Finding small lesions is very challenging due to lack of noticeable features, severe class imbalance, as well as the size itself. One approach to improve small lesion segmentation is to reduce the region of interest and inspect it at a higher sensitivity rather than performing it for the entire region. It is usually implemented as sequential or joint segmentation of organ and lesion, which requires additional supervision on organ segmentation. Instead, we propose to utilize an intensity distribution of a target lesion at no additional labeling cost to effectively separate regions where the lesions are possibly located from the background. It is incorporated into network training as an auxiliary task. We applied the proposed method to segmentation of small bowel carcinoid tumors in CT scans. We observed improvements for all metrics (33.5% $\rightarrow$ 38.2%, 41.3% $\rightarrow$ 47.8%, 30.0% $\rightarrow$ 35.9% for the global, per case, and per tumor Dice scores, respectively.) compared to the baseline method, which proves the validity of our idea. Our method can be one option for explicitly incorporating intensity distribution information of a target in network training.
翻译:由于缺乏明显的特征、严重的阶级不平衡以及大小本身,发现小损伤非常具有挑战性。改善小损伤分割的方法之一是减少感兴趣的区域,在敏感度较高的情况下检查它,而不是在整个区域进行。通常采用器官和损伤的顺序或联合分割法,这要求对器官分割和损伤进行额外的监督。相反,我们提议使用一个目标损伤的强度分布法,不增加标签成本,以有效地将损害可能位于背景之外的区域区分开来。它作为辅助任务被纳入网络培训。我们采用了拟议的方法,在CT扫描中将小肠癌肿瘤进行分解。我们观察到所有指标(33.5% $\rightrowr$ 38.2%, 41.3% $\rightrowral$ 47.8%, 3.0% rightrowror $ 35.9%,分别用于全球、每个案例和每个肿瘤Dice分数。)与基线方法相比较,这证明了我们的想法的有效性。我们的方法可以是明确将目标的强度分布在网络培训中的一种选择。