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Efficiency Improvement in a Busy Radiology Practice: Determination of Musculoskeletal Magnetic Resonance Imaging Protocol Using Deep-Learning Convolutional Neural Networks

机译:在繁忙的放射学实践中提高效率:使用深度学习卷积神经网络确定肌肉骨骼磁共振成像协议

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摘要

The purposes of this study are to evaluate the feasibility of protocol determination with a convolutional neural networks (CNN) classifier based on short-text classification and to evaluate the agreements by comparing protocols determined by CNN with those determined by musculoskeletal radiologists. Following institutional review board approval, the database of a hospital information system (HIS) was queried for lists of MRI examinations, referring department, patient age, and patient gender. These were exported to a local workstation for analyses: 5258 and 1018 consecutive musculoskeletal MRI examinations were used for the training and test datasets, respectively. The subjects for pre-processing were routine or tumor protocols and the contents were word combinations of the referring department, region, contrast media (or not), gender, and age. The CNN Embedded vector classifier was used with Word2Vec Google news vectors. The test set was tested with each classification model and results were output as routine or tumor protocols. The CNN determinations were evaluated using the receiver operating characteristic (ROC) curves. The accuracies were evaluated by a radiologist-confirmed protocol as the reference protocols. The optimal cut-off values for protocol determination between routine protocols and tumor protocols was 0.5067 with a sensitivity of 92.10%, a specificity of 95.76%, and an area under curve (AUC) of 0.977. The overall accuracy was 94.2% for the ConvNet model. All MRI protocols were correct in the pelvic bone, upper arm, wrist, and lower leg MRIs. Deep-learning-based convolutional neural networks were clinically utilized to determine musculoskeletal MRI protocols. CNN-based text learning and applications could be extended to other radiologic tasks besides image interpretations, improving the work performance of the radiologist.
机译:这项研究的目的是评估使用基于短文本分类的卷积神经网络(CNN)分类器确定协议的可行性,以及通过将CNN确定的协议与肌肉骨骼放射科医生确定的协议进行比较来评估协议。在机构审查委员会批准之后,查询了医院信息系统(HIS)的数据库,以获取MRI检查,转诊科,患者年龄和患者性别的列表。这些被输出到本地工作站进行分析:分别对训练和测试数据集使用5258和1018个连续的肌肉骨骼MRI检查。预处理的对象是常规或肿瘤治疗方案,内容是指诊部门,地区,造影剂(是否存在),性别和年龄的单词组合。 CNN嵌入式矢量分类器与Word2Vec Google新闻矢量一起使用。用每个分类模型对测试集进行测试,并将结果作为常规或肿瘤方案输出。使用接收器工作特性(ROC)曲线评估CNN的确定。准确性由放射科医生确认的方案作为参考方案进行评估。在常规方案和肿瘤方案之间确定方案的最佳临界值为0.5067,灵敏度为92.10%,特异性为95.76%,曲线下面积(AUC)为0.977。 ConvNet模型的整体准确性为94.2%。所有MRI方案在骨盆骨,上臂,手腕和小腿MRI中都是正确的。临床上利用基于深度学习的卷积神经网络来确定肌肉骨骼MRI协议。基于CNN的文本学习和应用程序可以扩展到除图像解释之外的其他放射学任务,从而提高放射科医生的工作绩效。

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