Yu Hui, Zhang Zhongzhou, Xia Wenjun, Liu Yan, Liu Lunxin, Luo Wuman, Zhou Jiliu, Zhang Yi
College of Computer Science, Sichuan University, Chengdu, 610065, People's Republic of China.
College of Electrical Engineering, Sichuan University, Chengdu, 610065, People's Republic of China.
Phys Med Biol. 2023 Jan 5;68(2). doi: 10.1088/1361-6560/acace7.
Delineation of brain metastases (BMs) is a paramount step in stereotactic radiosurgery treatment. Clinical practice has specific expectation on BM auto-delineation that the method is supposed to avoid missing of small lesions and yield accurate contours for large lesions. In this study, we propose a novel coarse-to-fine framework, named detector-based segmentation (DeSeg), to incorporate object-level detection into pixel-wise segmentation so as to meet the clinical demand. DeSeg consists of three components: a center-point-guided single-shot detector to localize the potential lesion regions, a multi-head U-Net segmentation model to refine contours, and a data cascade unit to connect both tasks smoothly. Performance on tiny lesions is measured by the object-based sensitivity and positive predictive value (PPV), while that on large lesions is quantified by dice similarity coefficient (DSC), average symmetric surface distance (ASSD) and 95% Hausdorff distance (HD95). Besides, computational complexity is also considered to study the potential of method in real-time processing. This study retrospectively collected 240 BM patients with Gadolinium injected contrast-enhanced T1-weighted magnetic resonance imaging (T1c-MRI), which were randomly split into training, validating and testing datasets (192, 24 and 24 scans, respectively). The lesions in the testing dataset were further divided into two groups based on the volume size (small: ≤1.5 cc,= 88; large: > 1.5 cc,= 15). On average, DeSeg yielded a sensitivity of 0.91 and a PPV of 0.77 on S group, and a DSC of 0.86, an ASSD 0f 0.76 mm and a HD95 of 2.31 mm ongroup. The results indicated that DeSeg achieved leading sensitivity and PPV for tiny lesions as well as segmentation metrics for large ones. After our clinical validation, DeSeg showed competitive segmentation performance while kept faster processing speed comparing with existing 3D models.
脑转移瘤(BMs)的勾画是立体定向放射治疗中的关键步骤。临床实践对BM自动勾画有特定期望,即该方法应避免遗漏小病灶,并为大病灶生成准确的轮廓。在本研究中,我们提出了一种新颖的从粗到细框架,称为基于检测器的分割(DeSeg),将目标级检测纳入逐像素分割,以满足临床需求。DeSeg由三个部分组成:一个中心点引导的单发检测器,用于定位潜在病灶区域;一个多头U-Net分割模型,用于细化轮廓;以及一个数据级联单元,用于平滑连接这两个任务。微小病灶的性能通过基于目标的灵敏度和阳性预测值(PPV)来衡量,而大病灶的性能则通过骰子相似系数(DSC)、平均对称表面距离(ASSD)和95%豪斯多夫距离(HD95)来量化。此外,还考虑了计算复杂度,以研究该方法在实时处理中的潜力。本研究回顾性收集了240例接受钆增强T1加权磁共振成像(T1c-MRI)的BM患者,将其随机分为训练、验证和测试数据集(分别为192、24和24次扫描)。测试数据集中的病灶根据体积大小进一步分为两组(小:≤1.5 cc,共88个;大:>1.5 cc,共15个)。平均而言,DeSeg在S组上的灵敏度为0.91,PPV为0.77,在L组上的DSC为0.86,ASSD为0.76 mm,HD95为2.31 mm。结果表明,DeSeg在微小病灶上实现了领先的灵敏度和PPV,在大病灶上实现了分割指标。经过临床验证,与现有的3D模型相比,DeSeg在保持较快处理速度的同时,展现出具有竞争力的分割性能。