Bipolar disorder (BP) is commonly researched in digital settings. As a result, standardized digital tools are needed to measure mood. We sought to validate a new survey that is brief, validated in digital form, and able to separately measure manic and depressive severity.
We introduce a 6-item digital survey, called digiBP, for measuring mood in BP. It has 3 depressive items (depressed mood, fidgeting, fatigue), 2 manic items (increased energy, rapid speech), and 1 mixed item (irritability); and recovers two scores (m and d) to measure manic and depressive severity. In a secondary analysis of individuals with BP who monitored their symptoms over 6 weeks (n = 43), we perform a series of analyses to validate the digiBP survey internally, externally, and as a longitudinal measure.
We first verify a conceptual model for the survey in which items load onto two factors (“manic” and “depressive”). We then show weekly averages of m and d scores from digiBP can explain significant variation in weekly scores from the YMRS (R = 0.47) and SIGH-D (R = 0.58). Lastly, we examine the utility of the survey as a longitudinal measure by predicting an individual’s future m and d scores from their past m and d scores.
While further validation is warranted in larger, diverse populations, these validation analyses should encourage researchers to consider digiBP for their next digital study of BP.
About The Expert
Tijana Sagorac Gruichich
Juan Camilo David Gomez
Gabriel Zayas-Cabán
Melvin G McInnis
Amy L Cochran
References
PubMed