Tufts Clinical and Translational Science Institute, Tufts Medical Center, Boston, Massachusetts, USA.
Department of Comparative Medicine, Stanford University, California, USA.
Equine Vet J. 2023 Jul;55(4):573-583. doi: 10.1111/evj.13880. Epub 2022 Nov 8.
Clinical predictive models use a patient's baseline demographic and clinical data to make predictions about patient outcomes and have the potential to aid clinical decision making. The extent of equine clinical predictive models is unknown in the literature. Using PubMed and Google Scholar, we systematically reviewed the predictive models currently described for use in equine patients. Models were eligible for inclusion if they were published in a peer-reviewed article as a multivariable model used to predict a clinical/laboratory/imaging outcome in an individual horse or herd. The agreement of at least two authors was required for model inclusion. We summarised the patient populations, model development methods, performance metric reporting, validation efforts, and, using the Predictive model Risk of Bias Assessment Tool (PROBAST), assessed the risk of bias and applicability concerns for these models. In addition, we summarised the index conditions for which models were developed and provided detailed information on included models. A total of 90 predictive models and 9 external validation studies were included in the final systematic review. A plurality of models (41%) was developed to predict outcomes associated with colic, for example, need for surgery or survival to discharge. All included models were at high risk of bias, defined as failing one or more PROBAST signalling questions, primarily for analysis-related reasons. Importantly, a high risk of bias does not necessarily mean that models are unusable, but that they require more careful consideration prior to clinical use. Concerns about applicability were low for the majority of models. Systematic reviews such as this can serve to increase veterinarians' awareness of predictive models, including evaluation of their performance and their use in different patient populations.
临床预测模型利用患者的基线人口统计学和临床数据对患者的结局进行预测,并有辅助临床决策的潜力。在文献中,尚不清楚马科动物临床预测模型的范围。我们使用 PubMed 和 Google Scholar 系统地回顾了目前描述用于马科动物患者的预测模型。如果模型是作为多变量模型发表在同行评议的文章中,用于预测个体马或畜群的临床/实验室/影像学结局,则该模型有资格入选。至少需要两位作者的同意才能纳入模型。我们总结了患者人群、模型开发方法、性能指标报告、验证工作,以及使用预测模型风险偏倚评估工具(PROBAST)评估这些模型的偏倚和适用性问题。此外,我们总结了开发模型的索引条件,并提供了纳入模型的详细信息。最终的系统综述共纳入了 90 个预测模型和 9 项外部验证研究。多数模型(41%)是为预测与疝痛相关的结局而开发的,例如手术需求或存活至出院。所有纳入的模型都存在高偏倚风险,这是由于分析相关原因未能通过一个或多个 PROBAST 信号问题定义的。重要的是,高偏倚风险并不一定意味着模型不可用,但在临床使用前需要更仔细地考虑。大多数模型的适用性问题较低。这样的系统综述可以提高兽医对预测模型的认识,包括对其性能的评估以及在不同患者人群中的应用。