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Machine Learning Methods for Disease Prediction with Claims Data

机译:使用索赔数据进行疾病预测的机器学习方法

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One of the primary challenges of healthcare delivery is aggregating disparate, asynchronous data sources into meaningful indicators of individual health. We combine natural language word embedding and network modeling techniques to learn meaningful representations of medical concepts by using the weighted network adjacency matrix in the GloVe algorithm, which we call Code2Vec. We demonstrate that using our learned embeddings improve neural network performance for disease prediction. However, we also demonstrate that popular deep learning models for disease prediction are not meaningfully better than simpler, more interpretable classifiers such as XGBoost. Additionally, our work adds to the current literature by providing a comprehensive survey of various machine learning algorithms on disease prediction tasks.
机译:提供医疗保健的主要挑战之一是将不同的异步数据源聚合为有意义的个人健康指标。我们通过在GloVe算法(称为Code2Vec)中使用加权网络邻接矩阵,结合了自然语言单词嵌入和网络建模技术,以学习医学概念的有意义的表示形式。我们证明,使用我们学习的嵌入可以改善神经网络的疾病预测性能。但是,我们还证明,流行的深度学习模型用于疾病预测并不比简单,可解释的分类器(例如XGBoost)好得多。此外,我们的工作通过对疾病预测任务的各种机器学习算法进行全面调查,为当前文献增色不少。

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