Mao Wei, Chen Chunxia, Gao Huachao, Xiong Liu, Lin Yongping
School of Optoelectronic and Communication Engineering, Xiamen University of Technology, Xiamen, Fujian, China.
Department of Radiology, Fujian Maternity and Child Health Hospital, Fuzhou, Fujian, China.
Front Physiol. 2022 Aug 30;13:974245. doi: 10.3389/fphys.2022.974245. eCollection 2022.
Early treatment increases the 5-year survival rate of patients with endometrial cancer (EC). Deep learning (DL) as a new computer-aided diagnosis method has been widely used in medical image processing which can reduce the misdiagnosis by radiologists. An automatic staging method based on DL for the early diagnosis of EC will benefit both radiologists and patients. To develop an effective and automatic prediction model for early EC diagnosis on magnetic resonance imaging (MRI) images, we retrospectively enrolled 117 patients (73 of stage IA, 44 of stage IB) with a pathological diagnosis of early EC confirmed by postoperative biopsy at our institution from 1 January 2018, to 31 December 2020. Axial T2-weighted image (T2WI), axial diffusion-weighted image (DWI) and sagittal T2WI images from 117 patients have been classified into stage IA and stage IB according to the patient's pathological diagnosis. Firstly, a semantic segmentation model based on the U-net network is trained to segment the uterine region and the tumor region on the MRI images. Then, the area ratio of the tumor region to the uterine region (TUR) in the segmentation map is calculated. Finally, the receiver operating characteristic curves (ROCs) are plotted by the TUR and the results of the patient's pathological diagnosis in the test set to find the optimal staging thresholds for stage IA and stage IB. In the test sets, the trained semantic segmentation model yields the average Dice similarity coefficients of uterus and tumor on axial T2WI, axial DWI, and sagittal T2WI were 0.958 and 0.917, 0.956 and 0.941, 0.972 and 0.910 respectively. With pathological diagnostic results as the gold standard, the classification model on axial T2WI, axial DWI, and sagittal T2WI yielded an area under the curve (AUC) of 0.86, 0.85 and 0.94, respectively. In this study, an automatic DL-based segmentation model combining the ROC analysis of TUR on MRI images presents an effective early EC staging method.
早期治疗可提高子宫内膜癌(EC)患者的5年生存率。深度学习(DL)作为一种新的计算机辅助诊断方法,已广泛应用于医学图像处理,可减少放射科医生的误诊。基于DL的EC早期诊断自动分期方法将使放射科医生和患者都受益。为了开发一种有效的基于磁共振成像(MRI)图像的EC早期诊断自动预测模型,我们回顾性纳入了2018年1月1日至2020年12月31日在我院经术后活检病理确诊为早期EC的117例患者(IA期73例,IB期44例)。根据患者的病理诊断,将117例患者的轴位T2加权图像(T2WI)、轴位扩散加权图像(DWI)和矢状位T2WI图像分为IA期和IB期。首先,训练基于U-net网络的语义分割模型,对MRI图像上的子宫区域和肿瘤区域进行分割。然后,计算分割图中肿瘤区域与子宫区域的面积比(TUR)。最后,通过TUR和测试集中患者的病理诊断结果绘制受试者操作特征曲线(ROC),以找到IA期和IB期的最佳分期阈值。在测试集中,训练后的语义分割模型在轴位T2WI、轴位DWI和矢状位T2WI上子宫和肿瘤的平均Dice相似系数分别为0.958和0.917、0.956和0.941、0.972和0.910。以病理诊断结果为金标准,轴位T2WI、轴位DWI和矢状位T2WI上的分类模型曲线下面积(AUC)分别为0.86、0.85和0.94。在本研究中,基于DL的自动分割模型结合MRI图像上TUR的ROC分析,提出了一种有效的EC早期分期方法。