基于粗、细深度学习模型的颅内出血自动分割

Abdul Qayyum, Mohamed Khan Afthab Ahamed Khan, Rana Umar Mukhtar, Moona Mazher, Mastaneh Mokayef, Chun Kit Ang, Lim Wei Hong
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引用次数: 0

摘要

为了挽救患者的生命,颅内出血(ICH)的早期诊断非常重要。对于诊断脑出血,广泛使用的方法是非对比计算机断层扫描(NCCT)。它在医疗急救设施中具有快速获取和可用性。为了预测血肿的进展和死亡率,估计颅内出血量是很重要的。放射科医生可以手动划定脑出血区域以估计血肿体积。这一过程需要时间,并经历了不同物种间的变化。在本文中,我们开发并讨论了一种用于颅内出血分割的精细分割模型和粗糙分割模型。主要讨论了两种不同的颅内出血分割模型。我们在第一个模型中训练了一个用于粗分割的2DDensNet,并将粗分割掩码输出与细分割模型中的输入训练样本级联。在第二个精细阶段训练nnUNet模型,使用粗模型的分割标签和真实标签进行颅内出血分割。得到了一种性能最优的颅内出血分割方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic segmentation of intracranial hemorrhage using coarse and fine deep learning models
To save patients’ lives, it is important to go for an early diagnosis of intracranial hemorrhage (ICH). For diagnosing ICH, the widely used method is non-contrast computed tomography (NCCT). It has fast acquisition and availability in medical emergency facilities. To predict hematoma progression and mortality, it is important to estimate the volume of intracranial hemorrhage. Radiologists can manually delineate the ICH region to estimate the hematoma volume. This process takes time and undergoes inter-rater variability. In this research paper, we develop and discuss a fine segmentation model and a coarse model for intracranial hemorrhage segmentations. Basically, two different models are discussed for intracranial hemorrhage segmentation. We trained a 2DDensNet in the first model for coarse segmentation and cascaded the coarse segmentation mask output in the fine segmentation model along with input training samples. A nnUNet model is trained in the second fine stage and will use the segmentation labels of the coarse model with true labels for intracranial hemorrhage segmentation. An optimal performance for intracranial hemorrhage segmentation solution is obtained.
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