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Knowledge-assisted sequential pattern analysis: An application in labor contraction prediction.

机译:知识辅助顺序模式分析:在劳动合同预测中的应用。

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摘要

Although neuraxial techniques, such as spinal and epidural, are still considered as the gold standard for labor analgesia, there are some parturients who cannot receive neuraxial analgesia because of pre-existing conditions, or who request analgesia other than epidural block. An alternative analgesia is remifentanil, which is a relatively new, very potent and short-acting opioid. It has been shown to be effective in the relief of labor pain, but reports to date have failed to find the optimal dosing regimen. A challenge to a systemic opioid is that it must match the unique time course of labor pain. A continuous infusion is not ideal, as the parturient experiences no pain between contractions. Moreover, a continuous infusion during times in which the patient does not experience pain, may increase the risks of respiratory depression, sedation and nausea. The continuous infusion also increases the amount of the drug to which the fetus is exposed.;Designing an optimal dosing regimen necessitates the prediction of the pace of contractions, so that the drug can be given shortly before the pain of the contraction begins. The prediction and thus drug administration should be made early enough to allow for the administration of intravenous analgesia that will have maximal efficacy during contractions, little effect between contractions, and minimal impact on the fetus. Towards such a need, we propose a knowledge-assisted sequential pattern analysis framework to predict the changes in intrauterine pressure, which indicate the occurrence of labor contractions. The proposed framework predicts in real time and provides a prediction multiple seconds before a contraction occurs, so as to assist in designing optimal administration strategies of remifentanil in labor.;The proposed framework first selects a group of patients, from the stored record, who share similar demographic and obstetrical information with the current patient of interest. Second, it develops a sequential association rule mining approach to learn the patterns of the contractions from the historical patient tracings of the selected patients. Third, a sequential association rule-based collaborative filtering strategy is designed to dynamically select a training dataset from the historical patient tracings, as well as from the most recent training time series of the patient of interest. The training set is used for training a set of prediction models. A k-nearest neighbors (k-NN) based least squares support vector machine (LS-SVM) approach with heuristic parameter tuning is proposed to conduct the long-term time series prediction. A post-prediction process is also incorporated to further enhance the prediction results. Because to the best of our knowledge, there has been no previous study to predict future contractions, this work can be considered as a pioneer in the field.;We evaluate the performance of the proposed framework using actual data from anonymous patients with varied contraction patterns. The data include patient demographic and obstetrical information, and measured intrauterine pressure time series. Overall, the proposed framework outperforms several well-known prediction methods, and it accomplishes that in real time. Meanwhile, experiments that compare each component with some other famous algorithms are conducted. The promising experimental results show that all proposed components improve the prediction precision, and the proposed framework achieves the effectiveness, robustness and efficiency that are needed for designing the optimal dosing regimen of remifentanil.
机译:尽管脊柱和硬膜外等神经外科技术仍被认为是分娩镇痛的金标准,但仍有一些产妇由于既往条件而无法接受神经镇痛,或要求硬膜外阻滞以外的其他镇痛。另一种镇痛方法是瑞芬太尼,它是一种相对较新的,非常有效的短效阿片类药物。它已经显示出对减轻劳动痛苦的效果,但是迄今为止,尚未有报告找到最佳的给药方案。对全身性阿片类药物的挑战是它必须与独特的分娩时程相匹配。连续输注不是理想的,因为产妇在收缩之间没有疼痛感。此外,在患者没有疼痛的时间连续输注可能会增加呼吸抑制,镇静和恶心的风险。连续输注还会增加胎儿所接触的药物量。设计最佳的给药方案需要预测收缩的速度,以便可以在收缩痛开始前不久服用药物。预测以及药物的给药应尽早进行,以允许静脉内镇痛的使用,这种镇痛在宫缩过程中将发挥最大功效,在宫缩之间几乎没有影响,并且对胎儿的影响也很小。针对这种需求,我们提出了一种知识辅助的顺序模式分析框架,以预测子宫内压的变化,这表明发生了分娩收缩。拟议框架实时预测并在收缩发生前数秒提供预测,以帮助设计瑞芬太尼在产程中的最佳给药策略。;拟议框架首先从存储的记录中选择一组患者,他们共享与当前感兴趣的患者相似的人口统计和产科信息。其次,它开发了一种顺序关联规则挖掘方法,以从所选患者的历史患者追踪中了解收缩的模式。第三,基于顺序关联规则的协作过滤策略被设计为从历史患者跟踪以及感兴趣患者的最新训练时间序列中动态选择训练数据集。训练集用于训练一组预测模型。提出了一种基于k近邻(k-NN)最小二乘支持向量机(LS-SVM)的启发式参数调整方法,进行长期时间序列预测。还结合了后预测过程,以进一步增强预测结果。因为据我们所知,没有以前的研究来预测未来的收缩,所以这项工作可以被认为是该领域的先驱者。;我们使用来自不同收缩模式的匿名患者的实际数据来评估所提出框架的性能。数据包括患者的人口统计信息和产科信息,以及测得的子宫内压时间序列。总体而言,所提出的框架优于几种众所周知的预测方法,并且可以实时完成。同时,进行了将每个组件与其他一些著名算法进行比较的实验。有希望的实验结果表明,所提出的所有组件均提高了预测精度,并且所提出的框架达到了设计瑞芬太尼最佳给药方案所需的有效性,鲁棒性和效率。

著录项

  • 作者

    Huang, Zifang.;

  • 作者单位

    University of Miami.;

  • 授予单位 University of Miami.;
  • 学科 Engineering Computer.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 162 p.
  • 总页数 162
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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