Vannuccini L, Rossi M, Pasquali G
Department of Chemistry, University of Siena, Italy.
Technol Health Care. 1998 Jun;6(1):75-9.
In this paper, an automatic method to detect and analyze crackles in digitised respiratory sounds is presented. The method is based on two steps: (1) a threshold (T) value is applied to the first derivative absolute value (FDAV) of lung sound to locate the "zone of interest" and (2) in this zone a crackle is detected if certain conditions are verified. The first derivative (FD) is evaluated by means of a derivative-smoothing filter, preserving areas under the spectral lines of the signal (moment zero), its mean position in time (first moment) and its spectral line width (second moment). The conditions to verify step 2 concern the following: the number and height of the peaks of FDAV and their distances from the starting point of the crackle, within a temporal window TW. This method shows good performances as an automatic detector (sensitivity 84% and specificity 89%), and is specifically designed to find the starting point of the crackle.
本文提出了一种用于检测和分析数字化呼吸音中啰音的自动方法。该方法基于两个步骤:(1)将阈值(T)应用于肺音的一阶导数绝对值(FDAV)以定位“感兴趣区域”;(2)如果某些条件得到验证,则在该区域中检测到啰音。一阶导数(FD)通过导数平滑滤波器进行评估,保留信号谱线下方的面积(零阶矩)、其在时间上的平均位置(一阶矩)及其谱线宽度(二阶矩)。验证步骤2的条件涉及以下方面:在时间窗口TW内,FDAV峰值的数量和高度及其与啰音起点的距离。作为一种自动检测器,该方法表现出良好的性能(灵敏度84%,特异性89%),并且专门设计用于找到啰音的起点。