Precise ischemic lesion segmentation plays an essential role in improving diagnosis and treatment planning for ischemic stroke, one of the prevalent diseases with the highest mortality rate. While numerous deep neural network approaches have recently been proposed to tackle this problem, these methods require large amounts of annotated regions during training, which can be impractical in the medical domain where annotated data is scarce. As a remedy, we present a prototypical few-shot segmentation approach for ischemic lesion segmentation using only one annotated sample during training. The proposed approach leverages a novel self-supervised training mechanism that is tailored to the task of ischemic stroke lesion segmentation by exploiting color-coded parametric maps generated from Computed Tomography Perfusion scans. We illustrate the benefits of our proposed training mechanism, leading to considerable improvements in performance in the few-shot setting. Given a single annotated patient, an average Dice score of 0.58 is achieved for the segmentation of ischemic lesions.
翻译:精确地分割缺血性病灶对提高疾病诊断和治疗规划是必不可少的。然而,现有的神经网络方法需要在训练过程中大量注释的数据样本,而在医学领域这种数据通常是有限的。因此,本文提出了一种少样本分割方法,只需在训练期间使用一个标注样本即可。该方法利用了一种基于 CT 灌注扫描生成的参数化颜色映射的自学习训练机制,其针对缺血性卒中病灶分割任务进行了优化。我们证明了我们提出的训练机制带来的好处以及在少样本情况下表现出的显著性能提升。在给定一个标注样本的情况下,该方法实现了 0.58 的平均 Dice 指数,用于缺血性病灶分割。