Deriving information from missing data: implications for mood prediction
Yue Wu, Terry J. Lyons, Kate E.A. Saunders

TL;DR
This study introduces a signature-based method for analyzing mood data with missing responses, improving diagnosis accuracy and mood prediction in psychiatric patients.
Contribution
The paper presents a novel signature-based approach that effectively incorporates missing data in mood prediction and diagnosis, outperforming naive methods.
Findings
Achieved 66% correct diagnosis accuracy
F1 scores: 59% (bipolar), 75% (healthy), 61% (borderline)
Improved mood prediction accuracy with missing data inclusion
Abstract
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…
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Taxonomy
TopicsMental Health Research Topics · Bipolar Disorder and Treatment · Functional Brain Connectivity Studies
