首页> 外文期刊>Journal of computer assisted tomography >Computer-aided detection of acute pulmonary embolism with 64-slice multi-detector row computed tomography: impact of the scanning conditions and overall image quality in the detection of peripheral clots.
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Computer-aided detection of acute pulmonary embolism with 64-slice multi-detector row computed tomography: impact of the scanning conditions and overall image quality in the detection of peripheral clots.

机译:使用64层多排行计算机断层扫描技术对急性肺动脉栓塞进行计算机辅助检测:扫描条件和整体图像质量对外周血凝块检测的影响。

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PURPOSE: To evaluate the performance of a computer-aided detection (CAD) system for diagnosing peripheral acute pulmonary embolism (PE) with a 64-slice multi-detector row computed tomography (CT). MATERIALS AND METHODS: Two radiologists investigated the accuracy of a software aimed at detecting peripheral clots (PECAD prototype, version 7; Siemens Medical Systems, Forchheim, Germany) by applying this tool for the analysis of the pulmonary arterial bed of 74 CT angiograms obtained with 64-slice dual-source CT (Definition; Siemens Medical Systems). These cases were retrospectively selected from a database of CT studies performed on the same CT unit, with a similar collimation (64 x 0.6 mm) and similar injection protocols. Patient selection was based on a variety of (1) scanning conditions, namely, nongated (n = 30), electrocardiography-gated (n = 30), and dual-energy CT angiograms (n = 14), and (2) image quality (IQ), namely, scans of excellent IQ (n = 53) and lower IQ due to lower levels of arterial enhancement and/or presence of noise (n = 21). The standard of truth was based on the 2 radiologists' consensus reading and the results of CAD. RESULTS: The software detected 80 of 93 peripheral clots present in the 21 patients (42 segmental and 38 subsegmental clots). The overall sensitivity (95% confidence interval) of the CAD tool was 86% (77%-92%) for detecting peripheral clots, 78% (64.5%-88%) at the segmental level and 97% (85.5%-99.9%) at the subsegmental level. Assuming normal vascular anatomy with 20 segmental and 40 subsegmental arteries, overall specificity and positive and negative predictive values (95% confidence interval) of the software were 91.8% (91%-92.6%), 18.4% (15%-22.4%), and 99.7% (99.5%-99.8%), respectively. A mean of 5.4 false positives was found per patient (total, 354 false positives), mainly linked to the presence of perivascular connective tissue (n = 119; 34%) and perivascular airspace consolidation (n = 97; 27%). The sensitivities (95% confidence interval) for the CAD tool were 91% (69.8%-99.3%) for dual-energy, 87% (59.3%-93.2%) for electrocardiography-gated, and 87% (73.5%-95.3%) for nongated scans (P > 0.05). No significant difference was found in the sensitivity of the CAD software when comparing the scans according to the scanning conditions and image quality. CONCLUSIONS: The evaluated CAD software has a good sensitivity in detecting peripheral PE, which is not influenced by the scanning conditions or the overall image quality.
机译:目的:通过64层多排行计算机断层扫描(CT)评估计算机辅助检测(CAD)系统诊断外周急性肺栓塞(PE)的性能。材料和方法:两名放射科医生通过使用该工具分析74枚CT血管造影获得的肺动脉床,研究了一种旨在检测周围血凝块的软件(PECAD原型,版本7;西门子医疗系统,德国福希海姆)的准确性。 64层双源CT(定义;西门子医疗系统)。这些病例是从在相同的CT单元上进行的CT研究数据库(具有相似的准直度(64 x 0.6 mm)和相似的注射方案)中选择的。患者的选择基于多种(1)扫描条件,即非门控(n = 30),心电图门控(n = 30)和双能CT血管造影照片(n = 14),以及(2)图像质量(IQ),即由于动脉增强水平较低和/或存在噪音(n = 21)而导致的智商(n = 53)和智商较低的扫描。真实标准基于两位放射科医生的共识阅读和CAD结果。结果:该软件检测到21例患者中存在的93个周围血凝块中的80个(42个节段性血块和38个节段性血块)。 CAD工具检测外周血凝块的整体灵敏度(95%置信区间)为86%(77%-92%),分段水平为78%(64.5%-88%)和97%(85.5%-99.9%) )的细分。假设正常的血管解剖结构具有20个节段性动脉和40个节段性动脉,该软件的整体特异性以及阳性和阴性预测值(95%置信区间)分别为91.8%(91%-92.6%),18.4%(15%-22.4%),和99.7%(99.5%-99.8%)。每位患者平均发现5.4例假阳性(总共354例假阳性),这主要与存在血管周围结缔组织(n = 119; 34%)和血管周围空域巩固(n = 97; 27%)有关。对于双重能量,CAD工具的敏感性(95%置信区间)为91%(69.8%-99.3%),对心电图门控的敏感性为87%(59.3%-93.2%)和87%(73.5%-95.3%) )进行非门控扫描(P> 0.05)。根据扫描条件和图像质量比较扫描时,CAD软件的灵敏度没有发现显着差异。结论:评估过的CAD软件在检测周边PE方面具有良好的灵敏度,不受扫描条件或整体图像质量的影响。

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