Department of Dentomaxillofacial Radiology, Gazi University Faculty of Dentistry, Emek, Ankara, Turkey.
Department of Computer Engineering, Gazi University Faculty of Engineering, Ankara, Turkey.
Oral Radiol. 2023 Oct;39(4):629-638. doi: 10.1007/s11282-023-00678-7. Epub 2023 Mar 9.
This study aimed to automatically determine the cervical vertebral maturation (CVM) processes on lateral cephalometric radiograph images using a proposed deep learning-based convolutional neural network (CNN) model and to test the success rate of this CNN model in detecting CVM stages using precision, recall, and F1-score.
A total of 588 digital lateral cephalometric radiographs of patients with a chronological age between 8 and 22 years were included in this study. CVM evaluation was carried out by two dentomaxillofacial radiologists. CVM stages in the images were divided into 6 subgroups according to the growth process. A convolutional neural network (CNN) model was developed in this study. Experimental studies for the developed model were carried out in the Jupyter Notebook environment using the Python programming language, the Keras, and TensorFlow libraries.
As a result of the training that lasted 40 epochs, 58% training and 57% test accuracy were obtained. The model obtained results that were very close to the training on the test data. On the other hand, it was determined that the model showed the highest success in terms of precision and F1-score in the CVM Stage 1 and the highest success in the recall value in the CVM Stage 2.
The experimental results have shown that the developed model achieved moderate success and it reached a classification accuracy of 58.66% in CVM stage classification.
本研究旨在使用基于深度学习的卷积神经网络(CNN)模型自动确定侧位头颅侧位片上的颈椎成熟度(CVM)过程,并使用精度、召回率和 F1 分数测试该 CNN 模型在检测 CVM 阶段的成功率。
本研究共纳入了 588 名年龄在 8 至 22 岁之间的患者的数字化侧位头颅侧位片。由两名口腔颌面放射科医生进行 CVM 评估。根据生长过程将图像中的 CVM 阶段分为 6 个亚组。本研究开发了一个卷积神经网络(CNN)模型。使用 Python 编程语言、Keras 和 TensorFlow 库在 Jupyter Notebook 环境中进行了开发模型的实验研究。
经过 40 个周期的训练,获得了 58%的训练和 57%的测试准确性。该模型在测试数据上的表现非常接近训练结果。另一方面,该模型在 CVM 阶段 1 的精度和 F1 分数方面表现出最高的成功率,在 CVM 阶段 2 的召回值方面表现出最高的成功率。
实验结果表明,所开发的模型取得了中等成功,在 CVM 阶段分类中达到了 58.66%的分类准确率。