Zaylaa Amira, Charara Jamal, Girault Jean-Marc
Department of Medical Biophysics and Imaging, Signal-Imaging Group, Team-5 of UMR 930, François-Rabelais University of Tours, 7 Avenue Marcel Dassault, 37200 Tours Cedex, France; Department of Physics and Electronics, Faculty of Sciences, Lebanese University, Beirut, Lebanon.
Department of Physics and Electronics, Faculty of Sciences, Lebanese University, Beirut, Lebanon.
Comput Biol Med. 2015 Aug;63:251-60. doi: 10.1016/j.compbiomed.2014.09.007. Epub 2014 Oct 2.
The analysis of biomedical signals demonstrating complexity through recurrence plots is challenging. Quantification of recurrences is often biased by sojourn points that hide dynamic transitions. To overcome this problem, time series have previously been embedded at high dimensions. However, no one has quantified the elimination of sojourn points and rate of detection, nor the enhancement of transition detection has been investigated. This paper reports our on-going efforts to improve the detection of dynamic transitions from logistic maps and fetal hearts by reducing sojourn points. Three signal-based recurrence plots were developed, i.e. embedded with specific settings, derivative-based and m-time pattern. Determinism, cross-determinism and percentage of reduced sojourn points were computed to detect transitions. For logistic maps, an increase of 50% and 34.3% in sensitivity of detection over alternatives was achieved by m-time pattern and embedded recurrence plots with specific settings, respectively, and with a 100% specificity. For fetal heart rates, embedded recurrence plots with specific settings provided the best performance, followed by derivative-based recurrence plot, then unembedded recurrence plot using the determinism parameter. The relative errors between healthy and distressed fetuses were 153%, 95% and 91%. More than 50% of sojourn points were eliminated, allowing better detection of heart transitions triggered by gaseous exchange factors. This could be significant in improving the diagnosis of fetal state.
通过递归图分析显示复杂性的生物医学信号具有挑战性。复发的量化常常受到隐藏动态转变的驻留点的影响而产生偏差。为了克服这个问题,之前已将时间序列嵌入到高维空间。然而,没有人对驻留点的消除和检测率进行量化,也没有研究过转变检测的增强情况。本文报告了我们正在进行的通过减少驻留点来改进对逻辑斯谛映射和胎儿心脏动态转变检测的工作。开发了三种基于信号的递归图,即具有特定设置的嵌入图、基于导数的图和m时间模式图。计算确定性、交叉确定性和减少的驻留点百分比以检测转变。对于逻辑斯谛映射,m时间模式图和具有特定设置的嵌入递归图分别比其他方法在检测灵敏度上提高了50%和34.3%,且特异性为100%。对于胎儿心率,具有特定设置的嵌入递归图性能最佳,其次是基于导数的递归图,然后是使用确定性参数的未嵌入递归图。健康胎儿和窘迫胎儿之间的相对误差分别为153%、95%和91%。超过50%的驻留点被消除,从而能够更好地检测由气体交换因素触发的心脏转变。这对于改善胎儿状态的诊断可能具有重要意义。