一种新的心理健康空间分析工具的开发:利用多目标进化算法模型(MOEA/HS)识别精神分裂症的高度自相关区域(热点)。

Epidemiologia e psichiatria sociale Pub Date : 2010-10-01
Carlos R García-Alonso, Luis Salvador-Carulla, Miguel A Negrín-Hernández, Berta Moreno-Küstner
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引用次数: 0

摘要

目的:本研究有两个目标:(1)设计和开发一种基于计算机的工具,称为多目标进化算法/热点(MOEA/HS),用于识别和地理定位高度自相关的区域或热点,并合并不同的方法;(2)在可获得先前有关精神分裂症患病率分布信息的地理区域进行示范研究,从而可以进行比较。方法:在需要识别和定位高度自相关的区域(热点)时,在多准则框架中使用局部空间聚集指标(LISA)模型和贝叶斯条件自回归模型(CAR)作为目标。设计了一个多目标进化算法(MOEA)模型,并用于识别安达卢西亚精神分裂症患病率的高度自相关区域。使用基于指数的q - plot(极值统计)对热点进行统计识别。结果:对MOEA/HS的有效解(Pareto集合)进行了统计分析,确定了一个主要热点并进行了空间定位。我们的模型可以在一个大而复杂的区域内识别和定位精神分裂症流行的地理热点。结论:MOEA/HS通过突出精神分裂症表现出高度自相关性的复杂区域中的非常特殊的区域,使不同计量经济学方法之间达成妥协。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of a new spatial analysis tool in mental health: identification of highly autocorrelated areas (hot-spots) of schizophrenia using a Multiobjective Evolutionary Algorithm model (MOEA/HS).

Aims: This study had two objectives: (1) to design and develop a computer-based tool, called Multi-Objective Evolutionary Algorithm/Hot-Spots (MOEA/HS), to identify and geographically locate highly autocorrelated zones or hot-spots and which merges different methods, and (2) to carry out a demonstration study in a geographical area where previous information about the distribution of schizophrenia prevalence is available and which can therefore be compared.

Methods: Local Indicators of Spatial Aggregation (LISA) models as well as the Bayesian Conditional Autoregressive Model (CAR) were used as objectives in a multicriteria framework when highly autocorrelated zones (hot-spots) need to be identified and geographically located. A Multi-Objective Evolutionary Algorithm (MOEA) model was designed and used to identify highly autocorrelated areas of the prevalence of schizophrenia in Andalusia. Hot-spots were statistically identified using exponential-based QQ-Plots (statistics of extremes).

Results: Efficient solutions (Pareto set) from MOEA/HS were analysed statistically and one main hot-spot was identified and spatially located. Our model can be used to identify and locate geographical hot-spots of schizophrenia prevalence in a large and complicated region.

Conclusions: MOEA/HS enables a compromise to be achieved between different econometric methods by highlighting very special zones in complex areas where schizophrenia shows a high autocorrelation.

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