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Review: Are we stumbling in our quest to find the best predictor? Over-optimism in sensor-based models for predicting falls in older adults

机译:评论:我们是否在寻找最佳预测指标的过程中绊脚石?基于传感器的模型对老年人跌倒的预测过度乐观

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The field of fall risk testing using wearable sensors is bustling with activity. In this Letter, the authors review publications which incorporated features extracted from sensor signals into statistical models intended to estimate fall risk or predict falls in older people. A review of these studies raises concerns that this body of literature is presenting over-optimistic results in light of small sample sizes, questionable modelling decisions and problematic validation methodologies (e.g. inherent problems with the overly-popular cross-validation technique, lack of external validation). There seem to be substantial issues in the feature selection process, whereby researchers select features before modelling begins based on their relation to the target, and either perform no validation or test the models on the same data used for their training. This, together with potential issues related to the large number of features and their correlations, inevitably leads to models with inflated accuracy that are unlikely to maintain their reported performance during everyday use in relevant populations. Indeed, the availability of rich sensor data and many analytical options provides intellectual and creative freedom for researchers, but should be treated with caution, and such pitfalls must be avoided if we desire to create generalisable prognostic tools of any clinical value.
机译:使用可穿戴式传感器的跌倒风险测试领域充满了活力。在这封信中,作者回顾了将传感器信号中提取的特征纳入统计模型的出版物,这些模型旨在估计跌倒风险或预测老年人跌倒。对这些研究的评论引起了人们的关注,即由于样本量小,模型决策有问题以及验证方法存在问题(例如,交叉验证技术过分固有的固有问题,缺乏外部验证),该文献正在呈现过于乐观的结果)。在特征选择过程中似乎存在实质性问题,即研究人员应在建模开始之前根据与目标的关系来选择特征,然后不进行任何验证或对用于训练的相同数据进行模型测试。这以及与大量特征及其相关性相关的潜在问题,不可避免地导致模型精度过高,从而在相关人群的日常使用中不太可能维持其报告的性能。确实,丰富的传感器数据和许多分析选项的可用性为研究人员提供了智力和创造力的自由,但应谨慎对待,并且如果我们希望创建具有任何临床价值的可通用的预后工具,则必须避免此类陷阱。

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