Leila Abuabara, Maria Gabriela Valeriano, C. Kiffer, H. Yanasse, A. C. Lorena
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引用次数: 0
Abstract
Many efforts were made by the scientific community during the Covid-19 pandemic to understand the disease and better manage health systems' resources. Believing that city and population characteristics influence how the disease spreads and develops, we used Machine Learning techniques to provide insights to support decision-making in the city of São José dos Campos (SP), Brazil. Using a database with information from people who undergo the Covid-19 test in this city, we generate and evaluate predictive models related to severity, need for hospitalization and period of hospitalization. Additionally, we used the SHAP value for models' interpretation of the most decisive attributes influencing the predictions. We can conclude that patient age linked to symptoms such as saturation and respiratory distress and comorbidities such as cardiovascular disease and diabetes are the most important factors to consider when one wants to predict severity and need for hospitalization in this city. We also stress the need of a greater attention to the proper collection of this information from citizens who undergo the Covid-19 diagnosis test.
在2019冠状病毒病大流行期间,利用机器学习支持卫生系统规划:使用 o jossore dos Campos(巴西)数据的案例研究
在2019冠状病毒病大流行期间,科学界为了解该疾病并更好地管理卫生系统资源作出了许多努力。相信城市和人口特征会影响疾病的传播和发展,我们使用机器学习技术来提供见解,以支持巴西s o jos dos Campos (SP)市的决策。利用一个包含该市接受Covid-19检测的人信息的数据库,我们生成并评估了与严重程度、住院需求和住院时间相关的预测模型。此外,我们使用SHAP值来解释影响预测的最决定性属性。我们可以得出结论,当人们想要预测这个城市的严重程度和住院需求时,与饱和和呼吸窘迫等症状以及心血管疾病和糖尿病等合并症相关的患者年龄是最重要的考虑因素。我们还强调,需要更加重视从接受Covid-19诊断检测的公民那里适当收集这些信息。