利用变换域信号形态异常诊断肺部状态

A. Mondal, Parthasarathi Bhattacharyat, G. Saha
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引用次数: 4

摘要

肺音(LS)包含有关肺部状态的信息。医生用听诊器听这些声音并作出解释。这个过程被称为听诊,完全取决于医生的经验和知识。由于涉及人为因素,有可能出现误解。本文提出了一种基于复杂性测量定理的方法,可以在自动化环境下对LS进行可靠的诊断。该算法通过计算频谱的样本熵值来检测肺部状况。结果通过统计分析进行评估,并由肺科医生证实。该技术在为医疗专业人员开发辅助设备方面非常有用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Diagnosing of the lungs status using morphological anomalies of the signals in transformed domain
Lung sound (LS) contains information regarding the lungs status. Medical practitioners listen to these sounds using stethoscope and make interpretation. This procedure is known as auscultation which totally depends on the physicians experience and knowledge. There is a probability of misinterpretation due to human factor involved. In this paper, we propose a method based on complexity measuring theorem that can give reliable diagnosis of LS in an automated environment. The developed algorithm detects the lung conditions by calculating the sample entropy value of the frequency spectrum. The results are evaluated through statistical analysis and corroborated by a pulmonologist. The technique could be very useful in developing assisting device for medical professionals.
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