探索使用格兰杰因果关系识别基于生理数据的化学暴露。

S Difrancesco, J U van Baardewijk, A S Cornelissen, C Varon, R C Hendriks, A M Brouwer
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摘要

在无法立即进行医疗评估的情况下,可穿戴传感器为早期发现和识别有毒化学品提供了新的机会。我们之前发现,连续记录豚鼠的生理学可用于早期检测阿片类药物(芬太尼)或神经毒剂(VX)的暴露,以及区分两者。在这里,我们研究了暴露于这些不同的化学物质如何影响由格兰杰因果关系(GC)确定的ECG和呼吸参数之间的相互作用。反映这种相互作用的特征可以提供额外的信息并改进区分化学剂的模型。从暴露于VX (n = 61)或芬太尼(n = 59)的120只豚鼠的数据中提取传统的呼吸和ECG特征以及GC特征。数据分为训练集(n = 99)和测试集(n = 21)。最小冗余最大相关性(mRMR)和支持向量机(SVM)算法分别用于进行特征选择和训练模型来区分两种化学物质。我们发现,在健康条件下,心电图和呼吸参数与格兰杰相关,芬太尼和VX暴露以不同的方式影响了这些关系。SVM模型在测试集上区分化学物质的准确率为95%或更高。与传统特征相比,GC特征并没有改善分类。呼吸特征(即吸气和呼气峰值流量)是区分不同化学物质暴露的最重要因素。我们的研究结果表明,当使用可穿戴传感器的传统生理呼吸特征时,区分化学暴露是可行的。未来的研究将在考虑其他因素(如跨物种的推广结果)时,研究GC特征是否有助于化学物质之间的强大检测和区分。
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Exploring the use of Granger causality for the identification of chemical exposure based on physiological data.

Wearable sensors offer new opportunities for the early detection and identification of toxic chemicals in situations where medical evaluation is not immediately possible. We previously found that continuously recorded physiology in guinea pigs can be used for early detection of exposure to an opioid (fentanyl) or a nerve agent (VX), as well as for differentiating between the two. Here, we investigated how exposure to these different chemicals affects the interactions between ECG and respiration parameters as determined by Granger causality (GC). Features reflecting such interactions may provide additional information and improve models differentiating between chemical agents. Traditional respiration and ECG features, as well as GC features, were extracted from data of 120 guinea pigs exposed to VX (n = 61) or fentanyl (n = 59). Data were divided in a training set (n = 99) and a test set (n = 21). Minimum Redundancy Maximum Relevance (mRMR) and Support Vector Machine (SVM) algorithms were used to, respectively, perform feature selection and train a model to discriminate between the two chemicals. We found that ECG and respiration parameters are Granger-related under healthy conditions, and that exposure to fentanyl and VX affected these relationships in different ways. SVM models discriminated between chemicals with accuracy of 95% or higher on the test set. GC features did not improve the classification compared to traditional features. Respiration features (i.e., peak inspiratory and expiratory flow) were the most important to discriminate between different chemical's exposure. Our results indicate that it may be feasible to discriminate between chemical exposure when using traditional physiological respiration features from wearable sensors. Future research will examine whether GC features can contribute to robust detection and differentiation between chemicals when considering other factors, such as generalizing results across species.

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