbean were approximately 50% more likely to not have initiated treatment as of 2018 compared to those from high income countries in Europe, the United States, Australia, and New Zealand (Table S6). As of 2018, predictors of not having initiated treatment were older age (born before 1945), alcohol use disorder, material deprivation, and diabetes (Table 2).

3.2. Sensitivity Analysis: Factors Associated with Time to RNA Testing and Treatment Initiation in 2018

There was no violation of the proportional hazards assumption in the sensitivity analysis of factors associated with time to RNA testing and treatment initiation in 2018, except for PWID. An interaction term of PWID with time was added to the model to address this violation and to allow the effect of PWID on the outcome to vary over time. RNA testing was lower for the 1945–1965 (aHRs, 95% CI: 0.95, 0.93–0.97) and the <1945 (0.68, 0.64–0.72) birth cohorts compared to the youngest (born > 1965) (Table S7). RNA testing has changed over time among PWID. It was lower among PWID in the first year after HCV diagnosis (0.88, 0.79–0.97), similar until 7 years post-diagnosis, and then was higher after 7 years (1.38, 1.04–1.84) relative to non-PWID persons (Figure S3). Immigrants had increased RNA testing (1.12, 1.09–1.15) compared to non-immigrants (Table S7), which was observed across all regions of origin except for immigrants from Latin America and the Caribbean (0.95, 0.86–1.05) (Table S8). In immigrant-specific models, those from Latin America and the Caribbean had lower RNA testing rates (0.86, 0.74–1.00) compared to immigrants from high-income countries in Europe, the United States, Australia, and New Zealand (Table S9).
The adjusted hazard of treatment initiation (Table S7) was 21% lower in the 1945–1965 birth cohort (aHRs, 95% CI: 0.79, 0.77–0.82) and 71% lower in the <1945 (0.29, 0.27–0.32) birth cohort, compared to the >1965 cohort. PWID had lower treatment initiation than non-PWID patients until seven years post-RNA-positive testing (mean aHRs, 95% CI: 0.77, 0.69–0.86) (Figure S3). Immigrants overall and from all regions of origin had higher treatment initiation (aHRs, 95% CI: 1.42, 1.35–1.48) compared to non-immigrants (Tables S7 and S8). In immigrant-specific models, however, those from Latin America and the Caribbean had a 16% decreased hazard of treatment initiation (0.82, 0.69–0.98) compared to immigrants from high-income countries in Europe, the United States, Australia, and New Zealand (Table S9).

4. Discussion

There was substantial improvement in engagement with the HCV care cascade after the introduction of DAA therapy, but important gaps remained: 14% of all HCV-antibody-diagnosed individuals had not received RNA testing, and 36% of all RNA-positive individuals had not initiated treatment as of 2018. Older individuals overall and PWID for the first few years after diagnosis were less likely to be RNA-tested or treated compared to the youngest cohort and non-PWID individuals, respectively. Immigrants showed better progression through all steps of the care cascade compared to non-immigrants, with the exception of older immigrants and those from Latin America and the Caribbean. As of 2018, older age (birth cohort < 1945), rural residence, material and social deprivation, and alcohol use disorder remained significant predictors of not receiving RNA testing and treatment.
We observed substantial improvement across all steps in the care cascade from 2013 to 2018, similar to what has been reported in other parts of Canada [3,5,33]. Progression through several steps of the care cascade in our study was significantly better than what has been described in other countries, including the United States, the United Kingdom, France, and Australia [34,35,36,37,38]. A systematic review found that the proportion of individuals with chronic HCV infection (CHC) who received DAA treatment among the general population was higher than in our study in Iceland (95%), Egypt (92%), and Georgia (79%) but lower in the Netherlands (52%), United States (29%), Norway (18%), Sweden (8%), and Denmark (5%) [39].
In our study, 62% of HCV-viremic PWID initiated treatment, which is higher than reported among PWID in Georgia (50%), Australia (37%), the United States (13%), and BC, Canada (40%) [39]. Our analysis suggests that the increased uptake in RNA testing and treatment as of 2018 compared to 2013 particularly benefitted PWID, who as of 2018 were not at a higher risk of not receiving RNA testing and treatment relative to non-PWID, but this group will need to continue to be supported. In the time-to-event sensitivity analysis, PWID were less likely to be RNA-tested in the first year after an HCV diagnosis and less likely to initiate treatment for up to seven years after the initial RNA-positive test. The timely diagnosis and treatment of PWID are essential and can prevent viral sequelae and premature acquisition risk-related and liver-related deaths [40], as well as onward transmission, especially when combined with opioid agonist therapy and high-coverage needle-and-syringe programs [41,42].
There are limited studies describing the HCV care cascade among immigrants, especially after the introduction of DAAs. The immigrants in our study demonstrated higher uptake across all steps of the HCV care cascade compared to the non-immigrants, which is similar to immigrants in the Ontario HCV Care Cascade [5]. A study in France described the care cascade among vulnerable undocumented immigrants and refugees (2007–2017), with similar RNA testing (86% vs. 87%) but lower treatment initiation (57% vs. 71%) among RNA-positive individuals compared to our study [10]. The immigrants in our study were more likely to be RNA-tested and to initiate treatment compared to the non-immigrants, which is similar to other Canadian studies [5,43,44,45]. Disparities remained among the immigrant subgroups in our study, however, as those born prior to 1945 were less likely to receive RNA testing relative to the younger immigrants, and immigrants from Latin America and the Caribbean were less likely to receive RNA testing and treatment compared to immigrants from high-income regions. Long delays in diagnosis and treatment resulting from a lack of systematic screening after arrival in Canada [46], coupled with unique barriers to accessing and navigating healthcare after immigration, make this group a particularly vulnerable and at-risk group for end-stage liver disease (ESLD). Studies in the pre-DAA era demonstrated a higher risk of developing HCC and dying in hospital due to liver-related complications among immigrants compared to those born in Canada [47,48]. A key knowledge gap is the proportion of undiagnosed HCV infection and late HCV diagnosis among immigrants, which may be contributing to the growing burden of liver disease in Canada and other high-income countries.
Treatment initiation among individuals with HCC and HIV coinfection improved between 2013 and 2018, likely due to the lifting of restrictions on DAA treatment for those with advanced liver fibrosis [26,27,28] and the better tolerability of DAA therapy in combination with antiretroviral therapy [49]. People residing in rural areas were less likely to receive RNA testing in 2018, suggesting a need for additional strategies, such as using telemedicine [50] and/or outreach screening/RNA testing programs in these areas. Individuals born during 1945–1965 were not at a higher risk of not receiving RNA testing or treatment in 2018 in our main analysis. In the time-to-event sensitivity analysis, however, they presented a 5% lower uptake of RNA testing and a 21% lower rate of treatment initiation, respectively, compared to the youngest cohort, probably due to delayed RNA testing and treatment or survival bias.
Finally, our analysis suggests that disparities in RNA testing and treatment remain even after five years of DAA availability among the oldest birth cohort (<1945), those with material and social deprivation, and those with alcohol use disorder. The timely diagnosis and treatment of older individuals is necessary, as this group has high rates of liver-related complications (i.e., DC and HCC), which, in combination with underlying comorbidities such as HIV, obesity, and alcohol use disorder, have become a major cause of death [51,52,53]. Targeted approaches to promoting equitable progress through the care cascade are urgently needed among socially deprived groups and could include community-based tailored interventions, such as partnering with community organizations and local health clinics. These models will need to be embedded into alcohol use services, which have been shown to be successful in Australia [54].
The major strength of this study is that it follows a population-based sample over 28 years. Immigrants were identified through linkage with the landed immigrant database, using data from 1980 onwards, and data disaggregated by birth cohort and region of birth are provided. PWID were identified using a validated algorithm. All notified HCV cases in the province were laboratory-confirmed, and there was a high deterministic linkage rate between the databases. Missing data were imputed using robust methods. This study has limitations, including underestimating HCV diagnoses and possible selection bias due to detection in a passive surveillance system, which could be differential as testing may be higher among PWID but lower among immigrants and others with symptomatic liver disease. While it has been estimated that approximately 25% of Canadians living with past or current HCV infection in Canada remain unaware of their status [55], this proportion is expected to be much higher among the 1945–1965 cohort and immigrants. Despite being validated in administrative databases, the use of published diagnostic code algorithms for identifying HIV diagnoses and PWID may have resulted in an underestimation of these conditions. There is a misclassification of immigrant status for immigrants who arrived in the province before 1980 (an estimated 15% of all immigrants living in Quebec) [56] and those who resided in another province before arriving in Quebec. Despite these limitations, these data provide valuable insights about gaps in care and engagement, with which we can assess important HCV care cascade data that can inform micro-elimination strategies and health service needs in Canada and other low-HCV-prevalence settings.

5. Conclusions

Engagement in the HCV care cascade increased overall and among key priority groups (PWID, 1945–1965 birth cohort, immigrants) in Quebec in the five years after the introduction of DAA therapy, but inequities remain. RNA testing and treatment were carried out late among PWID and the 1945–1965 birth cohorts, which can result in increased transmission and a high burden of ESLD and premature death. Older individuals (born < 1945), those living with material and social deprivation, and those who have alcohol use disorder were “left behind” in the care cascade, as were older immigrants and those from Latin America and the Caribbean. These groups should be targeted for RNA testing and treatment initiation, as this will be key to achieving HCV elimination. This study may inform elimination efforts in Quebec and other Canadian provinces and is also relevant to other high-income, low-HCV-prevalence settings with similar key HCV priority groups.

Supplementary Materials

The following supporting information can be downloaded at https://www.mdpi.com/article/10.3390/v16030389/s1: Table S1. List of codes used to identify comorbidities and liver-related disease in hospital, medical visits, and pharmacy dispensation data. Table S2. Validation of the PWID algorithm with Quebec data. Table S3. Algorithms for treatment initiations not covered by the provincial pharmacy prescription plan. Table S4. Characteristics of individuals diagnosed with HCV in 1990–2018 and living in Quebec, Canada, as of 2018 in full cohort and imputed cohort. Table S5. Immigrant cascade of care of individuals diagnosed with HCV in 1990–2018 and living in Quebec, Canada, as of 2018, stratified by care cascade stages, with row percentages as a proportion of the previous column. Table S6. Predictors of not having received RNA testing or initiated treatment as of 2018 among immigrants and changes since 2013, using generalized estimating equation logistic regression analysis. Table S7. Sensitivity analysis: predictors of time to RNA testing and treatment initiation among individuals diagnosed with HCV in Quebec, Canada, in 1990–2018 using a Fine–Gray subdistribution competing risk hazard regression analysis. Table S8. Sensitivity analysis: predictors of time to RNA testing and treatment initiation among individuals diagnosed with HCV in Quebec, Canada, in 1990–2018 using a Fine–Gray subdistribution competing risk hazard regression analysis (immigrants stratified by World Bank region of origin). Table S9. Sensitivity analysis: predictors of time to RNA testing and treatment initiation among immigrants diagnosed with HCV in Quebec, Canada in 1990–2018 using a Fine–Gray subdistribution competing risk hazard regression analysis. Figure S1. Flowchart of the identification of hepatitis C diagnosis and cohort creation. Figure S2. Intersectionality of priority groups among individuals diagnosed with HCV since 1990 and alive in 2018, Quebec, Canada. Figure S3. Time-varying hazard for people who inject drugs (PWID) diagnosed with HCV in Quebec, Canada, 1990–2018. Shown are adjusted hazard ratios (aHRs) with 95% confidence intervals (CI) over time from (A) HCV diagnosis to RNA testing and from (B) RNA positive to treatment initiation. These data result from the inclusion of an interaction of the PWID variable and time to event in the Fine–Gray subdistribution competing hazard regression model (shown in Table 2).

Author Contributions

Conceptualization, B.S., C.G., J.C.K. and N.Z.J.; study design, A.B., A.M.P.-C., C.G. and N.Z.J.; data acquisition, C.G., D.G.M., J.B. and K.B.; data analysis, A.M.P.-C.; interpretation of data, A.M.P.-C., C.G., J.B., M.B.K. and N.Z.J.; writing—original draft preparation, A.M.P.-C.; writing—review and editing, A.B., A.M.P.-C., C.G., D.G.M., D.P., J.B., J.C.K., K.B., M.B.K. and N.Z.J.; funding acquisition, B.S., C.G., J.C.K. and N.Z.J. All authors have read and agreed to the published version of the manuscript.

Funding

This work was supported by the Canadian Institutes for Health Research (CIHR) grant # PJT-156066. Ana Maria Passos-Castilho has received a postdoctoral fellowship from the Canadian Network on Hepatitis C (CanHepC). CanHepC is funded by a joint initiative of the Canadian Institutes of Health Research (NPC-178912) and the Public Health Agency of Canada. MBK and JB are supported by Tier 1 Canada Research Chairs. BS is supported by a Tier 2 Canada Research Chair. DP is supported by a Junior 1 Research Scholars award from the Fonds de recherche du Québec. JCK is supported by a Clinician-Scientist Award from the University of Toronto Department of Family and Community Medicine.

Institutional Review Board Statement

The study was conducted in accordance with the Declaration of Helsinki, and approved by the the research ethics committee of the Integrated Health and Social Services University Network for West–Central Montreal, Quebec (MP-05-2019-1257). This study was reviewed and approved by the Quebec Information Access Commission (1018218-S).

Informed Consent Statement

Not applicable. There is no informed consent in this study as this is an administrative database study.

Data Availability Statement

The data that support the findings of this study are available from the Quebec Statistics Institute (ISQ, “Institut de la statistique du Québec”), but restrictions apply to the availability of these data, which were used under contract for the current study and so are not publicly available. For more information, see https://statistique.quebec.ca/recherche.

Acknowledgments

The findings and conclusions in this publication are those of the authors and do not necessarily represent the official position of the authors’ affiliation institutions. The authors would like to thank Réjean Dion and Michel Desrochers for preparing the MADO HCV diagnoses database and Danka Kareen Shank for preparing the LSPQ HCV diagnoses database.

Conflicts of Interest

CG reports grants for investigator-initiated studies from Gilead and consulting fees from AbbVie. MBK reports grants for investigator-initiated studies from ViiV Healthcare, AbbVie, Merck, and Gilead and consulting fees from ViiV Healthcare, Merck, AbbVie, and Gilead. JB reports grants for investigator-initiated studies from Gilead and consulting fees from Cepheid, AbbVie, and Gilead. NZJ has participated in advisory boards and has spoken for AbbVie and Gilead.

Abbreviations

aHRsadjusted hazard ratios
aORsadjusted odds ratios
BCBritish Columbia
DAAdirect-acting antivirals
DCdecompensated cirrhosis
ESLDend-stage liver disease
FIPAdatabase for province-healthcare-covered individuals (“Fichier d’inscription des personnes assurées”)
GEEgeneralized estimating equations
HBVhepatitis B virus
HCChepatocellular carcinoma
HCVhepatitis C virus
HIVhuman immunodeficiency virus
ICDinternational classification of diseases
IHPMEInstitute of Health Policy, Management and Evaluation
IQRinterquartile range
ISQQuebec Statistics Institute (“Institut de la statistique du Québec”)
KMKaplan–Meier
LSPQprovincial reference laboratory database (“Laboratoire de santé publique du Québec”)
MADOpublic health reportable diseases database (“maladies à déclaration obligatoire”)
MDSIMaterial and Social Deprivation Index
MED-ECHOQuebec provincial health insurance hospitalizations
MIFIlanded immigrants database (“Ministry of Immigration, Frenchisation and Integration“)
PWIDpeople who inject drugs
RAMQQuebec provincial health insurance (“Régie de l’assurance maladie du Québec“)
RAMQ-PBQuebec provincial health insurance physician billings
RAMQ-PharmQuebec provincial health insurance pharmacy services
RQCQuebec cancer registry (“Registre québécois du cancer”)
SVRsustained virologic response
WHOWorld Health Organization

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Figure 1. Overall cascade of care of individuals diagnosed with HCV since 1990 and living in Quebec, Canada, as of 2013 compared to 2018 (percentages on the bottom are the proportion of individuals that progressed to the next stage).
Figure 1. Overall cascade of care of individuals diagnosed with HCV since 1990 and living in Quebec, Canada, as of 2013 compared to 2018 (percentages on the bottom are the proportion of individuals that progressed to the next stage).
Viruses 16 00389 g001
Figure 2. Cascade of care of individuals diagnosed with HCV since 1990 and living in Quebec, Canada, in 2018, stratified by (A) birth cohort, (B) people who use drugs status, and (C) immigrant status (percentages on the bottom are the proportion of individuals that progressed to the next stage).
Figure 2. Cascade of care of individuals diagnosed with HCV since 1990 and living in Quebec, Canada, in 2018, stratified by (A) birth cohort, (B) people who use drugs status, and (C) immigrant status (percentages on the bottom are the proportion of individuals that progressed to the next stage).
Viruses 16 00389 g002aViruses 16 00389 g002b
Figure 3. Kaplan–Meyer cumulative failure probability curves with 95% confidence intervals for time from (A) HCV diagnosis to RNA testing and (B) HCV RNA positive test to treatment initiation; cumulative Quebec HCV care cascades of individuals diagnosed since 1990 and living with HCV as of 2013 (red) and 2018 (blue).
Figure 3. Kaplan–Meyer cumulative failure probability curves with 95% confidence intervals for time from (A) HCV diagnosis to RNA testing and (B) HCV RNA positive test to treatment initiation; cumulative Quebec HCV care cascades of individuals diagnosed since 1990 and living with HCV as of 2013 (red) and 2018 (blue).
Viruses 16 00389 g003
Table 1. Overall cascade of care of individuals diagnosed with HCV in 1990–2018 and living in Quebec, Canada, as of 2018, stratified by care cascade stages, with row percentages as a proportion of the previous column.
Table 1. Overall cascade of care of individuals diagnosed with HCV in 1990–2018 and living in Quebec, Canada, as of 2018, stratified by care cascade stages, with row percentages as a proportion of the previous column.
HCV-DiagnosedRNA-TestedRNA-PositiveGenotypedInitiated TreatmentAssessed for SVRSVR
Total31,439 (100.0)27,013 (85.9)19,405 (71.8)17,778 (91.6)12,357 (69.5)10,638 (86.1)9378 (88.2)
Birth cohort
 <19451756 (100.0)1421 (80.9)1054 (74.2)902 (85.6)501 (55.5)417 (83.2)371 (89.0)
 1945–196517,220 (100.0)14,749 (85.7)10,765 (73.0)9979 (92.7)7194 (72.1)6206 (86.3)5528 (89.1)
 >196512,463 (100.0)10,843 (87.0)7586 (70.0)6897 (90.9)4662 (67.6)4015 (86.1)3478 (86.6)
Sex
 Female10,700 (100.0)9184 (85.8)6241 (68.0)5676 (90.9)3906 (68.8)3365 (86.1)3013 (89.5)
 Male20,739 (100.0)17,829 (86.0)13,164 (73.8)12,102 (91.9)8451 (69.8)7273 (86.1)6365 (87.5)
Region of residence
 Urban20,775 (100.0)18,036 (86.8)13,037 (72.3)11,900 (91.3)8429 (70.8)7238 (85.9)6411 (88.6)
 Rural10,664 (100.0)8977 (84.2)6368 (70.9)5878 (92.3)3928 (66.8)3400 (86.6)2967 (87.3)
Social deprivation quintile
 1 (Least deprived)3176 (100.0)2719 (85.6)1994 (73.3)1824 (91.5)1304 (71.5)1150 (88.2)1010 (87.8)
 23932 (100.0)3399 (86.4)2457 (72.3)2260 (92.0)1602 (70.9)1393 (87.0)1220 (87.6)
 34938 (100.0)4238 (85.8)3028 (71.4)2771 (91.5)1973 (71.2)1707 (86.5)1492 (87.4)
 47524 (100.0)6443 (85.6)4687 (72.7)4300 (91.7)2974 (69.2)2559 (86.0)2274 (88.9)
 5 (Most deprived)11,869 (100.0)10,212 (86.0)7238 (70.9)6624 (91.5)4504 (68.0)3829 (85.0)3381 (88.3)
Material deprivation quintile
 1 (Least deprived)4483 (100.0)3917 (87.4)2814 (71.8)2595 (92.2)1894 (73.0)1711 (90.3)1544 (90.2)
 24801 (100.0)4122 (85.9)2989 (72.5)2776 (92.9)2003 (72.2)1723 (86.0)1541 (89.4)
 35680 (100.0)4894 (86.2)3543 (72.4)3242 (91.5)2278 (70.3)1970 (86.5)1742 (88.4)
 46939 (100.0)5991 (86.3)4325 (72.2)3985 (92.1)2744 (68.9)2334 (85.1)2017 (86.4)
 5 (Most deprived)9536 (100.0)8090 (84.8)5734 (70.9)5179 (90.3)3438 (66.4)2900 (84.4)2534 (87.4)
Immigrant status
 Immigrant4862 (100.0)4220 (86.8)3377 (80.0)3142 (93.0)2388 (76.0)1996 (83.6)1844 (92.4)
 Non-immigrant26,577 (100.0)22,792 (85.8)16,028 (70.3)14,636 (91.3)9969 (68.1)8642 (86.7)7534 (87.2)
People who inject drugs
 Yes14008 (100.0)12355 (88.2)8898 (72.0)8184 (92.0)5530 (67.6)4658 (84.2)3957 (85.0)
 No17431 (100.0)14658 (84.1)10507 (71.7)9594 (91.3)6827 (71.2)5980 (87.6)5421 (90.7)
Elixhauser comorbidity index (modified) a
 Yes2115 (100.0)1828 (86.4)1289 (70.5)1190 (92.3)850 (71.4)721 (84.8)627 (87.0)
 No29,324 (100.0)25,185 (85.9)18,116 (71.9)16,588 (91.6)11,507 (69.4)9917 (86.2)8751 (88.2)
Diabetes
 At baseline1801 (100.0)1538 (85.4)1153 (75.0)1061 (92.0)803 (75.7)695 (86.6)628 (90.4)
 Ever4682 (100.0)4167 (89.0)3022 (72.5)2820 (93.3)2132 (75.6)1827 (85.7)1605 (87.8)
 Never26,757 (100.0)22,846 (85.4)16,383 (71.7)14,958 (91.3)10,225 (68.4)8811 (86.2)7773 (88.2)
Major mental health illness
 At baseline8685 (100.0)7628 (87.8)5391 (70.7)4957 (91.9)3378 (68.1)2882 (85.3)2497 (86.6)
 Ever17,734 (100.0)15,678 (88.4)11,266 (71.9)10,488 (93.1)7441 (70.9)6381 (85.8)5510 (86.4)
 Never13,705 (100.0)11,335 (82.7)8139 (71.8)7290 (89.6)4916 (67.4)4257 (86.6)3868 (90.9)
Alcohol use disorder
 At baseline3095 (100.0)2680 (86.6)1928 (71.9)1732 (89.8)1099 (63.5)918 (83.5)764 (83.2)
 Ever7824 (100.0)6973 (89.1)5028 (72.1)4618 (91.8)3044 (65.9)2590 (85.1)2154 (83.2)
 Never23,615 (100.0)20,040 (84.9)14,377 (71.7)13,160 (91.5)9313 (70.8)8047 (86.4)7223 (89.8)
HBV coinfection
 At baseline1002 (100.0)806 (80.4)531 (65.9)492 (92.7)377 (76.6)308 (81.7)266 (86.4)
 Ever1230 (100.0)1001 (81.4)647 (64.6)600 (92.7)454 (75.7)370 (81.5)318 (85.9)
 Never30,209 (100.0)26,011 (86.1)18,758 (72.1)17,178 (91.6)11,903 (69.3)10,268 (86.3)9060 (88.2)
HIV coinfection
 At baseline1272 (100.0)1198 (94.2)901 (75.2)886 (98.3)752 (84.9)686 (91.2)576 (84.0)
 Ever2169 (100.0)2058 (94.9)1532 (74.4)1496 (97.7)1243 (83.1)1118 (89.9)935 (83.6)
 Never29,270 (100.0)24,954 (85.3)17,873 (71.6)16,282 (91.1)11,114 (68.3)9520 (85.7)8443 (88.7)
Decompensated cirrhosis
 At baseline675 (100.0)619 (91.7)490 (79.2)464 (94.7)352 (75.9)294 (83.5)255 (86.7)
 Ever7539 (100.0)7343 (97.4)5907 (80.4)5781 (97.9)4681 (81.0)4149 (88.6)3626 (87.4)
 Never23,900 (100.0)19,669 (82.3)13,498 (68.6)11,997 (88.9)7676 (64.0)6489 (84.5)5752 (88.6)
Hepatocellular carcinoma
 At baseline251 (100.0)233 (92.8)225 (96.6)223 (99.1)199 (89.2)163 (81.9)137 (84.0)
 Ever731 (100.0)701 (95.9)626 (89.3)611 (97.6)513 (84.0)455 (88.7)381 (83.7)
 Never30,708 (100.0)26,312 (85.7)18,779 (71.4)17,167 (91.4)11,844 (69.0)10,183 (86.0)8997 (88.4)
a Diagnostic codes for diabetes, mental health illness, alcohol and drug consumption disorders, HIV, and liver-disease excluded.
Table 2. Predictors of not having received RNA testing or initiated treatment as of 2018, and changes since 2013 among individuals diagnosed with HCV since 1990 and alive as of 2013/2018, Quebec, Canada.
Table 2. Predictors of not having received RNA testing or initiated treatment as of 2018, and changes since 2013 among individuals diagnosed with HCV since 1990 and alive as of 2013/2018, Quebec, Canada.
Characteristics aModel A: Not Having Received RNA TestingModel B: Not Having Initiated Treatment
2013 b
aORs (95% CI)
2018/Overall b
aORs (95% CI)
2013 b
aORs (95% CI)
2018/Overall b
aORs (95% CI)
Sex
 Male (Ref)--1 (Ref)--1 (Ref)
 Female--1.00 (0.93–1.07)--1.05 (0.99–1.12)
Birth cohort
 <1945--1.35 (1.16–1.57)--2.16 (1.89–2.46)
 1945–1965--1.03 (0.97–1.11)--0.86 (0.82–0.91)
 >1965 (Ref)--1 (Ref)--1 (Ref)
PWID
 No (Ref)1 (Ref)1 (Ref)1 (Ref)1 (Ref)
 Yes0.83 (0.76–0.90)0.67 (0.61–0.74)1.30 (1.20–1.41)1.03 (0.96–1.11)
Immigrant status
 Non-immigrant (Ref)--1 (Ref)1 (Ref)1 (Ref)
 Immigrant--0.76 (0.67–0.85)0.32 (0.29–0.35)0.63 (0.57–0.70)
Region of residence
 Rural1.34 (1.25–1.44)1.23 (1.14–1.33)--1.02 (0.96–1.08)
 Urban (Ref)1 (Ref)1 (Ref)--1 (Ref)
Material deprivation index
 1 (Most privileged) (Ref)--1 (Ref)--1 (Ref)
 2--1.21 (1.06–1.38)--1.04 (0.94–1.15)
 3--1.15 (1.01–1.30)--1.14 (1.04–1.26)
 4--1.19 (1.05–1.34)--1.20 (1.09–1.32)
 5 (Most deprived)--1.38 (1.23–1.54)--1.39 (1.27–1.52)
Social deprivation index
 1 (Most privileged) (Ref)--1 (Ref)1 (Ref)1 (Ref)
 2--0.96 (0.81–1.14)1.20 (1.05–1.37)1.04 (0.91–1.19)
 3--1.04 (0.89–1.21)1.16 (1.02–1.33)1.05 (0.92–1.21)
 4--1.08 (0.93–1.26)1.40 (1.23–1.59)1.16 (1.03–1.31)
 5 (Most deprived) --1.13 (0.98–1.30)1.46 (1.29–1.64)1.22 (1.09–1.37)
Elixhauser comorbidity index (modified)
 No (Ref)--1 (Ref)1 (Ref)1 (Ref)
 Yes--0.99 (0.84–1.16)1.01 (0.87–1.18)1.15 (0.99–1.34)
Diabetes
 No (Ref)--1 (Ref)1 (Ref)1 (Ref)
 Yes--0.97 (0.83–1.14)0.87 (0.74–1.02)1.34 (1.16–1.55)
Major mental health diagnosis
 No (Ref)1 (Ref)1 (Ref)--1 (Ref)
 Yes0.89 (0.81–0.97)0.82 (0.74–0.91)--0.96 (0.90–1.03)
Alcohol use disorder
 No (Ref)--1 (Ref)--1 (Ref)
 Yes--1.21 (1.08–1.36)--1.41 (1.26–1.57)
HBV coinfection
 No (Ref)--1 (Ref)--1 (Ref)
 Yes--1.52 (1.26–1.84)--0.80 (0.68–0.95)
HIV coinfection
 No (Ref)1 (Ref)1 (Ref)1 (Ref)1 (Ref)
 Yes0.30 (0.22–0.41)0.39 (0.27–0.56)0.93 (0.77–1.11)0.38 (0.31–0.46)
Decompensated cirrhosis
 No (Ref)--1 (Ref)--1 (Ref)
 Yes--0.61 (0.43–0.87)--1.15 (0.90–1.47)
Hepatocellular carcinoma
 No (Ref)--1 (Ref)1 (Ref)1 (Ref)
 Yes--0.38 (0.17–0.84)0.80 (0.41–1.56)0.20 (0.09–0.43)
Marginal logistic regression model estimated via generalized estimating equations (GEE). Effects for 2013 shown only for characteristics with a significant (p < 0.05) change from 2013 to 2018. aORs, adjusted odds ratios. Model also adjusted for calendar year of HCV diagnosis. -- purposely left blank. a characteristics at the time of HCV diagnosis; b adjusted odds ratios generated from interaction terms of each variable with the care cascade calendar year (i.e., 2013 or 2018). Only interaction terms with p < 0.05 were included in the final model and are shown in the table above.
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Passos-Castilho, A.M.; Murphy, D.G.; Blouin, K.; Benedetti, A.; Panagiotoglou, D.; Bruneau, J.; Klein, M.B.; Kwong, J.C.; Sander, B.; Janjua, N.Z.; et al. Ongoing Gaps in the Hepatitis C Care Cascade during the Direct-Acting Antiviral Era in a Large Retrospective Cohort in Canada: A Population-Based Study. Viruses 2024, 16, 389. https://doi.org/10.3390/v16030389

AMA Style

Passos-Castilho AM, Murphy DG, Blouin K, Benedetti A, Panagiotoglou D, Bruneau J, Klein MB, Kwong JC, Sander B, Janjua NZ, et al. Ongoing Gaps in the Hepatitis C Care Cascade during the Direct-Acting Antiviral Era in a Large Retrospective Cohort in Canada: A Population-Based Study. Viruses. 2024; 16(3):389. https://doi.org/10.3390/v16030389

Chicago/Turabian Style

Passos-Castilho, Ana Maria, Donald G. Murphy, Karine Blouin, Andrea Benedetti, Dimitra Panagiotoglou, Julie Bruneau, Marina B. Klein, Jeffrey C. Kwong, Beate Sander, Naveed Z. Janjua, and et al. 2024. "Ongoing Gaps in the Hepatitis C Care Cascade during the Direct-Acting Antiviral Era in a Large Retrospective Cohort in Canada: A Population-Based Study" Viruses 16, no. 3: 389. https://doi.org/10.3390/v16030389

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