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Point‐of‐care detection of fibrosis in liver transplant surgery using near‐infrared spectroscopy and machine learning

Varun SharmaBrian F. Buxton Department of Cardiac and Thoracic Aortic Surgery Austin Hospital Melbourne Victoria AustraliaJohn A. AdegokeCentre for Biospectroscopy Monash University Melbourne Victoria AustraliaMichael FasulakisDepartment of Engineering University of Melbourne Melbourne Victoria AustraliaAlexander GreenCentre for Biospectroscopy Monash University Melbourne Victoria AustraliaSu Kah GohDepartment of Surgery, Melbourne Medical School University of Melbourne Melbourne Victoria AustraliaXiuwen PengDepartment of Engineering University of Melbourne Melbourne Victoria AustraliaYifan LiuDepartment of Engineering University of Melbourne Melbourne Victoria AustraliaLouise JackettDepartment of Anatomical Pathology Austin Health Melbourne Victoria AustraliaAngela VagoDepartment of Surgery, Melbourne Medical School University of Melbourne Melbourne Victoria AustraliaEric PoonDepartment of Microbiology and Immunology, Peter Doherty Institute for Infection and Immunity University of Melbourne Melbourne Victoria AustraliaGraham StarkeyDepartment of Surgery, Melbourne Medical School University of Melbourne Melbourne Victoria AustraliaSarina MoshfeghDepartment of Surgery, Melbourne Medical School University of Melbourne Melbourne Victoria AustraliaAnkita MuthyaDepartment of Surgery, Melbourne Medical School University of Melbourne Melbourne Victoria AustraliaRohit D’CostaDepartment of Intensive Care Medicine Melbourne Health Melbourne Victoria AustraliaFiona JamesDepartment of Infectious Diseases Austin Health Melbourne Victoria AustraliaClaire L. GordonDepartment of Infectious Diseases Austin Health Melbourne Victoria AustraliaRobert JonesDepartment of Surgery, Melbourne Medical School University of Melbourne Melbourne Victoria AustraliaIsaac O. AfaraBiomedical Spectroscopy Laboratory, Department of Applied Physics University of Eastern Finland Kuopio FinlandBayden R. WoodCentre for Biospectroscopy Monash University Melbourne Victoria AustraliaJai RamanBrian F. Buxton Department of Cardiac and Thoracic Aortic Surgery Austin Hospital Melbourne Victoria Australia
2023en
ABI

Abstract

Abstract Introduction Visual assessment and imaging of the donor liver are inaccurate in predicting fibrosis and remain surrogates for histopathology. We demonstrate that 3‐s scans using a handheld near‐infrared‐spectroscopy (NIRS) instrument can identify and quantify fibrosis in fresh human liver samples. Methods We undertook NIRS scans on 107 samples from 27 patients, 88 from 23 patients with liver disease, and 19 from four organ donors. Results Liver disease patients had a median immature fibrosis of 40% (interquartile range [IQR] 20–60) and mature fibrosis of 30% (10%–50%) on histopathology. The organ donor livers had a median fibrosis (both mature and immature) of 10% (IQR 5%–15%). Using machine learning, this study detected presence of cirrhosis and METAVIR grade of fibrosis with a classification accuracy of 96.3% and 97.2%, precision of 96.3% and 97.0%, recall of 96.3% and 97.2%, specificity of 95.4% and 98.0% and area under receiver operator curve of 0.977 and 0.999, respectively. Using partial‐least square regression machine learning, this study predicted the percentage of both immature ( R 2 = 0.842) and mature ( R 2 = 0.837) with a low margin of error (root mean square of error of 9.76% and 7.96%, respectively). Conclusion This study demonstrates that a point‐of‐care NIRS instrument can accurately detect, quantify and classify liver fibrosis using machine learning.

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