Division of Medical Information Sciences, University Hospitals of Geneva, Geneva, Switzerland.
PLoS One. 2013 Apr 25;8(4):e61180. doi: 10.1371/journal.pone.0061180. Print 2013.
Antibiotic resistance is a major worldwide public health concern. In clinical settings, timely antibiotic resistance information is key for care providers as it allows appropriate targeted treatment or improved empirical treatment when the specific results of the patient are not yet available.
To improve antibiotic resistance trend analysis algorithms by building a novel, fully data-driven forecasting method from the combination of trend extraction and machine learning models for enhanced biosurveillance systems.
We investigate a robust model for extraction and forecasting of antibiotic resistance trends using a decade of microbiology data. Our method consists of breaking down the resistance time series into independent oscillatory components via the empirical mode decomposition technique. The resulting waveforms describing intrinsic resistance trends serve as the input for the forecasting algorithm. The algorithm applies the delay coordinate embedding theorem together with the k-nearest neighbor framework to project mappings from past events into the future dimension and estimate the resistance levels.
The algorithms that decompose the resistance time series and filter out high frequency components showed statistically significant performance improvements in comparison with a benchmark random walk model. We present further qualitative use-cases of antibiotic resistance trend extraction, where empirical mode decomposition was applied to highlight the specificities of the resistance trends.
The decomposition of the raw signal was found not only to yield valuable insight into the resistance evolution, but also to produce novel models of resistance forecasters with boosted prediction performance, which could be utilized as a complementary method in the analysis of antibiotic resistance trends.
抗生素耐药性是一个全球性的主要公共卫生关注点。在临床环境中,及时的抗生素耐药性信息对于医疗保健提供者至关重要,因为当患者的具体结果尚不可用时,它可以提供适当的靶向治疗或改进的经验性治疗。
通过从趋势提取和机器学习模型的组合中构建一种新颖的、完全数据驱动的预测方法,来改进抗生素耐药性趋势分析算法,以增强生物监测系统。
我们研究了一种使用数十年微生物学数据提取和预测抗生素耐药性趋势的稳健模型。我们的方法包括通过经验模态分解技术将耐药性时间序列分解为独立的振荡分量。描述固有耐药趋势的结果波形作为预测算法的输入。该算法应用延迟坐标嵌入定理和 K-最近邻框架将过去事件的映射投射到未来维度,并估计耐药水平。
与基准随机游走模型相比,分解耐药时间序列并过滤高频分量的算法在统计上显示出性能显著提高。我们进一步提出了抗生素耐药性趋势提取的定性用例,其中经验模态分解被应用于突出耐药趋势的特异性。
原始信号的分解不仅为耐药性演变提供了有价值的见解,而且还产生了具有增强预测性能的新型耐药性预测模型,可作为抗生素耐药性趋势分析的补充方法。