Department of Medical Diagnostic Imaging, College of Health Sciences, University of Sharjah, Sharjah, United Arab Emirates.
Computer Engineering Department, Faculty of Engineering and Natural Sciences, Istinye University, Istanbul, Turkey.
Front Public Health. 2022 Jul 28;10:892789. doi: 10.3389/fpubh.2022.892789. eCollection 2022.
This study aimed to evaluate Artificial Neural Network (ANN) modeling to estimate the significant dose length product (DLP) value during the abdominal CT examinations for quality assurance in a retrospective, cross-sectional study.
The structure of the ANN model was designed considering various input parameters, namely patient weight, patient size, body mass index, mean CTDI volume, scanning length, kVp, mAs, exposure time per rotation, and pitch factor. The aforementioned examination details of 551 abdominal CT scans were used as retrospective data. Different types of learning algorithms such as Levenberg-Marquardt, Bayesian and Scaled-Conjugate Gradient were checked in terms of the accuracy of the training data.
The -value representing the correlation coefficient for the real system and system output is given as 0.925, 0.785, and 0.854 for the Levenberg-Marquardt, Bayesian, and Scaled-Conjugate Gradient algorithms, respectively. The findings showed that the Levenberg-Marquardt algorithm comprehensively detects DLP values for abdominal CT examinations. It can be a helpful approach to simplify CT quality assurance.
It can be concluded that outcomes of this novel artificial intelligence method can be used for high accuracy DLP estimations before the abdominal CT examinations, where the radiation-related risk factors are high or risk evaluation of multiple CT scans is needed for patients in terms of ALARA. Likewise, it can be concluded that artificial learning methods are powerful tools and can be used for different types of radiation-related risk assessments for quality assurance in diagnostic radiology.
本研究旨在评估人工神经网络(ANN)建模,以在回顾性、横截面研究中评估腹部 CT 检查的重要剂量长度乘积(DLP)值,从而实现质量保证。
考虑到各种输入参数,如患者体重、患者体型、体重指数、平均 CTDI 体积、扫描长度、kVp、mAs、每转曝光时间和螺距因子,设计 ANN 模型的结构。使用 551 例腹部 CT 扫描的上述检查细节作为回顾性数据。检查了不同类型的学习算法,如 Levenberg-Marquardt、贝叶斯和比例共轭梯度,以评估训练数据的准确性。
代表真实系统和系统输出之间相关系数的 - 值分别为 0.925、0.785 和 0.854,对于 Levenberg-Marquardt、贝叶斯和比例共轭梯度算法。研究结果表明,Levenberg-Marquardt 算法全面检测腹部 CT 检查的 DLP 值。它可以是一种简化 CT 质量保证的有用方法。
可以得出结论,这种新型人工智能方法的结果可用于腹部 CT 检查前的高精度 DLP 估计,其中辐射相关风险因素较高,或者需要对 ALARA 条件下的患者进行多次 CT 扫描的风险评估。同样,可以得出结论,人工学习方法是强大的工具,可用于诊断放射学中不同类型的辐射相关风险评估,以实现质量保证。