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Intelligent epidural needle placement using fiber-probe optical coherence tomography in a piglet model

机译:仔猪模型中使用纤维探针光学相干断层扫描技术进行智能硬膜外针头放置

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摘要

Incorrect needle placement during an epidural block causes medical complications such as dural puncture or spinal cord injury. We propose a system combining an optical coherence tomography imaging probe with an automatic identification algorithm to objectively identify the epidural needle-tip position and thus reduce complications during epidural needle insertion. Eight quantitative features were extracted from each two-dimensional optical coherence tomography image during insertion of the needle tip from the skin surface to the epidural space. 847 in vivo optical coherence tomography images were obtained from three anesthetized piglets. The area under the receiver operating characteristic curve was used to quantify the discriminative ability of each feature. We found a combination of six image features—mean value of intensity, mean value with depth, entropy, mean absolute deviation, root mean square, and standard deviation—showed the highest differentiating performance with the shortest processing time. Finally, differentiation of the needle tip inside or outside the epidural space was automatically evaluated using five classifiers: k-nearest neighbor, linear discriminant analysis, quadratic discriminant analysis, linear support vector machines, and quadratic support vector machine. We adopted an 8-fold cross-validation strategy with five classifications. Quadratic support vector machine classification showed the highest sensitivity (97.5%), specificity (95%), and accuracy (96.2%) among the five classifiers. This study provides an intelligent method for objective identification of the epidural space that can increase the success rate of epidural needle insertion.
机译:硬膜外阻滞期间针头放置不正确会引起医疗并发症,例如硬膜穿刺或脊髓损伤。我们提出了一种将光学相干断层扫描成像探头与自动识别算法相结合的系统,以客观地识别硬膜外针尖位置,从而减少硬膜外针插入过程中的并发症。在将针尖从皮肤表面插入硬膜外腔期间,从每个二维光学相干断层扫描图像中提取八个定量特征。从三只麻醉小猪获得了847张体内光学相干断层扫描图像。接收器工作特性曲线下方的区域用于量化每个特征的判别能力。我们发现六个图像特征的组合-强度平均值,深度平均值,熵,平均绝对偏差,均方根和标准偏差-表现出最高的区分性能,且处理时间最短。最后,使用五个分类器自动评估硬膜外腔内部或外部的针尖分化:k近邻,线性判别分析,二次判别分析,线性支持向量机和二次支持向量机。我们采用了具有五种分类的8折交叉验证策略。二次支持向量机分类在五个分类器中显示出最高的灵敏度(97.5%),特异性(95%)和准确性(96.2%)。这项研究为客观识别硬膜外腔提供了一种智能方法,可以提高硬膜外针插入的成功率。

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