Evaluation of Pattern Recognition Techniques in Response to Cardiac Resynchronization Therapy (CRT)

Q4 Computer Science
M. Nejadeh, P. Bayat, J. Kheirkhah, H. Moladoust
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引用次数: 1

Abstract

Cardiac resynchronization therapy (CRT) improves cardiac function in patients with heart failure (HF), and the result of this treatment is decrease in death rate and improving quality of life for patients. This research is aimed at predicting CRT response for the prognosis of patients with heart failure under CRT. According to international instructions, in the case of approval of QRS prolongation and decrease in ejection fraction (EF), the patient is recognized as a candidate of implanting recognition device. However, regarding many intervening and effective factors, decision making can be done based on more variables. Computer-based decision-making systems especially machine learning (ML) are considered as a promising method regarding their significant background in medical prediction. Collective intelligence approaches such as particles swarm optimization (PSO) algorithm are used for determining the priorities of medical decision-making variables. This investigation was done on 209 patients and the data was collected over 12 months. In HESHMAT CRT center, 17.7% of patients did not respond to treatment. Recognizing the dominant parameters through combining machine recognition and physician’s viewpoint, and introducing back-propagation of error neural network algorithm in order to decrease classification error are the most important achievements of this research. In this research, an analytical set of individual, clinical, and laboratory variables, echocardiography, and electrocardiography (ECG) are proposed with patients’ response to CRT. Prediction of the response after CRT becomes possible by the support of a set of tools, algorithms, and variables.
模式识别技术在心脏再同步化治疗(CRT)中的应用评价
心脏再同步化治疗(CRT)可改善心力衰竭(HF)患者的心功能,降低患者死亡率,提高患者的生活质量。本研究旨在预测CRT治疗对心衰患者预后的影响。根据国际标准,在QRS延长和射血分数(EF)降低获得批准的情况下,该患者被认定为植入识别装置的候选者。然而,对于许多干预和有效因素,决策可以基于更多的变量。基于计算机的决策系统特别是机器学习(ML)因其在医学预测方面的重要背景而被认为是一种有前途的方法。采用粒子群优化算法等集体智能方法确定医疗决策变量的优先级。这项调查对209名患者进行,数据收集时间超过12个月。在HESHMAT CRT中心,17.7%的患者对治疗无反应。结合机器识别和医生观点识别优势参数,引入误差神经网络反向传播算法以降低分类误差是本研究的重要成果。在这项研究中,一组分析个体,临床和实验室变量,超声心动图和心电图(ECG)提出了患者对CRT的反应。通过一组工具、算法和变量的支持,对CRT后反应的预测成为可能。
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
Journal of Information Systems and Telecommunication
Journal of Information Systems and Telecommunication Computer Science-Information Systems
CiteScore
0.80
自引率
0.00%
发文量
24
审稿时长
24 weeks
期刊介绍: This Journal will emphasize the context of the researches based on theoretical and practical implications of information Systems and Telecommunications. JIST aims to promote the study and knowledge investigation in the related fields. The Journal covers technical, economic, social, legal and historic aspects of the rapidly expanding worldwide communications and information industry. The journal aims to put new developments in all related areas into context, help readers broaden their knowledge and deepen their understanding of telecommunications policy and practice. JIST encourages submissions that reflect the wide and interdisciplinary nature of the subject and articles that integrate technological disciplines with social, contextual and management issues. JIST is planned to build particularly its reputation by publishing qualitative researches and it welcomes such papers. This journal aims to disseminate success stories, lessons learnt, and best practices captured by researchers in the related fields.
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