相关回归树(CART)在印度**疟疾管理中的应用

U. Murty, N. Arora
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引用次数: 0

摘要

疟疾是一种局灶性疾病,其流行病学模式因地形特征而有多种变化。本文展示了CART(分类与回归树)在印度**的疟疾控制中的应用。采用**市12个县的流行病学基线资料,推导预测规律。数据分为2个不同的方面,即(1)流行病学(2)气象。不同输入数据集之间存在的错综复杂的相互作用,因为它们与目标特征相关,通过详尽的分析来学习和建模。根据预测变量(最高温度、最低温度、降雨量、相对湿度、阴雨天数和月份)对目标变量(MPI)的影响,采用CART进行排序。应用这些易于概念化的规则,而不是更抽象的流行病学原则,使即使是非专家也能了解疟疾问题,并在预测疟疾传播动态时制定有效防治疟疾的干预战略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Correlation & Regression Tree (CART) for management of Malaria in Arunachal Pradesh, India
Malaria is a focal disease with multitudinous variations in its epidemiological pattern in relation to topographical features. The present paper demonstrates the application of CART (Classification & Regression Trees) for control of malaria in Arunachal Pradesh, India. Baseline epidemiological data of 12 districts of Arunachal Pradesh was employed for deriving prediction rules. The data was categorized into 2 different aspects, namely (1) Epidemiological (2) Meteorological. The intricate and complex interactions that exist between diverse input data sets, as they relate to the target features, are learned and modeled through exhaustive analysis. Predictor variables (maximum temperature, minimum temperature, rainfall, relative humidity, number of rainy days and month) were ranked by CART according to their influence on the target variable (MPI). Application of these easily conceptualized rules, rather than more abstract epidemiological principles, enables even non-specialists to gain an understanding of the malaria problem and in forecasting the malaria transmission dynamics to formulate the intervention strategies to combat malaria effectively.
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