Kuo Chin-Chi, Chang Chun-Min, Liu Kuan-Ting, Lin Wei-Kai, Chiang Hsiu-Yin, Chung Chih-Wei, Ho Meng-Ru, Sun Pei-Ran, Yang Rong-Lin, Chen Kuan-Ta
Big Data Center, China Medical University Hospital, China Medical University, Taichung, Taiwan.
2Kidney Institute and Division of Nephrology, Department of Internal Medicine, China Medical University Hospital and College of Medicine, China Medical University, Taichung, Taiwan.
NPJ Digit Med. 2019 Apr 26;2:29. doi: 10.1038/s41746-019-0104-2. eCollection 2019.
Prediction of kidney function and chronic kidney disease (CKD) through kidney ultrasound imaging has long been considered desirable in clinical practice because of its safety, convenience, and affordability. However, this highly desirable approach is beyond the capability of human vision. We developed a deep learning approach for automatically determining the estimated glomerular filtration rate (eGFR) and CKD status. We exploited the transfer learning technique, integrating the powerful ResNet model pretrained on an ImageNet dataset in our neural network architecture, to predict kidney function based on 4,505 kidney ultrasound images labeled using eGFRs derived from serum creatinine concentrations. To further extract the information from ultrasound images, we leveraged kidney length annotations to remove the peripheral region of the kidneys and applied various data augmentation schemes to produce additional data with variations. Bootstrap aggregation was also applied to avoid overfitting and improve the model's generalization. Moreover, the kidney function features obtained by our deep neural network were used to identify the CKD status defined by an eGFR of <60 ml/min/1.73 m. A Pearson correlation coefficient of 0.741 indicated the strong relationship between artificial intelligence (AI)- and creatinine-based GFR estimations. Overall CKD status classification accuracy of our model was 85.6% -higher than that of experienced nephrologists (60.3%-80.1%). Our model is the first fundamental step toward realizing the potential of transforming kidney ultrasound imaging into an effective, real-time, distant screening tool. AI-GFR estimation offers the possibility of noninvasive assessment of kidney function, a key goal of AI-powered functional automation in clinical practice.
长期以来,通过肾脏超声成像预测肾功能和慢性肾脏病(CKD)在临床实践中一直被认为是理想的,因为它具有安全性、便利性和可承受性。然而,这种非常理想的方法超出了人类视觉的能力范围。我们开发了一种深度学习方法来自动确定估计肾小球滤过率(eGFR)和CKD状态。我们利用迁移学习技术,将在ImageNet数据集上预训练的强大ResNet模型集成到我们的神经网络架构中,基于4505张使用从血清肌酐浓度得出的eGFR标记的肾脏超声图像来预测肾功能。为了进一步从超声图像中提取信息,我们利用肾脏长度注释来去除肾脏的周边区域,并应用各种数据增强方案来生成具有变化的额外数据。还应用了自助聚合来避免过拟合并提高模型的泛化能力。此外,我们的深度神经网络获得的肾功能特征被用于识别由eGFR<60 ml/min/1.73 m定义的CKD状态。皮尔逊相关系数为0.741,表明人工智能(AI)与基于肌酐的肾小球滤过率估计之间存在很强的关系。我们模型的总体CKD状态分类准确率为85.6%,高于经验丰富的肾病学家(60.3%-80.1%)。我们的模型是实现将肾脏超声成像转变为一种有效、实时、远程筛查工具潜力的第一步。AI-GFR估计提供了无创评估肾功能的可能性,这是临床实践中人工智能驱动的功能自动化的一个关键目标。