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基于智能手机的系统,用于自动检测弥漫性间质性肺炎患者的噼啪声。

A Smartphone-Based System for Automated Bedside Detection of Crackle Sounds in Diffuse Interstitial Pneumonia Patients.

机构信息

Faculty of Sciences, Universidad Autónoma de San Luis Potosí, San Luis Potosi 78290, Mexico.

Electrical Engineering Department, Universidad Autónoma Metropolitana Iztapalapa, Mexico City 09340, Mexico.

出版信息

Sensors (Basel). 2018 Nov 7;18(11):3813. doi: 10.3390/s18113813.

Abstract

In this work, we present a mobile health system for the automated detection of crackle sounds comprised by an acoustical sensor, a smartphone device, and a mobile application (app) implemented in Android. Although pulmonary auscultation with traditional stethoscopes had been used for decades, it has limitations for detecting discontinuous adventitious respiratory sounds (crackles) that commonly occur in respiratory diseases. The proposed app allows the physician to record, store, reproduce, and analyze respiratory sounds directly on the smartphone. Furthermore, the algorithm for crackle detection was based on a time-varying autoregressive modeling. The performance of the automated detector was analyzed using: (1) synthetic fine and coarse crackle sounds randomly inserted to the basal respiratory sounds acquired from healthy subjects with different signal to noise ratios, and (2) real bedside acquired respiratory sounds from patients with interstitial diffuse pneumonia. In simulated scenarios, for fine crackles, an accuracy ranging from 84.86% to 89.16%, a sensitivity ranging from 93.45% to 97.65%, and a specificity ranging from 99.82% to 99.84% were found. The detection of coarse crackles was found to be a more challenging task in the simulated scenarios. In the case of real data, the results show the feasibility of using the developed mobile health system in clinical no controlled environment to help the expert in evaluating the pulmonary state of a subject.

摘要

在这项工作中,我们提出了一个由声学传感器、智能手机设备和在 Android 上实现的移动应用程序 (app) 组成的用于自动检测爆裂音的移动医疗系统。虽然传统听诊器的肺部听诊已经使用了几十年,但它在检测在呼吸疾病中常见的不连续的偶然呼吸音 (爆裂音) 方面存在局限性。所提出的应用程序允许医生直接在智能手机上记录、存储、重现和分析呼吸音。此外,爆裂音检测算法基于时变自回归建模。使用以下方法分析自动检测器的性能:(1) 将精细和粗糙的爆裂音随机插入到来自不同信噪比的健康受试者的基础呼吸音中,(2) 从间质性弥漫性肺炎患者的实际床边获得的呼吸音。在模拟场景中,对于精细的爆裂音,发现准确度在 84.86%到 89.16%之间,灵敏度在 93.45%到 97.65%之间,特异性在 99.82%到 99.84%之间。在模拟场景中,检测粗糙的爆裂音被发现是一项更具挑战性的任务。在实际数据的情况下,结果表明在临床非控制环境中使用开发的移动医疗系统来帮助专家评估受试者的肺部状况是可行的。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5f4c/6263477/6d0111b5c783/sensors-18-03813-g001.jpg

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