From the Department of Radiology, Body Imaging Service, Memorial Sloan Kettering Cancer Center, 1275 York Ave, New York, NY 10065 (A.S.B., J.P.D., S.W., R.P.J., H.A.V.); and Department of Radiology, NYU Langone Medical Center, New York, NY (A.S.B., S.W., H.A.V.).
Radiol Imaging Cancer. 2023 Nov;5(6):e230035. doi: 10.1148/rycan.230035.
In a retrospective single-center study, the authors assessed the efficacy of an automated imaging examination assignment system for enhancing the diversity of subspecialty examinations reported by oncologic imaging fellows. The study aimed to mitigate traditional biases of manual case selection and ensure equitable exposure to various case types. Methods included evaluating the proportion of "uncommon" to "common" cases reported by fellows before and after system implementation and measuring the weekly Shannon Diversity Index to determine case distribution equity. The proportion of reported uncommon cases more than doubled from 8.6% to 17.7% in total, at the cost of a concurrent 9.0% decrease in common cases from 91.3% to 82.3%. The weekly Shannon Diversity Index per fellow increased significantly from 0.66 (95% CI: 0.65, 0.67) to 0.74 (95% CI: 0.72, 0.75; < .001), confirming a more balanced case distribution among fellows after introduction of the automatic assignment. © RSNA, 2023 Computer Applications, Education, Fellows, Informatics, MRI, Oncologic Imaging.
在一项回顾性单中心研究中,作者评估了自动化成像检查分配系统在增强肿瘤成像研究员报告的亚专业检查多样性方面的效果。该研究旨在减轻手动病例选择的传统偏见,并确保对各种病例类型的公平接触。方法包括评估系统实施前后研究员报告的“罕见”与“常见”病例的比例,并测量每周 Shannon 多样性指数,以确定病例分布的公平性。罕见病例的报告比例从 8.6%翻了一番多,达到 17.7%,而常见病例的比例从 91.3%降至 82.3%,同时下降了 9.0%。每位研究员的每周 Shannon 多样性指数显著增加,从 0.66(95%CI:0.65,0.67)增加到 0.74(95%CI:0.72,0.75;<.001),证实了自动分配系统引入后,研究员之间的病例分布更加均衡。©RSNA,2023 计算机应用、教育、研究员、信息学、MRI、肿瘤成像。