Journal of Rehabilitation Medicine 51-1CompleteIssue | Page 9

6 J. Oosterhaven et al. Table III. Results for predictors for dropout in multiple logistic regression analysis Domain Predictors retained in any multiple logistic regression model Sociodemographic Predictors Pre-treatment work status a (24) Ethnicity (32) Patient Number of sick days (27) Pre-contemplation, Action (28) Opioid dependency, Any cluster B Dx (24) Return to work expectation, Somatization (29) Disease Self-efficacy, Walk distance (30) Ability to work (27) Variability in pain (31) Pain behaviour, Meds too long (33) Length of disability (24) Treatment Potential predictors not retained in any model Sociodemographic Duration of work disability (29) Type of institution, Phase of treatment (32) Age a (27, 30, 32, 33) Sex (24, 27, 29, 30, 32, 33) Social status (27, 29, 33) Job demand, Vibrations in job (27) Original job available, Pre-treatment case settlement (24) Patient Pre-treatment work status a (33) Depression (24, 28) Anxiety disorder, Any cluster A Dx, Any cluster C Dx, Any cluster D Dx (24) Disease Pain distress, Catastrophizing (30) Age first low back pain, smoking, ADL scores, Sport activities, Aerobic capacity, mobility, isometric abdominal endurance, isometric back endurance (27) Compensable body parts, Area of injury, Pretreatment surgery (24) Pain site, chronicity (30) Pain intensity a (27, 30, 31) Severity of disability a (29) Predictors retained in 2 multiple logistic regression models Sociodemographic Disease Pain intensity a (28, 29) Predictors retained in 3 multiple logistic regression models Disease Severity of disability a (24, 28, 33) Age a (28, 29) Number of multiple logistic regression models tested in independent samples 0 Outcome variance explained 34% (Return to work expectation, Somatization, Age, Duration of work disability, mean pain intensity) (29) a Conflicting results. ADL: activities of daily living. Any cluster A Dx: paranoid; schizoid; schizotypal; Any cluster B Dx; antisocial; borderline; histrionic; narcissistic; Any cluster C Dx: avoidant; dependent; obsessive-compulsive; Any Cluster D Dx: otherwise. with the reporting of the results of the multiple logistic regression analyses (Table S2 1 predictors organized per study and Table S3 1 : predictors grouped in domains). Results for predictors for dropout in univariate analyses In total, 63 potential predictors were studied for an association with dropout in univariate analyses in the 4 domains of the Meichenbaum & Turk: (i) sociode- mographic domain (19); (ii) patient domain (21); (iii) disease domain (21) and (iv) treatment domain (2) (Table II). Most potential predictors were examined in a single study. Only 10 out of 63 potential predictors were investigated in more than one study. Sociodemographic domain Conflicting results were found for sex (24, 27, 30, 32, 33), ethnicity (24, 32), pre-treatment work-status (24, 33) and job demand (24, 27). Seven of the 8 studies www.medicaljournals.se/jrm included in this review investigated age as a potential predictor for dropout in univariate analyses. Six out of 7 studies showed significant associations for younger age as a predictor for dropout (27–30, 32, 33). Patient domain Conflicting results were found for depression as a potential predictor for dropout. The results of the uni- variate analyses revealed 2 studies with a significant association of depression with dropout. One study indicated that low depression scores were associated with dropout (28) and another study showed that hig- her scores on depression scales were associated with dropout (24). Two studies found a non-significant as- sociation with dropout (24, 33). Disease domain For 2 potential predictors in the disease domain con- flicting results in the direction of the association with