Prompt severity assessment model of confirmed patients who were infected with infectious diseases could enable efficient diagnosis and alleviate the burden on the medical system. This paper provides the development processes of the severity assessment model using machine learning techniques and its application on SARS-CoV-2 patients. Here, we highlight that our model only requires basic patients' basic personal data, allowing for them to judge their own severity. We selected the boosting-based decision tree model as a classifier and interpreted mortality as a probability score after modeling. Specifically, hyperparameters that determine the structure of the tree model were tuned using the Bayesian optimization technique without any knowledge of medical information. As a result, we measured model performance and identified the variables affecting the severity through the model. Finally, we aim to establish a medical system that allows patients to check their own severity and informs them to visit the appropriate clinic center based on the past treatment details of other patients with similar severity.
翻译:对确诊感染传染病的病人的迅速严重程度评估模型可以进行高效诊断,减轻医疗系统的负担。本文件提供了使用机器学习技术的重度评估模型的开发过程及其对SARS-COV-2病人的应用。在这里,我们强调,我们的模型只要求病人的基本个人数据,以便他们判断自己的严重程度。我们选择了以推力为基础的决定树模型作为分类师,并将死亡率解释为模型后的一个概率分数。具体地说,确定树模型结构的超参数是在没有任何医疗信息的情况下使用巴耶斯优化技术加以调整的。结果,我们测量了模型性能,并通过模型确定了影响其严重程度的变量。最后,我们的目标是建立一个医疗系统,使病人能够检查自己的严重程度,并告知他们根据其他类似严重病人以往的治疗细节访问适当的诊所中心。