Liu Yue, Li Xiang, Li Tianyang, Li Bin, Wang Zhensong, Gan Jie, Wei Benzheng
Center for Medical Artificial Intelligence, Shandong University of Traditional Chinese Medicine, Qingdao, 266112, China.
Qingdao Academy of Chinese Medical Sciences, Shandong University of Traditional Chinese Medicine, Qingdao, 266112, China.
BMC Med Inform Decis Mak. 2021 Jul 30;21(Suppl 2):89. doi: 10.1186/s12911-021-01430-z.
Semantic segmentation of white matter hyperintensities related to focal cerebral ischemia (FCI) and lacunar infarction (LACI) is of significant importance for the automatic screening of tiny cerebral lesions and early prevention of LACI. However, existing studies on brain magnetic resonance imaging lesion segmentation focus on large lesions with obvious features, such as glioma and acute cerebral infarction. Owing to the multi-model tiny lesion areas of FCI and LACI, reliable and precise segmentation and/or detection of these lesion areas is still a significant challenge task.
We propose a novel segmentation correction algorithm for estimating the lesion areas via segmentation and correction processes, in which we design two sub-models simultaneously: a segmentation network and a correction network. The segmentation network was first used to extract and segment diseased areas on T2 fluid-attenuated inversion recovery (FLAIR) images. Consequently, the correction network was used to classify these areas at the corresponding locations on T1 FLAIR images to distinguish between FCI and LACI. Finally, the results of the correction network were used to correct the segmentation results and achieve segmentation and recognition of the lesion areas.
In our experiment on magnetic resonance images of 113 clinical patients, our method achieved a precision of 91.76% for detection and 92.89% for classification, indicating a powerful method to distinguish between small lesions, such as FCI and LACI.
Overall, we developed a complete method for segmentation and detection of WMHs related to FCI and LACI. The experimental results show that it has potential clinical application potential. In the future, we will collect more clinical data and test more types of tiny lesions at the same time.
与局灶性脑缺血(FCI)和腔隙性脑梗死(LACI)相关的白质高信号的语义分割对于微小脑病变的自动筛查和LACI的早期预防具有重要意义。然而,现有的脑磁共振成像病变分割研究主要集中在具有明显特征的大病变上,如胶质瘤和急性脑梗死。由于FCI和LACI的多模态微小病变区域,对这些病变区域进行可靠且精确的分割和/或检测仍然是一项重大挑战任务。
我们提出了一种新颖的分割校正算法,通过分割和校正过程来估计病变区域,其中我们同时设计了两个子模型:一个分割网络和一个校正网络。分割网络首先用于在T2液体衰减反转恢复(FLAIR)图像上提取和分割病变区域。随后,校正网络用于在T1 FLAIR图像的相应位置对这些区域进行分类,以区分FCI和LACI。最后,校正网络的结果用于校正分割结果,实现病变区域的分割和识别。
在我们对113例临床患者的磁共振图像进行的实验中,我们的方法检测精度达到91.76%,分类精度达到92.89%,表明这是一种区分FCI和LACI等小病变的有效方法。
总体而言,我们开发了一种完整的方法来分割和检测与FCI和LACI相关的白质高信号。实验结果表明它具有潜在的临床应用潜力。未来,我们将收集更多临床数据并同时测试更多类型的微小病变。