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通过手机获取诊断质量心音的音频处理管道。

An audio processing pipeline for acquiring diagnostic quality heart sounds via mobile phone.

机构信息

School of Computer Science, Technological University Dublin, Dublin, Ireland.

School of Computer Science, University College Dublin, Dublin, Ireland.

出版信息

Comput Biol Med. 2022 Jun;145:105415. doi: 10.1016/j.compbiomed.2022.105415. Epub 2022 Mar 24.

Abstract

Recently, heart sound signals captured using mobile phones have been employed to develop data-driven heart disease detection systems. Such signals are generally captured in person by trained clinicians who can determine if the recorded heart sounds are of diagnosable quality. However, mobile phones have the potential to support heart health diagnostics, even where access to trained medical professionals is limited. To adopt mobile phones as self-diagnostic tools for the masses, we would need to have a mechanism to automatically establish that heart sounds recorded by non-expert users in uncontrolled conditions have the required quality for diagnostic purposes. This paper proposes a quality assessment and enhancement pipeline for heart sounds captured using mobile phones. The pipeline analyzes a heart sound and determines if it has the required quality for diagnostic tasks. Also, in cases where the quality of the captured signal is below the required threshold, the pipeline can improve the quality by applying quality enhancement algorithms. Using this pipeline, we can also provide feedback to users regarding the cause of low-quality signal capture and guide them towards a successful one. We conducted a survey of a group of thirteen clinicians with auscultation skills and experience. The results of this survey were used to inform and validate the proposed quality assessment and enhancement pipeline. We observed a high level of agreement between the survey results and fundamental design decisions within the proposed pipeline. Also, the results indicate that the proposed pipeline can reduce our dependency on trained clinicians for capture of diagnosable heart sounds.

摘要

最近,使用手机采集的心音信号已被用于开发数据驱动的心脏病检测系统。这些信号通常由经过培训的临床医生亲自采集,他们可以确定记录的心音是否具有可诊断的质量。然而,即使在医疗专业人员有限的情况下,手机也有可能支持心脏健康诊断。为了使手机成为大众的自我诊断工具,我们需要有一种机制来自动确定非专业用户在不受控制的条件下记录的心音是否具有诊断目的所需的质量。本文提出了一种使用手机采集的心音的质量评估和增强管道。该管道分析心音并确定其是否具有诊断任务所需的质量。此外,在捕获信号的质量低于所需阈值的情况下,该管道可以通过应用质量增强算法来提高质量。使用该管道,我们还可以向用户提供有关低质量信号捕获原因的反馈,并指导他们成功捕获。我们对一组具有听诊技能和经验的十三位临床医生进行了调查。该调查的结果用于通知和验证拟议的质量评估和增强管道。我们观察到调查结果与拟议管道内的基本设计决策之间具有高度一致性。此外,结果表明,拟议的管道可以减少我们对经过培训的临床医生采集可诊断心音的依赖。

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