From the Bioacoustics Research Laboratory, Department of Electrical and Computer Engineering (A.H., W.D.O.), and Department of Food Science and Human Nutrition (J.W.E.), University of Illinois at Urbana-Champaign, 306 N Wright St, Urbana, IL 61801; Department of Radiology (M.B., M.P.A.), Liver Imaging Group, Department of Radiology (E.H., C.B.S.), and NAFLD Research Center, Division of Gastroenterology, Department of Medicine (R.L.), University of California, San Diego, La Jolla, Calif; and Department of Ultrasound, Institute of Fundamental Technological Research, Polish Academy of Sciences, Warsaw, Poland (M.B.).
Radiology. 2020 May;295(2):342-350. doi: 10.1148/radiol.2020191160. Epub 2020 Feb 25.
Background Radiofrequency ultrasound data from the liver contain rich information about liver microstructure and composition. Deep learning might exploit such information to assess nonalcoholic fatty liver disease (NAFLD). Purpose To develop and evaluate deep learning algorithms that use radiofrequency data for NAFLD assessment, with MRI-derived proton density fat fraction (PDFF) as the reference. Materials and Methods A HIPAA-compliant secondary analysis of a single-center prospective study was performed for adult participants with NAFLD and control participants without liver disease. Participants in the parent study were recruited between February 2012 and March 2014 and underwent same-day US and MRI of the liver. Participants were randomly divided into an equal number of training and test groups. The training group was used to develop two algorithms via cross-validation: a classifier to diagnose NAFLD (MRI PDFF ≥ 5%) and a fat fraction estimator to predict MRI PDFF. Both algorithms used one-dimensional convolutional neural networks. The test group was used to evaluate the classifier for sensitivity, specificity, positive predictive value, negative predictive value, and accuracy and to evaluate the estimator for correlation, bias, limits of agreements, and linearity between predicted fat fraction and MRI PDFF. Results A total of 204 participants were analyzed, 140 had NAFLD (mean age, 52 years ± 14 [standard deviation]; 82 women) and 64 were control participants (mean age, 46 years ± 21; 42 women). In the test group, the classifier provided 96% (95% confidence interval [CI]: 90%, 99%) (98 of 102) accuracy for NAFLD diagnosis (sensitivity, 97% [95% CI: 90%, 100%], 68 of 70; specificity, 94% [95% CI: 79%, 99%], 30 of 32; positive predictive value, 97% [95% CI: 90%, 99%], 68 of 70; negative predictive value, 94% [95% CI: 79%, 98%], 30 of 32). The estimator-predicted fat fraction correlated with MRI PDFF (Pearson = 0.85). The mean bias was 0.8% ( = .08), and 95% limits of agreement were -7.6% to 9.1%. The predicted fat fraction was linear with an MRI PDFF of 18% or less ( = 0.89, slope = 1.1, intercept = 1.3) and nonlinear with an MRI PDFF greater than 18%. Conclusion Deep learning algorithms using radiofrequency ultrasound data are accurate for diagnosis of nonalcoholic fatty liver disease and hepatic fat fraction quantification when other causes of steatosis are excluded. © RSNA, 2020 See also the editorial by Lockhart and Smith in this issue.
背景 肝脏的射频超声数据包含丰富的肝脏微观结构和成分信息。深度学习可能会利用这些信息来评估非酒精性脂肪性肝病(NAFLD)。
目的 开发并评估使用射频数据评估 NAFLD 的深度学习算法,以 MRI 衍生的质子密度脂肪分数(PDFF)作为参考。
材料与方法 对一项单中心前瞻性研究的 HIPAA 合规性二次分析,纳入了患有 NAFLD 的成年参与者和无肝脏疾病的对照组参与者。在母研究中,参与者于 2012 年 2 月至 2014 年 3 月期间招募,并在同一天接受了超声和肝脏 MRI 检查。参与者被随机分为相等数量的训练组和测试组。训练组通过交叉验证开发了两种算法:一种用于诊断 NAFLD(MRI PDFF≥5%)的分类器和一种用于预测 MRI PDFF 的脂肪分数估计算法。这两种算法都使用了一维卷积神经网络。测试组用于评估分类器的敏感性、特异性、阳性预测值、阴性预测值和准确性,评估估计算法的相关性、偏差、预测脂肪分数与 MRI PDFF 之间的协议界限和线性关系。
结果 共分析了 204 名参与者,140 名患有 NAFLD(平均年龄,52 岁±14[标准差];82 名女性),64 名对照组参与者(平均年龄,46 岁±21;42 名女性)。在测试组中,分类器对 NAFLD 诊断的准确率为 96%(95%置信区间[CI]:90%,99%)(98 例中有 102 例)(敏感性为 97%[95%CI:90%,100%],68 例中有 70 例;特异性为 94%[95%CI:79%,99%],30 例中有 32 例;阳性预测值为 97%[95%CI:90%,99%],68 例中有 70 例;阴性预测值为 94%[95%CI:79%,98%],30 例中有 32 例)。估计算法预测的脂肪分数与 MRI PDFF 相关(Pearson r=0.85)。平均偏差为 0.8%(=0.08),95%的协议界限为-7.6%至 9.1%。预测的脂肪分数与 MRI PDFF 小于等于 18%时呈线性关系(r=0.89,斜率=1.1,截距=1.3),与 MRI PDFF 大于 18%时呈非线性关系。
结论 排除其他原因引起的脂肪变性后,使用射频超声数据的深度学习算法在诊断非酒精性脂肪性肝病和量化肝脂肪分数方面是准确的。