Literature DB >> 35138551

Conventional and artificial intelligence-based imaging for biomarker discovery in chronic liver disease.

Jérémy Dana1,2,3,4, Aïna Venkatasamy5,6,7, Antonio Saviano8,9,10, Joachim Lupberger8,9, Yujin Hoshida11, Valérie Vilgrain12, Pierre Nahon13,14,15, Caroline Reinhold16,17,18, Benoit Gallix5,9,16, Thomas F Baumert19,20,21.   

Abstract

Chronic liver diseases, resulting from chronic injuries of various causes, lead to cirrhosis with life-threatening complications including liver failure, portal hypertension, hepatocellular carcinoma. A key unmet medical need is robust non-invasive biomarkers to predict patient outcome, stratify patients for risk of disease progression and monitor response to emerging therapies. Quantitative imaging biomarkers have already been developed, for instance, liver elastography for staging fibrosis or proton density fat fraction on magnetic resonance imaging for liver steatosis. Yet, major improvements, in the field of image acquisition and analysis, are still required to be able to accurately characterize the liver parenchyma, monitor its changes and predict any pejorative evolution across disease progression. Artificial intelligence has the potential to augment the exploitation of massive multi-parametric data to extract valuable information and achieve precision medicine. Machine learning algorithms have been developed to assess non-invasively certain histological characteristics of chronic liver diseases, including fibrosis and steatosis. Although still at an early stage of development, artificial intelligence-based imaging biomarkers provide novel opportunities to predict the risk of progression from early-stage chronic liver diseases toward cirrhosis-related complications, with the ultimate perspective of precision medicine. This review provides an overview of emerging quantitative imaging techniques and the application of artificial intelligence for biomarker discovery in chronic liver disease.
© 2022. Asian Pacific Association for the Study of the Liver.

Entities:  

Keywords:  Chronic liver disease; Deep learning; Elastography; Histo-pathological features; Machine learning; Pejorative evolution; Quantitative biomarkers; Radiomics

Mesh:

Substances:

Year:  2022        PMID: 35138551      PMCID: PMC9177703          DOI: 10.1007/s12072-022-10303-0

Source DB:  PubMed          Journal:  Hepatol Int        ISSN: 1936-0533            Impact factor:   9.029


  124 in total

Review 1.  Pitfalls in Liver Imaging.

Authors:  Valérie Vilgrain; Matthieu Lagadec; Maxime Ronot
Journal:  Radiology       Date:  2016-01       Impact factor: 11.105

2.  Deep Learning-A Technology With the Potential to Transform Health Care.

Authors:  Geoffrey Hinton
Journal:  JAMA       Date:  2018-09-18       Impact factor: 56.272

3.  Liver stiffness predicts variceal bleeding in HIV/HCV-coinfected patients with compensated cirrhosis.

Authors:  Nicolás Merchante; Antonio Rivero-Juárez; Francisco Téllez; Dolores Merino; Maria José Ríos-Villegas; Guillermo Ojeda-Burgos; Mohamed Omar; Juan Macías; Antonio Rivero; Monserrat Pérez-Pérez; Miguel Raffo; Inmaculada López-Montesinos; Manuel Márquez-Solero; Maria Amparo Gómez-Vidal; Juan A Pineda
Journal:  AIDS       Date:  2017-02-20       Impact factor: 4.177

4.  Investigating liver stiffness and viscosity for fibrosis, steatosis and activity staging using shear wave elastography.

Authors:  Thomas Deffieux; Jean-Luc Gennisson; Laurence Bousquet; Marion Corouge; Simona Cosconea; Dalila Amroun; Simona Tripon; Benoit Terris; Vincent Mallet; Philippe Sogni; Mickael Tanter; Stanislas Pol
Journal:  J Hepatol       Date:  2014-09-22       Impact factor: 25.083

5.  Liver stiffness and the prediction of clinically significant portal hypertension and portal hypertensive complications.

Authors:  Matthew T Kitson; Stuart K Roberts; John C Colman; Eldho Paul; Peter Button; William Kemp
Journal:  Scand J Gastroenterol       Date:  2015-01-26       Impact factor: 2.423

6.  Supersonic shear-wave elastography and APRI for the detection and staging of liver disease in pediatric cystic fibrosis.

Authors:  Diego A Calvopina; Charlton Noble; Anna Weis; Gunter F Hartel; Louise E Ramm; Fariha Balouch; Manuel A Fernandez-Rojo; Miranda A Coleman; Peter J Lewindon; Grant A Ramm
Journal:  J Cyst Fibros       Date:  2019-07-11       Impact factor: 5.482

7.  A novel radiomics-platelet nomogram for the prediction of gastroesophageal varices needing treatment in cirrhotic patients.

Authors:  Yiken Lin; Lijuan Li; Dexin Yu; Zhuyun Liu; Shuhong Zhang; Qiuzhi Wang; Yueyue Li; Baoquan Cheng; Jianping Qiao; Yanjing Gao
Journal:  Hepatol Int       Date:  2021-06-11       Impact factor: 6.047

Review 8.  Multimodality Imaging and Artificial Intelligence for Tumor Characterization: Current Status and Future Perspective.

Authors:  Jérémy Dana; Vincent Agnus; Farid Ouhmich; Benoit Gallix
Journal:  Semin Nucl Med       Date:  2020-08-02       Impact factor: 4.446

9.  Relevance of liver surface nodularity for preoperative risk assessment in patients with resectable hepatocellular carcinoma.

Authors:  C Hobeika; F Cauchy; R Sartoris; A Beaufrère; T Yoh; V Vilgrain; P E Rautou; V Paradis; M Bouattour; M Ronot; O Soubrane
Journal:  Br J Surg       Date:  2020-03-02       Impact factor: 6.939

10.  Radiomics model based on preoperative gadoxetic acid-enhanced MRI for predicting liver failure.

Authors:  Wang-Shu Zhu; Si-Ya Shi; Ze-Hong Yang; Chao Song; Jun Shen
Journal:  World J Gastroenterol       Date:  2020-03-21       Impact factor: 5.742

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