Development of a Deep Learning Model for Classification of Hepatic Steatosis from Clinical Standard Ultrasound

被引:0
|
作者
El Kaffas, Ahmed [1 ]
Bhatraju, Krishna Chaitanya [1 ,2 ]
Vo-Phamhi, Jenny M. [1 ,2 ]
Tiyarattanachai, Thodsawit [2 ,3 ]
Antil, Neha [2 ]
Negrete, Lindsey M. [2 ]
Kamaya, Aya [2 ]
Shen, Luyao [2 ]
机构
[1] Univ Calif San Diego, Sch Med, Dept Radiol, LA JOLLA, CA USA
[2] Stanford Univ, Sch Med, Dept Radiol, 300 Pasteur Dr H1307, Stanford, CA 94305 USA
[3] Stanford Univ, Sch Med, Dept Biomed Data Sci, Stanford, CA USA
来源
ULTRASOUND IN MEDICINE AND BIOLOGY | 2025年 / 51卷 / 02期
关键词
Deep learning; Hepatic steatosis; Ultrasound; Grayscale; FATTY LIVER-DISEASE; QUANTIFICATION;
D O I
10.1016/j.ultrasmedbio.2024.09.020
中图分类号
O42 [声学];
学科分类号
070206 ; 082403 ;
摘要
Objective: Early detection and monitoring of hepatic steatosis can help establish appropriate preventative measures against progression to more advanced disease. We aimed to develop a deep learning (DL) program for classification of hepatic steatosis from standard-of-care grayscale ultrasound (US) images. Methods: In this single-center retrospective study, we utilized grayscale US images from January 1, 2010, to October 23, 2022, labeled with magnetic resonance imaging (MRI) proton density fat fraction (MRI-PDFF) to develop a DL multi-instance program for differentiating normal (S0) from steatotic liver (S1/2/3) and normal/mild steatosis (S0/1) from moderate/severe steatosis (S2/3). Diagnostic performances were assessed with area under the receiver operating characteristic curves (AUC), sensitivity, specificity and balanced accuracy with 95% confidence interval (CI). Results: A total of 403 patients with 403 US exams were included: 171 (42%) were normal (S0: MRI-PDFF <5%), 154 (38%) had mild steatosis (S1: MRI-PDFF 5-17.4%), 29 (7%) had moderate steatosis (S2: MRI-PDFF >17.4%-22.1%) and 49 (12%) had severe steatosis (S3: MRI-PDFF >22.1%). The dataset was split to include 322 patients in train/validation and 81 patients in a holdout test set (kept blind). The S0 versus S1/2/3 model achieved 81.3% (95% CI 72.1-90.5) AUC, 81.1% (70.6-91.6) sensitivity, 71.4% (54.7-88.2) specificity and 76.3% (66.4-86.2) balanced accuracy. The S0/1 versus S2/3 model achieved 95.9% (89-100) AUC, 87.5% (71.3-100) sensitivity, 96.9% (92.7-100) specificity and 92.2% (83.8-100) balanced accuracy. A multi-class model achieved a sensitivity of 71.4% (54.7-88.2) for S0, 67.6% (52.5-82.7) for S1 and 87.5% (71.3-100) for S2/3; specificity for the same model was 81.1% (70.6-91.6) for S0, 77.3% (64.9-89.7) for S1 and 96.9% (92.7-100) for S2/3. Conclusion: Our DL program offered high sensitivity and accuracy in detecting and categorizing hepatic steatosis from standard-of-care ultrasound.
引用
收藏
页码:242 / 249
页数:8
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