Literature DB >> 27802453

Determining cancer survivors' preferences to inform new models of follow-up care.

Peter Murchie1, Patricia F Norwood2, Marta Pietrucin-Materek1, Terry Porteous3, Philip C Hannaford1, Mandy Ryan2.   

Abstract

BACKGROUND: Specialist-led cancer follow-up is becoming increasingly expensive and is failing to meet many survivors' needs. Alternative models informed by survivors' preferences are urgently needed. It is unknown if follow-up preferences differ by cancer type. We conducted the first study to assess British cancer survivors' follow-up preferences, and the first anywhere to compare the preferences of survivors from different cancers.
METHODS: A discrete choice experiment questionnaire was mailed to 1201 adults in Northeast Scotland surviving melanoma, breast, prostate or colorectal cancer. Preferences and trade-offs for attributes of cancer follow-up were explored, overall and by cancer site.
RESULTS: 668 (56.6%) recipients (132 melanoma, 213 breast, 158 prostate, 165 colorectal) responded. Cancer survivors had a strong preference to see a consultant during a face-to-face appointment when receiving cancer follow-up. However, cancer survivors appeared willing to accept follow-up from specialist nurses, registrars or GPs provided that they are compensated by increased continuity of care, dietary advice and one-to-one counselling. Longer appointments were also valued. Telephone and web-based follow-up and group counselling, were not considered desirable. Survivors of colorectal cancer and melanoma would see any alternative provider for greater continuity, whereas breast cancer survivors wished to see a registrar or specialist nurse, and prostate cancer survivors, a general practitioner.
CONCLUSIONS: Cancer survivors may accept non-consultant follow-up if compensated with changes elsewhere. Care continuity was sufficient compensation for most cancers. Given practicalities, costs and the potential to develop continuous care, specialist nurse-led cancer follow-up may be attractive.

Entities:  

Mesh:

Year:  2016        PMID: 27802453      PMCID: PMC5155354          DOI: 10.1038/bjc.2016.352

Source DB:  PubMed          Journal:  Br J Cancer        ISSN: 0007-0920            Impact factor:   7.640


After completing their primary treatment, most patients with cancer enter structured cancer follow-up aimed at detecting cancer recurrence or metastasis and monitoring the short-and long-term toxicities of treatment (Hellbom ). Follow-up guidance in many countries tends to focus on secondary care specialist provision during scheduled hospital appointments (Dorsey, 2010; Frew ; Cancer Australia, 2015; National Cancer Institute, 2015; National Institute for Health and Care Excellence, 2015; Scottish Intercollegiate Guideline Network, 2015). In the UK cancer follow-up is largely delivered by consultants and senior secondary care doctors who are fully trained in cancer specialties. Consultants are supported by registrars and mid-career secondary care doctors training to become consultants. Secondary care-focused provision is reflected in previously reported preferences of cancer survivors for follow-up care (Kimman ; Bessen ). However, as the number of people surviving cancer grows, the cost of such follow-up increases (Davies and Batehup, 2011). There is also growing evidence that current models of follow-up care can be suboptimal, with many cancer survivors having unmet practical, physical and psychological needs (Aaronson ). These key drivers have led to the pursuit of cancer follow-up that is cheaper and more effective. Alternative models varying the healthcare professional, location and mode of delivery of follow-up have been developed, and in some places implemented, providing promising results (Grunfeld ; Murchie ; McFarlane ). As follow-up care evolves, it is important to recognise the importance of patient preferences, and to consider the acceptability of new and potential models of follow-up to the growing population of cancer survivors (Brennan and Strombom, 1998; Dirksen ). Discrete choice experiments (DCEs) offer one method of doing so and have been used to explore patient preferences in the delivery of healthcare (Ryan ). DCEs provide information about what components (attributes) of a service respondents would prefer to receive, as well as the trade-offs they appear willing to make between attributes. Respondents to a DCE questionnaire are presented with a number of ‘choice questions', in which they are asked to indicate their preferred choice between two or more alternatives, where at least one attribute is varied systematically between options (Gerard ). Previous research has assessed patients' preferences for breast cancer follow-up in The Netherlands and Australia (Kimman ; Bessen ; Wong ). We present here the first study in the UK to explore cancer survivors' preferences for follow-up care, and the first to our knowledge to compare the follow-up preferences between survivors of different cancers (breast, prostate, colorectal or melanoma).

Materials and methods

Designing the DCE

Attributes and associated levels for the DCE were identified in a two-stage process. First, a comprehensive narrative literature review identified characteristics of cancer follow-up that had been reported as important to survivors. A topic schedule was then developed and used in semi-structured qualitative interviews with 27 people currently receiving structured follow-up for melanoma, breast, colorectal or prostate cancer. Interviewees discussed their current follow-up arrangements and alternative ways in which follow-up care might be delivered in the future. The literature review identified two previous DCEs of follow-up preferences in women with breast cancer, one from The Netherlands and one from Australia (Kimman ; Bessen ). Both suggested that consultant-led follow-up was the preferred model of care. Our interviews confirmed that this was also the view held by many of our 27 interviewees, with most currently being seen face-to-face by cancer specialists at an outpatient hospital clinic. Cancer follow-up was regarded as important, and most participants were satisfied with the way in which it had been delivered to them so far. Some participants, however, identified a number of aspects of cancer follow-up care, which needed improvement, such as: lack of continuity of care, insufficient appointment time, lack of additional support and the attitude of some physicians. Participants wished to continue to be seen for future follow-up by cancer specialists but stated that they were willing to consider trade-offs between different components of follow-up care. The preferred content of follow-up appointments varied between interviewees. Some participants said that they would like to have additional laboratory tests or extra imaging procedures done as a part of their preferred follow-up. Support for spouse and family members was seen to be an important element of cancer follow-up by some. Interviewees generally perceived continuity of care to be an important aspect of cancer follow-up to build the patient-physician relationship, trust and develop a rapport. In addition, detailed discussions were held with cancer specialists currently providing follow-up care in Northeast Scotland, focusing on different potential models of care and current policy considerations. Analysis of the information from the interviews and literature yielded eight attributes, with associated levels, of structured cancer follow-up (see Table 1). A full factorial design consisting of eight (four-level) attributes and one attribute with two levels would have yielded 131 072 possible hypothetical scenarios (48 × 21=131 072). To reduce the number of hypothetical scenarios, a fractional factorial design was applied using an online catalogue with orthogonal arrays, which resulted in 32 choice sets (http://neilsloane.com/oadir/ Sloane, 2013). In order to reduce cognitive burden on respondents and maximise response rates, these 32 choices sets were divided into two equal blocks (Watson ). Thus, two versions (v1 and v2) of the questionnaire were produced, each consisting of 16 DCE paired choice sets and two additional (check-recheck) choice sets to test for response consistency.
Table 1

Attributes and their associated levels included in the final DCE questionnaire

AttributesAttribute levelsVariable in Equation (1)Regression coding
Health care provider
 ConsultantConsultβ1
 Registrar/trainee doctorRegtraineeβ2
 GPGPβ3
 Specialist nurseSPnurseβ4
Continuity of carea
 NoContNoβ5
 YesContYesβ6
Contact modeb and placec
 Face-to-face at hospitalFtfHospβ7
 Face-to-face at general practiceFtfGpβ8
 Telephone;Telephoneβ9
 Videoconferencing/ web cam/ SkypeVideoβ10
Duration of appointmentsd
 5 minDurAppβ11
 10 min  
 20 min  
 30 min  
Frequency of appointmentse
 3 monthlyFreqAppβ12
 6 monthly  
 9 monthly  
 12 monthly  
Length of follow-upf
 1 yearLengthFUβ13
 2 years  
 5 years  
 10 years  
Counsellingg
 No counsellingNoCounsβ14
 Individual counsellingCounsIndivβ15
 Group counsellingCounsGroupβ16
 Family counsellingCounsFamilyβ17
Additional servicesh
 No additional servicesNoAddservsβ18
 Personalised information pack about cancer, treatment and late effectsInfoβ19
 Advice on complementary medicineCamsβ20
 Dietary adviceDietβ21

Abbreviations: GP=general practitioner.

Continuity of care – defined in the questionnaire as ‘seeing the same person every time you attend for your follow-up appointment.'

Contact mode – how patients and healthcare professionals interact at follow-up appointments.

Place – the venue of follow-up (hospital, GP surgery, patients' own home).

Duration of appointments – how long follow-up appointments last (in minutes).

Frequency of appointments – how often follow-up appointments happen (in months).

Length of follow-up – the number of years for which people are followed-up for.

Counselling – psychological support sessions with a trained counsellor in addition to routine follow-up appointments.

Additional services – a written personalised information pack about cancer and its treatment; advice for those wishing to combine traditional treatments with complementary medicine; information to improve diet and lifestyle.

A two-stage piloting process followed for both versions of the questionnaire. Draft questionnaires were sent to 56 (28 version 1 and 28 version 2) eligible cancer survivors, with 41 responses received and interviews held with eight respondents to assess ease of completion and obtain suggestions for improvement. Following this, revised questionnaires were sent to another 56 (28 version 1 and 28 version 2) cancer survivors, with 39 responses and further refinement. An example choice set from a final questionnaire is shown in Figure 1.
Figure 1

Example of a choice set as presented in final DCE.

Recruitment and administering the DCE questionnaire

Full ethical approval to conduct the DCE survey was obtained from the North of Scotland Research Ethics Committee on 17 May 2012. In Grampian, Northeast Scotland, all patients diagnosed with one of the cancers of interest (melanoma, breast, prostate and colorectal cancer) are offered the opportunity to be enrolled in scheduled cancer follow-up according to specific guidelines. Ethics approvals were such that recruitment of patients to complete the DCE had to be conducted by the consultants responsible for their cancer follow-up; no direct contact between researchers and potential questionnaire recipients was permitted without patient permission. The central outpatient administration system was used to produce a list of all attendees to relevant follow-up clinics in the preceding 6 months. Consultants then screened this list and removed the names of patients judged to be unsuitable for the DCE (mainly those with end-stage cancer or cognitive impairment). Potential respondents were contacted by the consultants with details of those agreeing to take part, being notified to the researchers who then randomised individuals to receive one of the two versions of questionnaire. Questionnaires were dispatched in January and February 2013, reminders to non-respondents were sent 3 weeks after the initial mailing, and responses were collected until 30 April 2013.

Data handling

Respondents who provided different answers to two additional and identical check-recheck choice sets distributed among the other choice sets of the questionnaire were deemed to have failed the consistency check and were removed from further analysis (n=35). A 10% data entry check was made of the remainder (error rate=0.11%).

Data analysis

Analysis of the data was based on random utility theory. Briefly, utility is an economic concept that captures the overall satisfaction or benefit that a consumer obtains from consuming a particular good or service. Random utility theory states that while an individual knows the nature of the utility gained through the choices they make, it cannot be directly observed by researchers (McFadden, 1986). Utility is thus modelled using systematic (explainable) and random (unexplainable) components. The systematic components are used to quantify the importance of attributes and trade-offs. The random component is assumed to follow a logistic distribution. Thus, a binary random-effects logit model was used to analyse the data. Following standard practice, the systematic utility (V) of alternative follow-up service (j) was a linear and additive function of the cancer follow-up attributes and levels, with the categorical variable effects coded: Table 1 defines all variable labels. α indicates a general preference to choose option A over option B, everything else being equal. Given the use of generic choices (as opposed to labelled), a negative (positive) coefficient would indicate that the respondents are more likely to choose Option A (B) over Option B (A), everything else being equal. This controls for a potential bias – that respondents focus on the first option that is, a left hand side (LHS) bias. The sign on the coefficients (β1 to β21) indicates whether a change in attribute level has a positive or negative effect on utility of cancer follow-up. The unit of measurement must be considered when interpreting the regression results, for example, β11 represents the effect on follow-up choice of a 1-minute increase in duration of appointment whereas β12 represents the effect of a 1-month increase in the frequency of appointments. The coefficients for categorical variables should be interpreted as the effect of the presence of the attribute level on the utility of the follow-up care, for example, β1 shows the utility of seeing a consultant and β3 the utility of seeing a GP. Following estimation of equation (1), utility (V) and probability of take-up (P) was calculated for cancer follow-up services with specific attribute levels. Probability of take-up for the current follow-up service, compared with different alternatives, was estimated using the logit Equation (2): Current follow-up service was defined as: consultant-led, no continuity of care, face-to-face at the hospital, no counselling or additional services, 15 min duration and 5 year follow-up with biannual appointments. Utility and probability values were first estimated overall (i.e., for all cancers combined) and then for each cancer separately.

Results

Of 1201 questionnaires mailed, 11 were returned undelivered and 10 intended recipients had died. Of the 777 questionnaires returned, 74 were only partially completed and 35 failed both consistency checks; all 109 were excluded from the analysis. Thus, the usable response rate was (668/1180; 56.6%: 330 for version 1 and 338 for version 2). Respondents' characteristics are shown in Table 2. Just over half (54.8%) of the respondents were female; 31.9% had breast cancer, 24.7% colorectal cancer, 23.6% prostate cancer and 19.8% melanoma. Most were older than 50 years and 58.3% were currently receiving follow-up from a consultant alone, or from a consultant and another healthcare professional. A specialist nurse was involved in the care of 16.9% of respondents, whereas only 8.7% reported they received follow-up, fully or partly, from a general practitioner. Of those providing a travelling time to attend follow-up, 67.6% reported taking between 15 and 60 min. Most respondents lived with a spouse or partner (68.3%).
Table 2

Characteristics of respondents to the DCE

 n(%)
Gender (n=668)
Male302 (45.2)
Female366 (54.8)
Cancer site (n=668)
Breast213 (31.9)
Colorectal165 (24.7)
Prostate158 (23.6)
Melanoma132 (19.8)
Age (years) (n=667)
Under 4020 (3.0)
41–5076 (11.4)
51–60147 (22.0)
61–70219 (32.8)
71–80175 (26.3)
Over 8130 (4.5)
Time since diagnosis (years) (n=667)
<1 year7 (1.1)
1–2 years112 (16.8)
2–5 years367 (55.0)
Over 5 years181 (27.1)
Recurrence (n=658)
Yes80 (12.2)
No578 (87.8)
Currently attending cancer follow-up clinic (n=663)
Yes529 (79.8)
No134 (20.2)
Healthcare provider seen for follow-upa
Consultant604 (58.3)
Registrar/Trainee doctor140 (13.5)
Specialist nurse175 (16.9)
Specialist GP21 (2.0)
Own GP69 (6.7)
Other22 (2.1)
Cannot say5 (0.5)
Travelling time to attend follow-up (n=553)
Up to 15 min83 (15.0)
Between 15–30 min178 (32.2)
Between 31–60196 (35.4)
61 min or more95 (17.2)
Cannot say1 (0.2)
Cohabitation status, currently living with (n=665)
Spouse/partner454 (68.3)
Family100 (15.0)
Alone111 (16.7)

Abbreviations: GP=general practitioner.

Some respondents selected more than one healthcare provider.

Table 3 shows the regression results for all respondents. There was a strong preference for being seen by a consultant (β=0.564; P<0.001). Being seen by another healthcare professional reduced utility, (i.e., the overall satisfaction that respondents perceived they would obtain from follow-up, indicated by negative coefficients), with GPs being the least preferred option (β=−0.217; P<0.001). Continuity of care was important, as indicated by the positive coefficient (β=0.379; P<0.001). There was a preference for being seen face-to-face either at a hospital (β=0.272; P<0.001) or GP practice (β=0.225; P<0.001); preference not to have follow-up by telephone or video (β=−0.122; P<0.001 and β=−0.374; P<0.001, respectively), preference for longer appointments (β=0.007; P<0.001) and longer periods of follow-up (β=0.090; P<0.001). Frequency of follow-up was not a significant attribute. One-to-one counselling was valued (β=0.274; P<0.001), as was dietary advice (β=0.132; P<0.001); other additional services were not valued.
Table 3

Results of regression analysis (random effects logit) for all respondents

 β CoefficientP-value
Constant−0.5270.000
Healthcare professional  
 Consultant0.5640.000
 Registrar/trainee−0.180.000
 GP−0.2170.000
 Specialist nurse−0.1670.000
Continuity of Carea  
 No−0.3790.000
 Yes0.3790.000
Contact modeb and placec  
 Face-to-face hospital0.2720.000
 Face-to-face at GP0.2250.000
 Telephone−0.1220.000
 Video−0.3740.000
Appointment durationd0.0070.000
Frequency of follow-upe0.0010.844
Length of follow-upf0.090.000
Counsellingg  
 None−0.0680.006
 1-to-10.2740.000
 Group−0.2260.000
 Family0.0190.442
Additional servicesh  
 None−0.1130.000
 Information pack0.0270.283
 CAMS−0.0460.066
 Dietary advice0.1320.000
 Number of observations21376 
 Wald χ2(16)1926.17 
 Prob>χ20 
 Log likelihood−13723.992 

Abbreviations: CAMS=advice on complimentary medicine; GP=general practitioner.

Continuity of care – defined in the questionnaire as ‘seeing the same person every time you attend for your follow-up appointment.'

Contact mode – how patients and healthcare professionals interact at follow-up appointments.

Place – the venue of follow-up (hospital, GP surgery, patients' own home).

Duration of appointments – how long follow-up appointments last (in minutes).

Frequency of appointments – how often follow-up appointments happen (in months).

Length of follow-up – the number of years for which people are followed-up for.

Counselling – psychological support sessions with a trained counsellor in addition to routine follow-up appointments.

Additional services – a written personalised information pack about cancer and its treatment; advice for those wishing to combine traditional treatments with complementary medicine; information to improve diet and lifestyle.

Table 4 shows the DCE results by cancer type. Differences in the pattern of results were observed. Compared with other cancer survivors: breast cancer survivors were most averse to GP-led follow-up (β=−0.451; P<0.001); breast cancer and melanoma survivors were more averse to telephone follow-up (β=−0.115; P<0.001 and β=−0.457; P<0.001, respectively); and, melanoma patients did not value dietary advice (β=0.102; p=0.065).
Table 4

Results of regression analysis (random effects logit) for respondents with different cancers

 Breast Cancer
Colorectal Cancer
Melanoma
Prostate Cancer
 β CoefficientP-valueβ CoefficientP-valueβ CoefficientP-valueβ CoefficientP-value
Constant−0.707<0.001−0.689<0.001−0.0340.749−0.56<0.001
Health Care Professional        
 Consultant0.472<0.0010.607<0.0010.622<0.0010.62<0.001
 Registrar/trainee−0.0510.262−0.244<0.001−0.1220.03−0.337<0.001
 GP−0.451<0.001−0.196<0.001−0.1660.0030.0140.789
 Specialist nurse0.0290.506−0.1680.001−0.334<0.001−0.297<0.001
Continuity of Carea        
 No−0.392<0.001−0.362<0.001−0.388<0.001−0.391<0.001
 Yes0.392<0.0010.362<0.0010.388<0.0010.391<0.001
Contact modeb and placec        
 Face-to-face hospital0.253<0.0010.315<0.0010.266<0.0010.26<0.001
 Face-to-face at GP0.303<0.0010.0710.1560.401<0.0010.1460.005
 Telephone−0.1150.009−0.0190.709−0.457<0.0010.0320.538
 Video−0.44<0.001−0.368<0.001−0.217<0.001−0.436<0.001
Appointment duration0.0090.0010.011<0.001−0.0020.5990.0080.007
Frequency of follow-upe−0.0010.9890.0080.366−0.0210.0290.0130.15
Length of follow-upf0.124<0.0010.101<0.0010.05<0.0010.072<0.001
Counsellingg        
 None−0.1380.002−0.0210.682−0.01890.736−0.0560.277
 1-to-10.309<0.0010.272<0.0010.1920.0010.311<0.001
 Group−0.173<0.001−0.259<0.001−0.227<0.001−0.292<0.001
 Family0.0020.9670.0070.8820.0540.3380.0360.477
Additional servicesh        
 None−0.18<0.001−0.0740.14−0.1610.004−0.030.563
 Information pack0.0790.0790.0250.6290.1030.074−0.1120.031
 CAMS−0.060.185−0.0840.098−0.0440.4350.0120.812
 Dietary advice0.162<0.0010.1330.0080.1020.0650.130.011
 Number of observations6816 5280 5056 4224 
 Wald χ2 (16)732.67 495.15 395 470.86 
 prob>χ2(16) 732.67 (16) 495.15 (16) 470.86 (16) 395.0 
 Log likelihood−4292.1657 −3376.4753 −3233.7613 −2705.2567 

Abbreviations: CAMS=advice on complimentary medicine; GP=general practitioner.

Continuity of care – defined in the questionnaire as ‘seeing the same person every time you attend for your follow-up appointment.'

Contact mode – how patients and healthcare professionals interact at follow-up appointments.

Place – the venue of follow-up (hospital, GP surgery, patients' own home).

Duration of appointments – how long follow-up appointments last (in minutes).

Frequency of appointments – how often follow-up appointments happen (in months).

Length of follow-up – the number of years for which people are followed-up for.

Counselling – psychological support sessions with a trained counsellor in addition to routine follow-up appointments.

Additional services – a written personalised information pack about cancer and its treatment; advice for those wishing to combine traditional treatments with complementary medicine; information to improve diet and lifestyle.

Drawing on Equation (1), and using the parameters estimated in Table 3, the aggregate utility (for all cancers combined) for the current (standard) follow-up service was: Utility levels for some alternative cancer follow-up services are shown in Figure 2. The effect on utility of changing the healthcare provider can be modelled by substituting the coefficient value for an alternative healthcare provider for that of a consultant. The results show that respondents would receive less overall utility from their follow-up care if it is not delivered by a consultant. (Vstandard=0.30; VReg=−0.44; VGP=−0.48 and VSpecNurse=−0.43). However, if continuity of care was provided, comparable levels of utility (VReg+cont=0.32; VGP+cont=0.28 and VSpecNurse+cont=0.33) would be attained, compared with consultant-led follow-up with no continuity of care. If, in addition to continuity, follow-up care also included one-to-one counselling and dietary advice, utility would be even higher (VReg+all=0.91; VGP+all=0.87 and VSpecNurse+all=0.92). This demonstrates how respondents could be compensated for a model of follow-up care that was not being delivered by a consultant. For example, a follow-up model comprising continuous specialist nurse-led care with elements such as counselling or dietary advice would (in theory) produce more utility/satisfaction than the model that most cancer survivors currently experience (non-continuous consultant-led care).
Figure 2

Graph displaying utilities expressed for alternative models of care by cancer survivors overall.Reg=registrar doctor; GP=general practitioner; SpecNurse=specialist nurse; cont=continuity of care; all=continuity of care; dietary advice and one-to-one counselling; P=probability of uptake estimate.

These results are further demonstrated by the probability of take-up estimates (also reported in Figure 2). Assuming respondents had a choice between standard care and an alternative that only varied by who was seen, the probability of choosing follow-up by a registrar/trainee doctor was 0.32, GP 0.31, and specialist nurse 0.32. However, if continuity of care, one-to-one counselling and dietary advice were also offered, the probabilities of choosing a registrar/trainee, GP or specialist nurse-led service (compared with consultant-led one) increased to 0.88, 0.84 and 0.89, respectively that is, the majority of respondents would choose non-consultant-led care. Differences in preferences between survivors of different types of cancer are shown in Table 4. Differences between calculated utility levels of different models of follow-up for survivors of different cancers are shown in Figure 3. Melanoma and colorectal cancer patients had similar preferences; replacing consultants with alternative healthcare providers for these patients lead to comparable or slightly lower utility levels than standard care, as long as there was continuity of care. In these circumstances, registrars were the preferred healthcare providers for melanoma patients, while colorectal patients preferred to see a specialist nurse. If dietary advice and one-to-one counselling is included, both melanoma and colorectal cancer patients had a higher level of utility for seeing a specialist nurse, than for traditional consultant-led and non-continuous follow-up. Breast cancer patients had a strong preference not to see a GP, which cannot be compensated for by continuity of care. On the other hand, care provided by a registrar or a specialist nurse with continuity of care resulted in higher utility values than consultant-led care without continuity. Breast cancer patients valued significantly one-to-one counselling and dietary advice; when offered these services in addition to continuity, these patients appeared willing to trade-off seeing a consultant for any other healthcare professional. Prostate cancer patients had higher utility from seeing a GP with continuity of care than a consultant with no continuity. However, with respect to seeing a registrar or specialist nurse, these patients would be compensated for not seeing a consultant only by receiving continuity of care, and one-to-one counselling and dietary advice.
Figure 3

Graphs displaying utilities expressed for alternative models of care by survivors from different cancers.Reg=registrar doctor; GP=general practitioner; SpecNurse=specialist nurse; cont=continuity of care; all=continuity of care; dietary advice and one-to-one counselling; P=probability of uptake estimate.

Subgroup analysis was conducted, looking at how preferences differed across age, gender, time since diagnosis, having experienced a cancer recurrence and travelling time to attend follow-up appointments. No consistent patterns were observed.

Discussion

Summary of main results

Respondents overall preferred continuous, face-to-face consultant-led follow-up. There were some important differences in the preferences expressed by survivors of melanoma, breast, prostate and colorectal cancer. Importantly, respondents appeared willing to receive follow-up by a specialist nurse, trainee specialist doctor or GP, provided that they were compensated by other changes in their follow-up, notably greater continuity of care. This finding suggests scope to seek more cost-effective ways of delivering cancer follow-up care.

Strengths and limitations

This was the first DCE exploring the follow-up preferences of survivors of four different cancers, including three (melanoma, colorectal and prostate cancer) that have never been studied previously. We recruited a large number of cancer survivors. Content validity of the DCE was obtained by grounding the attributes and levels in the literature, information from interviews with people surviving the four cancers and discussions with specialists currently delivering structured follow-up to cancer survivors. The questionnaire was carefully revised during piloting. Internal validity was assured by including check-recheck consistency tests, and excluding respondents who failed them. The usable response rate of 56.6% was high compared with other DCEs (Kimman ; Bessen ). Some limitations should be noted. DCEs explore patients' stated preferences; without checking external validity, we cannot be sure that people would make the same choices in real life situations. Furthermore, people's preferences for cancer follow-up are complex. Our DCE included those attributes, which our exploratory work suggested were most important to patients. However, we acknowledge that there may be other important factors that were not identified from the literature search or interviews and which we have not included, such as amount of time taken of work, travelling time to home and the ability of a particular provided to manage other medical issues simultaneously. Additionally, some of the levels within attributes reflected those that patients told us during the interviews they would ideally like rather than what is offered, or possible, within the NHS. It also worth reflecting that patients may prefer elements of health service provision, which are not supported by the evidence. The study was conducted in Northeast Scotland; our results may not be generalisable if people surviving cancer elsewhere have different preferences. It is possible that the views of non-respondents, those providing invalid responses or patients not currently receiving follow-up, differ from those of participants included in this paper. Preferences of patients not currently under follow-up may be especially important since current arrangements may not be meeting their needs; future research should attempt to access these views. Furthermore, our results may have been affected by status quo bias (endowment effect), whereby respondents may prefer services or goods that they have experience of (Salkeld ; Dorsey, 2010); a problem that may have been exacerbated by our respondents having most experience of specialist-led follow-up. We did collect the data on the different providers that respondents had seen for their follow-up care (Table 2) but did not ask them to specify the usual provider. More accurate data on the provider currently delivering our respondents' current follow-up could have enabled us to account more effectively for status quo bias and we recommend that future researchers should consider doing so (Ryan and Ubach, 2003).

Context with other literature

We are aware of only two previous studies, from The Netherlands and Australia, exploring preferences for structured follow-up of women treated for breast cancer (Kimman ; Bessen ). For the first time, we have explored the preferences among people who have experienced one of the four cancers, enabling us to see if preferences vary between survivors of different cancers. We found some differences, which should discourage a ‘one-size-fits-all' approach to redesigning cancer follow-up. The two previous studies found that respondents preferred to see the same specialist face-to-face. Our findings, of a strong preference for consultant follow-up, was consistent. It is worth noting that a strong preference for hospital-based and specialist-led care is perhaps slightly at odds with evidence that the model appears to be suboptimal (Aaronson ). Furthermore, the Dutch study demonstrated that breast cancer survivors would be willing to trade-off seeing a specialist for follow-up from a specialist nurse in return for more frequent follow-up appointments (Kimman ). Our study also found evidence that survivors of different cancers might accept follow-up form an alternative healthcare provider (specialist nurse, registrar or GP, depending on the type of cancer), provided that they receive continuity of care. Cost considerations suggest that the development of a cadre of dedicated cancer follow-up nurses may offer the most economical option for the future. The current data (Curtis and Burns, 2015) shows that, in the UK a clinical nurse specialist has an hourly unit cost of £59 compared with £60 for a registrar, £118 for a GP and £138 for a surgical consultant. Furthermore, there is evidence that specialist nurses in extended roles can improve healthcare delivery and contain costs (Tsiachristas ). Given current constraints in primary care in the UK, there are likely to be challenges in accommodating (even if acceptable to patients) the additional workload associated with transferring follow-up from secondary to primary care. In addition, there may be minimal cost gains compared with current consultant-led care. On the other hand, follow-up care delivered by registrars or trainees doctors could be cost-effective and preferred by some patients. New models involving doctors in specialist medical training would need to allow for these doctors moving between placements, especially since continuity of care appeared to be so important to participants. However, beyond simple cost considerations, dedicated cancer follow-up nurses may also offer the best way forward in terms of quality. Specialist nurses are viewed by many cancer specialists as capable of delivering effective cancer follow-up care (Greenfield ). Further, the unmet needs of survivors from different cancers are becoming increasingly understood (Burg ). The growing literature reveals a complex set of practical, physical, psychological and emotional needs (Molassiotis ; Hubbard ; Russell ; Watson ). Follow-up delivered by a dedicated specialist nurse with whom a cancer survivor can build a personal and continuous relationship over several years offers great promise to address complex individual needs, which could conceivably include some of the components valued by our respondents, such as counselling and dietary advice (The Health Foundation, 2014). However, further research is needed to provide evidence of the best models and additional components of effective cancer follow-up.

Conclusion

This study has shown that overall survivors of different cancers living in Britain prefer to receive follow-up from consultants. We also found that cancer survivors may be willing to trade-off between existing and novel attributes of follow-up care, and that the follow-up preferences appear to vary between survivors of different cancers. Our data are important as the nature of cancer survivorship evolves and as traditional cancer follow-up becomes increasingly difficult to sustain (National Cancer Survivorship Initiative, 2014). An emerging specialist nurse workforce may represent the ideal opportunity to determine and implement novel and cost-effective models of cancer follow-up care built around the preferences of individual cancer survivors.
  21 in total

Review 1.  Costs and effects of new professional roles: Evidence from a literature review.

Authors:  A Tsiachristas; I Wallenburg; C M Bond; R F Elliot; R Busse; J van Exel; M P Rutten-van Mölken; A de Bont
Journal:  Health Policy       Date:  2015-04-13       Impact factor: 2.980

2.  Improving health care by understanding patient preferences: the role of computer technology.

Authors:  P F Brennan; I Strombom
Journal:  J Am Med Inform Assoc       Date:  1998 May-Jun       Impact factor: 4.497

3.  Follow-up after treatment for breast cancer: one strategy fits all? An investigation of patient preferences using a discrete choice experiment.

Authors:  Merel L Kimman; Benedict G C Dellaert; Liesbeth J Boersma; Philippe Lambin; Carmen D Dirksen
Journal:  Acta Oncol       Date:  2010-04       Impact factor: 4.089

4.  Comparison of breast cancer patient satisfaction with follow-up in primary care versus specialist care: results from a randomized controlled trial.

Authors:  E Grunfeld; R Fitzpatrick; D Mant; P Yudkin; R Adewuyi-Dalton; J Stewart; D Cole; M Vessey
Journal:  Br J Gen Pract       Date:  1999-09       Impact factor: 5.386

5.  Psychological distress, quality of life, symptoms and unmet needs of colorectal cancer survivors near the end of treatment.

Authors:  Lahiru Russell; Karla Gough; Allison Drosdowsky; Penelope Schofield; Sanchia Aranda; Phyllis N Butow; Jennifer A Westwood; Mei Krishnasamy; Jane M Young; Jo Phipps-Nelson; Dorothy King; Michael Jefford
Journal:  J Cancer Surviv       Date:  2015-01-09       Impact factor: 4.442

6.  Symptoms, unmet needs, psychological well-being and health status in survivors of prostate cancer: implications for redesigning follow-up.

Authors:  Eila Watson; Bethany Shinkins; Emma Frith; David Neal; Freddie Hamdy; Fiona Walter; David Weller; Clare Wilkinson; Sara Faithfull; Jane Wolstenholme; Prasanna Sooriakumaran; Christof Kastner; Christine Campbell; Richard Neal; Hugh Butcher; Mike Matthews; Rafael Perera; Peter Rose
Journal:  BJU Int       Date:  2015-05-23       Impact factor: 5.588

7.  Supportive care needs of women with breast cancer in rural Scotland.

Authors:  Gill Hubbard; Christine Venning; Alison Walker; Karen Scanlon; Richard G Kyle
Journal:  Support Care Cancer       Date:  2014-11-14       Impact factor: 3.603

8.  A protocol for a discrete choice experiment: understanding preferences of patients with cancer towards their cancer care across metropolitan and rural regions in Australia.

Authors:  Shu Fen Wong; Richard Norman; Trisha L Dunning; David M Ashley; Paula K Lorgelly
Journal:  BMJ Open       Date:  2014-10-24       Impact factor: 2.692

9.  Integrating evidence on patient preferences in healthcare policy decisions: protocol of the patient-VIP study.

Authors:  Carmen D Dirksen; Cecile Ma Utens; Manuela A Joore; Teus A van Barneveld; Bert Boer; Dunja Hh Dreesens; Hans van Laarhoven; Cees Smit; Anne M Stiggelbout; Trudy van der Weijden
Journal:  Implement Sci       Date:  2013-06-10       Impact factor: 7.327

10.  Beyond treatment - Psychosocial and behavioural issues in cancer survivorship research and practice.

Authors:  Neil K Aaronson; Vittorio Mattioli; Ollie Minton; Joachim Weis; Christoffer Johansen; Susanne O Dalton; Irma M Verdonck-de Leeuw; Kevin D Stein; Catherine M Alfano; Anja Mehnert; Angela de Boer; Lonneke V van de Poll-Franse
Journal:  EJC Suppl       Date:  2014-05-29
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  11 in total

1.  Fear of cancer recurrence in young women 5 years after diagnosis with a good-prognosis cancer: the VICAN-5 national survey.

Authors:  Clément Magnani; Allan Ben Smith; Dominique Rey; Aline Sarradon-Eck; Marie Préau; Marc-Karim Bendiane; Anne-Déborah Bouhnik; Julien Mancini
Journal:  J Cancer Surviv       Date:  2022-03-23       Impact factor: 4.442

2.  Current Practices for Accounting for Preference Heterogeneity in Health-Related Discrete Choice Experiments: A Systematic Review.

Authors:  Suzana Karim; Benjamin M Craig; Caroline Vass; Catharina G M Groothuis-Oudshoorn
Journal:  Pharmacoeconomics       Date:  2022-08-12       Impact factor: 4.558

3.  Breast cancer survivor's perspectives on the role different providers play in follow-up care.

Authors:  J L Tucholka; N Jacobson; N M Steffens; J R Schumacher; A J Tevaarwerk; B Anderson; L G Wilke; C C Greenberg; Heather B Neuman
Journal:  Support Care Cancer       Date:  2018-01-13       Impact factor: 3.603

4.  Discrete Choice Experiments in Health Economics: Past, Present and Future.

Authors:  Vikas Soekhai; Esther W de Bekker-Grob; Alan R Ellis; Caroline M Vass
Journal:  Pharmacoeconomics       Date:  2019-02       Impact factor: 4.981

5.  Primary care physicians' perceptions concerning engagement in cancer survivor care.

Authors:  Miho Kimachi; Kenji Omae; Tsukasa Kamitani; Shingo Fukuma
Journal:  J Gen Fam Med       Date:  2021-12-22

Review 6.  Improved models of care for cancer survivors.

Authors:  Michael Jefford; Doris Howell; Qiuping Li; Karolina Lisy; Jane Maher; Catherine M Alfano; Meg Rynderman; Jon Emery
Journal:  Lancet       Date:  2022-04-16       Impact factor: 202.731

7.  Changes in primary care provider utilization by phase of care for women diagnosed with breast cancer: a CanIMPACT longitudinal cohort study.

Authors:  K Decker; R Moineddin; C Kendell; R Urquhart; N Biswanger; P Groome; M L McBride; M Winget; M Whitehead; E Grunfeld
Journal:  BMC Fam Pract       Date:  2019-11-21       Impact factor: 2.497

8.  Preferences for interventions designed to increase cervical screening uptake in non-attending young women: How findings from a discrete choice experiment compare with observed behaviours in a trial.

Authors:  Helen E Campbell; Alastair M Gray; Judith Watson; Cath Jackson; Carly Moseley; Margaret E Cruickshank; Henry C Kitchener; Oliver Rivero-Arias
Journal:  Health Expect       Date:  2019-10-28       Impact factor: 3.377

Review 9.  Patient and Public Preferences for Coordinated Care in Switzerland: Development of a Discrete Choice Experiment.

Authors:  Anna Nicolet; Clémence Perraudin; Joël Wagner; Ingrid Gilles; Nicolas Krucien; Isabelle Peytremann-Bridevaux; Joachim Marti
Journal:  Patient       Date:  2022-01-24       Impact factor: 3.481

Review 10.  Opportunities for personalised follow-up care among patients with breast cancer: A scoping review to identify preference-sensitive decisions.

Authors:  Kelly M de Ligt; Laurentine S E van Egdom; Linetta B Koppert; Sabine Siesling; Janine A van Til
Journal:  Eur J Cancer Care (Engl)       Date:  2019-05-09       Impact factor: 2.328

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