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Diagnosis of pneumonia from sounds collected using low cost cell phones

机译:从使用低成本手机收集的声音中诊断出肺炎

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Respiratory diseases, such as pneumonia, cold, flu, and bronchitis, are still the leading causes of child mortality in the world. One solution for alleviating this problem is developing affordable respiratory-health assessment methods using computerized respiratory-sound analysis. This approach has become an active research area due to the recent developments of electronic recording devices, such as electronic stethoscopes. However, all existing methods require specialized equipment, which can be operated only by trained medical personals. We develop a low-cost cell phone-based rapid diagnosis method for respiratory health problems. A total of 367 breath sounds are collected from children's hospitals in order to develop accurate diagnosis models and evaluation. An extensive analysis is performed on the breath sounds. Statistically significance features are selected for each age group using ANOVA from 1197 acoustic features. The model is evaluated on a binary classification task: pneumonia vs. non-pneumonia. The results showed that the proposed method was able to effectively classify pneumonia even in the presence of environmental noises. The method achieved 91.98% accuracy with 92.06% sensitivity and 90.68% specificity. The results indicate that breath sounds recorded using low-cost mobile devices can be used to detect pneumonia effectively.
机译:呼吸系统疾病,例如肺炎,感冒,流感和支气管炎,仍然是世界上导致儿童死亡的主要原因。缓解此问题的一种解决方案是使用计算机化的呼吸声分析来开发负担得起的呼吸健康评估方法。由于诸如电子听诊器的电子记录设备的最新发展,该方法已成为活跃的研究领域。但是,所有现有方法都需要专用设备,这些设备只能由经过培训的医疗人员进行操作。我们针对呼吸系统健康问题开发了一种低成本的基于手机的快速诊断方法。从儿童医院收集了总共367种呼吸音,以建立准确的诊断模型和评估。对呼吸音进行了广泛的分析。使用1197个声学特征的ANOVA为每个年龄组选择具有统计意义的特征。在二元分类任务上评估该模型:肺炎与非肺炎。结果表明,所提出的方法即使在存在环境噪声的情况下也能够有效地分类肺炎。该方法的准确度为91.98%,灵敏度为92.06%,特异性为90.68%。结果表明,使用低成本移动设备记录的呼吸声可有效检测肺炎。

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