IEEE/ACM Trans Comput Biol Bioinform. 2018 Nov-Dec;15(6):1953-1959. doi: 10.1109/TCBB.2018.2811471. Epub 2018 Mar 1.
Ischemic stroke is a leading cause of disability and death worldwide among adults. The individual prognosis after stroke is extremely dependent on treatment decisions physicians take during the acute phase. In the last five years, several scores such as the ASTRAL, DRAGON, and THRIVE have been proposed as tools to help physicians predict the patient functional outcome after a stroke. These scores are rule-based classifiers that use features available when the patient is admitted to the emergency room. In this paper, we apply machine learning techniques to the problem of predicting the functional outcome of ischemic stroke patients, three months after admission. We show that a pure machine learning approach achieves only a marginally superior Area Under the ROC Curve (AUC) ( 0.808±0.085) than that of the best score ( 0.771±0.056) when using the features available at admission. However, we observed that by progressively adding features available at further points in time, we can significantly increase the AUC to a value above 0.90. We conclude that the results obtained validate the use of the scores at the time of admission, but also point to the importance of using more features, which require more advanced methods, when possible.
缺血性脑卒中是全世界成年人残疾和死亡的主要原因。个体脑卒中后的预后情况极大地取决于医生在急性期所做的治疗决策。在过去的五年中,已经提出了一些评分方法,如 ASTRAL、DRAGON 和 THRIVE,作为帮助医生预测脑卒中患者预后的工具。这些评分方法是基于规则的分类器,使用患者入院时可用的特征。在本文中,我们将机器学习技术应用于预测缺血性脑卒中患者入院三个月后的功能结局问题。我们发现,与最佳评分(0.771±0.056)相比,仅使用入院时可用的特征,纯机器学习方法的 ROC 曲线下面积(AUC)仅略有提高(0.808±0.085)。然而,我们观察到,通过逐步添加在后续时间点可用的特征,我们可以将 AUC 显著提高到 0.90 以上。我们得出的结论是,获得的结果验证了在入院时使用评分的有效性,但也指出了在可能的情况下使用更多特征(需要更先进的方法)的重要性。