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Detecting the Mobility of Patient with Chronic Diseases in Online Health Communities using Ant Colony Optimization Algorithm Ensure Patient’s Safety and Diseases Awareness based on Reliable Medical Education Material

机译:使用蚁群优化算法检测在线健康社区中慢性病患者的活动能力,以可靠的医学教育资料为基础,确保患者的安全性和疾病意识

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The importance of online health communities (OHCs) is evidenced by their popularity, as well as how they significantly impact the live style of their members. Like other social media platforms, OHCs also face, however, exodus problems where community's members are most often moving from one community to another looking for answers to their concerns. This phenomenon is especially more noticeable in online health communities. Community's members are connected to each other through the online discussion topics and subtopics. Since community's members are moving from one community to the other and back, it is matter for example for the public health care system bodies to follow the movement of the health care services consumers or potential patients on the internet and, thus, determine their topics of interest with the objective to verify the information disseminated within these communities and act in the case of dissemination of wrong or life threating information. The final objective could be the improvement of the patient education material disseminated on the internet. To investigate patient's behaviors and identify the information they are searching for and consuming on the internet, the ant colony optimization algorithm is used to detect their movements and topics of interest. Ant colony optimization algorithm (ACOA) is a probabilistic technique for solving computational problems which can be reduced to finding good paths through graphs. A community can be represented as a graph where the vertices represent the members and the edges le topics connecting members. The results of the conducted experiments shown that the proposed mobility model is more efficient, accurate, precise, and realistic than the common random mobility models. Furthermore, the test revealed a socialization enhancement as a benefit for the patient.
机译:在线健康社区(OHC)的受欢迎程度以及它们如何显着影响其成员的生活方式证明了其重要性。但是,与其他社交媒体平台一样,OHC也面临出逃问题,社区成员通常从一个社区迁移到另一个社区,以寻求对自己关心的问题的答案。这种现象在在线医疗社区中尤其明显。社区的成员通过在线讨论主题和子主题相互联系。由于社区成员从一个社区移到另一个社区,因此,例如,公共卫生保健体系机构必须关注互联网上医疗保健服务消费者或潜在患者的运动,从而确定他们的主题。目的在于验证在这些社区中传播的信息,并在传播错误或威胁生命的信息时采取行动。最终目标可能是改善在互联网上分发的患者教育材料。为了调查患者的行为并识别他们正在互联网上搜索和消费的信息,蚁群优化算法用于检测患者的运动和感兴趣的主题。蚁群优化算法(ACOA)是一种用于解决计算问题的概率技术,可以将其简化为通过图形找到好的路径。社区可以表示为图形,其中顶点表示成员,而边缘表示连接成员的主题。进行的实验结果表明,所提出的迁移率模型比普通的随机迁移率模型更为有效,准确,精确和现实。此外,该测试显示社交功能的增强对患者有利。

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