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Validation of the ADFICE_IT Models for Predicting Falls and Recurrent Falls in Geriatric Outpatients

Authors :
van de Loo, Bob
Heymans, Martijn W.
Medlock, Stephanie
Boyé, Nicole D.A.
van der Cammen, Tischa J.M.
Hartholt, Klaas A.
Emmelot-Vonk, Marielle H.
Mattace-Raso, Francesco U.S.
Abu-Hanna, Ameen
van der Velde, Nathalie
van Schoor, Natasja M.
van de Loo, Bob
Heymans, Martijn W.
Medlock, Stephanie
Boyé, Nicole D.A.
van der Cammen, Tischa J.M.
Hartholt, Klaas A.
Emmelot-Vonk, Marielle H.
Mattace-Raso, Francesco U.S.
Abu-Hanna, Ameen
van der Velde, Nathalie
van Schoor, Natasja M.
Source :
van de Loo , B , Heymans , M W , Medlock , S , Boyé , N D A , van der Cammen , T J M , Hartholt , K A , Emmelot-Vonk , M H , Mattace-Raso , F U S , Abu-Hanna , A , van der Velde , N & van Schoor , N M 2023 , ' Validation of the ADFICE_IT Models for Predicting Falls and Recurrent Falls in Geriatric Outpatients ' , Journal of the American Medical Directors Association , vol. 24 , no. 12 , pp. 1996-2001 .
Publication Year :
2023

Abstract

Objectives: Before being used in clinical practice, a prediction model should be tested in patients whose data were not used in model development. Previously, we developed the ADFICE_IT models for predicting any fall and recurrent falls, referred as Any_fall and Recur_fall. In this study, we externally validated the models and compared their clinical value to a practical screening strategy where patients are screened for falls history alone. Design: Retrospective, combined analysis of 2 prospective cohorts. Setting and Participants: Data were included of 1125 patients (aged ≥65 years) who visited the geriatrics department or the emergency department. Methods: We evaluated the models' discrimination using the C-statistic. Models were updated using logistic regression if calibration intercept or slope values deviated significantly from their ideal values. Decision curve analysis was applied to compare the models’ clinical value (ie, net benefit) against that of falls history for different decision thresholds. Results: During the 1-year follow-up, 428 participants (42.7%) endured 1 or more falls, and 224 participants (23.1%) endured a recurrent fall (≥2 falls). C-statistic values were 0.66 (95% CI 0.63-0.69) and 0.69 (95% CI 0.65-0.72) for the Any_fall and Recur_fall models, respectively. Any_fall overestimated the fall risk and we therefore updated only its intercept whereas Recur_fall showed good calibration and required no update. Compared with falls history, Any_fall and Recur_fall showed greater net benefit for decision thresholds of 35% to 60% and 15% to 45%, respectively. Conclusions and Implications: The models performed similarly in this data set of geriatric outpatients as in the development sample. This suggests that fall-risk assessment tools that were developed in community-dwelling older adults may perform well in geriatric outpati

Details

Database :
OAIster
Journal :
van de Loo , B , Heymans , M W , Medlock , S , Boyé , N D A , van der Cammen , T J M , Hartholt , K A , Emmelot-Vonk , M H , Mattace-Raso , F U S , Abu-Hanna , A , van der Velde , N & van Schoor , N M 2023 , ' Validation of the ADFICE_IT Models for Predicting Falls and Recurrent Falls in Geriatric Outpatients ' , Journal of the American Medical Directors Association , vol. 24 , no. 12 , pp. 1996-2001 .
Notes :
application/pdf, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1390850315
Document Type :
Electronic Resource