Nijiati Mayidili, Tuersun Abudouresuli, Zhang Yue, Yuan Qing, Gong Ping, Abulizi Abudoukeyoumujiang, Tuoheti Awanisa, Abulaiti Adili, Zou Xiaoguang
Department of Radiology, The First People's Hospital of Kashi Prefecture, Kashi, China.
Deepwise AI Lab, Beijing, China.
Front Physiol. 2022 Nov 23;13:977427. doi: 10.3389/fphys.2022.977427. eCollection 2022.
Accurate localization and classification of intracerebral hemorrhage (ICH) lesions are of great significance for the treatment and prognosis of patients with ICH. The purpose of this study is to develop a symmetric prior knowledge based deep learning model to segment ICH lesions in computed tomography (CT). A novel symmetric Transformer network (Sym-TransNet) is designed to segment ICH lesions in CT images. A cohort of 1,157 patients diagnosed with ICH is established to train ( = 857), validate ( = 100), and test ( = 200) the Sym-TransNet. A healthy cohort of 200 subjects is added, establishing a test set with balanced positive and negative cases ( = 400), to further evaluate the accuracy, sensitivity, and specificity of the diagnosis of ICH. The segmentation results are obtained after data pre-processing and Sym-TransNet. The DICE coefficient is used to evaluate the similarity between the segmentation results and the segmentation gold standard. Furthermore, some recent deep learning methods are reproduced to compare with Sym-TransNet, and statistical analysis is performed to prove the statistical significance of the proposed method. Ablation experiments are conducted to prove that each component in Sym-TransNet could effectively improve the DICE coefficient of ICH lesions. For the segmentation of ICH lesions, the DICE coefficient of Sym-TransNet is 0.716 0.031 in the test set which contains 200 CT images of ICH. The DICE coefficients of five subtypes of ICH, including intraparenchymal hemorrhage (IPH), intraventricular hemorrhage (IVH), extradural hemorrhage (EDH), subdural hemorrhage (SDH), and subarachnoid hemorrhage (SAH), are 0.784 0.039, 0.680 0.049, 0.359 0.186, 0.534 0.455, and 0.337 0.044, respectively. Statistical results show that the proposed Sym-TransNet can significantly improve the DICE coefficient of ICH lesions in most cases. In addition, the accuracy, sensitivity, and specificity of Sym-TransNet in the diagnosis of ICH in 400 CT images are 91.25%, 98.50%, and 84.00%, respectively. Compared with recent mainstream deep learning methods, the proposed Sym-TransNet can segment and identify different types of lesions from CT images of ICH patients more effectively. Moreover, the Sym-TransNet can diagnose ICH more stably and efficiently, which has clinical application prospects.
脑内出血(ICH)病变的准确定位和分类对ICH患者的治疗及预后具有重要意义。本研究的目的是开发一种基于对称先验知识的深度学习模型,用于在计算机断层扫描(CT)中分割ICH病变。设计了一种新型对称Transformer网络(Sym-TransNet)来分割CT图像中的ICH病变。建立了一个由1157例诊断为ICH的患者组成的队列,用于训练( = 857)、验证( = 100)和测试( = 200)Sym-TransNet。增加了一个由200名受试者组成的健康队列,建立了一个正例和负例平衡的测试集( = 400),以进一步评估ICH诊断的准确性、敏感性和特异性。经过数据预处理和Sym-TransNet后获得分割结果。使用DICE系数来评估分割结果与分割金标准之间的相似度。此外,重现了一些近期的深度学习方法与Sym-TransNet进行比较,并进行统计分析以证明所提方法的统计学意义。进行了消融实验以证明Sym-TransNet中的每个组件都能有效提高ICH病变的DICE系数。对于ICH病变的分割,在包含200张ICH CT图像的测试集中,Sym-TransNet的DICE系数为0.716 ± 0.031。ICH的五种亚型,包括脑实质内出血(IPH)、脑室内出血(IVH)、硬膜外出血(EDH)、硬膜下出血(SDH)和蛛网膜下腔出血(SAH)的DICE系数分别为0.784 ± 0.039、0.680 ± 0.049、0.359 ± 0.186、0.534 ± 0.455和0.337 ± 0.044。统计结果表明,所提的Sym-TransNet在大多数情况下能显著提高ICH病变的DICE系数。此外,Sym-TransNet在400张CT图像中对ICH诊断的准确性、敏感性和特异性分别为91.25%、98.50%和84.00%。与近期主流深度学习方法相比,所提的Sym-TransNet能更有效地从ICH患者的CT图像中分割和识别不同类型的病变。此外,Sym-TransNet能更稳定、高效地诊断ICH,具有临床应用前景。