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Precise pulmonary scanning and reducing medical radiation exposure by developing a clinically applicable intelligent CT system: Toward improving patient care

机译:通过开发临床适用的智能CT系统精确肺扫描和减少医疗辐射曝光:朝来改善患者护理

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Background Interstitial lung disease requires frequent re-examination, which directly causes excessive cumulative radiation exposure. To date, AI has not been applied to CT for enhancing clinical care; thus, we hypothesize AI may empower CT with intelligence to realize automatic and accurate pulmonary scanning, thus dramatically decrease medical radiation exposure without compromising patient care. Methods Facial boundary detection was realized by recognizing adjacent jaw position through training and testing a region proposal network (RPN) on 76,882 human faces using a preinstalled 2-dimensional camera; the lung-fields was then segmented by V-Net on another training set with 314 subjects and calculated the moving distance of the scanning couch based on a pre-generated calibration table. A multi-cohort study, including 1,186 patients was used for validation and radiation dose quantification under three clinical scenarios. Findings A U-HAPPY (United imaging Human Automatic Planbox for PulmonarY) scanning CT was designed. Error distance of RPN was 4·46±0·02 pixels with a success rate of 98·7% in training set and 2·23±0·10 pixels with 100% success rate in testing set. Average Dice's coefficient was 0·99 in training set and 0·96 in testing set. A calibration table with 1,344,000 matches was generated to support the linkage between camera and scanner. This real-time automation makes an accurate plan-box to cover exact location and area needed to scan, thus reducing amounts of radiation exposures significantly (all, P 0·001). Interpretation U-HAPPY CT designed for pulmonary imaging acquisition standardization is promising for reducing patient risk and optimizing public health expenditures. Funding The National Natural Science Foundation of China.
机译:背景技术间质肺病需要经常重新检查,直接导致过度累积辐射暴露。迄今为止,AI尚未应用于CT以增强临床护理;因此,我们假设AI可以赋予CT智力,以实现自动和准确的肺扫描,从而显着降低医疗辐射暴露而不损害患者护理。方法通过使用预安装的二维相机识别通过训练和在76,882人面上识别和测试区域提案网络(RPN)来实现面部边界检测。然后通过V-NET在另一个具有314个受试者的训练上进行肺场,并根据预先产生的校准表计算扫描沙发的移动距离。在三个临床情景下使用多群组研究,其中包括1,186名患者进行验证和放射剂量量化。设计了一个U-Happy(肺部肺部)扫描CT的United Magning人类自动面板箱。 RPN的误差距离为4·46±0·02像素,训练集中成功率为98·7%,在测试集中具有100%成功率的2·23±0·10个像素。平均骰子系数为0·99在训练集和0·96中的测试集中。生成具有1,344,000场匹配的校准表以支持相机和扫描仪之间的联动。这种实时自动化使一个准确的计划盒覆盖扫描所需的确切位置和区域,从而显着降低辐射曝光量(全部,P <0·001)。诠释为肺部成像采集标准化设计的U-Happy CT是有助于减少患者风险和优化公共卫生支出。资助中国国家自然科学基金。

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