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A longitudinal support vector regression for prediction of ALS score

机译:纵向支持向量回归预测ALS得分

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Longitudinal studies play a key role in various fields, including epidemiology, clinical research, and genomic analysis. Currently, the most popular methods in longitudinal data analysis are model-driven regression approaches, which impose strong prior assumptions and are unable to scale to large problems in the manner of machine learning algorithms. In this work, we propose a novel longitudinal support vector regression (LSVR) algorithm that not only takes the advantage of one of the most popular machine learning methods, but also is able to model the temporal nature of longitudinal data by taking into account observational dependence within subjects. We test LSVR on publicly available data from the DREAM-Phil Bowen ALS Prediction Prize4Life challenge. Results suggest that LSVR is at a minimum competitive with favored machine learning methods and is able to outperform those methods in predicting ALS score one month in advance.
机译:纵向研究在流行病学,临床研究和基因组分析等各个领域发挥着关键作用。当前,纵向数据分析中最流行的方法是模型驱动的回归方法,该方法具有很强的先验假设,并且无法以机器学习算法的方式扩展到较大的问题。在这项工作中,我们提出了一种新颖的纵向支持向量回归(LSVR)算法,该算法不仅可以利用最流行的机器学习方法之一,而且还可以通过考虑观察依赖来对纵向数据的时间性质进行建模在主题之内。我们根据DREAM-Phil Bowen ALS预测奖4人生挑战赛的公开数据测试LSVR。结果表明,LSVR与受欢迎的机器学习方法相比具有最低的竞争力,并且在提前一个月预测ALS分数方面能够胜过那些方法。

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