Department of Nephrology, Gamagori City Hospital, Gamagori 443-8501, Japan.
Department of Medical Engineering, Gamagori City Hospital, Gamagori 443-8501, Japan.
Sensors (Basel). 2020 Aug 27;20(17):4852. doi: 10.3390/s20174852.
Physical findings of auscultation cannot be quantified at the arteriovenous fistula examination site during daily dialysis treatment. Consequently, minute changes over time cannot be recorded based only on subjective observations. In this study, we sought to supplement the daily arteriovenous fistula consultation for hemodialysis patients by recording the sounds made by the arteriovenous fistula and evaluating the sounds using deep learning methods to provide an objective index. We sampled arteriovenous fistula auscultation sounds (192 kHz, 24 bits) recorded over 1 min from 20 patients. We also extracted arteriovenous fistula sounds for each heartbeat without environmental sound by using a convolutional neural network (CNN) model, which was made by comparing these sound patterns with 5000 environmental sounds. The extracted single-heartbeat arteriovenous fistula sounds were sent to a spectrogram and scored using a CNN learning model with bidirectional long short-term memory, in which the degree of arteriovenous fistula stenosis was assigned to one of five sound types (i.e., normal, hard, high, intermittent, and whistling). After 100 training epochs, the method exhibited an accuracy rate of 70-93%. According to the receiver operating characteristic (ROC) curve, the area under the ROC curves (AUC) was 0.75-0.92. The analysis of arteriovenous fistula sound using deep learning has the potential to be used as an objective index in daily medical care.
在日常透析治疗中,听诊无法对动静脉瘘检查部位的物理发现进行量化。因此,仅基于主观观察,无法记录随时间的微小变化。在这项研究中,我们试图通过记录动静脉瘘发出的声音并使用深度学习方法评估声音,为血液透析患者的日常动静脉瘘咨询提供补充,从而提供一个客观的指标。我们从 20 名患者中采集了 1 分钟的动静脉瘘听诊声音(192 kHz,24 位)。我们还通过使用卷积神经网络(CNN)模型从这些声音模式与 5000 种环境声音进行比较,提取了没有环境声音的每个心跳的动静脉瘘声音。提取的单心跳动静脉瘘声音被发送到声谱图,并使用具有双向长短期记忆的 CNN 学习模型进行评分,其中动静脉瘘狭窄程度被分配到五种声音类型之一(即正常、硬、高、间歇性和啸叫声)。经过 100 个训练周期后,该方法的准确率为 70-93%。根据接收器操作特征(ROC)曲线,ROC 曲线下的面积(AUC)为 0.75-0.92。使用深度学习分析动静脉瘘声音有可能成为日常医疗护理中的一个客观指标。