1.Application of shear wave elastography in cervical cancer
Manting ZENG ; Jihua LIU ; Ningbo ZHOU ; Jian WANG ; Xuanxuan LI ; Hong ZHU
Journal of International Oncology 2019;46(2):117-120
Shear wave elastography (SWE) is used to quantitatively analyze the hardness of the tissue by Young's modulus.The hardness of the tissue is visualized in the form of color coding to distinguish the benign and malignant tissue detected.SWE has higher sensitivity,accuracy and specificity compared with traditional color doppler,which is more objective than elastography,safer,cheaper and simpler than MRI.SWE has a good application prospect in the diagnosis,clinical staging and curative effect monitoring of cervical cancer.
2.Automatic assessment of root numbers of vertical mandibular third molar using a deep learning model based on attention mechanism
Chunsheng SUN ; Xiubin DAI ; Manting ZHOU ; Qiuping JING ; Chi ZHANG ; Shengjun YANG ; Dongmiao WANG
STOMATOLOGY 2024;44(11):831-836
Objective To develop a deep learning network based on attention mechanism to identify the number of the vertical man-dibular third molar(MTM)roots(single or double)on panoramic radiographs in an automatic way.Methods The sample consisted of 1 045 patients with 1 642 MTMs on paired panoramic radiographs and Cone-beam computed tomography(CBCT)and were randomly grouped into the training(80%),the validation(10%),and the test(10%).The evaluation of CBCT was defined as the ground truth.A deep learning network based on attention mechanism,which was named as RN-MTMnet,was trained to judge if the MTM on pano-ramic radiographs had one or two roots.Diagnostic performance was evaluated by accuracy,sensitivity,specificity,and positive predict value(PPV),and the receiver operating characteristic(ROC)curve with the area under the ROC curve(AUC).Its diagnostic perform-ance was compared with dentists'diagnosis,Faster-RCNN,CenterNet,and SSD using evaluation metrics.Results On CBCT images,single-rooted MTM was observed on 336(20.46%)sides,while two-rooted MTM was 1 306(79.54%).The RN-MTMnet achieved an accuracy of 0.888,a sensitivity of 0.885,a specificity of 0.903,a PPV of 0.976,and the AUC value of 0.90.Conclusion RN-MTM-net is developed as a novel,robust and accurate method for detecting the numberof MTM roots on panoramic radiographs.