Casaseca-de-la-Higuera Pablo, Martín-Fernández Marcos, Alberola-López Carlos
Laboratory of Image Processing, E.T.S. Ingenieros de Telecomunicación, University of Valladolid, 47011 Valladolid, Spain.
IEEE Trans Biomed Eng. 2006 Jul;53(7):1330-45. doi: 10.1109/TBME.2006.873695.
Practitioners' decision for mechanical aid discontinuation is a challenging task that involves a complete knowledge of a great number of clinical parameters, as well as its evolution in time. Recently, an increasing interest on respiratory pattern variability as an extubation readiness indicator has appeared. Reliable assessment of this variability involves a set of signal processing and pattern recognition techniques. This paper presents a suitability analysis of different methods used for breathing pattern complexity assessment. The contribution of this analysis is threefold: 1) to serve as a review of the state of the art on the so-called weaning problem from a signal processing point of view; 2) to provide insight into the applied processing techniques and how they fit into the problem; 3) to propose additional methods and further processing in order to improve breathing pattern regularity assessment and weaning readiness decision. Results on experimental data show that sample entropy outperforms other complexity assessment methods and that multidimensional classification does improve weaning prediction. However, the obtained performance may be objectionable for real clinical practice, a fact that paves the way for a multimodal signal processing framework, including additional high-quality signals and more reliable statistical methods.
从业者决定停止机械辅助是一项具有挑战性的任务,这需要全面了解大量临床参数及其随时间的变化。最近,人们对呼吸模式变异性作为拔管准备指标的兴趣日益浓厚。对这种变异性进行可靠评估需要一套信号处理和模式识别技术。本文对用于呼吸模式复杂性评估的不同方法进行了适用性分析。该分析的贡献有三个方面:1)从信号处理的角度对所谓的撤机问题的现有技术进行综述;2)深入了解所应用的处理技术及其如何适应该问题;3)提出额外的方法和进一步的处理措施,以改善呼吸模式规律性评估和撤机准备决策。实验数据结果表明,样本熵优于其他复杂性评估方法,多维分类确实能改善撤机预测。然而,所获得的性能在实际临床实践中可能并不理想,这一事实为多模态信号处理框架铺平了道路,该框架包括额外的高质量信号和更可靠的统计方法。