| Literature DB >> 27632360 |
Martin Härter1, Jörg Dirmaier1, Sarah Dwinger1, Levente Kriston1, Lutz Herbarth2, Elisabeth Siegmund-Schultze2, Isaac Bermejo3, Herbert Matschinger4, Dirk Heider4, Hans-Helmut König4.
Abstract
BACKGROUND: Chronic diseases, like diabetes mellitus, heart disease and cancer are leading causes of death and disability. These conditions are at least partially preventable or modifiable, e.g. by enhancing patients' self-management. We aimed to examine the effectiveness of telephone-based health coaching (TBHC) in chronically ill patients. METHODS ANDEntities:
Mesh:
Year: 2016 PMID: 27632360 PMCID: PMC5025178 DOI: 10.1371/journal.pone.0161269
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Fig 1Patient flow.
Sample Characteristics at Baseline, Pre- and Post-Matching.
| PSM | Chronic campaign | Heart failure campaign | Mental health campaign | ||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| CG | IG | CG | IG | CG | IG | ||||||||
| Mean | (SD) | Mean | (SD) | Mean | (SD) | Mean | (SD) | Mean | (SD) | Mean | (SD) | ||
| Age | Pre-PSM | 69.05 | (8.52) | 69.31 | (7.89) | 71.04 | (10.26) | 70.59 | (9.91) | 44.79 | (11.97) | 45.71 | (11.18) |
| Post-PSM | 69.25 | (8.27) | 69.02 | (7.91) | 71.27 | (10.17) | 70.49 | (9.67) | 46.60 | (11.02) | 46.35 | (10.62) | |
| Elixhauser Comorbidity Index (inpatient) | Pre-PSM | 4.21 | (5.79) | 4.19 | (5.87) | 14.26 | (6.68) | 14.01 | (6.41) | -1.48 | (2.87) | -1.99 | (2.52) |
| Post-PSM | 4.21 | (5.79) | 4.15 | (5.91) | 13.79 | (6.40) | 13.68 | (6.28) | -1.59 | (2.54) | -2.34 | (2.38) | |
| Elixhauser Comorbidity Index (outpatient) | Pre-PSM | 6.43 | (7.56) | 6.55 | (7.69) | 12.81 | (8.51) | 12.40 | (8.41) | -1.04 | (4.34) | -1.11 | (4.54) |
| Post-PSM | 6.75 | (7.67) | 6.74 | (7.67) | 13.00 | (8.82) | 12.49 | (8.26) | -1.15 | (4.84) | -1.84 | (3.91) | |
| Elixhauser Comorbidity Index (inability to work) | Pre-PSM | 2.11 | (3.54) | 2.19 | (3.81) | 7.16 | (3.16) | 6.68 | (4.41) | -2.28 | (1.76) | -2.41 | (1.62) |
| Post-PSM | 2.16 | (4.15) | 2.09 | (3.38) | 6.37 | (3.51) | 7.80 | (3.88) | -2.39 | (1.92) | -3.00 | (1.47) | |
| Female (%) | Pre-PSM | 1558 | (58.20) | 3719 | (57.80) | 174 | (49.15) | 383 | (49.61) | 140 | (69.31) | 264 | (70.21) |
| Post-PSM | 1516 | (58.40) | 1554 | (57.28) | 161 | (50.00) | 160 | (47.34) | 107 | (77.54) | 81 | (80.20) | |
| Hospital admissions | Pre-PSM | 1.18 | (1.19) | 1.22 | (1.19) | 2.06 | (1.51) | 1.94 | (1.18) | 2.08 | (0.89) | 2.10 | (0.90) |
| Post-PSM | 1.19 | (1.21) | 1.22 | (1.20) | 2.00 | (1.45) | 1.96 | (1.24) | 2.04 | (0.89) | 2.13 | (0.91) | |
| Hospital days | Pre-PSM | 11.58 | (53.52) | 11.69 | (50.76) | 22.60 | (22.62) | 21.83 | (48.07) | 80.05 | (40.23) | 87.02 | (44.65) |
| Post-PSM | 12.50 | (66.59) | 11.38 | (44.82) | 20.94 | (18.54) | 19.25 | (15.78) | 78.13 | (37.47) | 85.83 | (42.71) | |
| DDD | Pre-PSM | 2265.97 | (1282.54) | 2266.05 | (1247.18) | 2401.31 | (1426.85) | 2373.34 | (1431.26) | 872.38 | (896.58) | 853.23 | (791.00) |
| Post-PSM | 2274.35 | (1274.03) | 2292.56 | (1225.46) | 2417.49 | (1446.64) | 2385.14 | (1397.24) | 941.57 | (912.29) | 869.80 | (667.68) | |
| Cases of inability to work | Pre-PSM | 0.41 | (1.24) | 0.35 | (1.09) | 0.24 | (0.77) | 0.37 | (1.11) | 1.19 | (1.42) | 1.31 | (1.96) |
| Post-PSM | 0.37 | (1.18) | 0.35 | (1.11) | 0.20 | (0.72) | 0.31 | (1.02) | 0.96 | (1.28) | 1.36 | (1.61) | |
| Days of inability to work | Pre-PSM | 15.19 | (69.53) | 14.95 | (69.09) | 20.44 | (83.28) | 30.09 | (108.08) | 91.73 | (143.10) | 121.21 | (172.54) |
| Post-PSM | 15.95 | (73.51) | 16.38 | (70.60) | 17.36 | (73.45) | 23.48 | (91.39) | 83.20 | (129.85) | 106.83 | (142.55) | |
a = Propensity score matching
b = Control group
c = Intervention group
Fig 2Effects of telephone-based health coaching on time until hospital readmission.
Kaplan-Meier curves showing the proportion of individuals without hospital readmission over time (red curve = intervention group; blue curve = control group).
Effects of telephone-based health coaching on healthcare utilization: Results of linear fixed effects difference-in-difference regression models (ITT-II).
| Chronic campaign | Heart failure campaign | Mental health campaign | |
|---|---|---|---|
| Diff-in-Diff | Diff-in-Diff | Diff-in-Diff | |
| Hospital admissions | 0,10 (0,06) | -0,41 (0,22) | 0,26 (0,26) |
| Hospital days | 3,09 (2,27) | -6,17 (4,18) | -0,07 (10,68) |
| DDD | 155,03 (49,66) | 298,68 (194,31) | -162,42 (198,47) |
| Cases of inability to work | 0,01 (0,04) | -0,04 (0,07) | -0,08 (0,28) |
| Days of inability to work | -0,25 (2,57) | -3,67 (7,12) | -16,39 (21,30) |
a = Daily defined doses of medication
b = Difference in difference
* p<0.05;
** p<0.01;
***p<0.001
Descriptive statistics of health care utilization (Post-Matching).
| Time | Chronic campaign | Heart failure campaign | Mental health campaign | ||||
|---|---|---|---|---|---|---|---|
| CG | IG | CG | IG | CG | IG | ||
| Mean (SD) | Mean (SD) | Mean (SD) | Mean (SD) | Mean (SD) | Mean (SD) | ||
| Hospital cases | T0 | 1,19 (1,21) | 1,22 (1,20) | 2,00 (1,45) | 1,96 (1,24) | 2,04 (0,89) | 2,13 (0,91) |
| T2 | 1,54 (1,81) | 1,67 (1,98) | 2,35 (2,63) | 1,90 (2,19) | 1,34 (1,60) | 1,69 (1,96) | |
| Hospital days | T0 | 12,50 (66,59) | 11,38 (44,82) | 20,94 (18,54) | 19,25 (15,78) | 78,13 (37,47) | 85,83 (42,71) |
| T2 | 14,39 (40,25) | 16,37 (44,90) | 28,24 (51,13) | 20,39 (44,07) | 36,85 (59,27) | 44,49 (74,70) | |
| DDD | T0 | 2274,35 (1274,03) | 2292,56 (1225,46) | 2417,49 (1446,64) | 2385,14 (1397,24) | 941,57 (912,29) | 869,80 (667,68) |
| T2 | 4613,37 (2604,22) | 4786,60 (2534,59) | 4896,82 (3197,76) | 5163,14 (2841,91) | 2287,92 (2350,35) | 2053,73 (1601,67) | |
| Cases of inability to work | T0 | 0,37 (1,18) | 0,35 (1,11) | 0,20 (0,72) | 0,31 (1,02) | 0,96 (1,28) | 1,36 (1,61) |
| T2 | 0,48 (1,75) | 0,47 (1,77) | 0,22 (0,90) | 0,30 (1,16) | 1,41 (2,30) | 1,73 (2,61) | |
| Days of inability to work | T0 | 15,95 (73,51) | 16,38 (70,60) | 17,36 (73,45) | 23,48 (91,39) | 83,20 (129,85) | 106,83 (142,55) |
| T2 | 12,22 (60,06) | 12,41 (59,63) | 3,94 (31,09) | 6,39 (38,70) | 34,85 (93,33) | 42,10 (96,22) | |
a = Daily defined doses of medication
b = Control group
c = Intervention group
T0 = Baseline; T2 = 2 years after baseline
Fig 3Effects of telephone-based health coaching on mortality.
Kaplan-Meier survival curves (red curve = intervention group; blue curve = control group).
Effects of telephone-based health coaching on healthcare utilization: Results of linear fixed effects difference-in-difference regression models (ITT-I).
| Chronic campaign | Heart failure campaign | Mental health campaign | |
|---|---|---|---|
| Diff-in-Diff | Diff-in-Diff | Diff-in-Diff | |
| Hospital admissions | -0.01 (0.05) | -0.14 (0.13) | -0.12 (0.18) |
| Hospital days | 0.50 (1.54) | -3.53 (4.30) | -9.15 (5.85) |
| DDD | 43.78 (39.91) | 304.42 (111.38) | 72.15 (151.37) |
| Cases of inability to work | -0.06 (0.03) | -0.00 (0.09) | -0.15 (0.12) |
| Days of inability to work | -2.30 (2.11) | -5.19 (5.90) | -29.22 (8.02) |
a = Daily defined doses of medication
b = Difference in difference
* p<0.05;
** p<0.01;
*** p<0.001
Effects of telephone-based health coaching on healthcare utilization: Results of linear fixed effects difference-in-difference regression models (per protocol).
| Chronic campaign | Heart failure campaign | Mental health campaign | |
|---|---|---|---|
| Diff-in-Diff | Diff-in-Diff | Diff-in-Diff | |
| Hospital admissions | 0.13 | -0.35 (0.19) | 0.14 (0.30) |
| Hospital days | 1.83 (1.74) | -4.56 (5.34) | 1.16 (8.60) |
| DDD | 124.98 | 329.13 | 21.43 (238.36) |
| Cases of inability to work | -0.01 (0.04) | -0.04 (0.12) | 0.00 (0.19) |
| Days of inability to work | 0.29 (2.46) | -6.89 (7.54) | -19.70 (12.14) |
a = Daily defined doses of medication
b = Difference in difference
* p<0.05;
** p<0.01;
*** p<0.001