基于改进灰色关联分析和案例推理的疾病成本估算模型

Qishan Zhang, Xinhuan Huang, Hong Liu, Jinli Duan
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引用次数: 1

摘要

疾病成本估算是一个重要而富有挑战性的问题。它是医院成本和成本控制的关键因素。由于疾病病理的复杂性、治疗过程的个体差异、药物不良反应和并发症,疾病成本的估算一直是一个挑战。特别是在一些高风险、高噪声的疾病中,还面临着样本小、数据差的挑战。灰色关联分析是研究小样本、差数据的一种有效方法。本文提出了一种基于灰色关联分析和案例推理的疾病成本估算模型。首先,通过灰色关联分析法计算成本属性的相似度;然后利用布谷鸟搜索算法找到最优的属性权重,根据历史案例数据库中的相似度找出与目标案例匹配的少数案例,估计目标案例的代价。最后,在单纯性阑尾炎、剖宫产和心脏旁路手术成本估算的实验研究中,分别与欧氏距离、角余弦距离和马氏距离三种模型的估算精度进行了比较。改进后的模型在成本估计精度上有较好的提高,特别是在小样本和高风险、高噪声疾病的情况下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Disease cost estimation model based on improved grey relational analysis and case-based reasoning
Disease cost estimation is an important and challenging issue. It serves as the key factor of hospital cost and cost control. It has been a challenge to estimate the disease cost because of the complexity of the disease pathology, individual differences of treatment process, adverse drug reaction, and complications. Especially in some high risk and high noise diseases there is another challenge from small sample and poor data. Grey relational analysis is a kind of effective method to study small sample, and poor data. In this paper, an improved model based on grey relational analysis and case-based reasoning is proposed to estimate the disease cost. Firstly, the similarity on cost attributes is calculated through the grey relational analysis method. And then the optimal attribute weights is found with the cuckoo search algorithm and there are a few cases matching to the target case according to the similarity in the historical case database to estimate the cost of target case. At last the estimation accuracy using the improved model in experimental study of the cost estimation of simple appendicitis disease, cesarean section, and heart bypass surgery is compared with the three models respectively with Euclidean distance, Angle cosine, and Mahalanobis distance. The improved model is best on cost estimation precision, especially in small sample and disease with high risk and high noise.
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