Department of Gerontological Nursing/Wound Care Management, The University of Tokyo, Tokyo, Japan.
Global Nursing Research Center, Graduate School of Medicine, The University of Tokyo, Tokyo, Japan.
BMJ Open. 2022 May 24;12(5):e051466. doi: 10.1136/bmjopen-2021-051466.
Complications due to peripheral intravenous catheters (PIVC) can be assessed using ultrasound imaging; however, it is not routinely conducted due to the need for training in image reading techniques. This study aimed to develop and validate a system that automatically measures blood vessel diameters on ultrasound images using artificial intelligence (AI) and provide recommendations for selecting an implantation site.
Pilot study.
The University of Tokyo Hospital, Japan.
First, based on previous studies, the vessel diameter was calculated as the mean value of the maximum long diameter plus the maximum short diameter orthogonal to it. Second, the size of the PIVC to be recommended was evaluated based on previous studies. For the development and validation of an automatic detection tool, we used a fully convoluted network for automatic estimation of vein location and diameter. The agreement between manually generated correct data and automatically estimated data was assessed using Pearson's product correlation coefficient, systematic error was identified using the Bland-Altman plot, and agreement between catheter sizes recommended by the research nurse and those recommended by the system was evaluated.
Through supervised machine learning, automated determination was performed using 998 ultrasound images, of which 739 and 259 were used as the training and test data set, respectively. There were 24 false-negatives indicating no arteries detected and 178 true-positives indicating correct detection. Correlation of the results between the system and the nurse was calculated from the 178 images detected (r=0.843); no systematic error was identified. The agreement between the sizes of the PIVC recommended by the research nurse and the system was 70.2%; 7% were underestimated and 21.9% were overestimated.
Our automated AI-based image processing system may aid nurses in assessing peripheral veins using ultrasound images for catheterisation; however, further studies are still warranted.t.
外周静脉置管(PIVC)相关并发症可通过超声成像进行评估;然而,由于需要对图像阅读技术进行培训,因此并未常规开展。本研究旨在开发和验证一种使用人工智能(AI)自动测量超声图像中血管直径的系统,并提供选择植入部位的建议。
试点研究。
日本东京大学医院。
首先,根据以往的研究,血管直径计算为最大长径加与其垂直的最大短径的平均值。其次,根据以往的研究评估推荐的 PIVC 尺寸。为了开发和验证自动检测工具,我们使用完全卷积网络自动估计静脉位置和直径。通过 Pearson 乘积相关系数评估手动生成的正确数据和自动估计数据之间的一致性,通过 Bland-Altman 图识别系统误差,并评估研究护士推荐的导管尺寸与系统推荐的导管尺寸之间的一致性。
通过监督机器学习,使用 998 张超声图像进行了自动确定,其中 739 张和 259 张分别用于训练和测试数据集。有 24 个假阴性表示未检测到动脉,178 个真阳性表示正确检测。从检测到的 178 张图像中计算出系统和护士之间的结果相关性(r=0.843);未发现系统误差。研究护士和系统推荐的 PIVC 尺寸之间的一致性为 70.2%;低估了 7%,高估了 21.9%。
我们的基于人工智能的自动图像处理系统可能有助于护士使用超声图像评估外周静脉以进行置管;然而,仍需要进一步的研究。