Classification of Diagnosis-Related Groups using Computational Intelligence Techniques.

Angelower Santana-Velásquez, M. John Freddy Duitama, J. D. Arias-Londoño
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引用次数: 3

Abstract

The optimization of the resources used in clinics and hospitals is a key problem in hospital management. In particular, how to improve the efficiency in procedures and treatments for patients, reducing cost, but without deteriorating the quality of the patient’s stay is one of the greatest challenges faced by health providers. In this sense, the development of tools that can help health care providers to ensure that inpatients can be discharged at the times indicated by international standards according to their pathological condition is of great interest for the optimization of resources, especially in developing countries. There are different standards for grouping patients according to their diagnoses and procedures information, this work focuses on the Diagnosis-Related Groups (DRGs) patient classification system. Typically DRGs are obtained after patients’ discharge, only for billing and payment purposes, which reduce the ability of health providers to take corrective actions when the health care attention deviates from the standard attention of specific patients’ conditions.This work focuses in the use of Machine Learning (ML) techniques as an alternative to DRGs regular classification methods. The main aim is to evaluate whether ML methods are able to classify patients according to the DRGs standard, using the information available at the patient’s discharge. This results would be the base line for further analysis focused on the prediction of DRGs in early stages of the patient’s hospitalization. The results show that DRGs classification using Artificial Neural Networks and Ensemble methods can achieve up to 96% of accuracy in a real database of more than 82.910 health records.
使用计算智能技术对诊断相关组进行分类。
诊所和医院资源的优化利用是医院管理中的一个关键问题。特别是,如何提高病人的程序和治疗效率,降低成本,但不恶化病人的住院质量是卫生服务提供者面临的最大挑战之一。从这个意义上说,开发能够帮助卫生保健提供者确保住院病人能够根据其病理状况在国际标准规定的时间出院的工具,对于优化资源具有重大意义,特别是在发展中国家。根据患者的诊断和手术信息对患者进行分组有不同的标准,本文重点研究诊断相关组(DRGs)患者分类系统。通常drg是在患者出院后获得的,仅用于计费和支付目的,这降低了卫生保健提供者在卫生保健注意偏离特定患者病情的标准注意时采取纠正措施的能力。这项工作的重点是使用机器学习(ML)技术作为drg常规分类方法的替代方法。主要目的是利用患者出院时可用的信息,评估ML方法是否能够根据DRGs标准对患者进行分类。这一结果将成为进一步分析患者住院早期DRGs预测的基线。结果表明,在包含82.910份健康记录的真实数据库中,采用人工神经网络和集成方法进行DRGs分类的准确率高达96%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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