What this is
- This study investigates disparities in end-of-life () care, expenditures, and place of death among cancer patients in China based on health insurance types.
- It focuses on three insurance schemes: Urban Employee Basic Medical Insurance (UEBMI), Urban Resident-based Basic Medical Insurance (URBMI), and New Rural Cooperative Medical Scheme (NRCMS).
- Findings reveal significant differences in healthcare utilization and costs, raising concerns about the quality of care for patients with different insurance.
Essence
- Disparities in care exist among cancer patients in China based on health insurance. UEBMI beneficiaries utilized more healthcare services and incurred higher costs compared to NRCMS and URBMI beneficiaries.
Key takeaways
- UEBMI beneficiaries had 2.15 more emergency department visits compared to NRCMS beneficiaries. This indicates higher healthcare utilization among UEBMI beneficiaries, likely due to better coverage.
- NRCMS and UEBMI beneficiaries spent ¥15,722 and ¥43,241 more than URBMI beneficiaries, respectively. This highlights significant financial burdens faced by patients under different insurance schemes.
- Over 81% of UEBMI beneficiaries died in hospitals, compared to 54.5% for NRCMS and 13.3% for URBMI beneficiaries. This reflects a concerning trend towards aggressive care among higher insurance coverage groups.
Caveats
- The study's findings may not be generalizable beyond urban Yichang, limiting the applicability of results to the broader Chinese population.
- Direct expenditures from primary care facilities were not included, potentially underestimating the true financial burden on patients.
- The lack of data on cancer stages and duration limits the understanding of the full context of care utilization.
Definitions
- End-of-life (EOL) care: Care provided in the last months of a patient's life, focusing on comfort and quality rather than curative treatment.
- Palliative care: Care aimed at improving the quality of life for patients with serious illnesses by relieving suffering and managing symptoms.
- Hospice care: Care provided to patients who are near the end of life, focusing on comfort and support rather than curative treatment.
AI simplified
Background
As the leading cause of death in China, new cancer cases totalled 4.3 million in 2015, and 2.8 million cancer patients died that year [1], a rapid increase compared with an estimated 3.8 million new cancer cases and 2.3 million cancer patient deaths in 2014 [2]. Cancer has posed great challenges to the Chinese healthcare system, such as accessibility and affordability of treatment and hospice care [3], patient engagement [4] and quality of death [5]. However, primary care facilities have limited access to opioid drugs, insufficient training and a shortage of specialists and generally do not provide hospice care [6]. Moreover, hospice care provided by the primary care facilities or nursing facilities is still hampered by reimbursement policies [6]. Unbearable end of life (EOL) symptoms force patients or their families to seek help from hospitals, and an increasing number of patients have to die in hospitals [5]. One prior study revealed that, in addition to China’s 400 cancer hospitals, only a few charity hospitals and primary care facilities provided hospice care [7]. An official report showed that less than 1% of hospitals provided hospice care services in 2016 in China [8].
China ranked in the last quartile of countries worldwide on the quality of death, according to the 2015 Quality of Death Index proposed by the Economist Intelligence Unit [7]. With the increasing number of cancer survivors, the disparities in access to EOL care and the intensity of EOL healthcare utilization have been widely debated [9, 10]. Several randomized trials among end-stage cancer patients showed that earlier palliative care could lead to improved quality of life and less aggressive care [11, 12]. Despite the nationwide strategic procurement for cancer care in China, historical studies revealed that expenditures per admission among cancer patients varied by cancer type and health insurance [13, 14]. In other words, higher socioeconomic status (SES) led to higher expenditures [3]. The Global Atlas of Palliative Care at the End of Life also revealed that income levels are generally positively associated with the availability and quality of palliative care [15]. In high-income countries, low SES is a risk factor for in-hospital death and increased utilization of acute EOL healthcare services [16]. One prior study also showed that Medicaid beneficiaries or self-insured populations were observed to have fewer admissions to hospice care within 3 days of death due to unbearable out-of-pocket expenditures [17]. Adolescents and young adults with cancer living in low-income areas were less likely to receive hospice enrolment [18]. One prior study of cancer patients showed that 62.4% of them died in hospital settings in China from 2015 to 2017, higher than the 46.1% of cancer patients in England estimated to have died in hospital settings during the years 2001–2010 [19]. Studies in China have shown that risk factors for in-hospital deaths include high SES [14], absence of hospice care or nursing facilities, and shorter survival after diagnosis [5]. Two studies of cancer patients showed that free medical treatment occupied a large proportion of health care resources in China [20, 21]. However, the two studies were conducted in the 1990s and may not demonstrate current practice patterns [20, 21].
Typically, EOL care refers to all the care provided within the last few months of a patient’s life. Palliative care focuses on improving the quality of life and care for patients with serious illness by preventing and relieving suffering, managing pain and other physical, psychosocial and spiritual problems, and communicating with the patients and their families about expectations of care. However, the illness is not yet considered to be a terminal illness. For hospice care, patients (and/or their families) know that they are not expected to recover from their illness. Generally, treatment for the illness, such as life-prolonging medications, will not be pursued [22, 23]. With the Basic Standards for Hospice Care (for Trial Implementation) and Practice Guidelines for Hospice Care (for Trial Implementation) issued by the Chinese government [5], pioneering hospice care programmes are scaling up, including inpatient hospice care, continuous hospice care, hospice at home, respite care delivered by hospitals, hospice care centres, and primary care facilities. Hospice interdisciplinary care teams, including physicians, nurses, social workers, volunteers, hospice aides and bereavement specialists, jointly provide management of patients’ illnesses and symptoms, as well as emotional and spiritual care for patients and their families [5]. However, only a few local governments issued targeted reimbursement policies for hospice care. Lack of EOL care guidelines might also lead to various healthcare utilizations and intensive EOL care and expenditures, exacerbating the current inequalities in the quality of EOL care [24]. In fact, aggressive EOL care has caused skyrocketing medical expenditures during the last months of patients’ lives, aggravating the existing financial burden of the health system [25].
In China, outside of the Urban Employee Basic Medical Insurance (UEBMI) scheme, nearly 100% of rural and urban residents have been enrolled in the New Rural Cooperative Medical Scheme (NRCMS) and Urban Resident-based Basic Medical Insurance (URBMI) schemes, respectively [26]. The UEBMI scheme has more comprehensive service coverage and financial protection than the other two schemes [26]. Outpatient services were generally not covered by the NRCMS and URBMI schemes [26]. Many rural residents moving to urban areas are still enrolled in the NRCMS scheme [26]. Fragmented health insurance schemes have caused inequitable access to healthcare [26]. Previous studies showed disparities in reimbursement or expenditures for tuberculosis healthcare services [27], for cancer patients [13] and for the elderly [28]. Moreover, as the current payment system is oriented towards a curative approach, physicians tend to provide more aggressive care, which leads to more curative treatment and later hospice enrolment [8]. National reimbursement policies specific for hospice care have also not been enacted [6]. However, disparities in utilization, expenditures and quality of care by insurance types persist. The estimation of disparities in utilization of healthcare services caused by different health insurance types is urgently needed so that the hospice care system can be strengthened.
Currently, studies on the Chinese hospice care system have mainly focused on advance care planning, nursing, traditional healthcare utilization, expenditures and place of death (POD) [29], overlooking the relationship between health insurance and EOL care utilization, expenditures and POD. Moreover, the Chinese hospice care system is still in its infancy [7, 8, 29]. Different provinces have their own processes regarding health insurance consolidation. How reimbursement policies should be implemented to incentivize hospitals and physicians to provide preferable EOL care for patients is unknown, even though this information is critical for policymakers and healthcare administrators. Therefore, this study aimed to compare EOL healthcare utilization, expenditures, and POD among the three universal health insurance schemes in China.
Methods
Data collection
In Yichang, China, the policy on health insurance consolidation was issued in June 2017 and implemented in January 2018 [30]. By 2018, over 23.3% of the population was over 60 years of age. However, current hospice care is provided mainly in inpatient settings; no specific hospice care facilities are available. Hospice care services are generally reimbursed by traditional fee-for-service or global budget due to the lack of reimbursement packages for hospice care. Based on the International Statistical Classification of Diseases, 10th Revision (ICD-10), we first identified decedents from July 2015 to June 2017 from the National Population Death Registration and Management System. We then extracted cancer patients from the Yichang Health Management Data Center. After integrating the two databases, 894 cancer patients were initially identified in Yichang, China [3, 5, 31]. A total of 398 cancer patients who survived more than 6 months after diagnosis were ultimately included in the current study.
Variables
The independent variable was the type of health insurance. Each decedent’s health insurance type was identified from electronic health records collected by the Yichang Health Management Data Center. Outcomes of interest consisted of EOL healthcare utilization during the last 6 months of life, including number of emergency department (ED) visits, number of outpatient visits, number of hospital admissions and whether a decedent had at least one intensive care unit (ICU) admission, as well as total healthcare expenditures during the last 6 months of life, and POD (in-hospital or home death) [3, 5, 31]. Any spending by patients during the ED visits, outpatient visits, inpatient services, and ICU admissions were included from the supply side. In the current study, as the database included only data from the hospitals in Yichang, we did not include EOL care and expenditures among the primary care facilities in Yichang or hospitals out of Yichang. We included the following confounders in our analysis: gender (male and female), age (< 65, 65–80, > 80), marital status (previously married or single, currently married), education attainment (primary school or less, senior school, college or above), and survival time (6–12 months, > 12 months) [3, 5, 31].
Statistical analysis
EOL expenditures were first adjusted to present values in 2017 using the consumer price index based on the Yichang Health Statistics Yearbook. Chi-squared or Fisher exact tests were used to compare differences in SES characteristics by insurance type for categorical variables. The Kruskal–Wallis test followed by Dunn’s pairwise comparison was used for count variables and continuous variables. As expenditure data were skewed distributed, generalized linear models with a gamma distribution and log link function were employed to estimate the associations between health insurance and EOL care expenditures. For the number of outpatient visits, ED visits, and inpatient admissions, generalized linear models with a Poisson distribution and log link function were conducted. For the outcome of POD, a generalized linear model with a binominal distribution and logit link function was conducted. The marginal effect facilitates the estimation of diverse outcomes for defined groups with the change in the independent variables, and we reported the average marginal effect to interpret the data [32]. Moreover, to characterize the potential unmeasured confounding needed to explain the current results, we calculated E-values for each adjusted odds ratio and relative risk [33, 34]. In this study, the E-value estimates what the relative risk would have to be for any unmeasured confounder to overcome the observed association of health insurance type with EOL care, expenditures and POD. All procedures were conducted with Stata 14.0. P < 0.05 was considered to indicate statistical significance.
Results
Basic characteristics by health insurance
As shown in Table 1, among the 398 patients, 64.8% were male, 65.6% were elderly (≥ 65), and 85.9% were married. Nine percent of them attained at least one college degree. A total of 45.0% of the patients survived longer than 12 months after diagnosis. URBMI (65.0%) beneficiaries and UEBMI (71.3%) beneficiaries consisted of more male patients than NRCMS (42.9%) beneficiaries (χ2 = 21.0, P < 0.001). URBMI beneficiaries were younger than the UEBMI group (χ2 = 13.7, P < 0.001). Regarding the level of education attainment, URBMI beneficiaries obtained a lower level of education than those from the NRCMS and UEBMI groups (χ2 = 23.4, P < 0.001). UEBMI (51.3%) beneficiaries had a higher ratio of survival for more than 12 months than URBMI (28.3%) and NRCMS (36.4%) beneficiaries (χ2 = 13.2, P = 0.001). Nearly one-third (33.2%) of patients were diagnosed with lung cancer.
| Variable | Group | Overall | URBMI (1) | NRCMS (2) | UEBMI (3) | χ2 | P | Post Hoc |
|---|---|---|---|---|---|---|---|---|
| Number (Column %) | ||||||||
| Gender | Male | 258 (64.8) | 39 (65.0) | 33 (42.9) | 186 (71.3) | 21 | < 0.001 | 1 > 2, 3 > 2 |
| Female | 140 (35.2) | 21 (35.0) | 44 (57.1) | 75 (28.7) | ||||
| < 65 | 137 (34.4) | 32 (53.3) | 30 (39.0) | 75 (28.7) | 14.4 | 0.006 | 1 < 3 | |
| Age | 65–80 | 202 (50.8) | 20 (33.3) | 37 (48.1) | 145 (55.6) | |||
| > 80 | 59 (14.8) | 8 (13.3) | 10 (13.0) | 41 (15.7) | ||||
| Marital | Previously married or single | 56 (14.1) | 10 (16.7) | 16 (20.8) | 30 (11.5) | 4.6 | 0.099 | \ |
| statusa | Currently married | 342 (85.9) | 50 (83.3) | 61 (79.2) | 231 (88.5) | |||
| Education | ≤ Primary school | 285 (71.6) | 57 (95.0) | 59 (76.6) | 169 (64.8) | 23.4 | < 0.001 | 1 < 2, 1 < 3 |
| attainmentb | Senior school | 76 (19.1) | 3 (5.0) | 12 (15.6) | 61 (23.4) | |||
| ≥ College | 37 (9.3) | 0 (0) | 6 (7.8) | 31 (11.9) | ||||
| Survivalc | 334 (239, 454) | 274 (209, 386) | 285 (234, 405) | 362 (253, 492) | 15.5 | < 0.001 | 1 < 3, 2 < 3 | |
| 6–12 months | 219 (55.0) | 43 (71.7) | 49 (63.6) | 127 (48.7) | 13.2 | 0.001 | 1 < 3, 2 < 3 | |
| > 12 months | 179 (45.0) | 17 (28.3) | 28 (36.4) | 134 (51.3) | ||||
| Cancer type | Lung (C34.x) | 132 (33.2) | 19 (31.7) | 18 (23.4) | 95 (36.4) | 21 | 0.179 | |
| Stomach (C16.x) | 31 (7.8) | 4 (6.7) | 4 (5.2) | 23 (8.8) | ||||
| Colorectum (C18.x, C19.x, C20.x) | 41 (10.3) | 7 (11.7) | 6 (7.8) | 28 (10.7) | ||||
| Liver (C22.x) | 46 (11.6) | 5 (8.3) | 10 (13) | 31 (11.9) | ||||
| Pancreas (C25.xl) | 15 (3.8) | 3 (5) | 1 (1.3) | 11 (4.2) | ||||
| Biliary tract (C23.x, C24.x) | 8 (2.0) | 1 (1.7) | 1 (1.3) | 6 (2.3) | ||||
| Prostate (C61.x) | 9 (2.3) | 2 (3.3) | 1 (1.3) | 6 (2.3) | ||||
| Breast (C50.x) | 18 (4.5) | 2 (3.3) | 8 (10.4) | 8 (3.1) | ||||
| Others (C00.x-C15.x, | 98 (24.6) | 17 (28.3) | 28 (36.4) | 53 (20.3) | ||||
| C17.x, C21.x, | ||||||||
| C26.x, C30.x-C33.x, | ||||||||
| C37.x-C41.x, C43.x-C49.x, | ||||||||
| C51.x-C58.x, | ||||||||
| C60.x, C62.x, | ||||||||
| C80.x, C88.x, | ||||||||
| C90.x, C96.x, C97.x) | ||||||||
EOL healthcare utilization, expenditure and POD by health insurance
As shown in Table 2, UEBMI beneficiaries utilized more outpatient services than URBMI beneficiaries (U = 1.72, P = 0.043) and NRCMS beneficiaries (U = 4.02, P < 0.001). UEBMI beneficiaries had more ED visits than URBMI beneficiaries (U = 5.79, P < 0.001) and NRCMS beneficiaries (U = 6.36, P < 0.001). UEBMI beneficiaries also utilized more inpatient services than URBMI beneficiaries (U = 2.38, P = 0.009). Differences in ICU admission between beneficiaries from the three health insurance schemes were not statistically significant (P = 0.560). For the expenditures during the last 6 months, UEBMI beneficiaries spent more than URBMI beneficiaries (U = 6.11, P < 0.001) and NRCMS beneficiaries (U = 4.12, P < 0.001). NRCMS beneficiaries also spent more than URBMI beneficiaries (U = 1.98, P = 0.024). UEBMI beneficiaries (81.6%) experienced the greatest rate of in-hospital deaths, followed by NRCMS beneficiaries (54.5%) and URBMI (13.3%) beneficiaries (U = 107.1, P < 0.001).
| Variable | Overall | URBMI (1) | NRCMS (2) | UEBMI (3) | U/χ2 | P | Post Hoc |
|---|---|---|---|---|---|---|---|
| Median (p25, p75) | |||||||
| OSa | 5 (1, 13) | 5 (1.5, 10) | 2 (0, 8) | 6 (2, 14) | 17 | 0.002 | 1 < 3, 2 < 3 |
| EDb | 1 (0, 3) | 0 (0, 1) | 0 (0, 1) | 2 (1, 4) | 61.4 | < 0.001 | 1 < 3,2 < 3 |
| ISc | 3 (1, 5) | 2 (1, 4) | 3 (1, 5) | 3 (2, 5) | 5.6 | 0.062 | 1 < 3 |
| ICUd | |||||||
| Yes | 25 (6.3) | 2 (3.3) | 4 (5.2) | 25 (7.3) | 0.56 | \ | |
| No | 373 (93.7) | 58 (96.7) | 73 (94.8) | 242 (92.7) | |||
| EOL expenditurese | 31,349 (10,721, 77,801) | 11,123 (610, 24,492) | 19,953 (6871, 44,352) | 45,389 (18,094, 93,156) | 45.8 | < 0.001 | 1 < 2 < 3 |
| PODf | 107.1 | < 0.001 | |||||
| Hospital | 263 (66.1) | 8 (13.3) | 42 (54.5) | 213 (81.6) | 1 < 2 < 3 | ||
| Home | 135 (33.9) | 52 (86.7) | 35 (45.5) | 48 (18.4) | |||
Marginal effect estimation
Table 3 presents the results of the marginal analysis comparing different outcomes among the three health insurance schemes. Based on the average marginal effect, UEBMI beneficiaries used 1.90 and 2.71 more outpatient services than URBMI (P < 0.001, 95% CI: 1.04 to 2.76) and NRCMS (P < 0.001, 95% CI: 1.98 to 3.43) beneficiaries, respectively. UEBMI beneficiaries were observed to utilize 2.15 more ED visits (P < 0.001, 95% CI: 1.81 to 2.48) and 1.92 more ED visits (P < 0.001, 95% CI: 1.59 to 2.26) than URBMI and NRCMS beneficiaries, respectively. For the inpatient services, NRCMS beneficiaries and UEBMI beneficiaries utilized 1.01 (P = 0.002, 95% CI 0.38 to 1.64) and 0.71 more inpatient services (P = 0.006, 95% CI: 0.20 to 1.22) than URBMI beneficiaries, respectively. Regarding EOL expenditures, NRCMS beneficiaries and UEBMI beneficiaries spent 15,721.8 more Chinese Yuan (P = 0.005, 95% CI: 4685.3 to 26,758.3) and 43,241.2 more Chinese Yuan (P < 0.001, 95% CI: 31914.1 to 54,568.4) than URBMI beneficiaries, respectively. Additionally, UEBMI beneficiaries spent 27,519.5 more Chinese Yuan (P < 0.001, 95% CI: 13978.6 to 41,060.3) than NRCMS beneficiaries. In addition, the likelihood of in-hospital death was 44% (P < 0.001, 95% CI: 29 to 58%) greater for NRCMS beneficiaries than for URBMI beneficiaries. The likelihood of in-hospital death was 67% (P < 0.001, 95% CI: 57 to 78%) greater for URBMI beneficiaries than for UEBMI beneficiaries. The likelihood of in-hospital death was 23% (P < 0.001, 95% CI: 11 to 36%) greater for UEBMI beneficiaries than NRCMS beneficiaries. Results of these regression models, controlling for gender, age group, marital status, education attainment, and survival, are presented in Table 4.
| Variable | OS | ED | IS | EOL expenditures | POD |
|---|---|---|---|---|---|
| Estimates (95% CI) | |||||
| NRCMS (vs. URBMI) | −0.80 (−1.77, 0.16) | 0.22 (− 0.13,0.58) | 1.01 (0.38, 1.64) ** | 15,721.8 (4685.3, 26,758.3) ** | 0.44 (0.29, 0.58) *** |
| UEBMI (vs. URBMI) | 1.90 (1.04, 2.76) *** | 2.15 (1.81–2.48) *** | 0.71 (0.20, 1.22) ** | 43,241.2 (31,914.1, 54,568.4) *** | 0.67 (0.57, 0.78) *** |
| UEBMI (vs. NRCMS) | 2.71 (1.98, 3.43) *** | 1.92 (1.59, 2.26) *** | −0.30 (− 0.82, 0.22) | 27,519.5 (13,978.6, 41,060.3) *** | 0.23 (0.11, 0.36) *** |
| Variable | OSa | EDb | ISc | EOL expendituresd | PODe |
|---|---|---|---|---|---|
| IRR (95% CI) | IRR (95% CI) | IRR (95% CI) | Exp (beta) (95%) | AOR (95%) | |
| NRCMS (vs. URBMI) | 0.89 (0.78, 1.02) | 1.26 (0.87, 1.83) | 1.37 (1.12, 1.67) ** | 1.80 (1.21, 2.70) ** | 9.12 (3.65, 23.02) ** |
| UEBMI (vs. URBMI) | 1.26 (1.12, 1.40) *** | 3.50 (2.58, 4.73) *** | 1.26 (1.05, 1.50) *** | 3.21 (2.26, 4.56) *** | 30.09 (12.56, 72.11) ** |
| UEBMI (vs. NRCMS) | 1.41 (1.27, 1.56) *** | 2.77 (2.17, 3.55) *** | 0.92 (0.80, 1.06) | 1.77 (1.30, 2.43) *** | 3.28 (1.82, 5.92) *** |
Sensitivity analysis
The E-value estimates what the relative risk would have to be for any unmeasured confounder to overcome the observed association of health insurance type with EOL care, expenditures and POD in this study, enabling us to interpret how strong the confounding would have to be to explain away our estimate and, thus, how much evidence we truly have for association. The E-values for the point estimates and lower 95% confidence bounds for EOL care, expenditures and POD by health insurance type are presented in Table 5. In this study, an E-value of 17.73 would indicate that an unmeasured confounder would have to increase both the likelihood of shifting from URBMI to NRCMS and the likelihood of in-hospital death by 17.73-fold each if the type of health insurance was to have no association with in-hospital death.
| Variable | OSa | EDb | ISc | EOL expendituresd | PODe |
|---|---|---|---|---|---|
| E-value (lower 95% confidence bound) | |||||
| NRCMS (vs. URBMI) | 1.50 (1.00) | 1.83 (1.00) | 2.08 (1.48) | 3.00 (1.71) | 17.73 (6.76) |
| UEBMI (vs. URBMI) | 1.83 (1.49) | 6.46 (4.60) | 1.83 (1.28) | 5.87 (3.95) | 59.68 (24.61) |
| UEBMI (vs. NRCMS) | 2.17 (1.86) | 4.98 (3.76) | 1.39 (1.00) | 2.94 (1.92) | 6.02 (3.04) |
Discussion
To the best of our knowledge, as the first study to explore the disparities in EOL care, expenditures and POD among the three health insurance schemes, this study enriches the current literature on the research of Chinese health insurance reform, specifically in hospice care reimbursement policies. Huge disparities in EOL care utilization, expenditure and POD exist, revealing the great potential to improve the hospice care system in China. The findings of this study also highlight the urgent need to enact targeted reimbursement policies for EOL care, thus reducing EOL aggressive care and healthcare expenditures.
First, UEBMI beneficiaries visited outpatients and EDs more frequently than URBMI beneficiaries and NRCMS beneficiaries. In addition, NRCMS beneficiaries and UEBMI beneficiaries were observed to have a greater utilization of inpatient services than URBMI beneficiaries. These results may be related to the fact that UEBMI had a higher reimbursement ratio. URBMI and NRCMS beneficiaries had to utilize inpatient services for outpatient services that were not covered by the URBMI benefit package, but with a limited reimbursement ratio [35]. In addition, NRCMS beneficiaries had a higher level of education attainment than URBMI beneficiaries, which generally means a higher level of income and affordability for EOL care [36]. However, the current data do not allow us to include income in our analysis. Given the fact that residents from rural areas generally had a lower level of education attainment than their urban counterparts [37]. This result might also be related to the fact of small sample size of this study. The current results did not find differences in ICU admissions among the three schemes. Given the fact that a higher level of reimbursement ratio was not associated with ICU admissions, we may cautiously infer that public awareness of avoiding unnecessary aggressive care might have been raised. However, one previous study also revealed that public awareness of advance care planning is not enough [38]. A comparative study between Ontario, Canada, and the United States revealed that limited availability of hospice care in Ontario and different attitudes towards EOL care might be related to different EOL care utilization [39]. Compared to beneficiaries with Medicare and Medicaid Hospice Benefits, beneficiaries with private insurance, particularly those in managed care plans, demonstrated disparities in terms of the hospice benefits they received [40]. Hence, we can cautiously infer that higher proportions of inpatient services might be used due to the inadequate supply of home- or community-based hospice care and the lack of specific reimbursement policies. Lessons from Taiwan’s National Health Insurance system also showed that determining the insurance coverage and reimbursement level for specific services and providing more incentives for institutions will help promote home- or hospital-based hospice care [41].
Second, UEBMI beneficiaries spent more than beneficiaries in the other two schemes. Our results indicated that a higher proportion of out-of-pocket expenditures or stricter policies might cause disparities in EOL care utilization. It might be related to the fact that UEBMI and URBMI beneficiaries used more hospital-based services [42]. A retrospective cohort study revealed that expanded hospice care benefits to end-stage renal disease patients are associated with a 7.3% reduction in EOL expenditures [43]. Therefore, hospice care consultation should be delivered to patients in advance, which is associated with reduced EOL aggressive care utilization and expenditures [44, 45]. The future reimbursement policy should also encourage patients or their families to engage in more advance care planning with the providers under updated preferences and goals of EOL care [44–46]. Notably, well-educated patients could accurately understand do-not-resuscitate orders [16]. Such a policy might be applicable to UEBMI beneficiaries who are generally of a higher SES.
Third, more than 80% of UEBMI beneficiaries died in hospitals. This result contradicts results of one prior study in Ontario, Canada, revealing that patients who lived in higher-income urban communities had a greater likelihood of dying at home [46]. This finding reflects the large gap between the patients’ preference and the actual POD situation in urban China. Therefore, it is vital for patients and policy makers to raise awareness through discussion of the preferred POD [36]. Moreover, the greater proportion of UEBMI beneficiaries who died in hospitals revealed a high intensity of EOL care utilization. This outcome is consistent with the findings of one prior study that revealed that higher SES led to a higher possibility of in-hospital death [47]. These results revealed that a large proportion of healthcare resources might be wasted, hindering the system-building of community-based or home-based hospice care. Given the fact that less than 1/3 of Chinese oncologists preferred to refer cancer patients to hospice care [6], these huge disparities also highlight the great potential to optimize the current hospice care system. As a high-quality death was associated with the professional support received by the patients’ caregivers, EOL discussions and conversations are urgently needed to help improve the possibility of earlier hospice care services and reduced expenditures. Finally, advance planning should be introduced and enhanced to reduce engagements with patients or their families because the current system requires the physician to coordinate with patients’ families when an emergency occurs, which would mean unnecessary expenditures and in-hospital deaths.
Our study has several limitations. First, while the current study was representative of cancer patients in urban Yichang, it may not be generalized to the whole population in China. Second, we could not obtain direct expenditures from the primary care facilities or institutions outside of Yichang or patients’ or their families’ income variables, so they are not considered in the current study. Given that primary care facilities generally do not provide any hospice care services, home-based hospice care might not be available for many patients, increasing the likelihood of patients’ dying in hospitals. Therefore, we should compare our results with findings based on other countries more cautiously. Third, the current database did not collect stages of cancer or whether the EOL care included hospice care and its duration; we should consider the time of hospice care enrolment and the patients’ actual utilization of hospice care in our analyses. Fourth, due to the limitations of the sample size, we could not conduct a stratified analysis or use a matching method to reduce the effect of selection bias. We were also unable to control for the variations in EOL care by hospital-level characteristics and practice patterns.
Conclusion
In conclusion, EOL healthcare utilization, expenditures and POD for cancer patients vary within different health insurance schemes. Lack of purposive reimbursement policies and clinical guidelines might have caused patients or their families to choose inpatient services as a substitute for professional hospice care services. The results of the current study could help future studies investigate more urgent evidence to help explain influential factors, thus guiding the system-building of the hospice care system from the perspective of health insurance. To achieve the goal of quality EOL care, an urgent goal is to establish a specific reimbursement policy and EOL consultation for cancer patients in China. Intensive hospice care from outpatient services—both from primary care facilities and hospitals—and inpatient services by primary care facilities may be a promising approach to ensure the availability of more appropriate hospice care services that are relatively affordable.
Acknowledgements
We thank all the staff involved from the Yichang Center for Disease Control and Prevention. A previous version of abstract of this study was accepted by International Society for Pharmacoeconomics and Outcomes Research Conference 2020 (Orlando, USA) [48].
Abbreviations
Authors’ contributions
ZL, LZ, PH, PZ, CX, FL designed this study. ZL, XT analysed the and interpreted the data. ZL drafted the manuscript. PH, RH and XL revised the manuscript. All authors read and approved the final manuscript.
Funding
This current study was funded by the National Natural Science Foundation of China (71734003). The funder had no role in the design of the study, the selection of respondents, the collection, analysis or interpretation of data, the decision to publish or preparation of the manuscript.
Availability of data and materials
Raw data of the current study was provided by the Yichang Health Management Center affiliated with the Yichang Center for Disease Control and Prevention per the cooperation agreement between the Yichang Center for Disease Control and Prevention and School of Medicine and Health Management, Huazhong University of Science and Technology. As the raw data were de-identified by the research team, de-identified data used during the current study are available from the corresponding author upon reasonable request.
Ethics approval and consent to participate
This study was approved by the Ethics Committee of Tongji Medical College, Huazhong University of Science and Technology (IORG No: IORG0003571). All the data used in this study were deidentified. All the data were de-identified and provided by the Yichang Health Management Center affiliated with the Yichang Center for Disease Control and Prevention. Therefore, identifiable individuals were not involved in the current study.
Consent for publication
Not applicable.
Competing interests
None declared.
Footnotes
Contributor Information
Zhong Li, Email: lizhongjs@gmail.com.
Peiyin Hung, Email: hungp@mailbox.sc.edu.
Ruibo He, Email: heruibo27@163.com.
Xiaoming Tu, Email: xiaomingtu@njmu.edu.cn.
Xiaoming Li, Email: xiaoming@mailbox.sc.edu.
Chengzhong Xu, Email: function68@hotmail.com.
Fangfang Lu, Email: fangfanglu91@126.com.
Pei Zhang, Email: m15827213395@163.com.
Liang Zhang, Email: zhanglianghust@126.com.
References
Associated Data
Data Availability Statement
Raw data of the current study was provided by the Yichang Health Management Center affiliated with the Yichang Center for Disease Control and Prevention per the cooperation agreement between the Yichang Center for Disease Control and Prevention and School of Medicine and Health Management, Huazhong University of Science and Technology. As the raw data were de-identified by the research team, de-identified data used during the current study are available from the corresponding author upon reasonable request.