基于分形维数和盒滤波的裂纹自动检测集成方法

Cátia M. R. Pinho, Ana Oliveira, C. Jácome, João Rodrigues, A. Marques
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引用次数: 14

摘要

噼啪声是一种外来的呼吸声(RS),它提供了不同呼吸状况的宝贵信息。然而,RS中的裂纹自动检测是具有挑战性的,主要是在临床环境中收集。本研究旨在开发一种自动裂纹检测/表征算法,并根据多注释器金标准评估其性能和准确性。该算法基于4个主要步骤:1)识别潜在裂纹;(二)有效性的验证;Iii)裂纹参数的表征;iv)算法参数优化。从10例肺炎和囊性纤维化患者中选择24份临床获得的RS文件。通过将其结果与多注释器金标准协议进行比较来评估算法的性能。达到了高水平的整体表现(f得分=92%)。结果强调了该算法在临床环境中获得的RS的自动裂纹检测和表征的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrated Approach for Automatic Crackle Detection Based on Fractal Dimension and Box Filtering
Crackles are adventitious respiratory sounds (RS) that provide valuable information on different respiratory conditions. Nevertheless, crackles automatic detection in RS is challenging, mainly when collected in clinical settings. This study aimed to develop an algorithm for automatic crackle detection/characterisation and to evaluate its performance and accuracy against a multi-annotator gold standard. The algorithm is based on 4 main procedures: i) recognition of a potential crackle; ii) verification of its validity; iii) characterisation of crackles parameters; and iv) optimisation of the algorithm parameters. Twenty-four RS files acquired in clinical settings were selected from 10 patients with pneumonia and cystic fibrosis. The algorithm performance was assessed by comparing its results with a multi-annotator gold standard agreement. High level of overall performance (F-score=92%) was achieved. The results highlight the potential of the algorithm for automatic crackle detection and characterisation of RS acquired in clinical settings.
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