Kim Jae Guk, Ha Sue Young, Kang You-Ri, Hong Hotak, Kim Dongmin, Lee Myungjae, Sunwoo Leonard, Ryu Wi-Sun, Kim Joon-Tae
Department of Neurology, Daejeon Eulji University Hospital, Daejeon, Daejeon, Korea.
Artificial Intelligence Research Center, JLK Inc, Seoul, Korea.
J Neurointerv Surg. 2024 Sep 20. doi: 10.1136/jnis-2024-022254.
To evaluate the stand-alone efficacy and improvements in diagnostic accuracy of early-career physicians of the artificial intelligence (AI) software to detect large vessel occlusion (LVO) in CT angiography (CTA).
This multicenter study included 595 ischemic stroke patients from January 2021 to September 2023. Standard references and LVO locations were determined by consensus among three experts. The efficacy of the AI software was benchmarked against standard references, and its impact on the diagnostic accuracy of four residents involved in stroke care was assessed. The area under the receiver operating characteristic curve (AUROC), sensitivity, and specificity of the software and readers with versus without AI assistance were calculated.
Among the 595 patients (mean age 68.5±13.4 years, 56% male), 275 (46.2%) had LVO. The median time interval from the last known well time to the CTA was 46.0 hours (IQR 11.8-64.4). For LVO detection, the software demonstrated a sensitivity of 0.858 (95% CI 0.811 to 0.897) and a specificity of 0.969 (95% CI 0.943 to 0.985). In subjects whose symptom onset to imaging was within 24 hours (n=195), the software exhibited an AUROC of 0.973 (95% CI 0.939 to 0.991), a sensitivity of 0.890 (95% CI 0.817 to 0.936), and a specificity of 0.965 (95% CI 0.902 to 0.991). Reading with AI assistance improved sensitivity by 4.0% (2.17 to 5.84%) and AUROC by 0.024 (0.015 to 0.033) (all P<0.001) compared with readings without AI assistance.
The AI software demonstrated a high detection rate for LVO. In addition, the software improved diagnostic accuracy of early-career physicians in detecting LVO, streamlining stroke workflow in the emergency room.
评估人工智能(AI)软件在计算机断层血管造影(CTA)中检测大血管闭塞(LVO)的独立效能以及对早期职业医生诊断准确性的改善情况。
这项多中心研究纳入了2021年1月至2023年9月期间的595例缺血性中风患者。标准参考结果和LVO位置由三位专家共同确定。将AI软件的效能与标准参考结果进行对比,并评估其对四名参与中风护理的住院医师诊断准确性的影响。计算了软件以及有无AI辅助时阅片者的受试者工作特征曲线下面积(AUROC)、敏感性和特异性。
在595例患者(平均年龄68.5±13.4岁,56%为男性)中,275例(46.2%)患有LVO。从最后一次已知健康时间到CTA的中位时间间隔为46.0小时(四分位间距11.8 - 64.4)。对于LVO检测,该软件的敏感性为0.858(95%置信区间0.811至0.897),特异性为0.969(95%置信区间0.943至0.985)。在症状发作至成像时间在24小时内的受试者(n = 195)中,该软件的AUROC为0.973(95%置信区间0.939至0.991),敏感性为0.890(95%置信区间0.817至0.936),特异性为0.965(95%置信区间0.902至0.991)。与无AI辅助阅片相比,AI辅助阅片使敏感性提高了4.0%(2.17至5.84%),AUROC提高了0.02(0.015至0.033)(所有P<0.001)。
该AI软件对LVO显示出较高的检测率。此外,该软件提高了早期职业医生检测LVO的诊断准确性,简化了急诊室的中风诊疗流程。