Sheikh Zayed Institute for Pediatric Surgical Innovation, Children's National Health System, Washington, D. C.; Division of Urology, Children's National Health System, Washington, D. C.
Sheikh Zayed Institute for Pediatric Surgical Innovation, Children's National Health System, Washington, D. C..
J Urol. 2018 Mar;199(3):847-852. doi: 10.1016/j.juro.2017.09.147. Epub 2017 Oct 21.
We sought to define features that describe the dynamic information in diuresis renograms for the early detection of clinically significant hydronephrosis caused by ureteropelvic junction obstruction.
We studied the diuresis renogram of 55 patients with a mean ± SD age of 75 ± 66 days who had congenital hydronephrosis at initial presentation. Five patients had bilaterally affected kidneys for a total of 60 diuresis renograms. Surgery was performed on 35 kidneys. We extracted 45 features based on curve shape and wavelet analysis from the drainage curves recorded after furosemide administration. The optimal features were selected as the combination that maximized the ROC AUC obtained from a linear support vector machine classifier trained to classify patients as with or without obstruction. Using these optimal features we performed leave 1 out cross validation to estimate the accuracy, sensitivity and specificity of our framework. Results were compared to those obtained using post-diuresis drainage half-time and the percent of clearance after 30 minutes.
Our framework had 93% accuracy, including 91% sensitivity and 96% specificity, to predict surgical cases. This was a significant improvement over the same accuracy of 82%, including 71% sensitivity and 96% specificity obtained from half-time and 30-minute clearance using the optimal thresholds of 24.57 minutes and 55.77%, respectively.
Our machine learning framework significantly improved the diagnostic accuracy of clinically significant hydronephrosis compared to half-time and 30-minute clearance. This aids in the clinical decision making process by offering a tool for earlier detection of severe cases and it has the potential to reduce the number of diuresis renograms required for diagnosis.
我们旨在定义描述利尿肾图中动态信息的特征,以便早期发现由肾盂输尿管交界处梗阻引起的具有临床意义的积水。
我们研究了 55 例先天性积水患儿(平均年龄为 75±66 天,5 例双侧受累,共 60 例利尿肾图)的利尿肾图。对 35 个肾脏进行了手术。我们从呋塞米给药后记录的引流曲线中提取了 45 个基于曲线形状和小波分析的特征。最优特征被选择为线性支持向量机分类器训练的组合,以分类有或无梗阻的患者。使用这些最优特征,我们进行了 1 个留一交叉验证,以估计我们的框架的准确性、敏感性和特异性。结果与利尿后引流半衰期和 30 分钟清除率百分比的结果进行了比较。
我们的框架对手术病例的预测准确率为 93%,包括 91%的敏感性和 96%的特异性,这明显优于半衰期和 30 分钟清除率的相同准确率 82%,包括 71%的敏感性和 96%的特异性,最优阈值分别为 24.57 分钟和 55.77%。
与半衰期和 30 分钟清除率相比,我们的机器学习框架显著提高了具有临床意义的积水的诊断准确性。这有助于临床决策过程,提供了一种早期发现严重病例的工具,并有可能减少诊断所需的利尿肾图数量。