| Literature DB >> 25519705 |
Kathryn M Rost1, Hongdao Meng2, Stanley Xu3,4.
Abstract
BACKGROUND: National working groups identify the need for return on investment research conducted from the purchaser perspective; however, the field has not developed standardized methods for measuring the basic components of return on investment, including costing out the value of work productivity loss due to illness. Recent literature is divided on whether the most commonly used method underestimates or overestimates this loss. The goal of this manuscript is to characterize between and within variation in the cost of work productivity loss from illness estimated by the most commonly used method and its two refinements.Entities:
Mesh:
Year: 2014 PMID: 25519705 PMCID: PMC4307989 DOI: 10.1186/s12913-014-0597-y
Source DB: PubMed Journal: BMC Health Serv Res ISSN: 1472-6963 Impact factor: 2.655
Measurement of key constructs
|
|
|
|
|---|---|---|
| Depression prevalence | National Comorbity Study adjusted using methods in Greenberg 1996 | Industry |
| Bureau of Labor Statistics 2010 | ||
| Lost absenteeism hours attributable to depression | ||
| Method 1 | American Productivity Audit in Stewart 2003 adjusted by Nicholson 2005 | Industry |
| Table three, Column 4 | ||
| Method 2 | American Productivity Audit in Stewart 2003 adjusted by Nicholson 2005 | Industry |
| Table three, Column 4 and 7 | ||
| Method 3 | American Productivity Audit in Stewart 2003 adjusted by Nicholson 2005 | Employer |
| Table Three, Column 4 and Table | ||
| Lost presenteeism hours attributable to depression | ||
| Method 1 | American Productivity Audit in Stewart 2003 | National |
| Method 2 | American Productivity Audit in Stewart 2003 | National |
| Method 3 | American Productivity Audit in Stewart 2003 adjusted by Table two items in current study | Employer |
| Wage and fringe | Bureau of Labor Statistics 2010 | Industry |
*Full citations provided in the reference section of the current study.
Items used to assess labor practices
|
|
|
|---|---|
| Sick leave | Please check the answer that best describes your company’s sick leave benefits: (a) paid sick leave, (b) paid sick leave as part of paid time off, or (c) no paid sick leave. |
| Probability of hiring temporaries when employees are absent | When an employee in your company |
| Probability of work completion by coworker/employee when employees are absent | This next question asks you about employees in your company who are not replaced by temporary workers whey they are absent. When an employee in your company |
| Probability of work completion by coworker/employee when employees are non-productive | When an employee in your company |
Scored as never =0%, seldom =25%, sometimes =50%, often =75%, always =100%.
Organizational characteristics (n = 325)+
| Number of physically distinct U.S. worksites (SD) | 21.9 (107.3) |
| Size | |
| % small (100 to 500 employees) | 33.5 |
| % medium (501 to 2500 employees) | 30.8 |
| % large (2501 plus employees) | 35.7 |
| Type | |
| % for-profit | 56.1 |
| % not-for-profit | 23.5 |
| % public sector | 20.4 |
| Company age (SD) | 74.8 (47.1) |
| Industry | |
| % Agriculture | 0.6 |
| % Construction | 1.8 |
| % Education/Health | 12.3 |
| % Finance | 6.5 |
| % Information | 2.8 |
| % Leisure/Hospitality | 13.2 |
| % Manufacturing | 22.5 |
| % Professional | 13.5 |
| % Public Administration | 14.5 |
| % Retail | 2.5 |
| % Transportation/Warehousing | 6.5 |
| % Utilities | 1.5 |
| % Wholesale | 0.9 |
| % Other | 0.9 |
| Labor monitoring | |
| % with any absenteeism monitoring | 73.2 |
| % with any productivity at work monitoring | 56.1 |
| Mean number of health plan carriers (SD) | 2.2 (2.4) |
| Insurance risk | |
| % fully insured | 24.1 |
| % self-insured | 46.2 |
| % mixture of full and self-insured | 9.7 |
| % with Employee Assistance Program | 80.5 |
| Mean expected % increase in health premiums (SD) | 7.7 (5.9) |
| Labor practices | |
| Sick leave benefits | |
| % paid sick leave | 59.7 |
| % paid sick leave as part of paid time off | 34.0 |
| % no sick leave | 6.3 |
| Likelihood of hiring temporary worker when employee misses work because of illness for one week | |
| 0% | 45.3 |
| 25% | 42.3 |
| 50% | 8.3 |
| 75% | 3.3 |
| 100% | 0.7 |
| Likelihood that employee’s work will be completed by coworkers/employee upon return when employees misses work for one week because of illness | |
| 0% | 9.7 |
| 25% | 12.5 |
| 50% | 18.3 |
| 75% | 33.9 |
| 100% | 25.6 |
| Likelihood that employee’s work will be completed by coworkers/employee at a later date when employees attends work but is not productive for one week | |
| 0% | 10.1 |
| 25% | 21.5 |
| 50% | 20.8 |
| 75% | 15.8 |
| 100% | 31.9 |
+Sample size varies from 280 to 325 due to missing data. Labor practices for missing items generated by multiple imputation. Percentages may not add to 100% because of rounding error.
Annual per capita productivity loss estimates across three methods for total sample (n = 325)
|
|
|
| ||
|---|---|---|---|---|
|
| ||||
| Per capita productivity costs | Mean (SD) | 617 (75)* | 649 (78)* | 316 (58)* |
| Median (CI)+ | 611 (524 719) | 643 (553 757) | 309 (246 396) | |
| Ratio ++ | NA | 1.05 | 0.50 | |
|
| ||||
| Per capita absenteeism days | Mean (SD) | 3 (6) | 3 (6) | 1 (3) |
| Median (CI)+ | 2 (1 3) | 2 (1 3) | 1 (0 2) | |
| Ratio++ | NA | 1.00 | 0.42 | |
| Per capita absenteeism costs | Mean (SD) | 96 (210) | 128 (277) | 62 (152) |
| Median (CI)+ | 71(26 109) | 94 (36 154) | 36 (3 101) | |
| Ratio++ | NA | 1.34 | 0.65 | |
|
| ||||
| Per capita presenteeism days | Mean (SD) | 16 (34) | 16 (34) | 8 (27) |
| Median (CI)+ | 12 (7 18) | 12 (7 18) | 3 (0 12) | |
| Ratio++ | NA | 1.00 | 0.50 | |
| Per capita presenteeism costs | Mean (SD) | 521 (1129) | 521 (1129) | 254 (917) |
| Median (CI)+ | 389 (156 602) | 389 (156 602) | 122 (0 419) | |
| Ratio++ | NA | 1.00 | 0.49 |
SD = standard deviation, NA = not applicable, + CI =10th and 90th percentile confidence interval around median, Ratio++ = ratio of disruption correction mean (or friction correction mean) to compensation mean. *Friction correction differs from compensation and disruption correction mean p < .0001.
Annual per capita productivity loss estimates across three methods by size and industry
|
|
|
| ||
|---|---|---|---|---|
|
| ||||
| Less than or equal to 10% (n = 34) | Mean (SD) | 469 (25) | 494 (26) | 207 (27) |
| Median (CI)+ | 470 (438 501) | 494 (461 527) | 207 (174 240) | |
| Ratio++ | NA | 1.05 | 0.44 | |
| Greater than 10% and less than 90% (n = 261) | Mean (SD) | 658 (88) | 692 (92) | 343 (67) |
| Median (CI)+ | 653 (549 782) | 687 (578 822) | 336 (259 436) | |
| Ratio++ | NA | 1.05 | 0.51 | |
| Greater than or equal to 90% (n = 30) | Mean (SD) | 393 (47) | 415 (50) | 173 (39) |
| Median (CI)+ | 396 (333 449) | 418 (352 475) | 172 (125 223) | |
| Ratio++ | NA | 1.06 | 0.44 | |
|
| ||||
| Education/Health (n = 40) | Mean (SD) | 471 (47) | 496 (49) | 226 (39) |
| Median (CI)+ | 466 (414 536) | 490 (436 564) | 223 (178 274) | |
| Ratio++ | NA | 1.05 | 0.48 | |
| Leisure/Hospitality (n = 43) | Mean (SD) | 167 (13) | 176 (14) | 80 (11) |
| Median (CI)+ | 167 (149 184) | 176 (157 193) | 79 (67 93) | |
| Ratio++ | NA | 1.05 | 0.47 | |
| Manufacturing (n = 73) | Mean (SD) | 699 (120) | 732 (125) | 353 (86) |
| Median (CI)+ | 704 (529 855) | 739 (557 894) | 353 (237 471) | |
| Ratio++ | NA | 1.05 | 0.50 | |
| Professional (n = 44) | Mean (SD) | 643 (125) | 672 (131) | 257 (63) |
| Median (CI)+ | 592 (526 869) | 619 (550 908) | 245 (209 291) | |
| Ratio++ | NA | 1.04 | 0.41 | |
| Public administration (n = 47) | Mean (SD) | 687 (97) | 727 (101) | 391 (73) |
| Median (CI)+ | 683 (554 821) | 723 (588 869) | 392 (290 492) | |
| Ratio++ | NA | 1.06 | 0.57 |
SD = standard deviation, NA = not applicable, CI+ = 10th and 90th percentile of median, Ratio++ = ratio of disruption correction mean (or friction correction mean) to compensation mean.