Wang Xiangyu, Wang Liang, Hou Xin, Li Jingfang, Li Jin, Ma Xiangyi
Department of Obstetrics and Gynecology, Tongji Hospital, Tongji Medical College, Huazhong University of Science and Technology, No.1095 Jiefang Avenue, Wuhan, Hubei Province, 430030, China.
Computer Center, Tongji Hospital, Tongji Medical College, Huazhong University of Science and Technology, No. 1095 Jiefang Avenue, Wuhan, Hubei Province, 430030, China.
BMC Med Imaging. 2024 Dec 23;24(1):347. doi: 10.1186/s12880-024-01507-x.
The longitudinal vaginal septum and oblique vaginal septum are female müllerian duct anomalies that are relatively less diagnosed but severely fertility-threatening in clinical practice. Ultrasound imaging is commonly used to examine the two vaginal malformations, but in fact it's difficult to make an accurate differential diagnosis. This study is intended to assess the performance of multiple deep learning models based on ultrasonographic images for distinguishing longitudinal vaginal septum and oblique vaginal septum.
The cases and ultrasound images of longitudinal vaginal septum and oblique vaginal septum were collected. Two convolutional neural network (CNN)-based models (ResNet50 and ConvNeXt-B) and one base resolution variant of vision transformer (ViT)-based neural network (ViT-B/16) were selected to construct ultrasonographic classification models. The receiver operating curve analysis and four indicators including accuracy, sensitivity, specificity and area under the curve (AUC) were used to compare the diagnostic performance of deep learning models.
A total of 70 cases with 426 ultrasound images were included for deep learning models construction using 5-fold cross-validation. Convolutional neural network-based models (ResNet50 and ConvNeXt-B) presented significantly better case-level discriminative efficacy with accuracy of 0.842 (variance, 0.004, 95%CI, [0.639-0.997]) and 0.897 (variance, 0.004, [95%CI, 0.734-1.000]), specificity of 0.709 (variance, 0.041, [95%CI, 0.505-0.905]) and 0.811 (variance, 0.017, [95%CI, 0.622-0.979]), and AUC of 0.842 (variance, 0.004, [95%CI, 0.639-0.997]) and 0.897 (variance, 0.004, [95%CI, 0.734-1.000]) than transformer-based model (ViT-B/16) with its accuracy of 0.668 (variance, 0.014, [95%CI, 0.407-0.920]), specificity of 0.572 (variance, 0.024, [95%CI, 0.304-0.831]) and AUC of 0.681 (variance, 0.030, [95%CI, 0.434-0.908]). There was no significance of AUC between ConvNeXt-B and ResNet50 (P = 0.841).
Convolutional neural network-based model (ConvNeXt-B) shows promising capability of discriminating longitudinal and oblique vaginal septa ultrasound images and is expected to be introduced to clinical ultrasonographic diagnostic system.
阴道纵隔和阴道斜隔是女性苗勒管畸形,在临床实践中诊断相对较少,但对生育有严重威胁。超声成像常用于检查这两种阴道畸形,但实际上很难进行准确的鉴别诊断。本研究旨在评估基于超声图像的多个深度学习模型区分阴道纵隔和阴道斜隔的性能。
收集阴道纵隔和阴道斜隔的病例及超声图像。选择两个基于卷积神经网络(CNN)的模型(ResNet50和ConvNeXt - B)和一个基于视觉Transformer(ViT)的神经网络的基本分辨率变体(ViT - B/16)来构建超声分类模型。采用受试者工作特征曲线分析以及准确性、敏感性、特异性和曲线下面积(AUC)这四个指标来比较深度学习模型的诊断性能。
共纳入70例患者的426幅超声图像,采用5折交叉验证构建深度学习模型。基于卷积神经网络的模型(ResNet50和ConvNeXt - B)表现出显著更好的病例水平鉴别效能,准确性分别为0.842(方差,0.004,95%CI,[0.639 - 0.997])和0.897(方差,0.004,[95%CI,0.7