Sackler Faculty of Medicine, Tel Aviv University, 6997801, Tel Aviv, Israel.
Edmond J Safra Center for Bioinformatics, Tel Aviv University, 6997801, Tel Aviv, Israel.
Sci Rep. 2021 Oct 11;11(1):20101. doi: 10.1038/s41598-021-99105-2.
Bloodstream infections (BSI) are a main cause of infectious disease morbidity and mortality worldwide. Early prediction of BSI patients at high risk of poor outcomes is important for earlier decision making and effective patient stratification. We developed electronic medical record-based machine learning models that predict patient outcomes of BSI. The area under the receiver-operating characteristics curve was 0.82 for a full featured inclusive model, and 0.81 for a compact model using only 25 features. Our models were trained using electronic medical records that include demographics, blood tests, and the medical and diagnosis history of 7889 hospitalized patients diagnosed with BSI. Among the implications of this work is implementation of the models as a basis for selective rapid microbiological identification, toward earlier administration of appropriate antibiotic therapy. Additionally, our models may help reduce the development of BSI and its associated adverse health outcomes and complications.
血流感染(BSI)是全球传染病发病率和死亡率的主要原因。早期预测 BSI 患者发生不良结局的高风险对于更早地做出决策和进行有效的患者分层非常重要。我们开发了基于电子病历的机器学习模型,用于预测 BSI 患者的结局。全特征包容性模型的受试者工作特征曲线下面积为 0.82,仅使用 25 个特征的精简模型的面积为 0.81。我们的模型使用包括人口统计学、血液检查以及 7889 名住院 BSI 患者的医疗和诊断史在内的电子病历进行训练。这项工作的意义之一是将模型作为选择性快速微生物鉴定的基础,以便更早地给予适当的抗生素治疗。此外,我们的模型可能有助于减少 BSI 的发生及其相关的不良健康结局和并发症。