Faculty of Science and Engineering, Doshisha University, Kyoto, Japan.
Department of Neurology, Nara Medical University, Nara, Japan.
Sci Rep. 2023 Feb 27;13(1):3339. doi: 10.1038/s41598-023-30229-3.
Rapid reperfusion therapy can reduce disability and death in patients with large vessel occlusion strokes (LVOS). It is crucial for emergency medical services to identify LVOS and transport patients directly to a comprehensive stroke center. Our ultimate goal is to develop a non-invasive, accurate, portable, inexpensive, and legally employable in vivo screening system for cerebral artery occlusion. As a first step towards this goal, we propose a method for detecting carotid artery occlusion using pulse wave measurements at the left and right carotid arteries, feature extraction from the pulse waves, and occlusion inference using these features. To meet all of these requirements, we use a piezoelectric sensor. We hypothesize that the difference in the left and right pulse waves caused by reflection is informative, as LVOS is typically caused by unilateral artery occlusion. Therefore, we extracted three features that only represented the physical effects of occlusion based on the difference. For inference, we considered that the logistic regression, a machine learning technique with no complex feature conversion, is a reasonable method for clarifying the contribution of each feature. We tested our hypothesis and conducted an experiment to evaluate the effectiveness and performance of the proposed method. The method achieved a diagnostic accuracy of 0.65, which is higher than the chance level of 0.43. The results indicate that the proposed method has potential for identifying carotid artery occlusions.
血管内再通治疗可降低大血管闭塞性脑卒中(LVOS)患者的残疾和死亡率。对于紧急医疗服务而言,识别 LVOS 并直接将患者转运至综合性卒中中心至关重要。我们的最终目标是开发一种非侵入性、准确、便携、廉价且在体内可合法使用的用于检测脑动脉闭塞的筛选系统。为了实现这一目标,我们提出了一种使用左右颈动脉脉搏波测量、从脉搏波中提取特征以及使用这些特征进行闭塞推断来检测颈动脉闭塞的方法。为了满足所有这些要求,我们使用了压电传感器。我们假设,由于 LVOS 通常是由单侧动脉闭塞引起的,因此由反射引起的左右脉搏波之间的差异具有信息性。因此,我们根据差异提取了仅代表闭塞的物理效应的三个特征。对于推断,我们认为逻辑回归是一种合理的方法,它不需要复杂的特征转换,可以阐明每个特征的贡献。我们检验了我们的假设,并进行了实验以评估所提出方法的有效性和性能。该方法的诊断准确率为 0.65,高于 0.43 的机会水平。结果表明,该方法具有识别颈动脉闭塞的潜力。