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IILS: Intelligent imaging layout system for automatic imaging report standardization and intra-interdisciplinary clinical workflow optimization

机译:IILS:用于自动成像报告标准化和跨学科临床工作流程优化的智能成像布局系统

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Background To achieve imaging report standardization and improve the quality and efficiency of the intra-interdisciplinary clinical workflow, we proposed an intelligent imaging layout system (IILS) for a clinical decision support system-based ubiquitous healthcare service, which is a lung nodule management system using medical images. Methods We created a lung IILS based on deep learning for imaging report standardization and workflow optimization for the identification of nodules. Our IILS utilized a deep learning plus adaptive auto layout tool, which trained and tested a neural network with imaging data from all the main CT manufacturers from 11,205 patients. Model performance was evaluated by the receiver operating characteristic curve (ROC) and calculating the corresponding area under the curve (AUC). The clinical application value for our IILS was assessed by a comprehensive comparison of multiple aspects. Findings Our IILS is clinically applicable due to the consistency with nodules detected by IILS, with its highest consistency of 0·94 and an AUC of 90·6% for malignant pulmonary nodules versus benign nodules with a sensitivity of 76·5% and specificity of 89·1%. Applying this IILS to a dataset of chest CT images, we demonstrate performance comparable to that of human experts in providing a better layout and aiding in diagnosis in 100% valid images and nodule display. The IILS was superior to the traditional manual system in performance, such as reducing the number of clicks from 14·45?±?0·38 to 2, time consumed from 16·87?±?0·38?s to 6·92?±?0·10?s, number of invalid images from 7·06?±?0·24 to 0, and missing lung nodules from 46·8% to 0%. Interpretation This IILS might achieve imaging report standardization, and improve the clinical workflow therefore opening a new window for clinical application of artificial intelligence. Fund The National Natural Science Foundation of China.
机译:背景技术为了实现影像报告的标准化并提高跨学科临床工作流程的质量和效率,我们为基于临床决策支持系统的普适医疗服务提出了一种智能影像布局系统(IILS),该系统是一种使用医学图像。方法我们基于深度学习创建了肺IILS,用于成像报告标准化和工作流优化以鉴定结节。我们的IILS使用了深度学习和自适应自动布局工具,该工具使用来自11205名患者的所有主要CT制造商的成像数据对神经网络进行了训练和测试。通过接收器工作特性曲线(ROC)评估模型性能,并计算曲线下的相应面积(AUC)。通过多个方面的综合比较评估了我们IILS的临床应用价值。结论我们的IILS由于与IILS检测到的结节具有一致性,因此在临床上适用,其恶性肺结节与良性结节的最高一致性为0·94,AUC为90·6%,敏感性为76·5%,特异性为89·1%。将此IILS应用于胸部CT图像数据集,我们展示了与人类专家相当的性能,可提供更好的布局并有助于100%有效图像和结节显示的诊断。 IILS在性能上优于传统的手动系统,例如将点击次数从14·45?±?0·38减少到2,消耗的时间从16·87?±?0·38?s减少到6·92 α±α0·10μs,无效图像的数量从7·06α±α0·24变为0,而肺结节缺失从46·8%至0%。解释该IILS可以实现影像报告的标准化,并改善临床工作流程,因此为人工智能的临床应用打开了新的窗口。基金国家自然科学基金。

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