头颅CT扫描颅内出血的语义分割

Yuhang Qiu, Chia Shuo Chang, Jiun-Lin Yan, L. Ko, Tian Sheuan Chang
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引用次数: 23

摘要

本文提出了一种语义分割方法,可以区分六种不同类型的颅内出血,并计算出出血量。医学图像分割的主要挑战是由于数据收集和标记困难而缺乏足够的数据。在本文中,我们建议采用一种带有微调的预训练U-Net模型来解决这一问题。最终的最佳测试准确率可以达到94.1%,比从头开始训练的模型提高了10.5%,证明了其在处理相对复杂的数据集和少量数据时的优势,以及所提出的分割方法的成功。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semantic Segmentation of Intracranial Hemorrhages in Head CT Scans
This paper presents a semantic segmentation method that can distinguish six different types of intracranial hemorrhage and calculate the amount of blood loss. The major challenge of medical image segmentation are the lack of enough data due to the difficulty of data collection and labeling. In this paper, we propose to adopt a pretrained U-Net model with fine tuning to solve this problem. The best final test accuracy can reach 94.1%, which is 10.5% higher than the model training from scratch, proving its advantages in dealing with relatively complex datasets with a small amount of data, and the success of the proposed segmentation method.
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