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基于支持向量机模型预测老年 COPD 患者再入院急性加重 30 天风险

Prediction of 30-day risk of acute exacerbation of readmission in elderly patients with COPD based on support vector machine model.

机构信息

Department of Nursing, The General Hospital of Ningxia Medical University, Yinchuan, 750004, People's Republic of China.

出版信息

BMC Pulm Med. 2022 Jul 30;22(1):292. doi: 10.1186/s12890-022-02085-w.

Abstract

BACKGROUND

Acute exacerbation of chronic obstructive pulmonary disease (COPD) is an important event in the process of disease management. Early identification of high-risk groups for readmission and appropriate measures can avoid readmission in some groups, but there is still a lack of specific prediction tools. The predictive performance of the model built by support vector machine (SVM) has been gradually recognized by the medical field. This study intends to predict the risk of acute exacerbation of readmission in elderly COPD patients within 30 days by SVM, in order to provide scientific basis for screening and prevention of high-risk patients with readmission.

METHODS

A total of 1058 elderly COPD patients from the respiratory department of 13 general hospitals in Ningxia region of China from April 2019 to August 2020 were selected as the study subjects by convenience sampling method, and were followed up to 30 days after discharge. Discuss the influencing factors of patient readmission, and built four kernel function models of Linear-SVM, Polynomial-SVM, Sigmoid-SVM and RBF-SVM based on the influencing factors. According to the ratio of training set and test set 7:3, they are divided into training set samples and test set samples, Analyze and Compare the prediction efficiency of the four kernel functions by the precision, recall, accuracy, F1 index and area under the ROC curve (AUC).

RESULTS

Education level, smoking status, coronary heart disease, hospitalization times of acute exacerbation of COPD in the past 1 year, whether long-term home oxygen therapy, whether regular medication, nutritional status and seasonal factors were the influencing factors for readmission. The training set shows that Linear-SVM, Polynomial-SVM, Sigmoid-SVM and RBF-SVM precision respectively were 69.89, 78.07, 79.37 and 84.21; Recall respectively were 50.78, 69.53, 78.74 and 88.19; Accuracy respectively were 83.92, 88.69, 90.81 and 93.82; F1 index respectively were 0.59, 0.74, 0.79 and 0.86; AUC were 0.722, 0.819, 0.866 and 0.918. Test set precision respectively were86.36, 87.50, 80.77 and 88.24; Recall respectively were51.35, 75.68, 56.76 and 81.08; Accuracy respectively were 85.11, 90.78, 85.11 and 92.20; F1 index respectively were 0.64, 0.81, 0.67 and 0.85; AUC respectively were 0.742, 0.858, 0.759 and 0.885.

CONCLUSIONS

This study found the factors that may affect readmission, and the SVM model constructed based on the above factors achieved a certain predictive effect on the risk of readmission, which has certain reference value.

摘要

背景

慢性阻塞性肺疾病(COPD)急性加重是疾病管理过程中的一个重要事件。早期识别高再入院风险的高危人群,并采取适当的措施,可以避免某些人群的再入院,但仍缺乏特定的预测工具。支持向量机(SVM)构建的模型的预测性能已逐渐得到医学领域的认可。本研究旨在通过 SVM 预测老年 COPD 患者 30 天内再入院的风险,为筛选和预防高危再入院患者提供科学依据。

方法

采用便利抽样方法,选取 2019 年 4 月至 2020 年 8 月宁夏地区 13 家综合医院呼吸科的 1058 例老年 COPD 患者作为研究对象,出院后随访 30 天。探讨患者再入院的影响因素,并基于影响因素构建线性 SVM、多项式 SVM、Sigmoid-SVM 和 RBF-SVM 四种核函数模型。根据训练集和测试集的比例 7:3,将其分为训练集样本和测试集样本,通过精确率、召回率、准确率、F1 指数和 ROC 曲线下面积(AUC)分析比较四种核函数的预测效率。

结果

文化程度、吸烟状况、冠心病、过去 1 年 COPD 急性加重住院次数、是否长期家庭氧疗、是否规律用药、营养状况和季节因素是影响再入院的因素。训练集显示,线性 SVM、多项式 SVM、Sigmoid-SVM 和 RBF-SVM 的精确率分别为 69.89%、78.07%、79.37%和 84.21%;召回率分别为 50.78%、69.53%、78.74%和 88.19%;准确率分别为 83.92%、88.69%、90.81%和 93.82%;F1 指数分别为 0.59、0.74、0.79 和 0.86;AUC 分别为 0.722、0.819、0.866 和 0.918。测试集的精确率分别为 86.36%、87.50%、80.77%和 88.24%;召回率分别为 51.35%、75.68%、56.76%和 81.08%;准确率分别为 85.11%、90.78%、85.11%和 92.20%;F1 指数分别为 0.64、0.81、0.67 和 0.85;AUC 分别为 0.742、0.858、0.759 和 0.885。

结论

本研究发现了可能影响再入院的因素,基于上述因素构建的 SVM 模型对再入院风险有一定的预测效果,具有一定的参考价值。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7373/9338624/e79de7a8c789/12890_2022_2085_Fig1_HTML.jpg

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