Accurate and Generalizable Quantitative Scoring of Liver Steatosis from Ultrasound Images via Scalable Deep Learning
Bowen Li, Dar-In Tai, Ke Yan, Yi-Cheng Chen, Shiu-Feng Huang, Tse-Hwa, Hsu, Wan-Ting Yu, Jing Xiao, Le Lu, Adam P. Harrison

TL;DR
This study presents a scalable deep learning algorithm that accurately and reliably quantifies liver steatosis from ultrasound images, outperforming or matching FibroScan and demonstrating high consistency across different scanners and viewpoints.
Contribution
The paper introduces a novel deep learning method for quantitative liver steatosis scoring from ultrasound images, validated on large multi-center cohorts with high accuracy and scanner independence.
Findings
High diagnostic accuracy with AUCs of 0.85-0.93 across grades.
Reliable measurements with minimal images needed per viewpoint.
Outperforms or matches FibroScan in diagnostic performance.
Abstract
Background & Aims: Hepatic steatosis is a major cause of chronic liver disease. 2D ultrasound is the most widely used non-invasive tool for screening and monitoring, but associated diagnoses are highly subjective. We developed a scalable deep learning (DL) algorithm for quantitative scoring of liver steatosis from 2D ultrasound images. Approach & Results: Using retrospectively collected multi-view ultrasound data from 3,310 patients, 19,513 studies, and 228,075 images, we trained a DL algorithm to diagnose steatosis stages (healthy, mild, moderate, or severe) from ultrasound diagnoses. Performance was validated on two multi-scanner unblinded and blinded (initially to DL developer) histology-proven cohorts (147 and 112 patients) with histopathology fatty cell percentage diagnoses, and a subset with FibroScan diagnoses. We also quantified reliability across scanners and viewpoints.…
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Taxonomy
TopicsLiver Disease Diagnosis and Treatment · Hepatocellular Carcinoma Treatment and Prognosis · Liver Disease and Transplantation
