Algoritmi Research Center, Braga, Portugal.
University of Minho, Braga, Portugal.
J Med Syst. 2021 Jan 7;45(1):11. doi: 10.1007/s10916-020-01686-4.
Hospitals generate large amounts of data on a daily basis, but most of the time that data is just an overwhelming amount of information which never transitions to knowledge. Through the application of Data Mining techniques it is possible to find hidden relations or patterns among the data and convert those into knowledge that can further be used to aid in the decision-making of hospital professionals. This study aims to use information about patients with diabetes, which is a chronic (long-term) condition that occurs when the body does not produce enough or any insulin. The main purpose is to help hospitals improve their care with diabetic patients and consequently reduce readmission costs. An hospital readmission is an episode in which a patient discharged from a hospital is admitted again within a specified period of time (usually a 30 day period). This period allows hospitals to verify that their services are being performed correctly and also to verify the costs of these re-admissions. The goal of the study is to predict if a patient who suffers from diabetes will be readmitted, after being discharged, using Machine Leaning algorithms. The final results revealed that the most efficient algorithm was Random Forest with 0.898 of accuracy.
医院每天都会产生大量数据,但大多数时候,这些数据只是大量的信息,从未转化为知识。通过应用数据挖掘技术,可以在数据中发现隐藏的关系或模式,并将其转化为可进一步用于帮助医院专业人员决策的知识。
本研究旨在使用有关糖尿病患者的信息,糖尿病是一种慢性(长期)疾病,当身体不能产生足够或任何胰岛素时就会发生这种疾病。主要目的是帮助医院改善对糖尿病患者的护理,从而降低再次入院的费用。医院再次入院是指患者从医院出院后在规定时间内(通常为 30 天)再次入院的情况。这段时间允许医院验证其服务是否正确执行,并验证这些再次入院的费用。
该研究的目标是使用机器学习算法预测患有糖尿病的患者在出院后是否会再次入院。最终结果表明,最有效的算法是随机森林,准确率为 0.898。