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一种基于压力与流量多传感器融合的鼻阻力测量系统。

A Nasal Resistance Measurement System Based on Multi-Sensor Fusion of Pressure and Flow.

作者信息

Lian Xiaoqin, Ma Guochun, Gao Chao, Liu Chunquan, Wu Yelan, Guan Wenyang

机构信息

School of Computer and Artificial Intelligence, Beijing Technology and Business University, Beijing 100048, China.

Key Laboratory of Industrial Internet and Big Data, China National Light Industry, Beijing Technology and Business University, Beijing 100048, China.

出版信息

Micromachines (Basel). 2025 Jul 29;16(8):886. doi: 10.3390/mi16080886.

Abstract

Nasal obstruction is a common symptom of nasal conditions, with nasal resistance being a crucial physiological indicator for assessing severity. However, traditional rhinomanometry faces challenges with interference, limited automation, and unstable measurement results. To address these issues, this research designed a nasal resistance measurement system based on multi-sensor fusion of pressure and flow. The system comprises lower computer hardware for acquiring raw pressure-flow signals in the nasal cavity and upper computer software for segmenting and filtering effective respiratory cycles and calculating various nasal resistance indicators. Meanwhile, the system's anti-interference capability was assessed using recall, precision, and accuracy rates for respiratory cycle recognition, while stability was evaluated by analyzing the standard deviation of nasal resistance indicators. The experimental results demonstrate that the system achieves recall and precision rates of 99% and 86%, respectively, for the recognition of effective respiratory cycles. Additionally, under the three common interference scenarios of saturated or weak breaths, breaths when not worn properly, and multiple breaths, the system can achieve a maximum accuracy of 96.30% in identifying ineffective respiratory cycles. Furthermore, compared to the measurement without filtering for effective respiratory cycles, the system reduces the median within-group standard deviation across four types of nasal resistance measurements by 5 to 18 times. In conclusion, the nasal resistance measurement system developed in this research demonstrates strong anti-interference capabilities, significantly enhances the automation of the measurement process and the stability of the measurement results, and offers robust technical support for the auxiliary diagnosis of related nasal conditions.

摘要

鼻塞是鼻腔疾病的常见症状,鼻阻力是评估病情严重程度的关键生理指标。然而,传统鼻阻力测量法面临干扰、自动化程度有限以及测量结果不稳定等挑战。为解决这些问题,本研究设计了一种基于压力和流量多传感器融合的鼻阻力测量系统。该系统包括用于采集鼻腔内原始压力 - 流量信号的下位机硬件,以及用于分割和过滤有效呼吸周期并计算各种鼻阻力指标的上位机软件。同时,利用呼吸周期识别的召回率、精确率和准确率评估系统的抗干扰能力,通过分析鼻阻力指标的标准差评估稳定性。实验结果表明,该系统对有效呼吸周期的识别召回率和精确率分别达到99%和86%。此外,在饱和或微弱呼吸、佩戴不当呼吸以及多次呼吸这三种常见干扰情况下,系统识别无效呼吸周期的最高准确率可达96.30%。而且,与未对有效呼吸周期进行滤波的测量相比,该系统在四种鼻阻力测量类型中,组内标准差中位数降低了5至18倍。总之,本研究开发的鼻阻力测量系统具有强大的抗干扰能力,显著提高了测量过程的自动化程度和测量结果的稳定性,为相关鼻腔疾病的辅助诊断提供了有力的技术支持。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0ad2/12388775/0e36dfc224de/micromachines-16-00886-g0A1.jpg

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