利用人工智能的能力:神经科新手操作员在急性脑损伤患者中执行心脏 POCUS。

IF 3.1 3区 医学 Q2 CLINICAL NEUROLOGY Neurocritical Care Pub Date : 2024-10-01 Epub Date: 2024-03-20 DOI:10.1007/s12028-024-01953-z
Jennifer Mears, Safa Kaleem, Rohan Panchamia, Hooman Kamel, Chris Tam, Richard Thalappillil, Santosh Murthy, Alexander E Merkler, Cenai Zhang, Judy H Ch'ang
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引用次数: 0

摘要

背景:心脏护理点超声检查(cPOCUS)可帮助诊断和治疗心脏疾病。这类疾病可能是急性脑损伤的并发症,但大多数神经重症监护室(NICU)的医护人员都没有接受过 cPOCUS 方面的正规培训。Caption 人工智能(AI)使用一种新颖的深度学习(DL)算法来指导新手 cPOCUS 用户获得诊断质量的心脏图像。本研究的主要目的是确定具有最少 cPOCUS 经验的 NICU 医疗人员使用 DL 引导的 cPOCUS 获取高质量图像的频率,以及 DL 引导的 cPOCUS 与 NICU 管理变化和正式超声心动图检查时间之间的关联:从 2020 年 9 月到 2021 年 11 月,接受过神经病学培训的医生助理、住院医师和研究员使用 DL 软件在一家学术性三级重症监护病房进行临床指示的 cPOCUS 扫描。经过认证的超声心动图医师独立评估每次扫描的图像质量以及左心室功能、右心室功能、下腔静脉大小和心包积液的整体可解释性。使用带有精确置信区间的描述性统计来计算所获得的图像中质量合格和改变管理的比例。使用 2018 年的类似人群对首次获得适当心脏图像(cPOCUS 或正式超声心动图)的时间进行了比较:153名患者共进行了184次扫描,共获得943个图像视图。三位经过认证的超声心动图专家认为,63.4%的扫描可解释左心室大小和功能的定性评估,52.6%的扫描可解释右心室大小和功能,34.8%的扫描可解释下腔静脉大小和变异性,47.2%的扫描可解释是否存在心包积液。37%的筛查扫描改变了治疗方案,最常见的是调整输液目标(81.2%)。首次获得适当心脏图像的时间从 3.1 天大幅缩短至 1.7 天(p 结论:在 DL 的指导下,神经内科医生可以在更短的时间内获得足够的图像:在 DL 的指导下,接受过最少或没有接受过 cPOCUS 培训的神经内科医疗人员通常能够获得诊断质量的心脏图像,从而为改变管理提供依据,并显著缩短心脏成像的时间。
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Leveraging the Capabilities of AI: Novice Neurology-Trained Operators Performing Cardiac POCUS in Patients with Acute Brain Injury.

Background: Cardiac point-of-care ultrasound (cPOCUS) can aid in the diagnosis and treatment of cardiac disorders. Such disorders can arise as complications of acute brain injury, but most neurologic intensive care unit (NICU) providers do not receive formal training in cPOCUS. Caption artificial intelligence (AI) uses a novel deep learning (DL) algorithm to guide novice cPOCUS users in obtaining diagnostic-quality cardiac images. The primary objective of this study was to determine how often NICU providers with minimal cPOCUS experience capture quality images using DL-guided cPOCUS as well as the association between DL-guided cPOCUS and change in management and time to formal echocardiograms in the NICU.

Methods: From September 2020 to November 2021, neurology-trained physician assistants, residents, and fellows used DL software to perform clinically indicated cPOCUS scans in an academic tertiary NICU. Certified echocardiographers evaluated each scan independently to assess the quality of images and global interpretability of left ventricular function, right ventricular function, inferior vena cava size, and presence of pericardial effusion. Descriptive statistics with exact confidence intervals were used to calculate proportions of obtained images that were of adequate quality and that changed management. Time to first adequate cardiac images (either cPOCUS or formal echocardiography) was compared using a similar population from 2018.

Results: In 153 patients, 184 scans were performed for a total of 943 image views. Three certified echocardiographers deemed 63.4% of scans as interpretable for a qualitative assessment of left ventricular size and function, 52.6% of scans as interpretable for right ventricular size and function, 34.8% of scans as interpretable for inferior vena cava size and variability, and 47.2% of scans as interpretable for the presence of pericardial effusion. Thirty-seven percent of screening scans changed management, most commonly adjusting fluid goals (81.2%). Time to first adequate cardiac images decreased significantly from 3.1 to 1.7 days (p < 0.001).

Conclusions: With DL guidance, neurology providers with minimal to no cPOCUS training were often able to obtain diagnostic-quality cardiac images, which informed management changes and significantly decreased time to cardiac imaging.

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来源期刊
Neurocritical Care
Neurocritical Care 医学-临床神经学
CiteScore
7.40
自引率
8.60%
发文量
221
审稿时长
4-8 weeks
期刊介绍: Neurocritical Care is a peer reviewed scientific publication whose major goal is to disseminate new knowledge on all aspects of acute neurological care. It is directed towards neurosurgeons, neuro-intensivists, neurologists, anesthesiologists, emergency physicians, and critical care nurses treating patients with urgent neurologic disorders. These are conditions that may potentially evolve rapidly and could need immediate medical or surgical intervention. Neurocritical Care provides a comprehensive overview of current developments in intensive care neurology, neurosurgery and neuroanesthesia and includes information about new therapeutic avenues and technological innovations. Neurocritical Care is the official journal of the Neurocritical Care Society.
期刊最新文献
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