Publication | Closed Access
The Application of a Classification-Tree Model for Predicting Low Back Pain Prevalence Among Hospital Staff
15
Citations
15
References
2013
Year
Pain MedicineLbp Risk LevelsInjury PreventionWorker HealthDisease ClassificationHospital StaffHospital MedicinePain SyndromeChronic Musculoskeletal ConditionPain ManagementHealth Services ResearchBack PainHealth SciencesOccupational ErgonomicsTree ModelClassification-tree ModelOutcomes ResearchLbp DiagnosisPhysical TherapyPain ResearchNursingPatient SafetyOccupational DisorderMedicineEmergency Medicine
Low back pain (LBP) is a widespread musculoskeletal condition that frequently occurs in the working-age population (including hospital staff). This study proposes a classification-tree model to predict LBP risk levels in Sacré-Cœur Hospital, Lebanon (as a case study-236 chosen staffs) using various predictor individual and occupational factors. The developed tree model explained 80% of variance in LBP risk levels using standing hours/day (90% in relative importance), job status/sitting hours per day (80% each), body mass index (71%), working days/week (63%), domestic activity hours/week (36%), weight (35%), job dissatisfaction/sitting on ergonomic chairs (30% each), height (28%), gender (27%), sufficient break time (26%), using handling techniques/age (25% each), job stress (24%), marital status/wearing orthopedic insoles/extra professional activity (22% each), practicing prevention measures (20%), children care hours/week (16%), and type of sport activity/sports hours per week, car sitting, and fear of changing work due to LBP (15% each). The overall accuracy of this predictive tree once compared with actual subjects was estimated to be 77%. The proposed tree model can be used by expert physicians in their decision-making for LBP diagnosis among hospital staff.
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