Gonçalves Daniel, Henriques Rui, Santos Lúcio Lara, Costa Rafael S
IDMEC, Instituto Superior Técnico, University of Lisbon, Av. Rovisco Pais 1, 1049-001, Lisbon, Portugal.
INESC-ID, R. Alves Redol 9, 1000-029, Lisboa, Portugal.
BMC Med Inform Decis Mak. 2021 Jun 28;21(1):200. doi: 10.1186/s12911-021-01562-2.
Postoperative complications are still hard to predict despite the efforts towards the creation of clinical risk scores. The published scores contribute for the creation of specialized tools, but with limited predictive performance and reusability for implementation in the oncological context. This work aims to predict postoperative complications risk for cancer patients, offering two major contributions. First, to develop and evaluate a machine learning-based risk score, specific for the Portuguese population using a retrospective cohort of 847 cancer patients undergoing surgery between 2016 and 2018, for 4 outcomes of interest: (1) existence of postoperative complications, (2) severity level of complications, (3) number of days in the Intermediate Care Unit (ICU), and (4) postoperative mortality within 1 year. An additional cohort of 137 cancer patients from the same center was used for validation. Second, to improve the interpretability of the predictive models. In order to achieve these objectives, we propose an approach for the learning of risk predictors, offering new perspectives and insights into the clinical decision process. For postoperative complications the Receiver Operating Characteristic Curve (AUC) was 0.69, for complications' severity AUC was 0.65, for the days in the ICU the mean absolute error was 1.07 days, and for 1-year postoperative mortality the AUC was 0.74, calculated on the development cohort. In this study, predictive models which could help to guide physicians at organizational and clinical decision making were developed. Additionally, a web-based decision support tool is further provided to this end.
尽管人们努力创建临床风险评分,但术后并发症仍然难以预测。已发表的评分有助于创建专门的工具,但在肿瘤学背景下的预测性能和可重复使用性有限。这项工作旨在预测癌症患者的术后并发症风险,做出了两项主要贡献。首先,使用2016年至2018年间接受手术的847名癌症患者的回顾性队列,针对葡萄牙人群开发并评估基于机器学习的风险评分,涉及4个感兴趣的结果:(1)术后并发症的存在情况,(2)并发症的严重程度,(3)在中间护理病房(ICU)的天数,以及(4)1年内的术后死亡率。来自同一中心的另外137名癌症患者队列用于验证。其次,提高预测模型的可解释性。为了实现这些目标,我们提出了一种学习风险预测因子的方法,为临床决策过程提供了新的视角和见解。在开发队列中计算得出,术后并发症的受试者工作特征曲线(AUC)为0.69,并发症严重程度的AUC为0.65,在ICU的天数的平均绝对误差为1.07天,1年术后死亡率的AUC为0.74。在本研究中,开发了有助于在组织和临床决策中指导医生的预测模型。此外,为此还进一步提供了基于网络的决策支持工具。