Hoyos William, Aguilar Jose, Toro Mauricio
Grupo de Investigaciones Microbiológicas y Biomédicas de Córdoba, Universidad de Córdoba, Montería, Colombia.
Grupo de Investigación en I+D+i en TIC, Universidad EAFIT, Medellín, Colombia.
Heliyon. 2022 Sep 29;8(10):e10846. doi: 10.1016/j.heliyon.2022.e10846. eCollection 2022 Oct.
Dengue is the most widespread vector-borne disease worldwide. Timely diagnosis and treatment of dengue is the main objective of medical professionals to decrease mortality rates. In this paper, we propose an autonomous cycle that integrates data analysis tasks to support decision-making in the clinical management of dengue. Particularly, the autonomous cycle supports dengue diagnosis and treatment. The proposed system was built using machine learning techniques for classification tasks (artificial neural networks and support vector machines) and evolutionary techniques (a genetic algorithm) for prescription tasks (treatment). The system was quantitatively evaluated using dengue-patient datasets reported by healthcare institutions. Our system was compared with previous works using qualitative criteria. The proposed system has the ability to classify a patient's clinical picture and recommend the best treatment option. In particular, the classification of dengue was done with 98% accuracy and a genetic algorithm recommends treatment options for particular patients. Finally, our system is flexible and easily adaptable, which will allow the addition of new tasks for dengue analysis.
登革热是全球传播最广泛的媒介传播疾病。及时诊断和治疗登革热是医学专业人员降低死亡率的主要目标。在本文中,我们提出了一个自主循环,该循环整合了数据分析任务,以支持登革热临床管理中的决策制定。特别是,该自主循环支持登革热的诊断和治疗。所提出的系统是使用用于分类任务的机器学习技术(人工神经网络和支持向量机)以及用于处方任务(治疗)的进化技术(遗传算法)构建的。该系统使用医疗机构报告的登革热患者数据集进行了定量评估。我们的系统与先前的工作使用定性标准进行了比较。所提出的系统有能力对患者的临床表现进行分类并推荐最佳治疗方案。特别是,登革热的分类准确率达到了98%,并且遗传算法为特定患者推荐治疗方案。最后,我们的系统灵活且易于适应,这将允许为登革热分析添加新任务。