Cargando…

Development and clinical validation of a novel algorithmic score (GAAD) for detecting HCC in prospective cohort studies

BACKGROUND: Alpha-fetoprotein (AFP) and des-gamma carboxyprothrombin (DCP), also known as protein induced by vitamin K absence-II (PIVKA-II [DCP]) are biomarkers for HCC with limited diagnostic value when used in isolation. The novel GAAD algorithm is an in vitro diagnostic combining PIVKA-II (DCP)...

Descripción completa

Detalles Bibliográficos
Autores principales: Piratvisuth, Teerha, Hou, Jinlin, Tanwandee, Tawesak, Berg, Thomas, Vogel, Arndt, Trojan, Jörg, De Toni, Enrico N., Kudo, Masatoshi, Eiblmaier, Anja, Klein, Hanns-Georg, Hegel, Johannes Kolja, Madin, Kairat, Kroeniger, Konstantin, Sharma, Ashish, Chan, Henry L.Y.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Lippincott Williams & Wilkins 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10635602/
https://www.ncbi.nlm.nih.gov/pubmed/37938100
http://dx.doi.org/10.1097/HC9.0000000000000317
_version_ 1785133031787331584
author Piratvisuth, Teerha
Hou, Jinlin
Tanwandee, Tawesak
Berg, Thomas
Vogel, Arndt
Trojan, Jörg
De Toni, Enrico N.
Kudo, Masatoshi
Eiblmaier, Anja
Klein, Hanns-Georg
Hegel, Johannes Kolja
Madin, Kairat
Kroeniger, Konstantin
Sharma, Ashish
Chan, Henry L.Y.
author_facet Piratvisuth, Teerha
Hou, Jinlin
Tanwandee, Tawesak
Berg, Thomas
Vogel, Arndt
Trojan, Jörg
De Toni, Enrico N.
Kudo, Masatoshi
Eiblmaier, Anja
Klein, Hanns-Georg
Hegel, Johannes Kolja
Madin, Kairat
Kroeniger, Konstantin
Sharma, Ashish
Chan, Henry L.Y.
author_sort Piratvisuth, Teerha
collection PubMed
description BACKGROUND: Alpha-fetoprotein (AFP) and des-gamma carboxyprothrombin (DCP), also known as protein induced by vitamin K absence-II (PIVKA-II [DCP]) are biomarkers for HCC with limited diagnostic value when used in isolation. The novel GAAD algorithm is an in vitro diagnostic combining PIVKA-II (DCP) and AFP measurements, age, and gender (biological sex) to generate a semi-quantitative result. We conducted prospective studies to develop, implement, and clinically validate the GAAD algorithm for differentiating HCC (early and all-stage) and benign chronic liver disease (CLD), across disease stages and etiologies. METHODS: Patients aged ≥18 years with HCC or CLD were prospectively enrolled internationally into algorithm development [n = 1084; 309 HCC cases (40.7% early-stage) and 736 controls] and clinical validation studies [n = 877; 366 HCC cases (47.6% early-stage) and 303 controls]. Serum samples were analyzed on a cobas(®) e 601 analyzer. Performance was assessed using receiver operating characteristic curve analyses to calculate AUC. RESULTS: For algorithm development, AUC for differentiation between early-stage HCC and CLD was 90.7%, 84.4%, and 77.2% for GAAD, AFP, and PIVKA-II, respectively. The sensitivity of GAAD for the detection of early-stage HCC was 71.8% with 90.0% specificity. Similar results were shown in the clinical validation study; AUC for differentiation between early-stage HCC and CLD was 91.4% with 70.1% sensitivity and 93.7% specificity. GAAD also showed strong specificity, with a lower rate of false positives regardless of disease stage, etiology, or region. CONCLUSIONS: The GAAD algorithm significantly improves early-stage HCC detection for patients with CLD undergoing HCC surveillance. Further phase III and IV studies are warranted to assess the utility of incorporating the algorithm into clinical practice.
format Online
Article
Text
id pubmed-10635602
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher Lippincott Williams & Wilkins
record_format MEDLINE/PubMed
spelling pubmed-106356022023-11-10 Development and clinical validation of a novel algorithmic score (GAAD) for detecting HCC in prospective cohort studies Piratvisuth, Teerha Hou, Jinlin Tanwandee, Tawesak Berg, Thomas Vogel, Arndt Trojan, Jörg De Toni, Enrico N. Kudo, Masatoshi Eiblmaier, Anja Klein, Hanns-Georg Hegel, Johannes Kolja Madin, Kairat Kroeniger, Konstantin Sharma, Ashish Chan, Henry L.Y. Hepatol Commun Original Article BACKGROUND: Alpha-fetoprotein (AFP) and des-gamma carboxyprothrombin (DCP), also known as protein induced by vitamin K absence-II (PIVKA-II [DCP]) are biomarkers for HCC with limited diagnostic value when used in isolation. The novel GAAD algorithm is an in vitro diagnostic combining PIVKA-II (DCP) and AFP measurements, age, and gender (biological sex) to generate a semi-quantitative result. We conducted prospective studies to develop, implement, and clinically validate the GAAD algorithm for differentiating HCC (early and all-stage) and benign chronic liver disease (CLD), across disease stages and etiologies. METHODS: Patients aged ≥18 years with HCC or CLD were prospectively enrolled internationally into algorithm development [n = 1084; 309 HCC cases (40.7% early-stage) and 736 controls] and clinical validation studies [n = 877; 366 HCC cases (47.6% early-stage) and 303 controls]. Serum samples were analyzed on a cobas(®) e 601 analyzer. Performance was assessed using receiver operating characteristic curve analyses to calculate AUC. RESULTS: For algorithm development, AUC for differentiation between early-stage HCC and CLD was 90.7%, 84.4%, and 77.2% for GAAD, AFP, and PIVKA-II, respectively. The sensitivity of GAAD for the detection of early-stage HCC was 71.8% with 90.0% specificity. Similar results were shown in the clinical validation study; AUC for differentiation between early-stage HCC and CLD was 91.4% with 70.1% sensitivity and 93.7% specificity. GAAD also showed strong specificity, with a lower rate of false positives regardless of disease stage, etiology, or region. CONCLUSIONS: The GAAD algorithm significantly improves early-stage HCC detection for patients with CLD undergoing HCC surveillance. Further phase III and IV studies are warranted to assess the utility of incorporating the algorithm into clinical practice. Lippincott Williams & Wilkins 2023-11-08 /pmc/articles/PMC10635602/ /pubmed/37938100 http://dx.doi.org/10.1097/HC9.0000000000000317 Text en Copyright © 2023 The Author(s). Published by Wolters Kluwer Health, Inc. on behalf of the American Association for the Study of Liver Diseases. https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the Creative Commons Attribution License 4.0 (https://creativecommons.org/licenses/by/4.0/) (CCBY), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited. http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/)
spellingShingle Original Article
Piratvisuth, Teerha
Hou, Jinlin
Tanwandee, Tawesak
Berg, Thomas
Vogel, Arndt
Trojan, Jörg
De Toni, Enrico N.
Kudo, Masatoshi
Eiblmaier, Anja
Klein, Hanns-Georg
Hegel, Johannes Kolja
Madin, Kairat
Kroeniger, Konstantin
Sharma, Ashish
Chan, Henry L.Y.
Development and clinical validation of a novel algorithmic score (GAAD) for detecting HCC in prospective cohort studies
title Development and clinical validation of a novel algorithmic score (GAAD) for detecting HCC in prospective cohort studies
title_full Development and clinical validation of a novel algorithmic score (GAAD) for detecting HCC in prospective cohort studies
title_fullStr Development and clinical validation of a novel algorithmic score (GAAD) for detecting HCC in prospective cohort studies
title_full_unstemmed Development and clinical validation of a novel algorithmic score (GAAD) for detecting HCC in prospective cohort studies
title_short Development and clinical validation of a novel algorithmic score (GAAD) for detecting HCC in prospective cohort studies
title_sort development and clinical validation of a novel algorithmic score (gaad) for detecting hcc in prospective cohort studies
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10635602/
https://www.ncbi.nlm.nih.gov/pubmed/37938100
http://dx.doi.org/10.1097/HC9.0000000000000317
work_keys_str_mv AT piratvisuthteerha developmentandclinicalvalidationofanovelalgorithmicscoregaadfordetectinghccinprospectivecohortstudies
AT houjinlin developmentandclinicalvalidationofanovelalgorithmicscoregaadfordetectinghccinprospectivecohortstudies
AT tanwandeetawesak developmentandclinicalvalidationofanovelalgorithmicscoregaadfordetectinghccinprospectivecohortstudies
AT bergthomas developmentandclinicalvalidationofanovelalgorithmicscoregaadfordetectinghccinprospectivecohortstudies
AT vogelarndt developmentandclinicalvalidationofanovelalgorithmicscoregaadfordetectinghccinprospectivecohortstudies
AT trojanjorg developmentandclinicalvalidationofanovelalgorithmicscoregaadfordetectinghccinprospectivecohortstudies
AT detonienricon developmentandclinicalvalidationofanovelalgorithmicscoregaadfordetectinghccinprospectivecohortstudies
AT kudomasatoshi developmentandclinicalvalidationofanovelalgorithmicscoregaadfordetectinghccinprospectivecohortstudies
AT eiblmaieranja developmentandclinicalvalidationofanovelalgorithmicscoregaadfordetectinghccinprospectivecohortstudies
AT kleinhannsgeorg developmentandclinicalvalidationofanovelalgorithmicscoregaadfordetectinghccinprospectivecohortstudies
AT hegeljohanneskolja developmentandclinicalvalidationofanovelalgorithmicscoregaadfordetectinghccinprospectivecohortstudies
AT madinkairat developmentandclinicalvalidationofanovelalgorithmicscoregaadfordetectinghccinprospectivecohortstudies
AT kroenigerkonstantin developmentandclinicalvalidationofanovelalgorithmicscoregaadfordetectinghccinprospectivecohortstudies
AT sharmaashish developmentandclinicalvalidationofanovelalgorithmicscoregaadfordetectinghccinprospectivecohortstudies
AT chanhenryly developmentandclinicalvalidationofanovelalgorithmicscoregaadfordetectinghccinprospectivecohortstudies