Distributed Heuristics for Optimizing Cohesive Groups: A Support for Clinical Patient Engagement in Social Network Analysis

I. Zoppis, R. Dondi, Davide Coppetti, Alessandro Beltramo, G. Mauri
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引用次数: 1

Abstract

Social interaction allows to support the disease management by creating online spaces where patients can interact with clinicians, and share experiences with other patients. Therefore, promoting targeted communication in online social spaces is a means to group patients around shared goals, offer emotional support, and finally engage patients in their healthcare decision making process. In this paper, we approach the argument from a theoretical perspective: we design an optimization problem aimed to encourage the creation of (induced) sub-networks of patients which, being recently diagnosed, wish to deepen the knowledge about their medical treatment with some other similar profiled patients, which have already been followed up by specific (even alternative) care centers. In particular, due to the computational hardness of the proposed problem, we provide approximated solutions based on distributed heuristics (i.e., Genetic Algorithms). Results are given for simulated data using Erdos-Renyi random graphs.
分布式启发式优化凝聚力群体:支持临床患者参与社会网络分析
社会互动允许通过创建在线空间来支持疾病管理,患者可以与临床医生互动,并与其他患者分享经验。因此,在在线社交空间中促进有针对性的交流是围绕共同目标将患者分组,提供情感支持,并最终使患者参与其医疗保健决策过程的一种手段。在本文中,我们从理论的角度来探讨这一论点:我们设计了一个优化问题,旨在鼓励创建(诱导的)患者子网络,这些患者最近被诊断出来,希望与其他类似的患者加深对其医疗的了解,这些患者已经被特定(甚至替代)护理中心跟踪。特别是,由于所提出问题的计算难度,我们提供了基于分布式启发式(即遗传算法)的近似解决方案。给出了用Erdos-Renyi随机图模拟数据的结果。
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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