Internal Medicine "F" Department, the 2013 Pinchas Borenstein Talpiot Medical Leadership Program, Sheba Medical Center, Ramat-Gan, Israel; The Mina and Everard Goodman Faculty of Life Sciences, Bar-Ilan University, Ramat-Gan, Israel; Sackler School of Medicine, Tel-Aviv University, Tel-Aviv, Israel.
Sagol Center for Hyperbaric Medicine and Research, Assaf HaRofe Medical Center, Ramle, Israel; The Mina and Everard Goodman Faculty of Life Sciences, Bar-Ilan University, Ramat-Gan, Israel; Sackler School of Medicine, Tel-Aviv University, Tel-Aviv, Israel.
Int J Cardiol. 2017 Nov 1;246:7-13. doi: 10.1016/j.ijcard.2017.05.067.
Risk scores for prediction of mortality 30-days following a ST-segment elevation myocardial infarction (STEMI) have been developed using a conventional statistical approach.
To evaluate an array of machine learning (ML) algorithms for prediction of mortality at 30-days in STEMI patients and to compare these to the conventional validated risk scores.
This was a retrospective, supervised learning, data mining study. Out of a cohort of 13,422 patients from the Acute Coronary Syndrome Israeli Survey (ACSIS) registry, 2782 patients fulfilled inclusion criteria and 54 variables were considered. Prediction models for overall mortality 30days after STEMI were developed using 6 ML algorithms. Models were compared to each other and to the Global Registry of Acute Coronary Events (GRACE) and Thrombolysis In Myocardial Infarction (TIMI) scores.
Depending on the algorithm, using all available variables, prediction models' performance measured in an area under the receiver operating characteristic curve (AUC) ranged from 0.64 to 0.91. The best models performed similarly to the Global Registry of Acute Coronary Events (GRACE) score (0.87 SD 0.06) and outperformed the Thrombolysis In Myocardial Infarction (TIMI) score (0.82 SD 0.06, p<0.05). Performance of most algorithms plateaued when introduced with 15 variables. Among the top predictors were creatinine, Killip class on admission, blood pressure, glucose level, and age.
We present a data mining approach for prediction of mortality post-ST-segment elevation myocardial infarction. The algorithms selected showed competence in prediction across an increasing number of variables. ML may be used for outcome prediction in complex cardiology settings.
基于传统统计学方法已经开发出用于预测 ST 段抬高型心肌梗死(STEMI)后 30 天死亡率的风险评分。
评估一系列机器学习(ML)算法在预测 STEMI 患者 30 天死亡率方面的应用,并将其与传统验证风险评分进行比较。
这是一项回顾性、有监督的学习、数据挖掘研究。从急性冠状动脉综合征以色列调查(ACSIS)登记处的 13422 例患者队列中,有 2782 例患者符合纳入标准,考虑了 54 个变量。使用 6 种 ML 算法为 STEMI 后 30 天总体死亡率开发预测模型。将模型相互比较,并与全球急性冠状动脉事件登记(GRACE)和血栓溶解心肌梗死(TIMI)评分进行比较。
根据算法的不同,使用所有可用变量,预测模型的性能在接受者操作特征曲线(ROC)下面积(AUC)中测量,范围从 0.64 到 0.91。表现最好的模型与全球急性冠状动脉事件登记(GRACE)评分(0.87,SD 0.06)相似,优于血栓溶解心肌梗死(TIMI)评分(0.82,SD 0.06,p<0.05)。当引入 15 个变量时,大多数算法的性能趋于平稳。在顶级预测因素中包括肌酐、入院时的 Killip 分级、血压、血糖水平和年龄。
我们提出了一种用于预测 STEMI 后死亡率的数据挖掘方法。选择的算法在预测变量数量增加的情况下表现出了竞争力。机器学习可用于复杂心脏病学环境中的预后预测。