Department of Urology, Asan Medical Center, University of Ulsan College of Medicine, Seoul, Korea.
Department of Urology, Korea University Ansan Hospital, Korea University College of Medicine, Seoul, Korea.
Investig Clin Urol. 2022 Jul;63(4):455-463. doi: 10.4111/icu.20220085. Epub 2022 May 25.
We investigated the feasibility of measuring the hydronephrosis area to renal parenchyma (HARP) ratio from ultrasound images using a deep-learning network.
The coronal renal ultrasound images of 195 pediatric and adolescent patients who underwent pyeloplasty to repair ureteropelvic junction obstruction were retrospectively reviewed. After excluding cases without a representative longitudinal renal image, we used a dataset of 168 images for deep-learning segmentation. Ten novel networks, such as combinations of DeepLabV3+ and UNet++, were assessed for their ability to calculate hydronephrosis and kidney areas, and the ensemble method was applied for further improvement. By dividing the image set into four, cross-validation was conducted, and the segmentation performance of the deep-learning network was evaluated using sensitivity, specificity, and dice similarity coefficients by comparison with the manually traced area.
All 10 networks and ensemble methods showed good visual correlation with the manually traced kidney and hydronephrosis areas. The dice similarity coefficient of the 10-model ensemble was 0.9108 on average, and the best 5-model ensemble had a dice similarity coefficient of 0.9113 on average. We included patients with severe hydronephrosis who underwent renal ultrasonography at a single institution; thus, external validation of our algorithm in a heterogeneous ultrasonography examination setup with a diverse set of instruments is recommended.
Deep-learning-based calculation of the HARP ratio is feasible and showed high accuracy for imaging of the severity of hydronephrosis using ultrasonography. This algorithm can help physicians make more accurate and reproducible diagnoses of hydronephrosis using ultrasonography.
我们研究了使用深度学习网络从超声图像测量肾盂积水面积与肾实质(HARP)比值的可行性。
回顾性分析了 195 例因肾盂输尿管连接部梗阻行肾盂成形术的儿科和青少年患者的冠状位肾脏超声图像。在排除没有代表性的纵向肾脏图像的病例后,我们使用了 168 个图像的数据集进行深度学习分割。评估了 10 种新的网络,如 DeepLabV3+和 UNet++的组合,以评估其计算肾盂积水和肾脏面积的能力,并应用集成方法进行进一步改进。通过将图像集分为四部分,进行交叉验证,并通过与手动追踪区域比较,评估深度学习网络的分割性能,包括灵敏度、特异性和 Dice 相似系数。
所有 10 种网络和集成方法与手动追踪的肾脏和肾盂积水区域均具有良好的视觉相关性。10 个模型集成的 Dice 相似系数平均为 0.9108,最佳的 5 个模型集成的 Dice 相似系数平均为 0.9113。我们纳入了在单一机构行肾脏超声检查的严重肾盂积水患者;因此,建议在具有不同仪器的异质超声检查设置中对我们的算法进行外部验证。
基于深度学习的 HARP 比值计算是可行的,并且在使用超声成像评估肾盂积水严重程度方面具有很高的准确性。该算法可以帮助医生使用超声更准确和可重复地诊断肾盂积水。