In many clinical contexts, detecting all lesions is imperative for evaluating disease activity. Standard approaches pose lesion detection as a segmentation problem despite the time-consuming nature of acquiring segmentation labels. In this paper, we present a lesion detection method which relies only on point labels. Our model, which is trained via heatmap regression, can detect a variable number of lesions in a probabilistic manner. In fact, our proposed post-processing method offers a reliable way of directly estimating the lesion existence uncertainty. Experimental results on Gad lesion detection show our point-based method performs competitively compared to training on expensive segmentation labels. Finally, our detection model provides a suitable pre-training for segmentation. When fine-tuning on only 17 segmentation samples, we achieve comparable performance to training with the full dataset.
翻译:在许多临床环境中,检测所有损伤是评估疾病活动所必需的。标准方法将损伤检测作为一种分解问题,尽管获取分解标签需要花费时间。我们在本文件中展示了一种仅依赖点标签的损伤检测方法。我们通过热映射回归法培训的模型,可以以概率方式检测各种损伤的数量。事实上,我们提议的后处理方法提供了一种可靠的方式,直接估算损伤存在不确定性。在加德损伤检测中的实验结果显示,与昂贵的分解标签培训相比,我们的点基方法具有竞争力。最后,我们的检测模型为分解提供了适当的预培训。在微调17个分解样本时,我们实现了与全数据集培训的类似性能。