Abstract
Background
Objective
Design, setting, and participants
Outcome measurements and statistical analysis
Results and limitations
Conclusions
Patient summary
Keywords
1. Introduction
European Medicines Agency. The patient’s voice in the evaluation of medicines. London, UK: EMA; 2013. https://www.ema.europa.eu/en/documents/report/report-workshop-patients-voice-evaluation-medicines_en.pdf.
Medical Device Innovation Consortium. Patient centered benefit‐risk project report: a framework for incorporating information on patient preferences regarding benefit and risk into regulatory assessments of new medical technology. Silver Spring, MD: FDA; 2015. https://www.fda.gov/media/95591/download.
US Food and Drug Administration. Patient-focused drug development guidance series for enhancing the incorporation of the patient’s voice in medical product development and regulatory decision making. Silver Spring, MD: FDA; 2020. https://www.fda.gov/drugs/development-approval-process-drugs/fda-patient-focused-drug-development-guidance-series-enhancing-incorporation-patients-voice-medical.
Medical Device Innovation Consortium. Patient centered benefit‐risk project report: a framework for incorporating information on patient preferences regarding benefit and risk into regulatory assessments of new medical technology. Silver Spring, MD: FDA; 2015. https://www.fda.gov/media/95591/download.
Medical Device Innovation Consortium. Patient centered benefit‐risk project report: a framework for incorporating information on patient preferences regarding benefit and risk into regulatory assessments of new medical technology. Silver Spring, MD: FDA; 2015. https://www.fda.gov/media/95591/download.
2. Patients and methods
2.1 Study design
- Menges D.
- Braun J.
- Piatti M.C.
- Puhan M.
2.2 Participant recruitment
2.3 Experimental design
2.4 Survey administration

2.5 Statistical analysis
- McFadden D.
- Train K.
3. Results
3.1 Sample characteristics
Prostate cancer | General population | |
---|---|---|
(n = 77) | (n = 311) | |
Median age, yr (IQR) {range} | 73 (65–77) {51–86} | 64 (56.5–71) {45–80} |
Age group, n (%) | ||
45–64 yr | 18 (23.4) | 156 (50.2) |
≥65 yr | 59 (76.6) | 155 (49.8) |
Median VAS score for current health status (IQR) {range} | 75 (65–86) {33–100} | 85 (80–90) {15–100} |
Data missing, n (%) | 0 (0) | 49 (15.8) |
Comorbidity burden, n (%) | ||
At least one comorbidity | 46 (59.7) | 146 (46.9) |
Hypertension | 24 (52.2) | 96 (65.8) |
Diabetes mellitus | 14 (30.4) | 28 (19.2) |
Cardiovascular disease | 20 (43.5) | 41 (28.1) |
Chronic respiratory disease | 4 (8.7) | 19 (13.0) |
Chronic kidney disease | 4 (8.7) | 6 (4.1) |
Chronic liver disease | 0 (0.0) | 3 (2.1) |
Other cancer diagnosis | 3 (6.5) | 4 (2.7) |
Smoking status, n (%) | ||
Nonsmoker | 72 (93.5) | 253 (82.1) |
Smoker | 5 (6.5) | 55 (17.9) |
Data missing | 0 (0) | 3 (1.0) |
Education, n (%) | ||
None or mandatory school | 4 (5.3) | 3 (1.0) |
Vocational training or baccalaureate | 38 (50.0) | 166 (53.4) |
Higher technical school or college | 14 (18.4) | 72 (23.2) |
University degree or doctorate | 20 (26.3) | 70 (22.5) |
Data missing | 1 (1.3) | 0 (0) |
Employment status, n (%) | ||
Employed or self-employed | 15 (19.7) | 139 (44.7) |
Retired | 59 (77.6) | 163 (52.4) |
Permanently on sick leave or without work | 2 (2.6) | 9 (2.9) |
Data missing | 1 (1.3) | 0 (0) |
In a partnership, n (%) | 72 (94.7) | 255 (82.8) |
Data missing | 1 (1.3) | 3 (1.0) |
Widowed and/or divorced, n (%) | 15 (20.8) | 57 (18.6) |
Data missing | 5 (6.5) | 5 (1.6) |
Has dependents, n (%) | 6 (7.9) | 62 (20.0) |
Data missing | 1 (1.3) | 1 (0.3) |
Place of residence, n (%) | ||
In the city | 12 (15.6) | 69 (22.2) |
In a suburb | 25 (32.5) | 100 (32.2) |
In the countryside | 40 (51.9) | 142 (45.7) |
Language region, n (%) | ||
German-speaking | 52 (67.5) | 159 (51.1) |
French-speaking | 24 (31.2) | 103 (33.1) |
Italian-speaking | 1 (1.3) | 49 (15.8) |
Nationality, n (%) | ||
Swiss | 69 (89.6) | 292 (93.9) |
Non-Swiss | 8 (10.4) | 19 (6.1) |
Current PC stage, n (%) | ||
Metastatic hormone-sensitive PC | 57 (74.0) | – |
Metastatic castration-resistant PC | 20 (26.0) | – |
Median time since diagnosis, yr (IQR) {range} | 5 (2.2–10) {0–20} | – |
Data missing, n (%) | 3 (3.9) | |
Median time since metastasis, yr (IQR) {range} | 3 (2–6) {0–16} | – |
Data missing, n (%) | 5 (6.5) | – |
Bone metastases present, n (%) | 54 (70.1) | – |
Currently receiving Tx, n (%) | 74 (96.1) | – |
Median time since starting current Tx, yr (IQR) {range} | 2 (1–3) {0–13} | – |
Data missing, n (%) | 7 (9.1) | |
Ever experienced adverse effects, n (%) | 49 (69.0) | – |
Data missing | 6 (7.8) | |
Experienced pain due to PC in the past 2 wk, n (%) | 14 (18.7) | – |
Data missing | 2 (2.6) | |
Any personal or professional experience with cancer, n (%) | – | 236 (76.1) |
Data missing | – | 1 (0.3) |
3.2 Assessment of internal validity
3.3 Participant preferences

Treatment-related effect | Prostate cancer | General population | ||
---|---|---|---|---|
(n = 77) | (n = 311) | |||
MRS, mo (95% CI) | p value | MRS, mo (95% CI) | p value | |
Diarrhea | ||||
Mild | 4 (1–6) | 0.012 | 3 (1–6) | 0.007 |
Moderate | 7 (4–10) | <0.001 | 12 (9–16) | <0.001 |
Fatigue | ||||
Mild | 1 (−2 to 3) | 0.54 | 4 (2–7) | <0.001 |
Moderate | 6 (3–9) | <0.001 | 15 (11–19) | <0.001 |
Peripheral neuropathy | ||||
Mild | 0 (−3 to 2) | 0.76 | −2 (−4 to 1) | 0.18 |
Moderate | 3 (−1 to 6) | 0.11 | 4 (1–7) | 0.006 |
Fracture | ||||
Moderate | 3 (1–6) | 0.016 | 9 (6–12) | <0.001 |
Severe | 18 (12–23) | <0.001 | 31 (24–39) | <0.001 |
Ischemic heart disease | ||||
Moderate | 7 (4–11) | <0.001 | 13 (9–17) | <0.001 |
Severe | 23 (16–30) | <0.001 | 43 (32–53) | <0.001 |
Very severe | 36 (26–47) | <0.001 | 68 (52–85) | <0.001 |
Rash | ||||
Mild | 4 (2–7) | <0.001 | 5 (2–7) | <0.001 |
Moderate | 7 (3–10) | <0.001 | 10 (7–14) | <0.001 |
3.4 Subgroup analyses

3.5 Latent class analysis
Participants, n (%) | Association with | |||
---|---|---|---|---|
Class 1: averting AEs | Class 2: survival | membership of class 2 | ||
(n = 295) | (n = 93) | OR (95% CI) | p value | |
Men from the GP | 241 (81.7) | 70 (75.3) | Reference | |
Patients with metastatic PC | 54 (18.3) | 23 (24.7) | 1.39 (0.73–2.61) | 0.314 |
Mean age, yr [SD] {range} | 64.9 [9.6] (45–86) | 65.3 [9.2] (46–85) | ||
Median age, yr (IQR) | 66.0 (58.0–72.5) | 67.0 (58.0–73.0) | 1.00 (0.97–1.03) | 0.828 |
Age group | ||||
45–64 yr | 135 (45.8%) | 39 (41.9%) | Reference | |
≥65 yr | 160 (54.2%) | 54 (58.1%) | 1.09 (0.64–1.87) | 0.756 |
Mean VAS score [SD] {range} | 82.7 [12.8] (15–100) | 80.8 [13.5] (33–100) | ||
Median VAS score (IQR) | 85.0 (75.0–90.0) | 82.0 (75.0–90.0) | 0.99 (0.97–1.01) | 0.467 |
Data missing | 38 (12.9) | 11 (11.8) | ||
At least one comorbidity present | 144 (48.8) | 48 (51.6) | 1.01 (0.59–1.71) | 0.977 |
Hypertension | 87 (29.5) | 33 (35.5) | ||
Diabetes mellitus | 27 (9.2) | 15 (16.1) | ||
Cardiovascular disease | 47 (15.9) | 14 (15.1) | ||
Chronic respiratory disease | 18 (6.1) | 5 (5.4) | ||
Chronic kidney disease | 8 (2.7) | 2 (2.2) | ||
Chronic liver disease | 3 (1.0) | 0 (0.0) | ||
Other cancer diagnosis | 4 (1.4) | 3 (3.2) | ||
Smoking status | ||||
Nonsmoker | 248 (84.6) | 77 (83.7) | Reference | |
Smoker | 45 (15.4) | 15 (16.3) | 0.81 (0.36–1.66) | 0.583 |
Data missing | 2 (0.7) | 1 (1.1) | ||
Education | ||||
None or mandatory school | 3 (1.0) | 4 (4.3) | Reference | |
Vocational training or baccalaureate | 154 (52.4) | 50 (53.8) | 0.19 (0.02–1.06) | 0.067 |
Higher technical school or college | 65 (22.1) | 21 (22.6) | 0.17 (0.02–0.99) | 0.057 |
University degree or doctorate | 72 (24.5) | 18 (19.4) | 0.13 (0.02–0.77) | 0.030 |
Data missing | 1 (0.3) | 0 (0) | ||
Employment status | ||||
Employed or self-employed | 119 (40.5) | 35 (37.6) | Reference | |
Retired | 166 (56.5) | 56 (60.2) | 1.50 (0.68–3.42) | 0.318 |
Permanent sick leave or without work | 9 (3.1) | 2 (2.2) | 0.80 (0.11–3.52) | 0.785 |
Data missing | 1 (0.3) | 0 (0) | ||
In a partnership | 248 (84.9) | 79 (85.9) | 0.87 (0.44–1.80) | 0.689 |
Data missing | 3 (1.0) | 1 (1.1) | ||
Divorced and/or widowed | 239 (82.4%) | 67 (77.0%) | 1.55 (0.82–2.84) | 0.164 |
Data missing | 7 (2.4%) | 3 (3.2%) | ||
Has dependents | 47 (16.0%) | 21 (22.6%) | 1.60 (0.79–3.15) | 0.176 |
Data missing | 2 (0.7) | 0 (0) | ||
Place of residence | ||||
In the city | 60 (20.3) | 21 (22.6) | Reference | |
In a suburb | 97 (32.9) | 28 (30.1) | 1.03 (0.50–2.20) | 0.930 |
In the countryside | 138 (46.8) | 44 (47.3) | 1.11 (0.57–2.25) | 0.757 |
Language region | ||||
German-speaking | 158 (53.6) | 53 (57.0) | Reference | |
French-speaking | 98 (33.2) | 29 (31.2) | 0.91 (0.54–1.53) | 0.734 |
Italian-speaking | 39 (13.2) | 11 (11.8) | NE | – |
Nationality | ||||
Swiss | 274 (92.9) | 87 (93.5) | Reference | |
Non-Swiss | 21 (7.1) | 6 (6.5) | 0.89 (0.28–2.40) | 0.828 |
PC-specific characteristics | (n = 54) | (n = 23) | ||
Current PC stage | ||||
Metastatic hormone-sensitive PC | 40 (74.1) | 17 (73.9) | Reference | |
Metastatic castration-resistant PC | 14 (25.9%) | 6 (26.1%) | 0.94 (0.27–2.98) | 0.922 |
Mean time since Dx, yr [SD] (range) | 6.8 [5.4] (0–20) | 6.5 [5.4] (1–19) | ||
Median time since Dx, yr (IQR) | 5.0 (3.0–10.0) | 5.0 (2.0–9.0) | 1.00 (0.90–1.11) | 0.984 |
Data missing | 1 (1.9) | 2 (8.7) | ||
Mean time since Mx, yr [SD] (range) | 4.5 [3.9] (0–16) | 4.2 [3.1] (1–11) | ||
Median time since Mx, yr (IQR) | 3.0 (2.0–6.0) | 3.5 (2.0–6.0) | 0.99 (0.84–1.14) | 0.855 |
Data missing | 2 (3.7) | 3 (13.0) | ||
Bone metastases present | 40 (74.1) | 14 (60.9) | 0.53 (0.18–1.57) | 0.247 |
Currently receiving Tx | 52 (96.3) | 22 (95.7) | 0.60 (0.05–13.88) | 0.694 |
Ever experienced AEs | 34 (68.0) | 15 (71.4) | 0.89 (0.27–3.09) | 0.854 |
Experienced pain due to PC in past 2 wk | 8 (15.1) | 6 (27.3) | 2.11 (0.57–7.68) | 0.251 |
GP-specific characteristics | (n = 241) | (n = 70) | ||
Any PPE with cancer | 187 (77.9) | 49 (70.0) | 0.64 (0.34–1.24) | 0.176 |
Data missing | 1 (0.4%) | 0 (0%) |
4. Discussion
4.1 Main findings
4.2 Findings in context
Medical Device Innovation Consortium. Patient centered benefit‐risk project report: a framework for incorporating information on patient preferences regarding benefit and risk into regulatory assessments of new medical technology. Silver Spring, MD: FDA; 2015. https://www.fda.gov/media/95591/download.
Medical Device Innovation Consortium. Patient centered benefit‐risk project report: a framework for incorporating information on patient preferences regarding benefit and risk into regulatory assessments of new medical technology. Silver Spring, MD: FDA; 2015. https://www.fda.gov/media/95591/download.
Medical Device Innovation Consortium. Patient centered benefit‐risk project report: a framework for incorporating information on patient preferences regarding benefit and risk into regulatory assessments of new medical technology. Silver Spring, MD: FDA; 2015. https://www.fda.gov/media/95591/download.
Medical Device Innovation Consortium. Patient centered benefit‐risk project report: a framework for incorporating information on patient preferences regarding benefit and risk into regulatory assessments of new medical technology. Silver Spring, MD: FDA; 2015. https://www.fda.gov/media/95591/download.
4.3 Limitations
5. Conclusions
Appendix A. Supplementary data
- Supplementary data 1
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Medical Device Innovation Consortium. Patient centered benefit‐risk project report: a framework for incorporating information on patient preferences regarding benefit and risk into regulatory assessments of new medical technology. Silver Spring, MD: FDA; 2015. https://www.fda.gov/media/95591/download.
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