使用移动多模态传感器评估呼吸系统疾病

Md. Mahbubur Rahman, M. Y. Ahmed, Tousif Ahmed, Bashima Islam, Viswam Nathan, K. Vatanparvar, Ebrahim Nemati, Daniel McCaffrey, Jilong Kuang, J. Gao
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引用次数: 11

摘要

使用普通智能手机和智能手表进行移动呼吸评估,尚不能满足患者在家监测的需求。在本文中,我们展示了在消费者移动设备中使用多模态传感器进行非侵入性、低费力呼吸评估的可行性。我们对228名慢性呼吸患者和健康受试者进行了研究,结果表明,我们的模型可以以平均绝对误差(MAE) 0.72$\pm$0.62呼吸/分钟估计呼吸频率,当用户将设备放在胸部或腹部一分钟正常呼吸时,我们的模型可以以90%的召回率和76%的准确率区分呼吸患者和健康受试者。与传统的肺活量测定法相比,将仪器放在胸部或腹部所需的力气要小得多,传统的肺活量测定法需要专门的仪器和有力的呼吸。本文展示了开发一种低成本的呼吸评估的可行性,使其可以通过用户自己的移动设备随时随地使用。
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BreathEasy: Assessing Respiratory Diseases Using Mobile Multimodal Sensors
Mobil respiratory assessments using commodity smartphones and smartwatches are unmet needs for patient monitoring at home. In this paper, we show the feasibility of using multimodal sensors embedded in consumer mobile devices for non-invasive, low-effort respiratory assessment. We have conducted studies with 228 chronic respiratory patients and healthy subjects, and show that our model can estimate respiratory rate with mean absolute error (MAE) 0.72$\pm$0.62 breath per minute and differentiate respiratory patients from healthy subjects with 90% recall and 76% precision when the user breathes normally by holding the device on the chest or the abdomen for a minute. Holding the device on the chest or abdomen needs significantly lower effort compared to traditional spirometry which requires a specialized device and forceful vigorous breathing. This paper shows the feasibility of developing a low-effort respiratory assessment towards making it available anywhere, anytime through users' own mobile devices.
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