An Automatic Vein Detection System Using Deep Learning for Intravenous (IV) Access Procedure

C. Jing, Goh Chuan Meng, C. M. Tyng, S. Aluwee, Wong Pei Voon
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Abstract

Intravenous (IV) access is a common and yet important daily clinical procedure that delivers fluids or medication into a patient’s vein. However, IV insertion is very challenging where clinicians are suffering in locating the subcutaneous vein due to patients’ physiological factors such as hairy forearm and thick dermis fat, and also medical staff’s level of fatigue. As a result, the patients are suffering from multiple IV insertions and the problem has not yet been resolved till-date. Thus, researchers have proposed an autonomous machine for IV access, but such equipment is lack of an artificial intelligence (AI) algorithm in detecting the vein accurately. Therefore, this project proposes an automatic vein detection algorithm using deep learning for Intravenous (IV) access purposes. U-Net, a fully connected network (FCN) architecture is employed in this project due to its capability in detecting the near-infrared (NIR) subcutaneous vein. In our experiment, data augmentation is applied to increase the dataset size and reduce the bias from overfitting. The original U-Net architecture is optimized by replacing up-sampling with transpose convolution as well as the additional implementation of batch normalization. Lastly, the proposed algorithm has achieved an accuracy and specificity of 0.9909 and 0.9970, respectively. This result indicates that the proposed algorithm can be applied into the venipuncture machine to locate the Subcutaneous vein for intravenous (IV) procedures.
基于深度学习的静脉静脉自动检测系统
静脉注射(IV)是一种常见但重要的日常临床程序,将液体或药物输送到患者的静脉。然而,由于患者前臂多毛、真皮脂肪较厚等生理因素,以及医护人员的疲劳程度,使得临床医生在定位皮下静脉时遇到了很大的困难。结果,患者遭受了多次静脉注射的痛苦,这个问题至今仍未得到解决。因此,研究人员提出了一种用于静脉输液的自主机器,但这种设备缺乏准确检测静脉的人工智能(AI)算法。因此,本项目提出了一种基于深度学习的静脉自动检测算法。U-Net是一种全连接网络(FCN)架构,由于其能够检测近红外(NIR)皮下静脉,因此本项目采用U-Net架构。在我们的实验中,数据增强应用于增加数据集大小并减少过度拟合的偏差。通过用转置卷积代替上采样以及额外实现批处理归一化,对原有的U-Net结构进行了优化。最后,本文算法的准确率和特异性分别达到了0.9909和0.9970。这一结果表明,该算法可以应用于静脉穿刺机定位皮下静脉进行静脉注射(IV)手术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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