Chang Ting-Wei, Tsai Chang-Yu, Tang Zhen-Yi, Zheng Cai-Mei, Liao Chia-Te, Cheng Chung-Yi, Wu Mai-Szu, Shen Che-Chou, Lin Yen-Chung
Department of Computer Science and Information Engineering, National Taiwan University, Taipei, Taiwan.
Department of Electrical Engineering, National Taiwan University of Science and Technology, Taipei, Taiwan.
BMJ Health Care Inform. 2025 Mar 17;32(1):e101192. doi: 10.1136/bmjhci-2024-101192.
Chronic kidney disease (CKD) is a global health concern characterised by irreversible renal damage that is often assessed using invasive renal biopsy. Accurate evaluation of interstitial fibrosis and tubular atrophy (IFTA) is crucial for CKD management. This study aimed to leverage machine learning (ML) models to predict IFTA using a combination of ultrasonography (US) images and patient biomarkers.
We retrospectively collected US images and biomarkers from 632 patients with CKD across three hospitals. The data were subjected to pre-processing, exclusion of sub-optimal images, and feature extraction using a dual-path convolutional neural network. Various ML models, including XGBoost, random forest and logistic regression, were trained and validated using fivefold cross-validation.
The dataset was divided into training and test datasets. For image-level IFTA classification, the best performance was achieved by combining US image features and patient biomarkers, with logistic regression yielding an area under the receiver operating characteristic curve (AUROC) of 99%. At the patient level, logistic regression combining US image features and biomarkers provided an AUROC of 96%. Models trained solely on US image features or biomarkers also exhibited high performance, with AUROC exceeding 80%.
Our artificial intelligence-based approach to IFTA classification demonstrated high accuracy and AUROC across various ML models. By leveraging patient biomarkers alone, this method offers a non-invasive and robust tool for early CKD assessment, demonstrating that biomarkers alone may suffice for accurate predictions without the added complexity of image-derived features.
慢性肾脏病(CKD)是一个全球性的健康问题,其特征是不可逆的肾脏损伤,通常通过侵入性肾活检进行评估。准确评估间质纤维化和肾小管萎缩(IFTA)对于CKD的管理至关重要。本研究旨在利用机器学习(ML)模型,结合超声(US)图像和患者生物标志物来预测IFTA。
我们回顾性收集了来自三家医院的632例CKD患者的US图像和生物标志物。对数据进行预处理,排除次优图像,并使用双路径卷积神经网络进行特征提取。使用五折交叉验证对包括XGBoost、随机森林和逻辑回归在内的各种ML模型进行训练和验证。
数据集被分为训练集和测试集。对于图像水平的IFTA分类,结合US图像特征和患者生物标志物可获得最佳性能,逻辑回归的受试者操作特征曲线下面积(AUROC)为99%。在患者水平上,结合US图像特征和生物标志物的逻辑回归的AUROC为96%。仅基于US图像特征或生物标志物训练的模型也表现出高性能,AUROC超过80%。
我们基于人工智能的IFTA分类方法在各种ML模型中均显示出高准确性和AUROC。通过仅利用患者生物标志物,该方法为CKD早期评估提供了一种非侵入性且强大的工具,表明仅生物标志物可能足以进行准确预测,而无需图像衍生特征带来的额外复杂性。