AI‐based digital pathology provides newer insights into lifestyle intervention‐induced fibrosis regression in MASLD: An exploratory study

Author:

Yuan Hai‐Yang1,Tong Xiao‐Fei2,Ren Ya‐Yun3,Li Yang‐Yang4,Wang Xin‐Lei3,Chen Li‐Li1,Chen Sui‐Dan4,Jin Xiao‐Zhi1,Wang Xiao‐Dong5,Targher Giovanni67ORCID,Byrne Christopher D.8,Wei Lai9,Wong Vincent W.‐S10,Tai Dean3,Sanyal Arun J.11ORCID,You Hong2ORCID,Zheng Ming‐Hua1512ORCID

Affiliation:

1. MAFLD Research Center, Department of Hepatology The First Affiliated Hospital of Wenzhou Medical University Wenzhou China

2. Liver Research Center, Beijing Friendship Hospital, Beijing Key Laboratory of Translational Medicine on Liver Cirrhosis, National Clinical Research Center of Digestive Diseases Capital Medical University Beijing China

3. HistoIndex Pte Ltd Singapore Singapore

4. Department of Pathology The First Affiliated Hospital of Wenzhou Medical University Wenzhou China

5. Key Laboratory of Diagnosis and Treatment for the Development of Chronic Liver Disease in Zhejiang Province Wenzhou China

6. Department of Medicine University of Verona Verona Italy

7. Metabolic Diseases Research Unit IRCCS Sacro Cuore—Don Calabria Hospital, Negrar di Valpolicella Verona Italy

8. Southampton National Institute for Health and Care Research Biomedical Research Centre University Hospital Southampton and University of Southampton, Southampton General Hospital Southampton UK

9. Hepatopancreatobiliary Center Beijing Tsinghua Changgung Hospital, Tsinghua University Beijing China

10. Department of Medicine and Therapeutics Chinese University of Hong Kong, Hong Kong Special Administrative Region China

11. Stravitz‐Sanyal Institute for Liver Disease and Metabolic Health Virginia Commonwealth University School of Medicine Richmond Virginia USA

12. Institute of Hepatology Wenzhou Medical University Wenzhou China

Abstract

AbstractBackground and AimsLifestyle intervention is the mainstay of therapy for metabolic dysfunction‐associated steatohepatitis (MASH), and liver fibrosis is a key consequence of MASH that predicts adverse clinical outcomes. The placebo response plays a pivotal role in the outcome of MASH clinical trials. Second harmonic generation/two‐photon excitation fluorescence (SHG/TPEF) microscopy with artificial intelligence analyses can provide an automated quantitative assessment of fibrosis features on a continuous scale called qFibrosis. In this exploratory study, we used this approach to gain insight into the effect of lifestyle intervention‐induced fibrosis changes in MASH.MethodsWe examined unstained sections from paired liver biopsies (baseline and end‐of‐intervention) from MASH individuals who had received either routine lifestyle intervention (RLI) (n = 35) or strengthened lifestyle intervention (SLI) (n = 17). We quantified liver fibrosis with qFibrosis in the portal tract, periportal, transitional, pericentral, and central vein regions.ResultsAbout 20% (7/35) and 65% (11/17) of patients had fibrosis regression in the RLI and SLI groups, respectively. Liver fibrosis tended towards no change or regression after each lifestyle intervention, and this phenomenon was more prominent in the SLI group. SLI‐induced liver fibrosis regression was concentrated in the periportal region.ConclusionUsing digital pathology, we could detect a more pronounced fibrosis regression with SLI, mainly in the periportal region. With changes in fibrosis area in the periportal region, we could differentiate RLI and SLI patients in the placebo group in the MASH clinical trial. Digital pathology provides new insight into lifestyle‐induced fibrosis regression and placebo responses, which is not captured by conventional histological staging.

Publisher

Wiley

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