Duan Yu, Shi Siyuan, Long Haiyi, Zhong Xian, Tan Yang, Liu Guangjian, Wu Guanghua, Qin Si, Xie Xiaoyan, Lin Manxia
Department of Medical Ultrasonics, the First Affiliated Hospital of Sun Yat-sen University, Guangzhou, China.
Research and Development Department, Illuminate, LLC, Shenzhen, China.
Ultrasound Med Biol. 2025 May;51(5):759-767. doi: 10.1016/j.ultrasmedbio.2024.12.014. Epub 2025 Feb 14.
To develop and validate an automated deep learning-based model for focal liver lesion (FLL) segmentation in a dynamic contrast-enhanced ultrasound (CEUS) video.
In this multi-center and retrospective study, patients with FLL who underwent dynamic CEUS exam were included from September 2021 to December 2021 (model development and internal test sets), and from March 2023 to May 2023 (external test sets). A bi-modal temporal segmentation network (BTS-Net) was developed and its performance was evaluated using Dice score, intersection over union (IoU) and Hausdorff distance, and compared against several segmentation methods. Time-intensity curves (TICs) were obtained automatically from BTS-Net and manually de-lineated by an experienced radiologist, and evaluated by intra-class correlation and Pearson correlation co-efficients. Multiple characteristics were analyzed to evaluate the influencing factors of BTS-Net.
A total of 232 patients (160 men, median age 56 y) with single FLL were enrolled. BTS-Net achieved mean Dice scores of 0.78, 0.74 and 0.80, mean IoUs of 0.67, 0.62 and 0.68, and mean Hausdorff distances of 15.83, 16.01 and 15.04 in the internal test set and two external test sets, respectively. The mean intra-class correlation and Pearson correlation co-efficients of TIC were 0.89, 0.92 and 0.98, and 0.91, 0.93 and 0.99, respectively. BTS-Net demonstrated a significantly higher mean Dice score and IoU in large (0.82, 0.72), homogeneous positive enhanced (0.81, 0.70) or stable (0.81, 0.70) lesions in pooled test sets.
Our study proposed BTS-Net for automated FLL segmentation of dynamic CEUS video, achieving favorable performance in the test sets. Downstream TIC generation based on BTS-Net performed well, demonstrating its potential as an effective segmentation tool in clinical practice.
开发并验证一种基于深度学习的自动化模型,用于在动态对比增强超声(CEUS)视频中对肝脏局灶性病变(FLL)进行分割。
在这项多中心回顾性研究中,纳入了2021年9月至2021年12月(模型开发和内部测试集)以及2023年3月至2023年5月(外部测试集)期间接受动态CEUS检查的FLL患者。开发了一种双模态时间分割网络(BTS-Net),并使用Dice系数、交并比(IoU)和豪斯多夫距离评估其性能,并与几种分割方法进行比较。时间-强度曲线(TIC)从BTS-Net中自动获取,并由经验丰富的放射科医生手动勾勒,通过组内相关系数和皮尔逊相关系数进行评估。分析了多个特征以评估BTS-Net的影响因素。
共纳入232例单发FLL患者(男性160例,中位年龄56岁)。BTS-Net在内部测试集和两个外部测试集中的平均Dice系数分别为0.78、0.74和0.80,平均IoU分别为0.67、0.62和0.68,平均豪斯多夫距离分别为15.83、16.01和15.04。TIC的平均组内相关系数和皮尔逊相关系数分别为0.89、0.92和0.98,以及0.91、0.93和0.99。在汇总测试集中,BTS-Net在大的(0.82,0.72)、均匀正增强(0.81,0.70)或稳定(0.81,0.70)病变中表现出显著更高的平均Dice系数和IoU。
我们的研究提出了用于动态CEUS视频中FLL自动分割的BTS-Net,在测试集中取得了良好的性能。基于BTS-Net的下游TIC生成表现良好,证明了其作为临床实践中有效分割工具的潜力。