预测心力衰竭死亡率的模型

Svetlin Marinov
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引用次数: 0

摘要

本文的目的是使用决策树方法创建一个预测心力衰竭死亡率的模型,并使用RapidMiner数据分析平台将其应用于特定的一组信息。由于医学的快速发展,迫切需要通过过滤整个医疗数据集来提供建议。由于各种各样的治疗方法和改善生活方式的方法,患者很难做出正确的决定。这就需要出现预测方法,旨在根据具体的投诉为患者提供最准确的选择,而不是在现实中具有不同程度重要性的多个随机选择中徘徊。事件预测方法从庞大的数据集中提取最重要的信息,“阅读”患者的问题,并为他/她提出最合适的治疗建议。大多数患者对自己的健康采取必要护理的时间较晚,他们意识到在后期预防的重要性。如果每个人都能预测他/她以后的生活可能会发生什么,他/她会更加谨慎,为自己的健康做出更及时的努力。临床实践中决策的需要往往具有重要的长期后果。
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Model for Predicting Heart Failure Mortality
The aim of this paper is to create a model for predicting heart failure mortality using the decision tree method, and to apply it to a specific set of information using the RapidMiner data analysis platform. Due to the rapid pace of medical development, there is an urgent need to provide recommendations derived from filtering the entire set of medical data. It becomes difficult for patients to make the right decision due to the huge variety of treatments and ways to improve their lifestyle. This necessitates the emergence of predictive methods that aim to offer the patient the most accurate choice according to specific complaints instead of wandering among multiple random choices with varying degrees of significance in reality. Event prediction methods extract the most vital information from a huge data set, “reading” the patient’s problems and suggesting the most appropriate treatment for him/her. Most patients are late in taking the necessary care of their own health, and they realize the importance of prevention at a later stage. If every person could predict what might happen to him/her later in life, he/she would be much more cautious and make more timely efforts for his/her health. The need for decision-making in clinical practice often has important long-term consequences.
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