Kim Yunji, Kim Jaejin, Kim Sehoon, Youn Hwayoung, Choi Jihye, Seo Kyoungwon
Department of Veterinary Internal Medicine, College of Veterinary Medicine, Seoul, Republic of Korea.
School of Biological Sciences, Seoul National University, Seoul, Republic of Korea.
Front Vet Sci. 2023 Aug 31;10:1189157. doi: 10.3389/fvets.2023.1189157. eCollection 2023.
Myxomatous mitral valve disease (MMVD) is the most common cause of heart failure in dogs, and assessing the risk of heart failure in dogs with MMVD is often challenging. Machine learning applied to electronic health records (EHRs) is an effective tool for predicting prognosis in the medical field. This study aimed to develop machine learning-based heart failure risk prediction models for dogs with MMVD using a dataset of EHRs.
A total of 143 dogs with MMVD between May 2018 and May 2022. Complete medical records were reviewed for all patients. Demographic data, radiographic measurements, echocardiographic values, and laboratory results were obtained from the clinical database. Four machine-learning algorithms (random forest, K-nearest neighbors, naïve Bayes, support vector machine) were used to develop risk prediction models. Model performance was represented by plotting the receiver operating characteristic (ROC) curve and calculating the area under the curve (AUC). The best-performing model was chosen for the feature-ranking process.
The random forest model showed superior performance to the other models (AUC = 0.88), while the performance of the K-nearest neighbors model showed the lowest performance (AUC = 0.69). The top three models showed excellent performance (AUC ≥ 0.8). According to the random forest algorithm's feature ranking, echocardiographic and radiographic variables had the highest predictive values for heart failure, followed by packed cell volume (PCV) and respiratory rates. Among the electrolyte variables, chloride had the highest predictive value for heart failure.
These machine-learning models will enable clinicians to support decision-making in estimating the prognosis of patients with MMVD.
黏液瘤样二尖瓣疾病(MMVD)是犬类心力衰竭最常见的病因,评估患有MMVD的犬类心力衰竭风险往往具有挑战性。应用于电子健康记录(EHR)的机器学习是医学领域预测预后的有效工具。本研究旨在使用EHR数据集为患有MMVD的犬类开发基于机器学习的心力衰竭风险预测模型。
2018年5月至2022年5月期间共有143只患有MMVD的犬类。对所有患者的完整病历进行了回顾。从临床数据库中获取人口统计学数据、放射学测量、超声心动图值和实验室结果。使用四种机器学习算法(随机森林、K近邻、朴素贝叶斯、支持向量机)开发风险预测模型。通过绘制受试者操作特征(ROC)曲线并计算曲线下面积(AUC)来表示模型性能。选择性能最佳的模型进行特征排序过程。
随机森林模型表现出优于其他模型的性能(AUC = 0.88),而K近邻模型的性能表现最低(AUC = 0.69)。前三个模型表现出优异的性能(AUC≥0.8)。根据随机森林算法的特征排序,超声心动图和放射学变量对心力衰竭具有最高的预测价值,其次是红细胞压积(PCV)和呼吸频率。在电解质变量中,氯对心力衰竭具有最高的预测价值。
这些机器学习模型将使临床医生能够在估计MMVD患者的预后时支持决策制定。