X Xu,L Xi,J Zhu,C Feng,P Zhou,K Liu,Z Shang,Z Shao
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During surgery, the predicted LN+ were identified and sent for separate pathological examination. The accuracy of the model's predictions was compared with those of human experts and verified against pathology reports. The capacity of the model to assist radiologists in LN+ diagnosis was also assessed. The CNN model was trained over 40 epochs and successfully validated after each. Compared with human experts (2 radiologists, 2 surgeons, and 2 students), the CNN model achieved higher sensitivity (81.89% vs. 81.48%, 46.91%, 50.62%), specificity (99.31% vs. 99.15%, 98.36%, 96.27%), LN+ accuracy (76.19% vs. 75.43%, P = 0.854; 40.64%, P < 0.001; 37.44%, P < 0.001), and clinical accuracy (86.16% vs. 83%, 61%, 56%). With the model's assistance, the radiologists surpassed both the previous predictive results without the model's support and the model's performance alone. 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引用次数: 0
摘要
淋巴结(LN)转移是口腔鳞状细胞癌(OSCC)复发的常见原因。然而,准确识别转移性LNs (LNs+)仍然具有挑战性。本前瞻性临床研究旨在测试我们的卷积神经网络(CNN)模型在临床实践中在对比增强计算机断层扫描(CECT)中识别OSCC颈椎LN+的有效性。CNN模型的开发和训练使用了来自以往OSCC患者的8380张CECT图像数据集。然后在2023年10月17日至2024年8月31日期间,对354例OSCC患者的17,777张术前CECT图像进行前瞻性验证。该模型预测的LN结果在不影响手术或治疗计划的情况下提供给手术团队。手术中,预测LN+被识别并送去单独的病理检查。模型预测的准确性与人类专家的预测进行了比较,并根据病理报告进行了验证。还评估了该模型协助放射科医生诊断LN+的能力。CNN模型训练了40多个epoch,每个epoch都验证成功。与人类专家(2名放射科医生、2名外科医生和2名学生)相比,CNN模型的灵敏度(81.89%比81.48%、46.91%、50.62%)、特异性(99.31%比99.15%、98.36%、96.27%)、LN+准确率(76.19%比75.43%,P = 0.854;40.64%, p < 0.001;37.44%, P < 0.001),临床准确率(86.16% vs. 83%, 61%, 56%)。在模型的帮助下,放射科医生超越了之前没有模型支持和模型单独表现的预测结果。CNN模型在识别、定位和预测OSCC患者颈部LN+方面的准确性与放射科医生相当。此外,该模型有可能帮助放射科医生做出更准确的诊断。
Intelligent Diagnosis of Cervical Lymph Node Metastasis Using a CNN Model.
Lymph node (LN) metastasis is a prevalent cause of recurrence in oral squamous cell carcinoma (OSCC). However, accurately identifying metastatic LNs (LNs+) remains challenging. This prospective clinical study aims to test the effectiveness of our convolutional neural network (CNN) model for identifying OSCC cervical LN+ in contrast-enhanced computed tomography (CECT) in clinical practice. A CNN model was developed and trained using a dataset of 8,380 CECT images from previous OSCC patients. It was then prospectively validated on 17,777 preoperative CECT images from 354 OSCC patients between October 17, 2023, and August 31, 2024. The model's predicted LN results were provided to the surgical team without influencing surgical or treatment plans. During surgery, the predicted LN+ were identified and sent for separate pathological examination. The accuracy of the model's predictions was compared with those of human experts and verified against pathology reports. The capacity of the model to assist radiologists in LN+ diagnosis was also assessed. The CNN model was trained over 40 epochs and successfully validated after each. Compared with human experts (2 radiologists, 2 surgeons, and 2 students), the CNN model achieved higher sensitivity (81.89% vs. 81.48%, 46.91%, 50.62%), specificity (99.31% vs. 99.15%, 98.36%, 96.27%), LN+ accuracy (76.19% vs. 75.43%, P = 0.854; 40.64%, P < 0.001; 37.44%, P < 0.001), and clinical accuracy (86.16% vs. 83%, 61%, 56%). With the model's assistance, the radiologists surpassed both the previous predictive results without the model's support and the model's performance alone. The CNN model demonstrated an accuracy comparable to that of radiologists in identifying, locating, and predicting cervical LN+ in OSCC patients. Furthermore, the model has the potential to assist radiologists in making more accurate diagnoses.
期刊介绍:
The Journal of Dental Research (JDR) is a peer-reviewed scientific journal committed to sharing new knowledge and information on all sciences related to dentistry and the oral cavity, covering health and disease. With monthly publications, JDR ensures timely communication of the latest research to the oral and dental community.