Cargando…

Performance of models to predict hepatocellular carcinoma risk among UK patients with cirrhosis and cured HCV infection

BACKGROUND & AIMS: Hepatocellular carcinoma (HCC) prediction models can inform clinical decisions about HCC screening provided their predictions are robust. We conducted an external validation of 6 HCC prediction models for UK patients with cirrhosis and a HCV virological cure. METHODS: Patients...

Descripción completa

Detalles Bibliográficos
Autores principales: Innes, Hamish, Jepsen, Peter, McDonald, Scott, Dillon, John, Hamill, Victoria, Yeung, Alan, Benselin, Jennifer, Went, April, Fraser, Andrew, Bathgate, Andrew, Ansari, M. Azim, Barclay, Stephen T., Goldberg, David, Hayes, Peter C., Johnson, Philip, Barnes, Eleanor, Irving, William, Hutchinson, Sharon, Guha, Indra Neil
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8585647/
https://www.ncbi.nlm.nih.gov/pubmed/34805817
http://dx.doi.org/10.1016/j.jhepr.2021.100384
_version_ 1784597735640399872
author Innes, Hamish
Jepsen, Peter
McDonald, Scott
Dillon, John
Hamill, Victoria
Yeung, Alan
Benselin, Jennifer
Went, April
Fraser, Andrew
Bathgate, Andrew
Ansari, M. Azim
Barclay, Stephen T.
Goldberg, David
Hayes, Peter C.
Johnson, Philip
Barnes, Eleanor
Irving, William
Hutchinson, Sharon
Guha, Indra Neil
author_facet Innes, Hamish
Jepsen, Peter
McDonald, Scott
Dillon, John
Hamill, Victoria
Yeung, Alan
Benselin, Jennifer
Went, April
Fraser, Andrew
Bathgate, Andrew
Ansari, M. Azim
Barclay, Stephen T.
Goldberg, David
Hayes, Peter C.
Johnson, Philip
Barnes, Eleanor
Irving, William
Hutchinson, Sharon
Guha, Indra Neil
author_sort Innes, Hamish
collection PubMed
description BACKGROUND & AIMS: Hepatocellular carcinoma (HCC) prediction models can inform clinical decisions about HCC screening provided their predictions are robust. We conducted an external validation of 6 HCC prediction models for UK patients with cirrhosis and a HCV virological cure. METHODS: Patients with cirrhosis and cured HCV were identified from the Scotland HCV clinical database (N = 2,139) and the STratified medicine to Optimise Treatment of Hepatitis C Virus (STOP-HCV) study (N = 606). We calculated patient values for 4 competing non-genetic HCC prediction models, plus 2 genetic models (for the STOP-HCV cohort only). Follow-up began at the date of sustained virological response (SVR) achievement. HCC diagnoses were identified through linkage to nation-wide cancer, hospitalisation, and mortality registries. We compared discrimination and calibration measures between prediction models. RESULTS: Mean follow-up was 3.4–3.9 years, with 118 (Scotland) and 40 (STOP-HCV) incident HCCs observed. The age-male sex-ALBI-platelet count score (aMAP) model showed the best discrimination; for example, the Concordance index (C-index) in the Scottish cohort was 0.77 (95% CI 0.73–0.81). However, for all models, discrimination varied by cohort (being better for the Scottish cohort) and by age (being better for younger patients). In addition, genetic models performed better in patients with HCV genotype 3. The observed 3-year HCC risk was 3.3% (95% CI 2.6–4.2) and 5.1% (3.5–7.0%) in the Scottish and STOP-HCV cohorts, respectively. These were most closely matched by aMAP, in which the mean predicted 3-year risk was 3.6% and 5.0% in the Scottish and STOP-HCV cohorts, respectively. CONCLUSIONS: aMAP was the best-performing model in terms of both discrimination and calibration and, therefore, should be used as a benchmark for rival models to surpass. This study underlines the opportunity for ‘real-world’ risk stratification in patients with cirrhosis and cured HCV. However, auxiliary research is needed to help translate an HCC risk prediction into an HCC-screening decision. LAY SUMMARY: Patients with cirrhosis and cured HCV are at high risk of developing liver cancer, although the risk varies substantially from one patient to the next. Risk calculator tools can alert clinicians to patients at high risk and thereby influence decision-making. In this study, we tested the performance of 6 risk calculators in more than 2,500 patients with cirrhosis and cured HCV. We show that some risk calculators are considerably better than others. Overall, we found that the ‘aMAP’ calculator worked the best, but more work is needed to convert predictions into clinical decisions.
format Online
Article
Text
id pubmed-8585647
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher Elsevier
record_format MEDLINE/PubMed
spelling pubmed-85856472021-11-18 Performance of models to predict hepatocellular carcinoma risk among UK patients with cirrhosis and cured HCV infection Innes, Hamish Jepsen, Peter McDonald, Scott Dillon, John Hamill, Victoria Yeung, Alan Benselin, Jennifer Went, April Fraser, Andrew Bathgate, Andrew Ansari, M. Azim Barclay, Stephen T. Goldberg, David Hayes, Peter C. Johnson, Philip Barnes, Eleanor Irving, William Hutchinson, Sharon Guha, Indra Neil JHEP Rep Research Article BACKGROUND & AIMS: Hepatocellular carcinoma (HCC) prediction models can inform clinical decisions about HCC screening provided their predictions are robust. We conducted an external validation of 6 HCC prediction models for UK patients with cirrhosis and a HCV virological cure. METHODS: Patients with cirrhosis and cured HCV were identified from the Scotland HCV clinical database (N = 2,139) and the STratified medicine to Optimise Treatment of Hepatitis C Virus (STOP-HCV) study (N = 606). We calculated patient values for 4 competing non-genetic HCC prediction models, plus 2 genetic models (for the STOP-HCV cohort only). Follow-up began at the date of sustained virological response (SVR) achievement. HCC diagnoses were identified through linkage to nation-wide cancer, hospitalisation, and mortality registries. We compared discrimination and calibration measures between prediction models. RESULTS: Mean follow-up was 3.4–3.9 years, with 118 (Scotland) and 40 (STOP-HCV) incident HCCs observed. The age-male sex-ALBI-platelet count score (aMAP) model showed the best discrimination; for example, the Concordance index (C-index) in the Scottish cohort was 0.77 (95% CI 0.73–0.81). However, for all models, discrimination varied by cohort (being better for the Scottish cohort) and by age (being better for younger patients). In addition, genetic models performed better in patients with HCV genotype 3. The observed 3-year HCC risk was 3.3% (95% CI 2.6–4.2) and 5.1% (3.5–7.0%) in the Scottish and STOP-HCV cohorts, respectively. These were most closely matched by aMAP, in which the mean predicted 3-year risk was 3.6% and 5.0% in the Scottish and STOP-HCV cohorts, respectively. CONCLUSIONS: aMAP was the best-performing model in terms of both discrimination and calibration and, therefore, should be used as a benchmark for rival models to surpass. This study underlines the opportunity for ‘real-world’ risk stratification in patients with cirrhosis and cured HCV. However, auxiliary research is needed to help translate an HCC risk prediction into an HCC-screening decision. LAY SUMMARY: Patients with cirrhosis and cured HCV are at high risk of developing liver cancer, although the risk varies substantially from one patient to the next. Risk calculator tools can alert clinicians to patients at high risk and thereby influence decision-making. In this study, we tested the performance of 6 risk calculators in more than 2,500 patients with cirrhosis and cured HCV. We show that some risk calculators are considerably better than others. Overall, we found that the ‘aMAP’ calculator worked the best, but more work is needed to convert predictions into clinical decisions. Elsevier 2021-10-07 /pmc/articles/PMC8585647/ /pubmed/34805817 http://dx.doi.org/10.1016/j.jhepr.2021.100384 Text en © 2021 The Author(s) https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Research Article
Innes, Hamish
Jepsen, Peter
McDonald, Scott
Dillon, John
Hamill, Victoria
Yeung, Alan
Benselin, Jennifer
Went, April
Fraser, Andrew
Bathgate, Andrew
Ansari, M. Azim
Barclay, Stephen T.
Goldberg, David
Hayes, Peter C.
Johnson, Philip
Barnes, Eleanor
Irving, William
Hutchinson, Sharon
Guha, Indra Neil
Performance of models to predict hepatocellular carcinoma risk among UK patients with cirrhosis and cured HCV infection
title Performance of models to predict hepatocellular carcinoma risk among UK patients with cirrhosis and cured HCV infection
title_full Performance of models to predict hepatocellular carcinoma risk among UK patients with cirrhosis and cured HCV infection
title_fullStr Performance of models to predict hepatocellular carcinoma risk among UK patients with cirrhosis and cured HCV infection
title_full_unstemmed Performance of models to predict hepatocellular carcinoma risk among UK patients with cirrhosis and cured HCV infection
title_short Performance of models to predict hepatocellular carcinoma risk among UK patients with cirrhosis and cured HCV infection
title_sort performance of models to predict hepatocellular carcinoma risk among uk patients with cirrhosis and cured hcv infection
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8585647/
https://www.ncbi.nlm.nih.gov/pubmed/34805817
http://dx.doi.org/10.1016/j.jhepr.2021.100384
work_keys_str_mv AT inneshamish performanceofmodelstopredicthepatocellularcarcinomariskamongukpatientswithcirrhosisandcuredhcvinfection
AT jepsenpeter performanceofmodelstopredicthepatocellularcarcinomariskamongukpatientswithcirrhosisandcuredhcvinfection
AT mcdonaldscott performanceofmodelstopredicthepatocellularcarcinomariskamongukpatientswithcirrhosisandcuredhcvinfection
AT dillonjohn performanceofmodelstopredicthepatocellularcarcinomariskamongukpatientswithcirrhosisandcuredhcvinfection
AT hamillvictoria performanceofmodelstopredicthepatocellularcarcinomariskamongukpatientswithcirrhosisandcuredhcvinfection
AT yeungalan performanceofmodelstopredicthepatocellularcarcinomariskamongukpatientswithcirrhosisandcuredhcvinfection
AT benselinjennifer performanceofmodelstopredicthepatocellularcarcinomariskamongukpatientswithcirrhosisandcuredhcvinfection
AT wentapril performanceofmodelstopredicthepatocellularcarcinomariskamongukpatientswithcirrhosisandcuredhcvinfection
AT fraserandrew performanceofmodelstopredicthepatocellularcarcinomariskamongukpatientswithcirrhosisandcuredhcvinfection
AT bathgateandrew performanceofmodelstopredicthepatocellularcarcinomariskamongukpatientswithcirrhosisandcuredhcvinfection
AT ansarimazim performanceofmodelstopredicthepatocellularcarcinomariskamongukpatientswithcirrhosisandcuredhcvinfection
AT barclaystephent performanceofmodelstopredicthepatocellularcarcinomariskamongukpatientswithcirrhosisandcuredhcvinfection
AT goldbergdavid performanceofmodelstopredicthepatocellularcarcinomariskamongukpatientswithcirrhosisandcuredhcvinfection
AT hayespeterc performanceofmodelstopredicthepatocellularcarcinomariskamongukpatientswithcirrhosisandcuredhcvinfection
AT johnsonphilip performanceofmodelstopredicthepatocellularcarcinomariskamongukpatientswithcirrhosisandcuredhcvinfection
AT barneseleanor performanceofmodelstopredicthepatocellularcarcinomariskamongukpatientswithcirrhosisandcuredhcvinfection
AT irvingwilliam performanceofmodelstopredicthepatocellularcarcinomariskamongukpatientswithcirrhosisandcuredhcvinfection
AT hutchinsonsharon performanceofmodelstopredicthepatocellularcarcinomariskamongukpatientswithcirrhosisandcuredhcvinfection
AT guhaindraneil performanceofmodelstopredicthepatocellularcarcinomariskamongukpatientswithcirrhosisandcuredhcvinfection