利用卷积神经网络对上下肢进行静脉分割和可视化。

Amit Laddi, Shivalika Goyal, Himani, A. Savlania
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引用次数: 0

摘要

目的这项研究的重点是开发一种可靠的实时静脉定位、识别和可视化框架,该框架基于深度学习(DL)自参数化卷积神经网络(CNN)算法,用于在无限制条件下使用近红外(NIR)成像装置采集下肢和上肢数据集的静脉地图分割,特别是在静脉穿刺、血管手术或慢性静脉疾病(CVD)治疗期间为血管外科医生提供帮助。方法设计了一套便携式图像采集装置,用于采集 72 名受试者的静脉数据(上肢和下肢)。实验结果表明,与传统的基于特征的 CNN 学习模型相比,自参数 U-Net 在无约束数据集的分割方面表现更好,Dice 得分为 0.结论用于静脉分割和可视化的自参数化 U-Net 有可能超越传统 CNN 架构,提供血管辅助,改善患者护理和治疗效果,从而降低传统静脉穿刺或 CVD 治疗的相关风险。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vein segmentation and visualization of upper and lower extremities using convolution neural network.
OBJECTIVES The study focused on developing a reliable real-time venous localization, identification, and visualization framework based upon deep learning (DL) self-parametrized Convolution Neural Network (CNN) algorithm for segmentation of the venous map for both lower and upper limb dataset acquired under unconstrained conditions using near-infrared (NIR) imaging setup, specifically to assist vascular surgeons during venipuncture, vascular surgeries, or Chronic Venous Disease (CVD) treatments. METHODS A portable image acquisition setup has been designed to collect venous data (upper and lower extremities) from 72 subjects. A manually annotated image dataset was used to train and compare the performance of existing well-known CNN-based architectures such as ResNet and VGGNet with self-parameterized U-Net, improving automated vein segmentation and visualization. RESULTS Experimental results indicated that self-parameterized U-Net performs better at segmenting the unconstrained dataset in comparison with conventional CNN feature-based learning models, with a Dice score of 0.58 and displaying 96.7 % accuracy for real-time vein visualization, making it appropriate to locate veins in real-time under unconstrained conditions. CONCLUSIONS Self-parameterized U-Net for vein segmentation and visualization has the potential to reduce risks associated with traditional venipuncture or CVD treatments by outperforming conventional CNN architectures, providing vascular assistance, and improving patient care and treatment outcomes.
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