Patients’ Self-Reported Disability Weights of Top-Ranking Diseases in Thailand: Do They Differ by Socio-Demographic and Illness Characteristics?
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Design and Participants
2.2. Valuation Methods
- In the VAS, patients were asked to rate their current health state on a vertical line, ranging from 0 to 1, with endpoints being: ‘The best health you can imagine’, and ‘The worst health you can imagine’. The disability weight was then obtained from the reversed VAS score as indicated on the vertical line.
- We used the Thai version of the EQ-5D instrument in this study. Patients were asked to describe their own health state on the five dimensions (questions) which are mobility, self-care, active daily life, pain/discomfort, and anxiety/depression [20]. Each dimension is rated on five levels of difficulty: none, slight, moderate, severe, and extreme. The Thai EQ-5D index scores range from -0.4212 to 1.00, wherein 1 and 0 represent perfect health and death, respectively. Negative values indicate states worse than death [21]. The value obtained from each of the five dimensions forms a single utility score ranging from 0 to 1 and the disability weight is calculated based on a simple linear regression model as follows [21]:
- 3.
- The TTO method elicits preference scores of a certain health state presented to the respondent by making a trade-off between length of life and quality of life [6]. In this study we limited the disease duration to 10 years using years lived in full health as the anchoring state. We assessed only the health state of better than death, which yielded positive values. The respondent was first asked to compare 10 years living in each severity state of disease to (x) years in full health and followed consecutively by a shorter period of time of living in full health until they reached the point of indifference between the two health states: living with disease for another 10 years and living in full health for a shorter period of time. The questions were forced to end each health state with death [22]. An example of a question was “Choice A: stay in a [health state] for 10 years, then die versus Choice B: stay in full health for (x) years (x < 10), then die.” Time (x) was increased by one year until the respondents became indifferent between the two choices. Visual aids for TTO questions were used to help participants reach their point of indifference. The TTO instrument provides a utility score (u), which is the division of the time lived with full health (x) at the point of indifference by the time lived with that certain disease state (t) [23]. Theutility score can then be transformed to a disability weight by subtracting it from 1.
2.3. Ethics
2.4. Statistical Analysis
3. Results
3.1. Patient Characteristics
3.2. Disability Weights
3.2.1. Disability Weights by Valuation Method
3.2.2. Disability Weights by Type of Disease
3.2.3. Disability Weights by Severity of Disease
3.2.4. Association between Respondents’ Characteristics and Disability Weights
4. Discussion
5. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Health State | Lay Description |
---|---|
Alcohol-use disorder severity | |
Mild | Drinks a lot of alcohol and sometimes has difficulty controlling the urge to drink. While intoxicated, the person has difficulty performing daily activities. |
Moderate | Drinks a lot, gets drunk almost every week and has great difficulty controlling the urge to drink. Drinking and recovering causes great difficulty in daily activities, and causes sleep loss and fatigue. |
Severe | Gets drunk almost every day and is unable to control the urge to drink. Drinking and recovering replace most daily activities. The person has difficulty thinking, remembering, and communicating, and feels constant pain and fatigue. |
Major depressive disorder severity | |
Mild | Feels persistent sadness and has lost interest in usual activities. The person sometimes sleeps badly, feels tired, or has trouble concentrating but still manages to function in daily life with extra effort. |
Moderate | Has constant sadness and has lost interest in usual activities. The person has some difficulty in daily life, sleeps badly, has trouble concentrating, and sometimes thinks about harming himself (or herself). |
Severe | Has overwhelming, constant sadness and cannot function in daily life. The person sometimes loses touch with reality and wants to harm or kill him/herself. |
Osteoarthritis category | |
Treated with surgery | The person has already had surgery for total knee/hip replacement and supportive treatment (pain medication, anti-inflammatories), which resulted in reduced pain and disability. |
Treated with medication/therapy | Has pain in knee or hip, causing difficulty to move the knee or walk with a limp and feels discomfort when walking. Supportive treatment (pain medication, anti-inflammatories) may result in reduced pain and disability. |
No treatment (waiting for surgery | Has severe pain in knee or hip, causing difficulty to move the knee or walk with a limp and feels discomfort when walking. Supportive treatment (pain medication, anti-inflammatories) may result in reduced pain and disability. Joint replacement may occur and patients are waiting for surgery of total knee/hip replacement. |
Characteristic | MDD Patients (n = 150) | Osteoarthritis Patients (n = 150) | AUD Patients (n = 150) | |||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|
EQ–5D (n = 75) | TTO (n = 75) | VAS (n = 150) | p– value | EQ–5D (n = 75) | TTO (n = 75) | VAS (n = 150) | p– value | EQ–5D (n = 75) | TTO (n = 75) | VAS (n = 150) | p– value | |
Sex | ||||||||||||
Male | 38.7 (27.5,49.8) | 30.7 (20.1,41.2) | 34.7 (27.0,42.3) | 0.303 | 17.4 (8.3,26.4) | 22.1 (12.1,32.0) | 19.7 (13.0,26.4) | 0.492 | 84.0 (75.6, 92.4) | 78.7 (69.3, 88.0) | 81.3 (75.1, 87.6) | 0.402 |
Female | 61.3 (50.2,72.5) | 69.3 (58.8,79.9) | 65.3 (57.7,73.0) | 82.6 (73.6,91.7) | 77.9 (68.0,87.9) | 80.3 (73.6,87.0) | 16.0 (7.6, 24.4) | 21.3 (12.0, 30.7) | 18.7 (12.4, 24.9) | |||
Age (years) mean (sd) | 51.2 (16.2) | 47.9 (17.8) | 49.5 (17.1) | 0.243 | 64.8 (11.8) | 63.1 (11.4) | 64.0 (11.6) | 0.631 | 50.8 (14.6) | 53.6 (16.4) | 52.2 (15.5) | 0.266 |
Education level | ||||||||||||
No formal education | 2.7 (1.0,6.4) | 1.3 (1.2,4.0) | 2.0 (0.3,4.3) | 0.476 | 4.3 (1.0,9.2) | 2.9 (1.1,7.0) | 3.6 (0.5,6.8)) | 0.333 | 2.8 (1.0,6.4) | 2.7 (1.0, 6.4) | 2.7 (0.0,5.0) | 0.510 |
Primary school | 49.3 (37.9,60.8) | 41.3 (30.1,52.6) | 45.3 (37.3,53.4) | 50.7 (38.8,62.7)) | 63.2 (51.6,74.8) | 56.9 (48.6,65.3) | 41.3 (30.1,52.6) | 50.7 (39.2,62.1) | 46.0 (38.0,54.0) | |||
Secondary school or higher | 48.0 (36.6,59.4) | 57.3 (46.0,68.6) | 52.7 (44.6,60.7) | 44.9 (33.1,56.8) | 33.8 (22.4,45.2) | 39.4 (31.2,47.7) | 56.0 (44.6,67.4) | 46.7 (35.3,58.1) | 51.3 (30.8,46.5) | |||
Marital status | ||||||||||||
Married | 58.7 (47.4,69.9) | 61.3 (50.2,72.5) | 60.0 (52.1,67.9) | 0.739 | 72.5 (61.8,83.1) | 61.8 (50.1,73.4) | 67.2 (59.2,75.1) | 0.182 | 74.7 (64.7, 84.6) | 65.3 (54.4,76.2) | 70.0 (62.6,77.4) | 0.212 |
Single | 41.3 (30.1,52.6) | 38.7 (27.5,49.8) | 40.0 (32.1,47.9) | 27.5 (16.9,38.2) | 38.2 26.6,49.9) | 32.8 (24.9,40.8) | 25.3 (15.4,35.3) | 34.7 (23.8,45.6) | 30.0 (22.6, 37.4) | |||
Occupation | ||||||||||||
Unemployed | 46.7 (35.3,58.1) | 46.8 (34.3,59.0) | 46.7 (38.6,54.7) | 0.814 | 36.2 (24.8,47.7) | 47.1 (35.1,59.1) | 41.6 (33.3,49.9) | 0.199 | 20.0 (10.8, 29.2) | 29.3 (18.9, 39.7) | 24.7 (26.4, 41.6) | 0.185 |
Employed | 53.3 (41.9,64.7) | 53.2 (42.9,64.4) | 53.3 (45.3,61.4) | 63.8 (52.3,75.2) | 52.9 (40.9,64.9) | 58.4 (50.1,66.7) | 80.0 (70.8, 89.2) | 70.7 (60.3, 81.1) | 75.3 (68.4, 82.3) | |||
Income (baht) | ||||||||||||
median | 9000 | 7000 | 8000 | 0.467 | 9000 | 6500 | 8000 | 0.364 | 7000.0 | 5000.0 | 6000.0 | 0.321 |
IQR | 3000–18,000 | 2000– 20,000 | 2700–18,000 | 3000–17,000 | 1750–18,500 | 2000–17,000 | 3000–18,000 | 800–12,000 | 2000–15,000 | |||
Family size (mean, SD) | 3.3 (1.6) | 3.3 (1.4) | 3.3 (1.5) | 0.773 | 3.3 (2.1) | 3.4 (1.5) | 3.4 (1.5) | 0.863 | 3.8 (1.6) | 3.4 (2.0) | 3.6 (1.8) | 0.210 |
Chronic diseases | 53.3 (41.9,64.7) | 48.0 (36.6,59.4) | 50.7 (42.6,58.7) | 0.514 | 75.4 (65.1,85.6) | 67.6 (56.4,789) | 71.5 (63.9,79.1) | 0.317 | 36.0 (25.0, 47.0) | 38.7 (27.5, 49.8) | 37.3 (29.5, 45.1) | 0.736 |
Duration of illness (years); mean (SD) | 0.6(0.3) | 0.7 (0.3) | 0.6(0.3) | 0.149 | 2.4(1.5) | 2.6(1.6) | 2.5(1.5) | 0.328 | 1.0(0.5) | 1.1(0.5) | 1.1(0.5) | 0.139 |
Hospitalization | 37.3 (26.3,48.4) | 36.0 (25.0,47.0) | 36.7 (28.9,44.4) | 0.865 | 34.8 (23.4,46.1) | 36.8 (25.2,48.4) | 35.8 (27.7,43.9) | 0.809 | 30.7 (20.1,41.2) | 32.0 (21.3,42.7) | 31.3 (23.9,38.8) | 0.860 |
Accident | 32.0 (21.3,42.7) | 33.3 (22.5,44.1) | 32.7 (25.1,40.2) | 0.862 | 29.0 (18.2,39.8) | 22.1 (12.1,32.0) | 25.5 (18.2,32.9) | 0.353 | 36.0 (25.0,47.0) | 30.7 (20.1,41.2) | 33.3 (25.7,40.9) | 0.488 |
MDD Patients | Osteoarthritis Patients | AUD Patients | ||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|
Valuation method | Mild | Moderate | Severe | Total | Treated with Surgery | Treated with Medication | Waiting for Surgery | Total | Mild | Moderate | Severe | Total |
VAS | 0.482 a (0.229) | 0.515 b (0.226) | 0.617 ab (0.204) | 0.539 (0.226) d† | 0.486 (0.288) | 0.541 (0.245) | 0.645 (0.238) | 0.544 (0.262) d† | 0.395 ab (0.213) | 0.511 a (0.153) | 0.546 b (0.282) | 0.485 (0.231) d† |
EQ-5D | 0.212 a (0.199) | 0.235 b (0.177) | 0.500 ab (0.253) | 0.465 (0.406) e† | 0.120 a (0.093) | 0.185 b (0.135) | 0.484 ab (0.280) | 0.260 (0.302) e | 0.212 a (0.256) | 0.252 b (0.241) | 0.450 ab (0.262) | 0.405 (0.330) e† |
TTO | 0.342 (0.356) | 0.512 (0.433) | 0.536 (0.410) | 0.316 (0.247) f† | 0.246 ab (0.353) | 0.256 a (0.241) | 0.280 b (0.316) | 0.253 (0.238) f† | 0.318 a (0.386) | 0.398 (0.319) | 0.498 a (0.261) | 0.311 (0.271) f† |
Characteristic | MDD | Osteoarthritis | AUD | |||
---|---|---|---|---|---|---|
Estimate | p-value | >Estimate | p-value | >Estimate | p-value | |
(95% CI) | (95% CI) | (95% CI) | ||||
Age group (years)† | ||||||
26–40 | −0.053 (0.188, 0.081) | 0.433 | −0.467 (−1.114,0.181) | 0.157 | −0.164 (−0.488,0.159) | 0.317 |
41–59 | −0.005 (−0.140, −.130) | 0.938 | −0.051 (−0.440,0.338) | 0.797 | −0.055 (−0.377,0.266) | 0.733 |
≥60 | −0.081 (−0.211,0.049) | 0.222 | −0.080 (−0.458,0.299) | 0.677 | −0.146 (−0.469,0.177) | 0.373 |
Sex (Female) † | −0.0159 (−0.092,0.060) | 0.680 | 0.027 (−0.084,0.140) | 0.629 | 0.019 (−0.082,0.119) | 0.714 |
Marital Status (Married) † | −0.021 (−0.105,0.062) | 0.617 | −0.066 (−0.162,0.031) | 0.181 | 0.014 (−0.069,0.096) | 0.745 |
Severity level | ||||||
Mode rate | 0.038 (−0.60,0.136) | 0.448 | 0.021 (−0.009,0.132) | 0.705 | 0.110 (0.017,0.202) | 0.021 |
Severe | 0.135 (0.041,0.229) | 0.005 | 0.099 (−0.014,0.212) | 0.086 | 0.145 0.050,0.241) | 0.003 |
Duration of illness (years) | −0.003 (−0.013,−0.007) | 0.553 | 0.002 (−0.001,0.004) | 0.168 | 0.003 (−0.010,0.001) | 0.177 |
Chronic disease(s) (yes/no) | −0.066 (−0.142,0.010) | 0.088 | 0.062 (−0.034,0.160) | 0.203 | 0.020 (−0.064,0.099) | 0.673 |
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Nontarak, J.; Assanangkornchai, S.; Callinan, S. Patients’ Self-Reported Disability Weights of Top-Ranking Diseases in Thailand: Do They Differ by Socio-Demographic and Illness Characteristics? Int. J. Environ. Res. Public Health 2020, 17, 1595. https://doi.org/10.3390/ijerph17051595
Nontarak J, Assanangkornchai S, Callinan S. Patients’ Self-Reported Disability Weights of Top-Ranking Diseases in Thailand: Do They Differ by Socio-Demographic and Illness Characteristics? International Journal of Environmental Research and Public Health. 2020; 17(5):1595. https://doi.org/10.3390/ijerph17051595
Chicago/Turabian StyleNontarak, Jiraluck, Sawitri Assanangkornchai, and Sarah Callinan. 2020. "Patients’ Self-Reported Disability Weights of Top-Ranking Diseases in Thailand: Do They Differ by Socio-Demographic and Illness Characteristics?" International Journal of Environmental Research and Public Health 17, no. 5: 1595. https://doi.org/10.3390/ijerph17051595
APA StyleNontarak, J., Assanangkornchai, S., & Callinan, S. (2020). Patients’ Self-Reported Disability Weights of Top-Ranking Diseases in Thailand: Do They Differ by Socio-Demographic and Illness Characteristics? International Journal of Environmental Research and Public Health, 17(5), 1595. https://doi.org/10.3390/ijerph17051595