DocumentCode :
1253339
Title :
Forecasting Depression in Bipolar Disorder
Author :
Moore, P.J. ; Little, M.A. ; McSharry, P.E. ; Geddes, J.R. ; Goodwin, G.M.
Author_Institution :
Oxford Centre for Ind. & Appl. Math. (OCIAM), Univ. of Oxford, Oxford, UK
Volume :
59
Issue :
10
fYear :
2012
Firstpage :
2801
Lastpage :
2807
Abstract :
Bipolar disorder is characterized by recurrent episodes of mania and depression and affects about 1% of the adult population. The condition can have a major impact on an individual´s ability to function and is associated with a long-term risk of suicide. In this paper, we report on the use of self-rated mood data to forecast the next week´s depression ratings. The data used in the study have been collected using SMS text messaging and comprises one time series of approximately weekly mood ratings for each patient. We find a wide variation between series: some exhibit a large change in mean over the monitored period and there is a variation in correlation structure. Almost half of the time series are forecast better by unconditional mean than by persistence. Two methods are employed for forecasting: exponential smoothing and Gaussian process regression. Neither approach gives an improvement over a persistence baseline. We conclude that the depression time series from patients with bipolar disorder are very heterogeneous and that this constrains the accuracy of automated mood forecasting across the set of patients. However, the dataset is a valuable resource and work remains to be done that might result in clinically useful information and tools.
Keywords :
Gaussian processes; medical disorders; neurophysiology; patient diagnosis; regression analysis; time series; Gaussian process regression; SMS text messaging; bipolar disorder; correlation structure; depression forecasting; depression time series; exponential smoothing; mania; persistence baseline; self rated mood data; suicide risk; weekly mood rating; Correlation; Forecasting; Gaussian processes; Mood; Smoothing methods; Time measurement; Time series analysis; Autoregressive (AR) processes; Gaussian processes; health information management psychiatry; public healthcare; time series analysis; Adult; Affect; Aged; Algorithms; Bipolar Disorder; Depression; Female; Humans; Male; Middle Aged; Models, Psychological; Models, Statistical; Questionnaires;
fLanguage :
English
Journal_Title :
Biomedical Engineering, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9294
Type :
jour
DOI :
10.1109/TBME.2012.2210715
Filename :
6252013
Link To Document :
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