Freedman Daniel, Bagga Barun, Melamud Kira, O'Donnell Thomas, Vega Emilio, Westerhoff Malte, Dane Bari
New York University Langone Medical Center, New York, USA.
Siemens Healthineers (United States), Malvern, USA.
Abdom Radiol (NY). 2025 Mar;50(3):1441-1447. doi: 10.1007/s00261-024-04578-0. Epub 2024 Sep 18.
Retrospectively compare image quality, radiologist diagnostic confidence, and time for images to reach PACS for contrast enhanced abdominopelvic CT examinations created on the scanner console by technologists versus those generated automatically by thin-client artificial intelligence (AI) mechanisms.
A retrospective PACS search identified adults who underwent an emergency department contrast-enhanced abdominopelvic CT in 07/2022 (Console Cohort) and 07/2023 (Server Cohort). Coronal and sagittal multiplanar reformatted images (MPR) were created by AI software in the Server cohort. Time to completion of MPR images was compared using 2-sample t-tests for all patients in both cohorts. Two radiologists qualitatively assessed image quality and diagnostic confidence on 5-point Likert scales for 50 consecutive examinations from each cohort. Additionally, they assessed for acute abdominopelvic findings. Continuous variables and qualitative scores were compared with the Mann-Whitney U test. A p < .05 indicated statistical significance.
Mean[SD] time to exam completion in PACS was 8.7[11.1] minutes in the Console cohort (n = 728) and 4.6[6.6] minutes in the Server cohort (n = 892), p < .001. 50 examinations in the Console Cohort (28 women 22 men, 51[19] years) and Server cohort (27 women 23 men, 57[19] years) were included for radiologist review. Age, sex, CTDlvol, and DLP were not statistically different between the cohorts (all p > .05). There was no significant difference in image quality or diagnostic confidence for either reader when comparing the Console and Server cohorts (all p > .05).
Examinations utilizing AI generated MPRs on a thin-client architecture were completed approximately 50% faster than those utilizing reconstructions generated at the console with no statistical difference in diagnostic confidence or image quality.
回顾性比较由技术人员在扫描仪控制台创建的与通过瘦客户端人工智能(AI)机制自动生成的对比增强腹部盆腔CT检查图像的质量、放射科医生的诊断信心以及图像传输至PACS的时间。
通过回顾性PACS检索,确定了在2022年7月(控制台队列)和2023年7月(服务器队列)接受急诊科对比增强腹部盆腔CT检查的成年人。服务器队列中的AI软件创建了冠状面和矢状面多平面重组图像(MPR)。使用双样本t检验比较两个队列中所有患者MPR图像的完成时间。两位放射科医生对每个队列连续50次检查的图像质量和诊断信心进行5分制李克特量表的定性评估。此外,他们还评估了急性腹部盆腔病变。连续变量和定性评分采用曼-惠特尼U检验进行比较。p < 0.05表示具有统计学意义。
控制台队列(n = 728)中图像在PACS中完成检查的平均[标准差]时间为8.7[11.1]分钟,服务器队列(n = 892)中为4.6[6.6]分钟,p < 0.001。纳入控制台队列(28名女性,22名男性,年龄51[19]岁)和服务器队列(27名女性,23名男性,年龄57[19]岁)各50次检查供放射科医生评估。两个队列之间的年龄、性别、CTDlvol和DLP无统计学差异(所有p > 0.05)。比较控制台队列和服务器队列时,两位阅片者的图像质量或诊断信心均无显著差异(所有p > 0.05)。
利用瘦客户端架构上的AI生成MPR的检查比利用控制台生成的重建图像的检查快约50%,诊断信心或图像质量无统计学差异。