%0 Journal Article %T Mining geriatric assessment data for in-patient fall prediction models and high-risk subgroups %A Michael Marschollek %A Mehmet G£żvercin %A Stefan Rust %A Matthias Gietzelt %A Mareike Schulze %A Klaus-Hendrik Wolf %A Elisabeth Steinhagen-Thiessen %J BMC Medical Informatics and Decision Making %D 2012 %I BioMed Central %R 10.1186/1472-6947-12-19 %X A data set of n = 5,176 single in-patient episodes covering 1.5 years of admissions to a geriatric hospital were extracted from the hospital's data base and matched with fall incident reports (n = 493). A classification tree model was induced using the C4.5 algorithm as well as a logistic regression model, and their predictive performance was evaluated. Furthermore, high-risk subgroups were identified from extracted classification rules with a support of more than 100 instances.The classification tree model showed an overall classification accuracy of 66%, with a sensitivity of 55.4%, a specificity of 67.1%, positive and negative predictive values of 15% resp. 93.5%. Five high-risk groups were identified, defined by high age, low Barthel index, cognitive impairment, multi-medication and co-morbidity.Our results show that a little more than half of the fallers may be identified correctly by our model, but the positive predictive value is too low to be applicable. Non-fallers, on the other hand, may be sorted out with the model quite well. The high-risk subgroups and the risk factors identified (age, low ADL score, cognitive impairment, institutionalization, polypharmacy and co-morbidity) reflect domain knowledge and may be used to screen certain subgroups of patients with a high risk of falling. Classification models derived from a large data set using data mining methods can compete with current dedicated fall risk screening tools, yet lack diagnostic precision. High-risk subgroups may be identified automatically from existing geriatric assessment data, especially when combined with domain knowledge in a hybrid classification model. Further work is necessary to validate our approach in a controlled prospective setting.Falls and their consequences are a well-known and urgent problem in our ageing population. It is known that geriatric in-patients exhibit the highest fall incidence among institutionalized persons, ranging from 6.3 to 7.2% within a period of two weeks %K Accidental falls %K Geriatric assessment %K Data mining %U http://www.biomedcentral.com/1472-6947/12/19