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首页> 外文期刊>Abdominal radiology. >Automated segmentation and quantification of aortic calcification at abdominal CT: application of a deep learning-based algorithm to a longitudinal screening cohort
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Automated segmentation and quantification of aortic calcification at abdominal CT: application of a deep learning-based algorithm to a longitudinal screening cohort

机译:腹部CT中的主动脉钙化的自动分割和定量:应用深度学习的算法在纵向筛选队列中的应用

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Objective To investigate an automated aortic calcium segmentation and scoring tool at abdominal CT in an adult screening cohort. Methods Using instance segmentation with convolutional neural networks (Mask R-CNN), a fully automated vascular calcification algorithm was applied to a data set of 9914 non-contrast CT scans from 9032 consecutive asymptomatic adults (mean age, 57.5 ±7.8 years; 4467 M/5447F) undergoing colonography screening. Follow-up scans were performed in a subset of 866 individuals (mean interval, 5.4 years). Automated abdominal aortic calcium volume, mass, and Agatston score were assessed. In addition, comparison was made with a separate validated semi-automated approach in a subset of 812 cases. Results Mean values were significantly higher in males for Agatston score (924.2±2066.2 vs. 564.2± 1484.2, p<0.001), aortic calcium mass (222.2 ±526.0 mg vs. 144.5 ±405.4 mg,p< 0.001) and volume (699.4 ±1552.4 ml vs. 426.9 + 1115.5 HU, p<0.001). Overall age-specific Agatston scores increased an average of 10%/year for the entire cohort; males had a larger Agatston score increase between the ages of 40 to 60 than females (91.2% vs. 75.1%, p< 0.001) and had significantly higher mean Agatston scores between ages 50 and 80 (p< 0.001). For the 812-scan subset with both automated and semi-automated methods, median difference in Agatston score was 66.4 with an r2 agreement value of 0.84. Among the 866-patient cohort with longitudinal follow-up, the average Agatston score change was 524.1 ± 1317.5 (median 130.9), reflecting a mean increase of 25.5% (median 73.6%). Conclusion This robust, fully automated abdominal aortic calcification scoring tool allows for both individualized and population-based assessment. Such data could be automatically derived at non-contrast abdominal CT, regardless of the study indication, allowing for opportunistic assessment of cardiovascular risk.
机译:目的探讨在腹部CT在成人群体筛选的自动化主动脉钙分段和得分利器。方法采用实例分割与卷积神经网络(掩模R-CNN),一个完全自动化的血管钙化算法从9032名连续无症状成人(平均年龄57.5±7.8年施加到的9914非造影CT扫描数据集; 4467中号/ 5447F)正在接受结肠检查。后续扫描,在866名个人(平均间隔,5.4年)的一个子集进行。自动腹主动脉含钙量高,质量和盖斯顿评分进行了评估。此外,比较用在812案件的子集的独立验证的半自动化方法制备。结果平均数值在男性显著更高为盖斯顿得分(924.2±2066.2对564.2±1484.2,P <0.001),主动脉钙质量(222.2±526.0毫克对144.5±405.4毫克,P <0.001)和体积(699.4± 1552.4毫升与426.9 + 1115.5 HU,p <0.001)。特定年龄总体盖斯顿分数增加10%/年,全部患者的平均;男性具有40岁之间的60较大盖斯顿分数增加比女性(91.2%对75.1%,P <0.001)和有年龄50和80(P <0.001)之间显著较高的平均盖斯顿分数。对于同时具有自动化和半自动化方法812扫描的子集,在盖斯顿得分值差为66.4与0.84的R 2值协议。之间具有纵向随访866-患者群组中,平均得分盖斯顿变化为524.1±1317.5(平均130.9),反映了25.5%的平均增加(中位数73.6%)。结论强大的,完全自动化的腹主动脉钙化评分工具允许您在个性化和人口为基础的评价。这样的数据可以在非对比腹部CT自动导出,不管研究的指示,允许的心血管风险评估的机会。

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