Liver fibrosis stage classification in stacked microvascular images based on deep learning

被引:0
|
作者
Miura, Daisuke [1 ,2 ]
Suenaga, Hiromi [2 ]
Hiwatashi, Rino [1 ]
Mabu, Shingo [3 ]
机构
[1] Fukuoka Tokushukai Hosp, Dept Ultrasound & Clin Lab, Fukuoka 8160864, Japan
[2] Yamaguchi Univ, Grad Sch Med, Dept Lab Sci, Yamaguchi 7558508, Japan
[3] Yamaguchi Univ, Grad Sch Sci & Technol Innovat, Dept Informat Sci & Engn, Yamaguchi 7558611, Japan
来源
BMC MEDICAL IMAGING | 2025年 / 25卷 / 01期
关键词
Artificial intelligence; Deep learning; Liver cirrhosis; Microvascular imaging; Stacked microvascular imaging; HEPATITIS-C; ELASTOGRAPHY; ARCHITECTURE;
D O I
10.1186/s12880-024-01531-x
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
Background Monitoring fibrosis in patients with chronic liver disease (CLD) is an important management strategy. We have already reported a novel stacked microvascular imaging (SMVI) technique and an examiner scoring evaluation method to improve fibrosis assessment accuracy and demonstrate its high sensitivity. In the present study, we analyzed the effectiveness and objectivity of SMVI in diagnosing the liver fibrosis stage based on artificial intelligence (AI). Methods This single-center, cross-sectional study included 517 patients with CLD who underwent ultrasonography and liver stiffness testing between August 2019 and October 2022. A convolutional neural network model was constructed to evaluate the degree of liver fibrosis from stacked microvascular images generated by accumulating high-sensitivity Doppler (i.e., high-definition color) images from these patients. In contrast, as a method of judgment by the human eye, we focused on three hallmarks of intrahepatic microvessel morphological changes in the stacked microvascular images: narrowing, caliber irregularity, and tortuosity. The degree of liver fibrosis was classified into five stages according to etiology based on liver stiffness measurement: F0-1Low (< 5.0 kPa), F0-1High (>= 5.0 kPa), F2, F3, and F4. Results The AI classification accuracy was 53.8% for a 5-class classification, 66.3% for a 3-class classification (F0-1Low vs. F0-1High vs. F2-4), and 83.8% for a 2-class classification (F0-1 vs. F2-4). The diagnostic accuracy for >= F2 was 81.6% in the examiner's score assessment, compared with 83.8% in AI assessment, indicating that AI achieved higher diagnostic accuracy. Similarly, AI demonstrated higher sensitivity and specificity of 84.2% and 83.5%, respectively. Comparing human judgement with AI judgement, the AI analysis was a superior model with a higher F1 score in the 2-class classification. Conclusions In detecting significant fibrosis (>= F2) using the SMVI method, AI-based assessments are more accurate than human judgement; moreover, AI-based SMVI analysis eliminating human subjectivity bias and determining patients with objective fibrosis development is considered an important improvement.
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页数:11
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