评估 CINA® LVO 人工智能软件在脑 CT 血管造影中检测大血管闭塞的效果

IF 1.8 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING European Journal of Radiology Open Pub Date : 2023-12-15 DOI:10.1016/j.ejro.2023.100542
Helena Mellander , Amir Hillal , Teresa Ullberg , Johan Wassélius
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引用次数: 0

摘要

以传统神经放射学评估为金标准,系统评估 CINA® LVO 软件检测 CTA 上符合机械血栓切除术条件的大血管闭塞的能力。方法使用 CINA® LVO 软件,对连续转诊进行脑 CTA 的 200 例患者和已接受血管内血栓切除术的 200 例患者进行回顾性评估,以确定是否存在大血管闭塞 (LVO)。根据闭塞部位对患者进行分组。原始放射学报告被用作基本事实,对有分歧的病例进行重新评估。结果 共纳入了四百名患者,其中 215 名患者(54%)出现了 221 个 LVO。前循环 LVO 的总体特异性较高(93%)。前循环 LVO 的总体灵敏度为 54%,其中大脑中动脉 M1 段(87%)和 T 型颈内动脉闭塞症(84%)的灵敏度最高。结论 CINA® LVO 软件的 LVO 检测灵敏度主要取决于闭塞的位置,某些可能符合机械取栓条件的 LVO 检测灵敏度较低。进一步开发该软件以提高对所有 LVO 位置的敏感性将增加其临床实用性。
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Evaluation of CINA® LVO artificial intelligence software for detection of large vessel occlusion in brain CT angiography

Objective

To systematically evaluate the ability of the CINA® LVO software to detect large vessel occlusions eligible for mechanical thrombectomy on CTA using conventional neuroradiological assessment as gold standard.

Methods

Retrospectively, two hundred consecutive patients referred for a brain CTA and two hundred patients that had been subject for endovascular thrombectomy, with an accessible preceding CTA, were assessed for large vessel occlusions (LVO) using the CINA® LVO software. The patients were sub-grouped by occlusion site. The original radiology report was used as ground truth and cases with disagreement were reassessed. Two-by-two tables were created and measures for LVO detection were calculated.

Results

A total of four-hundred patients were included; 221 LVOs were present in 215 patients (54 %). The overall specificity was high for LVOs in the anterior circulation (93 %). The overall sensitivity for LVOs in the anterior circulation was 54 % with the highest sensitivity for the M1 segment of the middle cerebral artery (87 %) and T-type internal carotid occlusions (84 %). The sensitivity was low for occlusions in the M2 segment of the middle cerebral artery (13 % and 0 % for proximal and distal M2 occlusions respectively) and in posterior circulation occlusions (0 %, not included in the intended use of the software).

Conclusions

LVO detection sensitivity for the CINA® LVO software differs largely depending on the location of the occlusion, with low sensitivity for detection of some LVOs potentially eligible for mechanical thrombectomy. Further development of the software to increase sensitivity to all LVO locations would increase the clinical usefulness.

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来源期刊
European Journal of Radiology Open
European Journal of Radiology Open Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
4.10
自引率
5.00%
发文量
55
审稿时长
51 days
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