A Study on Stenosis Detection Based on Non-contact Thrill Wave Imaging and Gradient-Boosting Decision Tree

Takunori Shimazaki, Yoshifumi Kawakubo, Rumi Iwai, Masashi Fukuhara, Hiroki Aono, J. Mitsudo, Yuhei Hayashi, Shingo Ata, Takeshi Yokoyama, D. Anzai
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Abstract

Hemodialysis therapy generally requires a special blood vessel called an arteriovenous fistula (AVF), which is surgically anastomosed between an artery and a vein. Since an AVF often becomes stenosis, palpation is used to palpate the vessel wall vibrations, which is called thrill wave, before and after hemodialysis treatment. This method is widely used, especially in Japan, because of its simplicity. However, several problems in the palpation has been pointed out in terms of reliability because the palpation requires contact diagnosis. In order to solve the problems in the conventional contact palpation, we developed a thrill wave measurement device using non-contact imaging based on an optical technology. Then, we introduced a gradient-boosting decision tree algorithm to detect stenosis in AVFs. The experimental results showed that true positive rate (TPR) = 92.3%, true negative rate (TNR) = 76.7%, false positive rate (FPR) = 7.7% and false negative rate (FNR) = 23.3% to identify normal and stenotic AVFs.
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基于非接触刺激波成像和梯度增强决策树的血管狭窄检测研究
血液透析治疗通常需要一种称为动静脉瘘(AVF)的特殊血管,它是在动脉和静脉之间进行手术吻合的。由于AVF经常发生狭窄,因此在血液透析治疗前后,采用触诊法触诊血管壁振动,称为刺激波。这种方法被广泛使用,特别是在日本,因为它简单。然而,由于触诊需要接触诊断,触诊在可靠性方面存在一些问题。为了解决传统接触式触诊存在的问题,研制了一种基于光学技术的非接触式成像刺激波测量装置。然后,我们引入了一种梯度增强决策树算法来检测avf中的狭窄。实验结果显示,正常和狭窄型avf的真阳性率(TPR)为92.3%,真阴性率(TNR)为76.7%,假阳性率(FPR)为7.7%,假阴性率(FNR)为23.3%。
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