Institute of Medical Information/Library, Chinese Academy of Medical Sciences & Peking Union Medical College, Beijing, China.
Department of Nursing, Peking Union Medical College Hospital, Chinese Academy of Medical Sciences & Peking Union Medical College, Beijing, China.
Stud Health Technol Inform. 2022 Jun 6;290:714-718. doi: 10.3233/SHTI220171.
Stroke patients tend to suffer from immobility, which increases the possibility of post-stroke complications. Urinary tract infections (UTIs) are one of the complications as an independent predictor of poor prognosis of stroke patients. However, the incidence of new UTIs onsets during hospitalization was rare in most datasets with a prevalence of 4%. This imbalanced data distribution sets obstacles to establishing an accurate prediction model. Our study aimed to develop an effective prediction model to identify UTIs risk in immobile stroke patients, and (2) to compare its prediction performance with traditional machine learning models. We tackled this problem by building a Siamese Network leveraging commonly used clinical features to identifying patients with UTIs risk. Model derivation and validation were based on a nationwide dataset including 3982 Chinese patients. Results showed that the Siamese Network performed better than traditional machine learning models in imbalanced datasets (Sensitivity: 0.810; AUC: 0.828).
中风患者往往会出现行动不便的情况,这增加了中风后并发症发生的可能性。尿路感染(UTIs)是并发症之一,也是中风患者预后不良的独立预测因素。然而,在大多数数据集的住院期间新发 UTI 的发生率很少,患病率为 4%。这种不平衡的数据分布给建立准确的预测模型带来了障碍。我们的研究旨在开发一种有效的预测模型,以识别行动不便的中风患者的 UTI 风险,以及(2)比较其预测性能与传统机器学习模型。我们通过构建一个 Siamese 网络来解决这个问题,该网络利用常用的临床特征来识别有 UTI 风险的患者。模型推导和验证是基于一个包含 3982 名中国患者的全国性数据集。结果表明,在不平衡数据集中,Siamese 网络比传统机器学习模型表现更好(灵敏度:0.810;AUC:0.828)。