Kim Young In, Song Sang Hoon, Park Juhyun, Youn Hye Jung, Kweon Jihoon, Park Hyung Keun
Department of Medical Science, Asan Medical Institute of Convergence Science and Technology, Asan Medical Center, University of Ulsan College of Medicine, Seoul, Korea.
Department of Urology, and Asan Medical Center, University of Ulsan College of Medicine, Seoul, Korea.
J Endourol. 2023 May;37(5):595-606. doi: 10.1089/end.2022.0722.
Noncontrast CT (NCCT) relies on labor-intensive examinations of CT slices to identify urolithiasis in the urinary tract, and, despite the use of deep-learning algorithms, false positives remain. A total of 410 NCCT axial scans from patients undergoing surgical treatment for urolithiasis were used for model development. The deep learning model was customized to combine a urolithiasis segmentation with per-slice classification for screening. Prediction models of the axial, coronal, and sagittal views were trained, and an additive model with an intersection of the coronal and sagittal predictions added to the axial outcome was introduced. Automated quantification of clinical metrics was evaluated in three-dimensional models of urinary stones. The axial model detected 88.92% of urinary stones and produced a dice similarity coefficient of 87.56% in the urolithiasis segmentation. For urolithiasis (>5 mm), the sensitivity of the axial model reached 95.10%. False positives were reduced to 0.34 per patient using an ensemble of individual models. The additive model improved the sensitivity to 90.97% by detecting more small urolithiasis (<5 mm). All clinical metrics of size, long-axis diameter, volume, mean stone density, stone heterogeneity index, and skin-to-stone distance showed a strong correlation of > 0.964. The proposed system could reduce the burden on the physician for imaging diagnosis and help determine treatment strategies for urinary stones through automated quantification of clinical metrics with high accuracy and reproducibility.
非增强CT(NCCT)依靠对CT切片进行劳动强度大的检查来识别尿路中的尿石症,并且,尽管使用了深度学习算法,但仍存在假阳性。总共410例接受尿石症手术治疗患者的NCCT轴向扫描用于模型开发。定制深度学习模型,将尿石症分割与逐片分类相结合以进行筛查。训练了轴向、冠状和矢状视图的预测模型,并引入了一种加法模型,将冠状和矢状预测的交集添加到轴向结果中。在尿路结石的三维模型中评估临床指标的自动量化。轴向模型检测到88.92%的尿路结石,在尿石症分割中产生的骰子相似系数为87.56%。对于尿石症(>5mm),轴向模型的敏感性达到95.10%。使用单个模型的集成将假阳性减少到每位患者0.34例。加法模型通过检测更多小尿石症(<5mm)将敏感性提高到90.97%。所有大小、长轴直径、体积、平均结石密度、结石异质性指数和皮肤到结石距离的临床指标均显示出>0.964的强相关性。所提出的系统可以减轻医生进行影像诊断的负担,并通过对临床指标进行高精度和可重复性的自动量化来帮助确定尿路结石的治疗策略。