Emma Frost, Mary Penckofer, Linda Zhang, Kenyon W. Sprankle, N. Vigilante, Omnea Elgendy, Jiyoun Ackerman, Abyson Kalladanthyil, Manisha Koneru, Zixin Yi, Jane Khalife, Taryn Hester, Hermann Schumacher, James Bonner, Christopher J. Love, James E. Siegler
{"title":"大血管闭塞症的穿刺前和穿刺后自动图像解读和通信平台:单中心研究","authors":"Emma Frost, Mary Penckofer, Linda Zhang, Kenyon W. Sprankle, N. Vigilante, Omnea Elgendy, Jiyoun Ackerman, Abyson Kalladanthyil, Manisha Koneru, Zixin Yi, Jane Khalife, Taryn Hester, Hermann Schumacher, James Bonner, Christopher J. Love, James E. Siegler","doi":"10.1161/svin.123.001306","DOIUrl":null,"url":null,"abstract":"\n \n Artificial intelligence platforms, like Viz.ai with large vessel occlusion detection, have been used for disease detection and interprovider communication. Whether this software expedites patient transfer and evaluation for treatment needs further exploration.\n \n \n \n A single‐center retrospective registry was queried for patients with acute large vessel occlusion of the intracranial internal carotid, middle cerebral M1 or M2 segments, or basilar artery treated in a comprehensive stroke network (8 spokes, 1 hub) for 6 months pre‐ and post‐implementation of the Viz large vessel occlusion platform (excluding a 1‐month “washout” period). Robust regression was used to summarize time from initial hospital contact to arterial puncture (primary outcome) between periods, with prespecified subgroup analyses, which were assessed using interaction terms.\n \n \n \n \n Of the 132 patients (n = 58 preintervention), there were nonsignificantly fewer patients undergoing endovascular therapy in the postintervention period (86.2% preintervention versus 73.0% postintervention;\n P\n = 0.07). Among patients who underwent endovascular therapy (n = 50 preintervention, n = 54 postintervention), there was a nonsignificant reduction in time from first contact to arterial puncture (median 155 minute preintervention versus 116 minute postintervention;\n P\n = 0.10); however, this became significant in adjusted robust regression accounting for stroke severity, age, Alberta Stroke Program Early Computed Tomography Scale score, daytime versus nighttime and weekend versus weekday arrival, and use of perfusion imaging (β −20.9 [95% CI, −40.5 to −1.4)]. There was also a significant interaction observed for the association between spoke versus hub arrival and the Viz large vessel occlusion period, with shorter intervals observed for transferred patients (n = 32 preintervention with a median of 169 versus 142 minutes for n = 33 postintervention;\n P\n interaction\n <0.01).\n \n \n \n \n Implementation of the artificial intelligence platform was not associated with shorter intervals between initial hospital contact and neurointervention among all‐comers. A meaningful difference in time to treatment was observed among transferred patients. Larger data sets are needed to validate these observations.\n","PeriodicalId":21977,"journal":{"name":"Stroke: Vascular and Interventional Neurology","volume":"248 6","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-03-09","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Door to Puncture in Large Vessel Occlusions Pre‐ and Postimplementation of an Automated Image Interpretation and Communication Platform: A Single Center Study\",\"authors\":\"Emma Frost, Mary Penckofer, Linda Zhang, Kenyon W. Sprankle, N. Vigilante, Omnea Elgendy, Jiyoun Ackerman, Abyson Kalladanthyil, Manisha Koneru, Zixin Yi, Jane Khalife, Taryn Hester, Hermann Schumacher, James Bonner, Christopher J. Love, James E. Siegler\",\"doi\":\"10.1161/svin.123.001306\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"\\n \\n Artificial intelligence platforms, like Viz.ai with large vessel occlusion detection, have been used for disease detection and interprovider communication. Whether this software expedites patient transfer and evaluation for treatment needs further exploration.\\n \\n \\n \\n A single‐center retrospective registry was queried for patients with acute large vessel occlusion of the intracranial internal carotid, middle cerebral M1 or M2 segments, or basilar artery treated in a comprehensive stroke network (8 spokes, 1 hub) for 6 months pre‐ and post‐implementation of the Viz large vessel occlusion platform (excluding a 1‐month “washout” period). 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Among patients who underwent endovascular therapy (n = 50 preintervention, n = 54 postintervention), there was a nonsignificant reduction in time from first contact to arterial puncture (median 155 minute preintervention versus 116 minute postintervention;\\n P\\n = 0.10); however, this became significant in adjusted robust regression accounting for stroke severity, age, Alberta Stroke Program Early Computed Tomography Scale score, daytime versus nighttime and weekend versus weekday arrival, and use of perfusion imaging (β −20.9 [95% CI, −40.5 to −1.4)]. 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引用次数: 0
摘要
人工智能平台,如具有大血管闭塞检测功能的 Viz.ai,已被用于疾病检测和医护人员之间的交流。这种软件是否能加快患者的转院和治疗评估还需要进一步探讨。 在一个综合性卒中网络(8 个辐条,1 个枢纽)中,对实施 Viz 大血管闭塞平台前后 6 个月(不包括 1 个月的 "清洗期")接受治疗的颅内颈内动脉、大脑中动脉 M1 或 M2 段或基底动脉急性大血管闭塞患者进行了单中心回顾性登记查询。采用稳健回归法总结了不同时期从初次接触医院到动脉穿刺(主要结果)的时间,并使用交互项评估了预设的亚组分析。 在 132 名患者(干预前为 58 人)中,干预后接受血管内治疗的患者人数明显减少(干预前为 86.2%,干预后为 73.0%;P = 0.07)。在接受血管内治疗的患者中(干预前 n = 50,干预后 n = 54),从首次接触到动脉穿刺的时间缩短了(干预前中位时间为 155 分钟,干预后为 116 分钟;P = 0.10);然而,考虑到中风严重程度、年龄、阿尔伯塔省中风计划早期计算机断层扫描量表评分、白天与夜间、周末与平日到达,以及使用灌注成像(β -20.9 [95% CI, -40.5 to -1.4)],调整后的稳健回归结果显示,这一时间显著缩短。在轮辐式到达与枢纽式到达和 Viz 大血管闭塞时间之间也观察到了明显的交互作用,转运患者的时间间隔更短(干预前 n = 32,中位数为 169 分钟,干预后 n = 33,中位数为 142 分钟;P 交互作用 <0.01)。 在所有患者中,实施人工智能平台与缩短首次医院接触和神经干预之间的时间间隔无关。在转院患者中,治疗时间出现了有意义的差异。需要更大的数据集来验证这些观察结果。
Door to Puncture in Large Vessel Occlusions Pre‐ and Postimplementation of an Automated Image Interpretation and Communication Platform: A Single Center Study
Artificial intelligence platforms, like Viz.ai with large vessel occlusion detection, have been used for disease detection and interprovider communication. Whether this software expedites patient transfer and evaluation for treatment needs further exploration.
A single‐center retrospective registry was queried for patients with acute large vessel occlusion of the intracranial internal carotid, middle cerebral M1 or M2 segments, or basilar artery treated in a comprehensive stroke network (8 spokes, 1 hub) for 6 months pre‐ and post‐implementation of the Viz large vessel occlusion platform (excluding a 1‐month “washout” period). Robust regression was used to summarize time from initial hospital contact to arterial puncture (primary outcome) between periods, with prespecified subgroup analyses, which were assessed using interaction terms.
Of the 132 patients (n = 58 preintervention), there were nonsignificantly fewer patients undergoing endovascular therapy in the postintervention period (86.2% preintervention versus 73.0% postintervention;
P
= 0.07). Among patients who underwent endovascular therapy (n = 50 preintervention, n = 54 postintervention), there was a nonsignificant reduction in time from first contact to arterial puncture (median 155 minute preintervention versus 116 minute postintervention;
P
= 0.10); however, this became significant in adjusted robust regression accounting for stroke severity, age, Alberta Stroke Program Early Computed Tomography Scale score, daytime versus nighttime and weekend versus weekday arrival, and use of perfusion imaging (β −20.9 [95% CI, −40.5 to −1.4)]. There was also a significant interaction observed for the association between spoke versus hub arrival and the Viz large vessel occlusion period, with shorter intervals observed for transferred patients (n = 32 preintervention with a median of 169 versus 142 minutes for n = 33 postintervention;
P
interaction
<0.01).
Implementation of the artificial intelligence platform was not associated with shorter intervals between initial hospital contact and neurointervention among all‐comers. A meaningful difference in time to treatment was observed among transferred patients. Larger data sets are needed to validate these observations.