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Towards the advanced predictive modelling in epidemiology

机译:朝向流行病学中的先进预测建模

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摘要

Data-driven prediction systems used in epidemiological studies are still unsatisfactory from a practical point of view. Different pitfalls should be considered while transferring technologies from research to practice. The proposed k-Nearest Neighbors approach is designed to make disease-related predictions in a more holistic manner: we detect cases of novelty among unobserved subjects to identify situations when model predictions are not reasonably valid. Moreover, it copes with overlapping classes, finds new examples which cannot be labelled with the high confidence and reveals healthy subjects in the training data who might be at risk. Additionally, variable selection is built-in to select relevant predictors. The approach was applied to predict cardiovascular diseases based on the data collected within an ongoing follow-up study undertaken in Eastern Finland. According to the experimental results, our proposal allows increasing the accuracy of predictions made.
机译:流行病学研究中使用的数据驱动的预测系统从实际的角度来看仍然不满意。将技术从研究转移到实践时,应考虑不同的陷阱。该拟议的K-CORMALT邻居方法旨在以更全面的方式制造与疾病相关的预测:我们在未观察到的受试者中检测到新颖性的案例,以确定模型预测不合理有效的情况下识别情况。此外,它与重叠类别的应对,找到了无法用高信心标记的新示例,并揭示可能存在风险的培训数据中的健康科目。此外,可以内置变量选择以选择相关的预测器。该方法是基于在芬兰东部开展的正在进行的后续研究中收集的数据来预测心血管疾病。根据实验结果,我们的建议允许提高预测的准确性。

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