Department of Radiology and Mayo Clinic, Rochester, Minnesota, USA.
Department of Urology, Mayo Clinic, Rochester, Minnesota, USA.
J Endourol. 2023 Apr;37(4):443-452. doi: 10.1089/end.2022.0483. Epub 2022 Dec 16.
The surgical technique for urinary stone removal is partly influenced by its fragility, as prognosticated by the clinician. This feasibility study aims to develop a linear regression model from CT-based radiomic markers to predict kidney stone comminution time with two ultrasonic lithotrites. Patients identified by urologists at our institution as eligible candidates for percutaneous nephrolithotomy were prospectively enrolled. The active engagement time of the lithotrite in breaking the stone during surgery denoted the comminution time of each stone. The comminution rate was computed as the stone volume disintegrated per minute. Stones were grouped into three fragility classes (fragile, moderate, hard), based on inverse of the comminution rates with respect to the mean. Multivariable linear regression models were trained with radiomic features extracted from clinical CT images to predict comminution times . The model with the least root mean squared error (RMSE) on comminution times and the fewest misclassification of fragility was finally selected. Twenty-eight patients with 31 stones in total were included in this study. Stones in the cohort averaged 1557 (±2472) mm in volume and 5.3 (±7.4) minutes in comminution time. Ten stones had nonmoderate fragility. Linear regression of stone volume alone predicted comminution time with an RMSE of 6.8 minutes and missed all 10 stones with nonmoderate fragility. A fragility model that included stone volume, internal morphology, shape-based radiomics, and device type improved RMSE to below 3.3 minutes and correctly classified 20/21 moderate and 6/10 nonmoderate stones. CT metrics-based fragility models may provide information to surgeons regarding kidney stone fragility and facilitate the selection of stone removal procedures.
结石易碎性的临床预测部分影响取石术式的选择。本可行性研究旨在通过基于 CT 的放射组学标志物开发线性回归模型,预测两种超声碎石器碎石时间。前瞻性纳入我院经泌尿科医生评估适合行经皮肾镜取石术的患者。手术中碎石器主动粉碎结石的时间定义为每个结石的粉碎时间。粉碎率定义为每分钟分解的结石体积。根据粉碎率与平均粉碎率的倒数,将结石分为易碎、中度易碎和硬易碎三组。利用从临床 CT 图像中提取的放射组学特征,对碎石时间进行多变量线性回归模型训练,预测碎石时间。最终选择 RMSE 最小的碎石时间模型和最少易碎性分类错误的模型。共纳入 28 例患者,共 31 个结石。队列中结石平均体积为 1557(±2472)mm,粉碎时间为 5.3(±7.4)分钟。10 个结石易碎性非中度。单独的线性回归模型预测结石体积与 RMSE 碎石时间为 6.8 分钟,10 个易碎性非中度的结石全部漏诊。包含结石体积、内部形态、基于形状的放射组学和设备类型的易碎性模型可将 RMSE 提高到 3.3 分钟以下,并正确分类 21 个中度易碎性结石和 10 个非中度易碎性结石中的 6 个。基于 CT 指标的易碎性模型可为外科医生提供有关肾结石易碎性的信息,并有助于选择结石清除术式。