基于蚁群算法和流图的时间推理在外科手术并发症预测问题中的应用

Q1 Social Sciences Human Technology Pub Date : 2021-12-31 DOI:10.14254/1795-6889.2021.17-3.3
A. Lewicki, K. Pancerz, L. Puzio
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引用次数: 3

摘要

在一个快速老龄化的欧洲社会的时代,对成熟的临床决策支持系统的需求,将健康观察与医学知识联系起来,以协助临床医生在决策中不断增长。对于这类系统来说,一个日益严重的问题不仅是处理数据集的大小,而且是这些数据的异构性。临床预测通常需要处理数值数据和多类别数据,这些数据是暂时的。研究表明,时间推理、基于蚁群的聚类算法、粗糙集和模糊集可能是解决这一问题的一个很好的方法。实验使用了一组真实的医学数据,这些数据代表了一种疾病的病例,这种疾病会显著降低女性的生活质量。每一例子宫肌瘤疾病(影响超过50%的35岁以上妇女)都有140多个异质特征。对手术类型(热消融或手术)的错误决定不仅影响女性的生育能力,而且还会增加并发症的风险。因此,本文讨论的解决方案可能会变得非常重要。
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The temporal inference with the use of ant-based clustering algorithm and flow graphs in the problem of prognosing complications of medical surgical procedures
In the era of a rapidly aging European society, the demand for proven clinical decision support systems, links health observations with medical knowledge in order to assist clinicians in decision making is constantly growing. An increasing problem for this type of systems is not only the size of the processed data sets but also the heterogeneity of these data. Clinical forecasting often requires processing of both numerical data and multi-category data which are temporal. The conducted research has shown that a good solution to this problem may lie in the use of temporal inference, the ant-based clustering algorithm, rough sets, and fuzzy sets. The experiments used a real set of medical data representing cases of a disease that significantly reduces a woman's quality of life. Each case of uterine myoma disease (which affects more than 50% of women over the age of 35) is represented by more than 140 heterogeneous features. An incorrect decision about the type of surgery (thermoablation or surgery) not only affects female fertility but also the high risk of complications. Therefore, the solution discussed in this paper may turn out to be extremely important.
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来源期刊
Human Technology
Human Technology Social Sciences-Communication
CiteScore
3.80
自引率
0.00%
发文量
10
审稿时长
50 weeks
期刊介绍: Human Technology is an interdisciplinary, multiscientific journal focusing on the human aspects of our modern technological world. The journal provides a forum for innovative and original research on timely and relevant topics with the goal of exploring current issues regarding the human dimension of evolving technologies and, then, providing new ideas and effective solutions for addressing the challenges. Focusing on both everyday and professional life, the journal is equally interested in, for example, the social, psychological, educational, cultural, philosophical, cognitive scientific, and communication aspects of human-centered technology. Special attention shall be paid to information and communication technology themes that facilitate and support the holistic human dimension in the future information society.
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