COMPUTATIONAL INTELLIGENCE METHODS TO PATIENTS STRATIFICATION IN THE MEDICAL MONITORING SYSTEMS

IF 0.2 Q4 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE
N. S. Bakumenko, V. Strilets, M. Ugryumov, R. Zelenskyi, K. M. Ugryumova, V. Starenkiy, S. Artiukh, A. Nasonova
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引用次数: 0

Abstract

Context. In modern medical practice the automation and information technologies are increasingly being implemented for diagnosing diseases, monitoring the condition of patients, determining the treatment program, etc. Therefore, the development of new and improvement of existing methods of the patient stratification in the medical monitoring systems is timely and necessary. Objective. The goal of intelligent diagnostics of patient’s state in the medical monitoring systems – reducing the likelihood of adverse states based on the choice of an individual treatment program: − reducing the probability of incorrectly determining the state of the patients when monitoring patients; − obtaining stable effective estimates of unknown values of treatment actions for patients (corresponding to the found state); − the choice of a rational individual treatment program for the patients, identified on the basis of the forecasted state. Method. Proposed methodology, which includes the following computational intelligence methods to patient’s stratification in the medical monitoring systems: 1) method of cluster analysis based on the agent-based approach – the determination of the possible number of patient’s states using controlled variables of state; 2) method of robust metamodels development by means artificial neuron networks under a priori data uncertainty (only accuracy of measurements is known) in the monitoring data: a) a multidimensional logistic regression model in the form of analytical dependences of the posterior probabilities of different states of the patients on the control and controlled variables of state; b) a multidimensional diagnostic model in the form of analytical dependences of the objective functions (quality criteria of the patient’s state) on the control and controlled variables of state; 3) method of estimating informativeness controlled variables of state at a priori data uncertainty; 4) method of robust multidimensional models development for the patient’s state control under a priori data uncertainty in the monitoring data in the form of analytical dependencies predicted from the measured values of the control and controlled variables of state in the monitoring process; 5) method of reducing the controlled state variables space dimension based on the analysis of the variables informativeness of the robust multidimensional models for the patient’s state control; 6) method of patient’s states determination based on the classification problem solution with the values of the control and forecasted controlled variables of state with using the probabilistic neural networks; 7) method of synthesis the rational individual patient’s treatment program in the medical monitoring system, for the state identified on the basis of the forecast. Proposed the structure of the model for choosing the rational individual patient’s treatment program based on IT Data Stream Mining, which implements the «Big Data for Better Outcomes» concept. Results. The developed advanced computational intelligence methods for forecast states were used in choosing the tactics of treating patients, to forecast treatment complications and assess the patient’s curability before and during special treatment. Conclusions. Experience in the implementation of “Big Data for Better Outcomes” concept for the solution of the problem of computational models for new patient stratification strategies is presented. Advanced methodology, computational methods for a patient stratification in the medical monitoring systems and applied information technology realizing them have been developed. The developed methods for forecast states can be used in choosing the tactics of treating patients, to forecast treatment complications and assess the patient’s curability before and during special treatment.
医疗监测系统中患者分层的计算智能方法
上下文。在现代医疗实践中,自动化和信息技术越来越多地应用于疾病诊断、患者病情监测、治疗方案确定等方面。因此,在医疗监护系统中开发新的患者分层方法和改进现有的分层方法是及时和必要的。目标。在医疗监测系统中对患者状态进行智能诊断的目标-减少基于个体治疗方案选择的不良状态的可能性:-减少在监测患者时错误确定患者状态的可能性;−获得患者治疗作用未知值的稳定有效估计(对应于发现的状态);−根据预测状态为患者选择合理的个体治疗方案。方法。提出了医疗监测系统中患者分层的计算智能方法:1)基于智能体的聚类分析方法——利用状态控制变量确定患者状态的可能数量;2)在监测数据的先验数据不确定性(只知道测量的准确性)下,利用人工神经元网络建立鲁棒元模型的方法:a)以患者不同状态的后验概率对状态的控制变量和被控变量的分析依赖性为形式的多维逻辑回归模型;B)以客观函数(患者状态的质量标准)对状态的控制变量和被控制变量的分析依赖为形式的多维诊断模型;3)先验数据不确定性下状态信息控制变量的估计方法;4)在监测数据的先验数据不确定性下,以分析依赖关系的形式从监测过程中状态的控制变量的实测值和被控变量预测患者状态控制的鲁棒性多维模型开发方法;5)基于对患者状态控制鲁棒多维模型变量信息性分析的被控状态变量空间维数降维方法;6)利用概率神经网络,利用状态控制变量和预测控制变量的值求解分类问题,确定患者状态的方法;7)在医疗监测系统中综合合理的个体患者的治疗方案,在此基础上进行状态识别预测。提出了基于IT数据流挖掘的合理个体患者治疗方案选择模型的结构,实现了“大数据更优”的理念。结果。采用先进的状态预测计算智能方法,选择治疗策略,预测治疗并发症,评估患者在特殊治疗前和治疗期间的可治愈性。结论。介绍了在解决新患者分层策略的计算模型问题中实施“大数据改善结果”概念的经验。先进的方法学,计算方法的病人分层在医疗监测系统和应用信息技术实现他们已经发展。所建立的状态预测方法可用于选择患者的治疗策略,预测治疗并发症,评估患者在特殊治疗前和治疗期间的治愈率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Radio Electronics Computer Science Control
Radio Electronics Computer Science Control COMPUTER SCIENCE, HARDWARE & ARCHITECTURE-
自引率
20.00%
发文量
66
审稿时长
12 weeks
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