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引用次数: 0
摘要
电子医疗记录的广泛应用带来了大量的医疗数据。这些数据通过提供有价值的临床见解和加强临床决策,在改善医疗服务方面具有巨大潜力。本文介绍了一种病人分类方法,它利用多类别和多标签诊断方法来预测病人的临床类别。所提出的模型能有效处理合并症,同时保持较高的准确性。该方法利用 MIMIC III 数据库作为数据源,创建表型数据集并训练模型。本研究采用了多种机器学习模型。值得注意的是,基于自然语言处理的 "One-Vs-Rest "分类器取得了最好的分类结果,即使有大量类别也能保持准确率和 F1 分数。本文展示的基于《国际疾病分类 9》的患者诊断类别预测模型在诊断支持、治疗预测、临床辅助、推荐系统、临床决策支持系统和临床知识发现引擎中有着广泛的应用。
Diagnostics Based Patient Classification for Clinical Decision Support Systems
The widespread adoption of Electronic Healthcare Records has resulted in an abundance of healthcare data. This data holds significant potential for improving healthcare services by providing valuable clinical insights and enhancing clinical decision-making. This paper presents a patient classification methodology that utilizes a multiclass and multilabel diagnostic approach to predict the patient's clinical class. The proposed model effectively handles comorbidities while maintaining a high level of accuracy. The implementation leverages the MIMIC III database as a data source to create a phenotyping dataset and train the models. Various machine learning models are employed in this study. Notably, the natural language processing-based One-Vs-Rest classifier achieves the best classification results, maintaining accuracy and F1 scores even with a large number of classes. The patient diagnostic class prediction model, based on the International Classification of Diseases 9, showcased in this paper, has broad applications in diagnostic support, treatment prediction, clinical assistance, recommender systems, clinical decision support systems, and clinical knowledge discovery engines.
期刊介绍:
Fundamentals of automation and robotics Applied automatics Mobile robots control Distributed systems Navigation Mechatronics systems in robotics Sensors and actuators Data transmission Biomechatronics Mobile computing