医学
双重能量
血管造影
血红蛋白
放射科
核医学
内科学
骨质疏松症
骨矿物
作者
Fernando Uliana Kay,Cynthia Lumby,Yuki Tanabe,Suhny Abbara,Prabhakar Rajiah
出处
期刊:Tomography
[MDPI AG]
日期:2023-08-18
卷期号:9 (4): 1538-1550
标识
DOI:10.3390/tomography9040123
摘要
Objectives: To evaluate if dual-energy CT (DECT) pulmonary angiography (CTPA) can detect anemia with the aid of machine learning. Methods: Inclusion of 100 patients (mean age ± SD, 51.3 ± 14.8 years; male-to-female ratio, 42/58) who underwent DECT CTPA and hemoglobin (Hb) analysis within 24 h, including 50 cases with Hb below and 50 controls with Hb ≥ 12 g/dL. Blood pool attenuation was assessed on virtual noncontrast (VNC) images at eight locations. A classification model using extreme gradient-boosted trees was developed on a training set (n = 76) for differentiating cases from controls. The best model was evaluated in a separate test set (n = 24). Results: Blood pool attenuation was significantly lower in cases than controls (p-values < 0.01), except in the right atrium (p = 0.06). The machine learning model had sensitivity, specificity, and accuracy of 83%, 92%, and 88%, respectively. Measurements at the descending aorta had the highest relative importance among all features; a threshold of 43 HU yielded sensitivity, specificity, and accuracy of 68%, 76%, and 72%, respectively. Conclusion: VNC imaging and machine learning shows good diagnostic performance for detecting anemia on DECT CTPA.
科研通智能强力驱动
Strongly Powered by AbleSci AI