论文标题

从缺失的数据中得出信息:对情绪预测的影响

Deriving information from missing data: implications for mood prediction

论文作者

Wu, Yue, Lyons, Terry J., Saunders, Kate E. A.

论文摘要

移动技术的可用性使从精神病患者的有效纵向,生态上有效的自我报告的情绪数据获得了有效的收集。这些数据流具有提高精神诊断的效率和准确性的潜力,并预测未来的情绪状态实现早期干预。但是,在这样的数据集中缺少响应很常见,在实践中应如何处理这一点,几乎没有共识。一种基于签名的方法用于捕获自我报告的情绪的不同元素以及缺失的数据,以对诊断组进行分类,并预测双相情感障碍,边缘性人格障碍和健康控制的患者的未来情绪。缺失的基于签名的基于签名的方法可实现大约66 \%正确的诊断,三个不同诊所组的F1得分为59 \%(双相情感障碍),75 \%(健康对照)和61 \%(边界人格障碍)。这比排除缺失数据的天真模型要高得多。通过包含缺失的响应,可以提高预测随后的情绪状态和得分的精度。该签名方法提供了一种有效的方法来分析前瞻性收集的情绪数据,其中缺少数据是常见的,应将其视为其他类似数据集中的方法。

The availability of mobile technologies has enabled the efficient collection prospective longitudinal, ecologically valid self-reported mood data from psychiatric patients. These data streams have potential for improving the efficiency and accuracy of psychiatric diagnosis as well predicting future mood states enabling earlier intervention. However, missing responses are common in such datasets and there is little consensus as to how this should be dealt with in practice. A signature-based method was used to capture different elements of self-reported mood alongside missing data to both classify diagnostic group and predict future mood in patients with bipolar disorder, borderline personality disorder and healthy controls. The missing-response-incorporated signature-based method achieves roughly 66\% correct diagnosis, with f1 scores for three different clinic groups 59\% (bipolar disorder), 75\% (healthy control) and 61\% (borderline personality disorder) respectively. This was significantly more efficient than the naive model which excluded missing data. Accuracies of predicting subsequent mood states and scores were also improved by inclusion of missing responses. The signature method provided an effective approach to the analysis of prospectively collected mood data where missing data was common and should be considered as an approach in other similar datasets.

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