Liu Li, Tang Chunlin, Li Lu, Chen Ping, Tan Ying, Hu Xiaofei, Chen Kaixuan, Shang Yongning, Liu Deng, Liu He, Liu Hongjun, Nie Fang, Tian Jiawei, Zhao Mingchang, He Wen, Guo Yanli
Department of Ultrasound, Southwest Hospital, Third Military Medical University (Army Medical University), Chongqing, China.
Department of Digital Medicine, School of Biomedical Engineering and Medical Imaging, Third Military Medical University (Army Medical University), Chongqing, China.
Quant Imaging Med Surg. 2022 Jun;12(6):3213-3226. doi: 10.21037/qims-21-1004.
Routine clinical factors play an important role in the clinical diagnosis of focal liver lesions (FLLs); however, they are rarely used in computer-assisted diagnosis. Therefore, we developed a deep learning (DL) radiomics model, and investigated its effectiveness in diagnosing FLLs using long-range contrast-enhanced ultrasound (CEUS) cines and clinical factors.
Herein, 303 patients with pathologically confirmed FLLs after surgery at three hospitals were retrospectively enrolled and divided into a training cohort (n=203), internal validation (IV) cohort (n=50) from one hospital with the ratio of 4:1, and external validation (EV) cohort (n=50) from the other two hospitals. Four DL radiomics models, namely Four Stream 3D convolutional neural network (FS3D) (trained with CEUS cines only), FS3D (trained with CEUS cines and alpha fetoprotein), FS3D (trained with CEUS cines and hepatitis), and FS3D (trained with CEUS cines, alpha fetoprotein, and hepatitis), were formed based on 3D convolutional neural networks (CNNs). They used approximately 20-s preoperative CEUS cines and/or clinical factors to extract spatiotemporal features for the classification of FLLs and the location of the region of interest. The area under curve of the receiver operating characteristic and diagnosis speed were calculated to evaluate the models in the IV and EV cohorts, and they were compared with those of two radiologists. Two-sided Delong tests were used to calculate the statistical differences between the models and radiologists.
FS3D, which incorporated CEUS cines, hepatitis, and alpha fetoprotein, achieved the highest area under curve of 0.969 (95% CI: 0.901-1.000) and 0.957 (95% CI: 0.894-1.000) among radiologists and other models in IV and EV cohorts, respectively. A significant difference was observed when comparing FS3D and radiologist 2 (all P<0.05). The diagnosis speed of all the models was the same (10.76 s per patient), and it was two times faster than those of the radiologists (radiologist 1: 23.74 and 27.75 s; radiologist 2: 25.95 and 29.50 s in IV and EV cohorts, respectively).
The proposed DL radiomics demonstrated excellent performance on the benign and malignant diagnosis of FLLs by combining CEUS cines and clinical factors. It could help the individualized characterization of FLLs, and enhance the accuracy of diagnosis in the future.
常规临床因素在局灶性肝病变(FLLs)的临床诊断中发挥着重要作用;然而,它们很少用于计算机辅助诊断。因此,我们开发了一种深度学习(DL)放射组学模型,并研究了其使用远程对比增强超声(CEUS)动态图像和临床因素诊断FLLs的有效性。
本研究回顾性纳入了三家医院303例术后病理确诊为FLLs的患者,并将其分为训练队列(n = 203)、来自一家医院的内部验证(IV)队列(n = 50),比例为4:1,以及来自另外两家医院的外部验证(EV)队列(n = 50)。基于三维卷积神经网络(CNNs)构建了四个DL放射组学模型,即四流三维卷积神经网络(FS3D)(仅使用CEUS动态图像训练)、FS3D(使用CEUS动态图像和甲胎蛋白训练)、FS3D(使用CEUS动态图像和肝炎相关因素训练)以及FS3D(使用CEUS动态图像、甲胎蛋白和肝炎相关因素训练)。它们使用约20秒的术前CEUS动态图像和/或临床因素来提取时空特征,用于FLLs的分类和感兴趣区域的定位。计算受试者工作特征曲线下面积和诊断速度,以评估IV队列和EV队列中的模型,并与两名放射科医生的结果进行比较。使用双侧德龙检验计算模型与放射科医生之间的统计学差异。
结合了CEUS动态图像、肝炎相关因素和甲胎蛋白的FS3D模型,在IV队列和EV队列中,分别在放射科医生和其他模型中取得了最高的曲线下面积,分别为0.969(95%CI:0.901 - 1.000)和0.957(95%CI:0.894 - 1.000)。比较FS3D与放射科医生2时观察到显著差异(所有P < 0.05)。所有模型的诊断速度相同(每位患者10.76秒),比放射科医生快两倍(放射科医生1:IV队列和EV队列中分别为23.74秒和27.75秒;放射科医生2:IV队列和EV队列中分别为25.95秒和29.50秒)。
所提出的DL放射组学通过结合CEUS动态图像和临床因素,在FLLs的良恶性诊断方面表现出优异的性能。它有助于FLLs的个体化特征分析,并在未来提高诊断准确性。