Using alcohol consumption diary data from an internet intervention for outcome and predictive modeling: a validation and machine learning study.
Philip LindnerMagnus JohanssonMikael GajeckiAnne H BermanPublished in: BMC medical research methodology (2020)
Data from a non-mandatory alcohol consumption diary, adjusted for missing entries, approximates follow-up data at a group level, suggesting that such data can be used to reveal trajectories and processes during treatment and possibly be used to impute missing follow-up data. At an individual level, however, calendar data from the first half of the intervention did not have high predictive accuracy, presumable due to a high rate of missing data and unclear missing mechanisms.