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Machine Learning and Statistical Models for the Prevalence of Multiple Sclerosis

机译:机器学习与多发性硬化症患病率的统计模型

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Multiple sclerosis is an immune-mediated disease affecting approximately 2.5 million people worldwide. Its cause is unknown and there is currently no cure. MS tends to be more prevalent in countries that are farther from the equator. Moreover, smoking and obesity are believed to increase the risk of developing the disease. This article builds machine learning and statistical models for the MS prevalence in a country in terms of its distance from the equator and the smoking and adult obesity prevalence in that country. To build the models, the center of population of a country is approximated by finding a point on the surface of the Earth that minimizes a weighted sum of squared distances from the major cities of the country. This study compares the predictive performance of several machine learning models, including first and second order multiple regression, random forest, neural network and support vector regression.
机译:多发性硬化是一种免疫介导的疾病,影响全世界约有250万人。 它的原因未知,目前没有治愈。 MS在远离赤道的国家往往更普遍。 此外,据信吸烟和肥胖可以增加发展疾病的风险。 本文在与赤道的距离和该国的吸烟和成人肥胖普遍存在的距离方面为一个国家的普遍存在而建立了机器学习和统计模型。 为了构建模型,通过在地球表面上找到一个点来近似一个国家的群体,这最小化了来自该国主要城市的平方距离的加权之和。 本研究比较了多种机器学习模型的预测性能,包括第一和二阶多元回归,随机森林,神经网络和支持向量回归。

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