Skip to main content
Erschienen in: Journal of Occupational Rehabilitation 3/2011

Open Access 01.09.2011

Resuming Work After Cancer: A Prospective Study of Occupational Register Data

verfasst von: C. A. M. Roelen, P. C. Koopmans, A. J. M. Schellart, A. J. van der Beek

Erschienen in: Journal of Occupational Rehabilitation | Ausgabe 3/2011

Abstract

Introduction Long-term employment rates have been studied in cancer survivors, but little is known about the return to work of cancer patients. This study investigated return to work (RTW) within 2 years after the diagnosis of different types of cancer. Methods This prospective study investigated the associations of demographics (age, gender, socioeconomic status, and residential region) and occupational factors (occupation, duration of employment, and company size) of employees absent from work due to cancer with the time to partial RTW, defined as working at least 50% of the earnings before sickness absence. Likewise, the associations of demographics and occupational factors with full RTW at equal earnings as before sickness absence were investigated. Results The cohort included 5,234 employees who had been absent from work due to cancer between January 2004 and December 2006. The time to partial RTW was shortest among employees with skin cancer (median 55 days) and longest among employees with lung cancer (median 377 days). There were no significant associations between RTW and demographics. With regard to the occupational factors, employees in high occupational classes started working earlier than those in low occupational classes, but the time to full RTW did not differ significantly across occupational classes. Employees working in large companies returned to work earlier than those working in small companies. Conclusion RTW after different types of cancer depended on occupational factors rather than demographics.

Introduction

In The Netherlands, more than 33,000 gainfully employed men and women were newly diagnosed with cancer in 2006. Recent improvements in screening and treatment have not only increased cancer survivorship [1], but also the ability of employees to resume their work after cancer [24]. Return to work after cancer can be regarded as social recovery and adds to the survivors’ quality of life.
Recent studies on the employment of cancer survivors have focused on employment rates three to 20 years after diagnosis based on national employment statistics [2, 5]. Overall, cancer survivors were 1.4 times more likely to be unemployed on the long-term than healthy controls [6]. Three years after diagnosis, the employment rate of Finnish cancer survivors was 71% (range 41–84%) and varied considerably per cancer type [7, 8]. A 20-year follow-up study showed that 19% of 65,510 Danish cancer patients were unemployed after a mean duration of 5.2 years [9]. Employment rates of 34,032 Norwegians diagnosed with cancer between 1953 and 2001 showed that 13% of male cancer survivors and 20% of female cancer survivors were not employed in 2001 as compared to 8% of male controls and 14% of female controls [10]. The employment rate of cancer survivors has most commonly been found to be associated with age, cancer type and treatment, education, occupation, and work load [7].
Employees encounter considerable problems when they resume work after cancer [11, 12]. Apart from the physical limitations, difficulties in managing fatigue and coping with the stress of having had cancer interfere with return to work [13]. Furthermore, a non-supportive work climate and the advice from physicians about work may postpone return to work [14]. Recently, Verbeek discussed three opportunities for physicians to help cancer patients resume their work [15]. The first opportunity is including the skills necessary for return to work in the patient’s treatment [16]. Secondly, physicians may advise to accommodate the work environment, for instance by adjusting work tasks and times and by creating a supportive work environment to facilitate return to work [11]. Finally, occupational rehabilitation should pay attention to disability cognitions as it has been reported that 20% of cancer patients mentioned deterioration in work motivation and career prospects [12].
Few studies have examined the time to return to work after the diagnosis of cancer. Balak et al. [18] reported that women with early-stage breast cancer returned to work 4.7 (standard deviation [SD] = 5.4) months after surgery, 3.0 (SD = 3.0) months after finishing adjuvant radiotherapy, and 5.5 (SD = 3.2) months after finishing adjuvant chemotherapy [18]. The present study investigates the time to return to work for other cancer types within 2 years after diagnosis. We were interested in the associations of demographics (age, gender, socioeconomic status, and residential region) and occupational factors (occupation, duration of employment, and company size) with the time to partial return to work as well as full return to work.

Methods

Study Population and Setting

ArboNed Occupational Health Services contracts Dutch companies nationwide to provide their employees with occupational health services. ArboNed collects information about the employees from the Human Resources departments of all contracted companies. The ArboNed register contains the sickness absence data and medical diagnoses of 1 million employees of whom 22% worked in the industrial sector and 78% in the service sector. According to Statistics Netherlands, 23% of the Dutch workforce was employed in the industrial sector and 73% in the service sector in 2005 [19].
In The Netherlands, employees report sick to their employer. The employer records sickness absence and sends the sick report electronically to the ArboNed register on the first day of sickness absence. Short-term sickness absence is self-certified, but sickness absence episodes exceeding 4 weeks must be medically certified by an occupational physician (OP) with diagnoses of the 10th version of the International Classification of Diseases [20].

Sickness Absence Register Data

The ArboNed sickness absence register included 1,091,578 employees in 2004, 1,010,686 employees in 2005, and 1,024,100 employees in 2006 working in more than 30,000 different companies. Employees with sickness absence due to breast cancer, genital cancer, gastrointestinal cancer, lung cancer, skin cancer, or blood malignancies were eligible for this study if they were:
  • absent from work due to cancer between 1 January 2004 and 31 December 2006
  • in paid permanent employment at the time of diagnosis.
If an employee had more than one episode of sickness absence due to cancer between January 2004 and December 2006, only the first episode was included in the study, even if the second episode was due to another type of cancer. Hence, all episodes were independent observations. The time to full return to work after cancer was compared to the time to full return to work of 271,834 sickness absences due to non-malignant disorders, mostly chronic musculoskeletal disorders (38%), mental disorders (20%), gastrointestinal disorders (5%), and respiratory disorders (5%). All employees gave informed consent to the use of their sickness absence data for scientific research. According to Dutch law, approval from a medical ethics committee was not necessary as we analyzed sickness absence register data and neither consulted medical files nor involved the employees personally in the study.

Demographics and Occupational Factors

Age (<35 years, 35–44 years, 45–54 years, and ≥55 years) at the time of diagnosis, gender (male, female), socioeconomic status, and residential region were retrieved from the sickness absence register and included as demographic independent variables. The socioeconomic status and residential region were determined by the employees’ zipcodes, which were recoded into neighbourhood socioeconomic status estimations according to the guidelines of the Netherlands Institute for Social Research [21]. The residential regions were divided into a western region (zipcodes 1,000–2,999), central region (zipcodes 3,000–3,999), southern region (zipcodes 4,000–5,999), eastern region (zipcodes 6,000–7,999), and a northern region (zipcodes 8,000–9,999).
Occupation, duration of employment (0–5 years, 6–10 years, 10–20 years, and >20 years), and company size (<75, 75–500, 501–5,000, and >5,000 staff) were included as occupational independent variables. Occupations were categorized using the SBC-1992 (2001 modified version) program of Statistics Netherlands [22], which is based on the International Standard Classification of Occupations (ISCO-88) issued by the International Labour Office [23]. The SBC-1992 classification distinguishes between low (primary school and junior occupational education), medium (senior occupational education), and high (high school and university) occupational classes, as well as types of occupations (unskilled workers, technicians, operators, transporters, teachers, care takers, administrators, sales workers, and managers).

Events: Partial and Full Return to Work

The calendar days between the date of reporting sick and date of return to work (RTW) were regarded as days of sickness absence irrespective of the actual work days. Dutch sickness absence insurance legislation regards episodes of sickness absence as one episode when they have less than 28 days of recovery between them, even if the causes of the episodes differ. We adopted this insurance time frame of 28 days in our definitions of RTW. Partial RTW was defined as working at ≥50% of the earnings before sickness absence for at least 28 consecutive days. Full RTW was defined as working at equal earnings as before sickness absence for at least 28 consecutive days. Data were censored if RTW did not occur within 2 years after diagnosis and if employees left employment (n = 446) or died (n = 324) within 2 years after diagnosis.

Statistics

Cox proportional hazards models are widely used to analyse survival data. Although a time-dependence parameter can be imposed in Cox models, parametric models are preferred when time itself is an independent variable [24]. Time plays an important role in RTW, as the probability of resuming work decreases with increasing duration of sickness absence [25, 26]. Different types of parametric models can be distinguished, based on the time dependence of the hazard that is the probability of the event occurring [27, 28]. The hazard function reflects the baseline hazard for an average individual in the sample at any moment in time. The generalized gamma (GG) distribution is a three-parameter hazard function with location parameter (γ), scale parameter (δ), and shape parameter (κ). The GG distribution over time (t) is given by the probability density function:
$$ f_{GG} (t) = {\frac{{\left| \delta \right|\gamma (\gamma t)^{\kappa \delta - 1} \exp \left[ { - (\gamma t)^{\delta } } \right]}}{\Upgamma (\kappa )}} $$
in which Γ denotes the gamma function \( \Upgamma = \int\nolimits_{0}^{\infty } {x^{\kappa - 1} \varepsilon^{ - x} dx} \) [29, 30].
The GG distribution is convenient because it includes monotonically increasing or decreasing hazard functions, as well as bathtub-shaped or arc-shaped functions [2832]. This advantage, however, is neutralized by the difficulties in estimating the GG parameters [31]. Lawless [32] recommended the Maximum Likelihood Method (MLM) to select arbitrary values of κ and generate the maximum likelihood estimates of γ and δ for any given κ [32]. The optimal value of κ is determined by comparing the likelihood ratios for alternative values of κ. Using the MLM strategy, we calculated a GG model with κ = 10 for the baseline hazard function (Fig. 1a). In order to check the statistical fit of this parametric GG model, generalized residuals were computed [33]. The residuals follow a straight line in the residual plot if the GG model is appropriate (Fig. 1b).
Lawless also showed that the GG regression model can be written as: log(t) = b0 + b1X1 + b2X2 + …… + biXi + εδ [32] in which ε is an error term and δ determines the error variance. The GG regression model estimates the GG regression coefficients (bGG) b1 to bi. If a bGG is negative then an increase in the corresponding variable shortens the expected duration until the occurrence of RTW, whereas it has the opposite effect when the bGG is positive [34]. All analyses were performed in Transition Data Analysis (TDA, version 6.4o), which is the preferred software for parametric survival models [24, 35], controlling for type of cancer, demographics and occupational variables. Lack of independence or clustering could be produced by subjects being categorized by a common factor and this might result in decreased standard errors. To prevent wrongly rejecting the null hypothesis, the level of significance was set at 1% and significance was concluded for P < 0.01.

Results

Between January 2004 and December 2006, 5,234 employees had an episode of sickness absence due to cancer and were eligible for this study. Breast cancer, female genital cancer, and gastrointestinal cancer were most prevalent as is shown in Table 1. 65% of employees with cancer were ≥45 years of age, 57% worked in low occupational classes, and 30% in administration or sales. The greater part of employees with cancer worked <10 years in companies employing <500 workers. Follow-up was incomplete in 770 employees (15%).
Table 1
Demographics and occupational factors stratified by cancer type
 
Breast
♀Genital
Gastro intestinal
Lung
♂Genital
Skin
Blood
Other
Total
Number of cases
1,642
878
741
456
417
318
306
476
5,234
Cases
         
Men
13 (1%)
0
514 (69%)
292 (64%)
417 (100%)
189 (59%)
200 (65%)
234 (49%)
1,861 (36%)
Women
1,629 (99%)
878 (100%)
227 (31%)
164 (36%)
0
129 (41%)
106 (35%)
242 (51%)
3,373 (64%)
Missing
0
0
0
0
0
0
0
0
0
Age
         
<35
120 (7%)
165 (19%)
26 (4%)
6 (1%)
105 (25%)
47 (15%)
95 (31%)
80 (17%)
644 (12%)
35–44
445 (27%)
289 (33%)
82 (11%)
56 (12%)
51 (12%)
99 (31%)
71 (23%)
104 (22%)
1,197 (23%)
45–54
764 (47%)
318 (36%)
290 (39%)
190 (42%)
76 (18%)
87 (27%)
72 (24%)
174 (37%)
1,971 (38%)
≥55
310 (19%)
105 (12%)
342 (46%)
203 (45%)
185 (44%)
85 (27%)
66 (22%)
117 (25%)
1,413 (27%)
Missing
3
1
1
1
0
0
2
1
9
Residential region
         
West
454 (28%)
284 (32%)
220 (30%)
129 (28%)
114 (27%)
79 (25%)
78 (26%)
123 (26%)
1,481 (28%)
Central
275 (17%)
177 (20%)
138 (19%)
80 (18%)
82 (20%)
64 (20%)
62 (20%)
98 (21%)
976 (19%)
South
417 (25%)
182 (21%)
169 (23%)
124 (27%)
108 (26%)
68 (22%)
67 (22%)
107 (23%)
1,242 (24%)
East
317 (19%)
142 (16%)
140 (19%)
80 (18%)
82 (20%)
70 (22%)
59 (19%)
85 (18%)
975 (19%)
North
178 (11%)
92 (11%)
70 (10%)
41 (9%)
31 (7%)
33 (11%)
39 (13%)
60 (13%)
544 (10%)
Missing
1
1
4
2
0
4
1
3
16
Socioeconomic status
         
High
435 (27%)
231 (27%)
175 (24%)
100 (22%)
105 (25%)
75 (24%)
73 (24%)
113 (24%)
1,307 (25%)
Above average
388 (24%)
216 (25%)
185 (25%)
127 (28%)
108 (26%)
78 (25%)
79 (26%)
101 (21%)
1,282 (25%)
Below average
416 (25%)
179 (21%)
181 (25%)
107 (24%)
105 (25%)
87 (28%)
81 (27%)
130 (28%)
1,286 (25%)
Low
396 (24%)
244 (28%)
192 (26%)
116 (26%)
96 (23%)
72 (23%)
71 (23%)
127 (27%)
1,314 (25%)
Missing
7
8
8
6
3
6
2
5
45
Occupational class
         
Low
653 (60%)
371 (65%)
252 (52%)
157 (55%)
121 (46%)
119 (53%)
104 (54%)
180 (57%)
1,957 (57%)
Medium
325 (30%)
164 (29%)
168 (34%)
94 (33%)
96 (36%)
87 (39%)
64 (33%)
89 (28%)
1,087 (32%)
High
104 (10%)
34 (6%)
68 (14%)
35 (12%)
47 (18%)
19 (8%)
25 (13%)
48 (15%)
380 (11%)
Missing
560
309
253
170
153
93
113
159
1810
Occupation
         
Unskilled
156 (14%)
92 (16%)
50 (10%)
41 (14%)
27 (10%)
22 (10%)
26 (14%)
41 (13%)
455 (13%)
Health care workers
286 (26%)
140 (25%)
56 (12%)
26 (9%)
3 (1%)
25 (11%)
15 (8%)
41 (13%)
359 (11%)
Teachers & civil servants
92 (9%)
32 (6%)
29 (6%)
16 (6%)
6 (2%)
16 (7%)
7 (4%)
19 (6%)
217 (6%)
Technicians
16 (2%)
12 (2%)
80 (16%)
64 (22%)
74 (28%)
49 (22%)
37 (19%)
27 (9%)
592 (17%)
Operators
34 (3%)
24 (4%)
43 (9%)
28 (10%)
21 (8%)
15 (7%)
12 (6%)
23 (7%)
200 (6%)
Transporters
44 (4%)
26 (5%)
49 (10%)
32 (11%)
37 (14%)
38 (17%)
28 (15%)
34 (11%)
288 (8%)
Administrators & salesworkers
384 (36%)
203 (36%)
132 (27%)
53 (19%)
53 (20%)
45 (20%)
45 (23%)
100 (32%)
1,015 (30%)
Managers
53(5%)
32 (6%)
40 (8%)
23 (8%)
40 (15%)
12 (5%)
16 (8%)
30 (10%)
249 (7%)
Other
148 (13%)
40 (7%)
38 (8%)
19 (7%)
9 (3%)
19 (8%)
14 (7%)
21(7%)
266(1%)
Missing
560
309
253
170
153
93
113
159
1,810
Duration of employment
         
≤5 years
337 (24%)
238 (31%)
151 (24%)
86 (22%)
92 (25%)
55 (19%)
87 (33%)
133 (32%)
1179 (26%)
6–10 years
522 (37%)
275 (36%)
166 (26%)
112 (28%)
100 (27%)
90 (31%)
80 (30%)
128 (31%)
1,473 (32%)
11–20 years
340 (24%)
155 (20%)
123 (19%)
88 (22%)
71 (19%)
63 (22%)
54 (20%)
74 (18%)
968 (21%)
>20 years
213 (15%)
91 (12%)
198 (31%)
109 (28%)
106 (29%)
83 (29%)
45 (17%)
85 (20%)
930 (20%)
Missing
230
119
103
61
48
27
40
56
684
Company size (staff)
         
<75
460 (29%)
244 (29%)
210 (30%)
149 (35%)
134 (34%)
80 (27%)
92 (31%)
112 (25%)
1,481 (30%)
75–500
405 (26%)
213 (25%)
206 (29%)
124 (29%)
122 (31%)
89 (30%)
67 (23%)
140 (31%)
1,366 (27%)
500–5,000
611 (39%)
312 (37%)
232 (33%)
124 (29%)
111 (28%)
90 (30%)
101 (35%)
134 (30%)
1,715 (34%)
>5,000
98 (6%)
83 (10%)
55 (8%)
34 (8%)
27 (7%)
39 (13%)
33 (11%)
66 (15%)
435 (9%)
Missing
68
26
38
25
23
20
13
24
237
The RTW curves per cancer type showed that RTW of employees after skin cancer and genital cancer was comparable to RTW after non-malignant chronic disease (Fig. 2). For other types of cancer the RTW rates were lower than for non-malignant chronic disease.
The data of 2,050 employees with cancer were incomplete, mainly because of missings in the occupational independent variables. The employees with incomplete data did not differ in age category (Chi-square P = 0.46), gender (Chi-square P = 0.23), or socioeconomic status (Chi-square P = 0.03) from those with complete data, but employees living in the western region of The Netherlands more often had missing data (Chi-square P < 0.01). 3,024 employees (58%) with complete data were included in GG regression analysis.

Partial Return to Work

The time to partial RTW was longer among employees with breast cancer, gastrointestinal cancer, lung cancer and blood malignancies, and in men with genital cancer compared to employees with skin cancer (Table 2). The GG regression coefficients of female genital cancer did not differ significantly from the GG coefficients of skin cancer, indicating that the partial RTW of women after genital cancer approximated that of employees with skin cancer, which was also demonstrated in Fig. 2.
Table 2
Survival analysis of return to work stratified by cancer type using a generalized gamma parametric model
 
Time to partial return to work
Time to full return to work
Median days (99% CIa)
b GG b (99% CIa)
Median days (99% CIa)
b GG b (99% CIa)
Cancer type
    
Skin
51 (35–67)
Reference
75 (45–105)
Reference
Breast
271 (246–296)
1.06 (0.76–1.37)**
349 (329–369)
1.08 (0.84–1.33)**
♀Genital
79 (68–90)
0.26 (−0.06 to 0.58)
104 (90–118)
0.22 (−0.04 to 0.48)
Gastrointestinal
249 (201–297)
1.35 (1.03–1.66)**
344 (291–397)
1.31 (1.05–1.56)**
Lung
377 (307–447)
1.88 (1.51–2.25)**
484 (351–617)
1.61 (1.31–1.92)**
♂Genital
112 (87–137)
0.63 (0.27–0.98)**
164 (116–212)
0.71 (0.43–1.00)**
Blood
299 (236–362)
1.56 (1.17–1.94)**
392 (302–482)
1.50 (1.19–1.81)**
Other
222 (174–270)
1.19 (0.85–1.53)**
297 (219–375)
1.08 (0.81–1.36)**
Demographics
    
Age
    
 ≥ 55 years
218 (192–244)
Reference
293 (260–326)
Reference
 45–54 years
206 (180–232)
−0.07 (−0.24 to 0.10)
288 (256–320)
−0.02 (−0.16 to 0.12)
 35–44 years
165 (127–203)
−0.11 (−0.30 to 0.09)
259 (221–297)
−0.07 (−0.24 to 0.09)
 < 35 years
124 (90–158)
−0.17 (−0.42 to 0.08)
181 (127–235)
−0.16 (−0.37 to 0.04)
Gender
    
 Men
193 (170–216)
Reference
272 (242–302)
Reference
 Women
200 (177–223)
0.20 (−0.03 to 0.43)
273 (249–297)
0.13 (−0.06 to 0.32)
Socioeconomic status
    
 Low
200 (168–232)
Reference
275 (239–311)
Reference
 Below average
201 (166–236)
0.01 (−0.19 to 0.20)
272 (234–310)
0.02 (−0.13 to 0.18)
 Above average
198 (165–231)
−0.05 (−0.23 to 0.14)
277 (244–310)
−0.01 (−0.16 to 0.14)
 High
189 (158–220)
−0.04 (−0.24 to 0.15)
270 (229–311)
0.00 (−0.16 to 0.16)
Residential region
    
 West
197 (164 − 230)
Reference
293 (252–334)
Reference
 Central
180 (144–216)
−0.12 (−0.32 to 0.07)
257 (206–308)
−0.16 (−0.32 to −0.00)**
 South
190 (161–219)
−0.01 (−0.20 to 0.18)
268 (231–305)
−0.11 (−0.26 to 0.04)
 East
205 (158–252)
−0.00 (−0.20 to 0.20)
257 (217–297)
−0.16 (−0.32 to 0.01)
 North
232 (196–268)
0.06 (−0.18 to 0.30)
298 (253–343)
−0.05 (−0.24 to 0.15)
Occupational factors
    
Occupational class
    
 Low
199 (176–222)
Reference
265 (240–290)
Reference
 Medium
195 (168 − 222)
−0.14 (−0.32 to 0.03)
286 (254–318)
0.03 (−0.11 to 0.17)
 High
183 (137–229)
−0.31 (−0.57 to −0.04)**
275 (228–322)
−0.03 (−0.25 to 0.19)
Occupation
    
 Unskilled
219 (171–267)
Reference
287 (220–354)
Reference
Public sector
    
 Health care workers
204 (160–248)
−0.01 (−0.27 to 0.24)
283 (231–335)
−0.07 (−0.27 to 0.14)
 Teachers and civil servants
260 (200–320)
0.12 (−0.24 to 0.48)
326 (269–383)
−0.01 (−0.31 to 0.28)
Private sector
    
 Technicians
190 (148–232)
−0.02 (−0.33 to 0.29)
279 (206–352)
−0.08 (−0.34 to 0.17)
 Operators
197 (129–265)
−0.21 (−0.55 to 0.14)
254 (177–331)
−0.15 (−0.43 to 0.13)
 Transporters
188 (131–245)
−0.06 (−0.38 to 0.26)
247 (213–281)
0.01 (−0.25 to 0.28)
 Administrators & salesworkers
177 (148–206)
−0.21 (−0.43 to 0.02)
272 (239–305)
−0.08 (−0.27 to 0.10)
 Managers
154 (90–218)
−0.18 (−0.53 to 0.18)
248 (206–290)
−0.06 (−0.35 to 0.24)
 Other
162 (64–260)
−0.24 (−0.83 to 0.36)
273 (73–473)
−0.19 (−0.67 to 0.30)
Duration of employment (years)
    
 0–5
160 (130–190)
Reference
221 (183–259)
Reference
 6–10
214 (186–242)
0.11 (−0.06 to 0.29)
294 (263–325)
0.18 (0.04–0.33)**
 11–20
210 (171–249)
0.10 (−0.09 to 0.30)
292 (258–326)
0.12 (−0.04 to 0.28)
 >20
197 (167–227)
0.00 (−0.20 to 0.21)
259 (226–292)
0.03 (−0.14 to 0.20)
Company size
    
 <75
217 (173–261)
Reference
313 (273–353)
Reference
 75–500
203 (174–232)
−0.10 (−0.28 to 0.08)
275 (243–307)
−0.11 (−0.26 to 0.04)
 500–5,000
197 (172–222)
−0.13 (−0.31 to 0.05)
272 (240–304)
−0.10 (−0.25 to 0.05)
 >5,000
113 (74–152)
−0.56 (−0.82 to −0.29)**
180 (127–233)
−0.54 (−0.76 to −0.33)**
** P < 0.01
aConfidence interval
bGeneralized gamma regression coefficient; a negative coefficient indicates a shorter duration until return to work and a positive coefficient a longer duration
Although young employees (<35 years of age) tended to resume work earlier (median 124 days after reporting sick) than employees aged ≥55 years (median 218 days), the difference (P = 0.08) was not significant at the 1% level. The time to partial RTW after cancer did not depend on gender and did not differ across socioeconomic classes or residential regions (Table 2).
Employees working in high occupational classes resumed work earlier than those working in low occupational classes. Transporters, administrators and sales workers, and managers started working earlier than unskilled workers, but the differences in partial RTW after cancer were not significant between occupations (Table 2). Finally, employees working in companies staffing >5,000 people started working earlier (median 113 days) than those working in companies staffing <75 people (median 217 days).

Full Return to Work

The associations of cancer type with full RTW were similar to those with partial RTW. Employees aged <35 years fully resumed work earlier (median 181 days) than those aged ≥55 years (median 293 days), but, as with partial RTW, the difference (P = 0.03) was not significant at the 1% level. Employees with cancer living in the central region of The Netherlands had full RTW earlier than those living in the western provinces. The other demographics were not associated with the time to full RTW.
In contrast to partial RTW, the occupational class was not significantly associated with the time to full RTW. Employees working in the public sector were likely to fully resume work later than those working in the private sector, but occupations were not significantly associated with the time to full RTW. Employees working 6–10 years for a company fully resumed work later than those working in a company for 0–5 years. Employees working in large companies staffing >5,000 people fully returned to work earlier (median time 180 days) than those working in small companies staffing <75 people (median time 313 days).

Discussion

In this study, the time to partial and full RTW after cancer was assessed using parametric generalized gamma models for survival data, which account for changes in the hazard over time. RTW after cancer depended on the type of cancer and occupational factors. Employees working in high occupational classes resumed work earlier than those in low occupational classes, whereas the time to full RTW did not differ between occupational classes. Employees working in large companies returned to work earlier than those working in small companies.

Cancer Type and Return to Work

Generalized gamma survival analysis showed that RTW occurred later in employees with breast cancer, gastrointestinal cancer, and lung cancer as compared to employees with skin cancer. The duration until both the partial and full RTW was longest after lung cancer, followed by blood malignancies and gastrointestinal cancer. These findings confirmed Finnish national employment statistics showing that survivors of lung cancer were least likely to be employed 3 years after diagnosis, followed by patients who survived leukemia or non-Hodgkin’s lymphomas [17]. Spelten et al. found that RTW rates were lowest in Dutch survivors of blood malignancies, but the authors did not report RTW rates for lung cancer patients [13]. Short et al. found that American survivors of blood malignancies had the highest odds of quitting their work, followed by survivors of central nervous system tumors, head/neck tumors, and lung cancer [16].
In a recent meta-analysis, De Boer et al. [6] showed that unemployment was higher in survivors of breast cancer and gastrointestinal cancer, which is in line with the later RTW we found in the present study for survivors of these types of cancer [6]. However, the meta-analysis also showed that unemployment rates were not higher in survivors of blood malignancies and male genital cancer, which contrasts the results of our study. Although RTW after cancer and unemployment after cancer are related in the sense that no RTW ultimately results in unemployment, the measures differ in time frame and context. RTW often takes places within the context of sickness absence and disability policies, whereas unemployment was assessed three to 20 years after diagnosis in most studies and depends on the social security policies of a country.

The Association of Demographics with Return to Work of Cancer Survivors

Age was not significantly associated with RTW after cancer at the 1% significance level, which corroborated the results of the aforementioned meta-analysis in which it was reported that the age of cancer survivors was not a prognostic risk factor for future unemployment [6]. Our results added that there were no gender differences in partial RTW and full RTW after cancer.
Neither the time to partial RTW nor the time to full RTW was associated with the socioeconomic status, indicating that people living in poor neighbourhoods did not resume work later than those living in wealthy neighbourhoods. Earlier studies have reported that a low socioeconomic status was related to a reduced likelihood of resuming work after cancer [36, 37]. However, a proper comparison is unfeasible because we used a contextual proxy to estimate the socioeconomic status instead of a family [36] or individual [37] measure.

The Association of Occupational Factors with Return to Work of Cancer Survivors

A review of 18 studies concerning the need for further research in cancer and work was published in 2004 [38]. In recent years, there has been increased interest in factors that may be related to cancer survivors’ disability or decreased ability to work. Physical workload and heavy lifting have been associated with higher unemployment rates [13, 3843]. Also, employees working in blue collar occupations were more likely to be unemployed than those working in white collar occupations [36, 42]. Our results showed that employees in high occupational classes started working earlier than employees working in low occupational classes. This confirms the finding that cancer survivors with low educational levels were less likely to be employed than age- and gender-matched healthy referents [40]. Lower class jobs are more likely to be physically straining and maybe work tasks and working hours can be more easily adjusted in high class jobs.
Taskila and colleagues reported that cancer survivors working in agricultural work, forestry and fishery, transport and communication, and manufacturing had an 18–20% lower probability of being employed 3 years after diagnosis than age-matched employees without cancer [41]. The median time to full RTW in our study was shorter, though not significantly, among transporters (247 days) and operators (254 days) compared to unskilled workers (287 days). It may be possible that transporters and operators resume work initially, but quit their work on a later moment, for instance because of the physical workload or because they can not keep pace with colleagues [39, 42]. Alternatively, a worker may continue working in the same occupation, but under different working conditions. In this regard, it should be acknowledged that not only the content of occupations defined in this study may differ from the occupations classified by Taskila et al. [41], but also the working conditions. For example, employees working in Dutch manufacturing industry were mostly machine-operators and therefore less exposed to physical workloads.
Our results showed that RTW of cancer survivors was associated with the company size rather than occupation. Cancer survivors working in large companies started working earlier and had full RTW earlier than those working in small companies. We assume this is due to the fact that it is easier in large companies to accommodate work tasks and working hours to the work ability and vulnerability of cancer survivors. Furthermore, cancer survivors who were employed for 6–10 years fully returned to work later than those who were employed ≤5 years. Cancer survivors who are employed ≤5 years may be younger than those employed for many years, and young cancer survivors had earlier full RTW than those aged ≥55 years. Alternatively, employees working for a company ≤5 years may be more anxious to lose their job when sickness absence lasts too long.

Strengths and Limitations of the Study

The strength of our study is that we retrieved sickness absence register data of approximately 1 million workers, who were representative of the Dutch workforce. Sickness absence legislation and policies in The Netherlands did not change between January 2004 and December 2008. The diagnoses on the sickness absence certificates were not tested. However, there is hardly any doubt that occupational physicians write cancer as diagnosis on the sickness certificates of employees who do not have cancer. The sickness absence certificates included only one medical diagnosis. Therefore, we had no knowledge about co-morbidity, such as fatigue, distress and depressive symptoms that are frequently found in cancer survivors [8, 11] and interfere with RTW.
A disadvantage of using sickness absence register data is that these data are recorded for other than research purposes. Hence, we had no control over which data were recorded and how data were registered. The interpretation of results was hampered by the fact that it was not possible to ‘dig deeper’ into the data. Moreover, we had no access to the medical files of the employees, so information on the cancer stage (local, regional, or metastatic), type of treatment, and side effects or complications of treatment was not available. It has been recognised that the employment of cancer survivors depends strongly on the type, extent, and treatment of cancer [11, 16, 44]. Also, information about impairments in physical and mental work ability and adjustments in the working conditions (e.g. ergonomic work improvements, accommodated work tasks, reduced working hours, placement in another job) was not available while these factors obviously facilitate RTW after cancer.
We conclude that the time to partial and full RTW after cancer depended on the type of cancer and occupational factors. Occupational factors are modifiable, although the accommodation of work tasks or working hours will be more difficult in lower class occupations and in small companies. It will be interesting to investigate the work role functioning of employees who resumed work after cancer in order to monitor how cancer survivors manage residual symptoms, physical limitations, and changed psychological cognitions. Such research will provide keys and tools for a sustainable working life of cancer survivors.

Acknowledgments

The authors wish to thank Dr. Ulrich Pötter PhD of the German Youth Institute (DJI), Department of Social Monitoring, München (Germany) for his advice about parametric models in TDA and for critically reviewing the methods section with regard to the generalized gamma model.

Open Access

This article is distributed under the terms of the Creative Commons Attribution Noncommercial License which permits any noncommercial use, distribution, and reproduction in any medium, provided the original author(s) and source are credited.
Open AccessThis is an open access article distributed under the terms of the Creative Commons Attribution Noncommercial License (https://​creativecommons.​org/​licenses/​by-nc/​2.​0), which permits any noncommercial use, distribution, and reproduction in any medium, provided the original author(s) and source are credited.

Unsere Produktempfehlungen

e.Med Interdisziplinär

Kombi-Abonnement

Für Ihren Erfolg in Klinik und Praxis - Die beste Hilfe in Ihrem Arbeitsalltag

Mit e.Med Interdisziplinär erhalten Sie Zugang zu allen CME-Fortbildungen und Fachzeitschriften auf SpringerMedizin.de.

Literatur
1.
Zurück zum Zitat Verdecchia A, Francisci S, Brenner H, et al. EUROCARE-4 Working Group. Recent cancer survival in Europe: a 2000–2 period analysis of EUROCARE-4 data. Lancet Oncol. 2007;8:784–96.PubMedCrossRef Verdecchia A, Francisci S, Brenner H, et al. EUROCARE-4 Working Group. Recent cancer survival in Europe: a 2000–2 period analysis of EUROCARE-4 data. Lancet Oncol. 2007;8:784–96.PubMedCrossRef
2.
Zurück zum Zitat Amir Z, Brocky J. Cancer survivorship and employment: epidemiology. Occup Med. 2009;59:373–7.CrossRef Amir Z, Brocky J. Cancer survivorship and employment: epidemiology. Occup Med. 2009;59:373–7.CrossRef
3.
Zurück zum Zitat de Boer AGEM, Frings-Dresen MHW. Employment and the common cancers: return to work of cancer survivors. Occup Med. 2009;59:378–80.CrossRef de Boer AGEM, Frings-Dresen MHW. Employment and the common cancers: return to work of cancer survivors. Occup Med. 2009;59:378–80.CrossRef
4.
Zurück zum Zitat Munir F, Yarker J, McDermott H. Employment and the common cancers: correlates of work ability during or following cancer treatment. Occup Med. 2009;59:381–9.CrossRef Munir F, Yarker J, McDermott H. Employment and the common cancers: correlates of work ability during or following cancer treatment. Occup Med. 2009;59:381–9.CrossRef
5.
Zurück zum Zitat Wynn P. Employment and the common cancers: overview. Occup Med. 2009;59:369–72.CrossRef Wynn P. Employment and the common cancers: overview. Occup Med. 2009;59:369–72.CrossRef
6.
Zurück zum Zitat de Boer AGEM, Taskila T, Ojajärvi A, van Dijk FJH, Verbeek JHAM. Cancer survivors and unemployment: a meta-analysis and meta-regression. J Am Med Assoc. 2009;301:753–62.CrossRef de Boer AGEM, Taskila T, Ojajärvi A, van Dijk FJH, Verbeek JHAM. Cancer survivors and unemployment: a meta-analysis and meta-regression. J Am Med Assoc. 2009;301:753–62.CrossRef
7.
Zurück zum Zitat Taskila-Åbandt T, Pukkala E, Martikainen R, Karjalainen A, Hietanen P. Employment status of Finnish cancer patients in 1997. Psychooncol. 2005;14:221–6.CrossRef Taskila-Åbandt T, Pukkala E, Martikainen R, Karjalainen A, Hietanen P. Employment status of Finnish cancer patients in 1997. Psychooncol. 2005;14:221–6.CrossRef
8.
Zurück zum Zitat Taskila T, Lindbohm ML. Factors affecting cancer survivors’ employment and work ability. Acta Oncol. 2007;46:446–51.PubMedCrossRef Taskila T, Lindbohm ML. Factors affecting cancer survivors’ employment and work ability. Acta Oncol. 2007;46:446–51.PubMedCrossRef
9.
Zurück zum Zitat Carlsen K, Oksbjerg-Dalton S, Diderichsen F, Johansen C. Risk for unemployment of cancer survivors: a Danish cohort study. Eur J Cancer. 2008;44:1866–74.PubMedCrossRef Carlsen K, Oksbjerg-Dalton S, Diderichsen F, Johansen C. Risk for unemployment of cancer survivors: a Danish cohort study. Eur J Cancer. 2008;44:1866–74.PubMedCrossRef
10.
Zurück zum Zitat Syse A, Tretli S, Kravdal Ø. Cancer’s impact on employment and earnings—a population-based study from Norway. J Cancer Surviv. 2008;2:149–58.PubMedCrossRef Syse A, Tretli S, Kravdal Ø. Cancer’s impact on employment and earnings—a population-based study from Norway. J Cancer Surviv. 2008;2:149–58.PubMedCrossRef
11.
Zurück zum Zitat Spelten ER, Sprangers MAG, Verbeek JHAM. Factors reported to influence return to work of cancer survivors: a literature review. Pyschooncol. 2002;11:124–31.CrossRef Spelten ER, Sprangers MAG, Verbeek JHAM. Factors reported to influence return to work of cancer survivors: a literature review. Pyschooncol. 2002;11:124–31.CrossRef
12.
Zurück zum Zitat Amir Z, Moran T, Walsh L, Iddenden R, Luker K. Return to paid work after cancer: a British experience. J Cancer Surviv. 2007;1:129–36.PubMedCrossRef Amir Z, Moran T, Walsh L, Iddenden R, Luker K. Return to paid work after cancer: a British experience. J Cancer Surviv. 2007;1:129–36.PubMedCrossRef
13.
Zurück zum Zitat Spelten ER, Verbeek JAHM, Uitterhoeve ALJ, et al. Cancer, fatigue and the return of patients to work—a prospective cohort study. Eur J Cancer. 2003;39:1562–7.PubMedCrossRef Spelten ER, Verbeek JAHM, Uitterhoeve ALJ, et al. Cancer, fatigue and the return of patients to work—a prospective cohort study. Eur J Cancer. 2003;39:1562–7.PubMedCrossRef
14.
Zurück zum Zitat Pryce J, Munir F, Haslam C. Cancer survivorship and work: symptoms, supervisor response, co-worker disclosure and work adjustment. J Occup Rehabil. 2007;17:83–92.PubMedCrossRef Pryce J, Munir F, Haslam C. Cancer survivorship and work: symptoms, supervisor response, co-worker disclosure and work adjustment. J Occup Rehabil. 2007;17:83–92.PubMedCrossRef
15.
Zurück zum Zitat Verbeek JH. How can doctors help their patients return to work? PLoS Med. 2006;3:312–5.CrossRef Verbeek JH. How can doctors help their patients return to work? PLoS Med. 2006;3:312–5.CrossRef
16.
Zurück zum Zitat Short PF, Vasey JJ, Tunceli K. Employment pathways in a large cohort of adult cancer survivors. Cancer. 2005;103:1292–301.PubMedCrossRef Short PF, Vasey JJ, Tunceli K. Employment pathways in a large cohort of adult cancer survivors. Cancer. 2005;103:1292–301.PubMedCrossRef
17.
Zurück zum Zitat Taskila T. Cancer survivors and work. Work-related problems and factors associated with their employment, work ability and social support from the work community. Helsinki: Finnish Institute of Occupational Health; 2007. Taskila T. Cancer survivors and work. Work-related problems and factors associated with their employment, work ability and social support from the work community. Helsinki: Finnish Institute of Occupational Health; 2007.
18.
Zurück zum Zitat Balak F, Roelen CA, Koopmans PC, Ten Berge EE, Groothoff JW. Return to work after early-stage breast cancer: a cohort study into the effects of treatment and cancer related symptoms. J Occup Rehabil. 2008;18:267–72.PubMedCrossRef Balak F, Roelen CA, Koopmans PC, Ten Berge EE, Groothoff JW. Return to work after early-stage breast cancer: a cohort study into the effects of treatment and cancer related symptoms. J Occup Rehabil. 2008;18:267–72.PubMedCrossRef
20.
Zurück zum Zitat World Health Organisation. International classification of diseases and related health problems: ICD-10. Geneva: WHO; 1994. World Health Organisation. International classification of diseases and related health problems: ICD-10. Geneva: WHO; 1994.
23.
Zurück zum Zitat International Labour Organization (ILO). International standard classification of occupations: ISCO-88. Geneva: ILO; 1990. International Labour Organization (ILO). International standard classification of occupations: ISCO-88. Geneva: ILO; 1990.
24.
Zurück zum Zitat Blossfeld HP, Rohwer G. Techniques of event history modelling: new approaches to causal analysis. 2nd ed. Mahwah (NJ): Lawrence Erlbaum; 2002. Blossfeld HP, Rohwer G. Techniques of event history modelling: new approaches to causal analysis. 2nd ed. Mahwah (NJ): Lawrence Erlbaum; 2002.
25.
Zurück zum Zitat Crook J, Moldofsky H. The probability of recovery and return to work from work disability as a function of time. Qual Life Res. 1994;3(suppl 1):97–109.CrossRef Crook J, Moldofsky H. The probability of recovery and return to work from work disability as a function of time. Qual Life Res. 1994;3(suppl 1):97–109.CrossRef
26.
Zurück zum Zitat Christensen KB, Andersen PK, Smith-Hansen L, Nielsen ML, Kristensen TS. Analyzing sickness absence with statistical models for survival data. Scand J Work Environ Health. 2007;33:233–9.PubMed Christensen KB, Andersen PK, Smith-Hansen L, Nielsen ML, Kristensen TS. Analyzing sickness absence with statistical models for survival data. Scand J Work Environ Health. 2007;33:233–9.PubMed
27.
Zurück zum Zitat Koopmans PC, Roelen CA, Groothoff JW. Parametric hazard rate models for long-term sickness absence. Int Arch Occup Environ Health. 2009;82:575–82.PubMedCrossRef Koopmans PC, Roelen CA, Groothoff JW. Parametric hazard rate models for long-term sickness absence. Int Arch Occup Environ Health. 2009;82:575–82.PubMedCrossRef
28.
Zurück zum Zitat Box-Steffensmeier JM, Jones BS. Event history modelling: a guide for social scientists. Cambridge: Cambridge University Press; 2004.CrossRef Box-Steffensmeier JM, Jones BS. Event history modelling: a guide for social scientists. Cambridge: Cambridge University Press; 2004.CrossRef
29.
Zurück zum Zitat Klein JP, Moeschberger ML. Survival analysis; techniques for censored and truncated data. Berlin: Springer; 1997. Klein JP, Moeschberger ML. Survival analysis; techniques for censored and truncated data. Berlin: Springer; 1997.
30.
Zurück zum Zitat Cox C, Chu H, Schneider MF, Muñoz A. Parametric survival analysis and taxonomy of hazard functions for the generalized gamma distribution. Stat Med. 2007;26:4352–74.PubMedCrossRef Cox C, Chu H, Schneider MF, Muñoz A. Parametric survival analysis and taxonomy of hazard functions for the generalized gamma distribution. Stat Med. 2007;26:4352–74.PubMedCrossRef
31.
Zurück zum Zitat Gomes O, Combes B, Dussauchoy A. Parameter estimation of the generalized gamma distribution. Math Comp Sim. 2008;79:955–63.CrossRef Gomes O, Combes B, Dussauchoy A. Parameter estimation of the generalized gamma distribution. Math Comp Sim. 2008;79:955–63.CrossRef
32.
Zurück zum Zitat Lawless JF. Statistical models and methods for lifetime data. New York: Wiley-Interscience; 1982. Lawless JF. Statistical models and methods for lifetime data. New York: Wiley-Interscience; 1982.
33.
Zurück zum Zitat Cox DR, Snell EJ. A general definition of residuals. J Royal Stat Soc Series. 1968;B30:248–75. Cox DR, Snell EJ. A general definition of residuals. J Royal Stat Soc Series. 1968;B30:248–75.
35.
Zurück zum Zitat Bouknight RR, Bradley CJ, Luo Z. Correlates of return to work for breast cancer survivors. J Clin Oncol. 2006;24:345–53.PubMedCrossRef Bouknight RR, Bradley CJ, Luo Z. Correlates of return to work for breast cancer survivors. J Clin Oncol. 2006;24:345–53.PubMedCrossRef
36.
Zurück zum Zitat Drolet M, Maunsell E, Mondor M, Brisson C, Brisson J, Mâsse J, Dechênes L. Work absence after breast cancer diagnosis: a population-based study. CMAJ. 2005;173:765–71.PubMedCrossRef Drolet M, Maunsell E, Mondor M, Brisson C, Brisson J, Mâsse J, Dechênes L. Work absence after breast cancer diagnosis: a population-based study. CMAJ. 2005;173:765–71.PubMedCrossRef
37.
Zurück zum Zitat Steiner JF, Cavender TA, Main DS, Bradley CJ. Assessing the impact of cancer on work outcomes: what are the research needs? Cancer. 2004;101:1703–11.PubMedCrossRef Steiner JF, Cavender TA, Main DS, Bradley CJ. Assessing the impact of cancer on work outcomes: what are the research needs? Cancer. 2004;101:1703–11.PubMedCrossRef
38.
Zurück zum Zitat Bradley CJ, Bednarek HL. Employment patterns of long-term cancer survivors. Pyschooncol. 2002;11:188–98.CrossRef Bradley CJ, Bednarek HL. Employment patterns of long-term cancer survivors. Pyschooncol. 2002;11:188–98.CrossRef
39.
Zurück zum Zitat Maunsell E, Drolet M, Brisson J, Brisson C, Mâsse J, Dechênes L. Work situation after breast cancer: results from a population-based study. J Natl Cancer Inst. 2004;96:1813–22.PubMedCrossRef Maunsell E, Drolet M, Brisson J, Brisson C, Mâsse J, Dechênes L. Work situation after breast cancer: results from a population-based study. J Natl Cancer Inst. 2004;96:1813–22.PubMedCrossRef
40.
Zurück zum Zitat Taskila-Åbrandt T, Martikainen R, Virtanen SV, Pukkala E, Hietanen P, Lindbohm ML. The impact of education and occupation on the employment status of cancer survivors. Eur J Cancer. 2004;40:2488–93.CrossRef Taskila-Åbrandt T, Martikainen R, Virtanen SV, Pukkala E, Hietanen P, Lindbohm ML. The impact of education and occupation on the employment status of cancer survivors. Eur J Cancer. 2004;40:2488–93.CrossRef
41.
Zurück zum Zitat Bradley CJ, Neumark D, Luo Z, Bednarek H, Schenk M. Employment outcomes of men treated for prostate cancer. J Natl Cancer Inst. 2005;97:958–65.PubMedCrossRef Bradley CJ, Neumark D, Luo Z, Bednarek H, Schenk M. Employment outcomes of men treated for prostate cancer. J Natl Cancer Inst. 2005;97:958–65.PubMedCrossRef
42.
Zurück zum Zitat Bednarek HL, Bradley CJ. Work and retirement after cancer diagnosis. Res Nurs Health. 2005;28:126–35.PubMedCrossRef Bednarek HL, Bradley CJ. Work and retirement after cancer diagnosis. Res Nurs Health. 2005;28:126–35.PubMedCrossRef
43.
Zurück zum Zitat Schultz P, Beck M, Stava C, Sellin R. Cancer survivors. Work related issues. Am J Occup Health Nurs. 2002;50:220–6. Schultz P, Beck M, Stava C, Sellin R. Cancer survivors. Work related issues. Am J Occup Health Nurs. 2002;50:220–6.
44.
Zurück zum Zitat Yabroff KR, Lawrence WF, Clauser S, Davis WW, Brown ML. Burden of illness in cancer survivors: findings from a population-based national sample. J Natl Cancer Inst. 2004;96:1322–30.PubMedCrossRef Yabroff KR, Lawrence WF, Clauser S, Davis WW, Brown ML. Burden of illness in cancer survivors: findings from a population-based national sample. J Natl Cancer Inst. 2004;96:1322–30.PubMedCrossRef
Metadaten
Titel
Resuming Work After Cancer: A Prospective Study of Occupational Register Data
verfasst von
C. A. M. Roelen
P. C. Koopmans
A. J. M. Schellart
A. J. van der Beek
Publikationsdatum
01.09.2011
Verlag
Springer US
Erschienen in
Journal of Occupational Rehabilitation / Ausgabe 3/2011
Print ISSN: 1053-0487
Elektronische ISSN: 1573-3688
DOI
https://doi.org/10.1007/s10926-010-9274-0

Weitere Artikel der Ausgabe 3/2011

Journal of Occupational Rehabilitation 3/2011 Zur Ausgabe