Lee Hyunjong, Yoo Beongwoo, Baek Minki, Choi Joon Young
Department of Nuclear Medicine, Samsung Medical Center, Sungkyunkwan University School of Medicine, Seoul 06351, Korea.
Sungkyunkwan University School of Medicine, Seoul 06351, Korea.
Diagnostics (Basel). 2022 Feb 6;12(2):424. doi: 10.3390/diagnostics12020424.
: Tc-99m dimercaptosuccinic acid (Tc-DMSA) renal scan is an important tool for the assessment of childhood urinary tract infection (UTI), vesicoureteral reflux (VUR), and renal scarring. We evaluated whether a deep learning (DL) analysis of Tc-DMSA renal scans could predict the recurrence of UTI better than conventional clinical factors. : the subjects were 180 paediatric patients diagnosed with UTI, who underwent immediate post-therapeutic Tc-DMSA renal scans. The primary outcome was the recurrence of UTI during the follow-up period. For the DL analysis, a convolutional neural network (CNN) model was used. Age, sex, the presence of VUR, the presence of cortical defects on the Tc-DMSA renal scan, split renal function (SRF), and DL prediction results were used as independent factors for predicting recurrent UTI. The diagnostic accuracy for predicting recurrent UTI was statistically compared between independent factors. : The sensitivity, specificity and accuracy for predicting recurrent UTI were 44.4%, 88.9%, and 82.2% by the presence of VUR; 44.4%, 76.5%, and 71.7% by the presence of cortical defect; 74.1%, 80.4%, and 79.4% by SRF (optimal cut-off = 45.93%); and 70.4%, 94.8%, and 91.1% by the DL prediction results. There were no significant differences in sensitivity between all independent factors ( > 0.05, for all). The specificity and accuracy of the DL prediction results were significantly higher than those of the other factors. : DL analysis of Tc-DMSA renal scans may be useful for predicting recurrent UTI in paediatric patients. It is an efficient supportive tool to predict poor prognosis without visually demonstrable cortical defects in Tc-DMSA renal scans.
锝-99m二巯基丁二酸(Tc-DMSA)肾扫描是评估儿童尿路感染(UTI)、膀胱输尿管反流(VUR)和肾瘢痕形成的重要工具。我们评估了对Tc-DMSA肾扫描进行深度学习(DL)分析是否比传统临床因素能更好地预测UTI复发。:研究对象为180例诊断为UTI的儿科患者,他们在治疗后立即接受了Tc-DMSA肾扫描。主要结局是随访期间UTI的复发情况。对于DL分析,使用了卷积神经网络(CNN)模型。年龄、性别、VUR的存在、Tc-DMSA肾扫描上皮质缺损的存在、分肾功能(SRF)以及DL预测结果被用作预测复发性UTI的独立因素。对各独立因素预测复发性UTI的诊断准确性进行了统计学比较。:VUR存在时预测复发性UTI的敏感性、特异性和准确性分别为44.4%、88.9%和82.2%;皮质缺损存在时分别为44.4%、76.5%和71.7%;SRF(最佳截断值 = 45.93%)时分别为74.1%、80.4%和79.4%;DL预测结果时分别为70.4%、94.8%和91.1%。所有独立因素之间的敏感性无显著差异(所有P>0.05)。DL预测结果的特异性和准确性显著高于其他因素。:对Tc-DMSA肾扫描进行DL分析可能有助于预测儿科患者复发性UTI。它是一种有效的辅助工具,可在Tc-DMSA肾扫描中无肉眼可见皮质缺损的情况下预测不良预后。