4.1. Variables and Data
China’s new first-tier cities, as identified by First Financial News since 2013, are assessed based on five major indicators: commercial resource aggregation, urban hub, human activity, lifestyle diversity, and future potential. This evaluation involves data from 170 well-known enterprises, user behavior data from 19 internet companies, and data institutions, covering 337 prefecture-level and above cities in China [
33]. The efficiency of medical waste recycling systems in these cities can be seen as a microcosm of the urbanization process in China, which is crucial for understanding the level of China’s medical waste recycling systems.
DEA is designed to determine the relative efficiency of each
DMU compared to other
DMUs and to classify them as either efficient (on the boundary of the production possibility set) or inefficient (within the boundary). Smaller data discrepancies among
DMUs can provide a more precise efficiency assessment. If the data discrepancies are large, this can lead to increased volatility in the assessment results, and outliers may have a disproportionate impact on the determination of the efficiency frontier, thereby distorting the efficiency scores. The differences in socio-economic factors and demographic variables among China’s new first-tier cities are relatively small [
34]. Selecting these cities as the
DMUs can help to minimize the differences and ensure the accuracy of the efficiency results. To the best of our knowledge, there are no existing studies that have evaluated the efficiency of medical waste recycling systems, nor has there been any research that has assessed the efficiency of medical waste recycling systems in China’s new first-tier cities.
This paper selects 15 cities in the list of New First-Tier Cities since 2022, which includes Chengdu, Chongqing, Hangzhou, Xi’an, Wuhan, Suzhou, Zhengzhou, Nanjing, Tianjin, Changsha, Dongguan, Ningbo, Foshan, Hefei, and Qingdao, as the DMUs. By employing a two-stage BAM-G model to calculate the efficiency of the medical waste recycling systems, the study aims to explore which subsystems are more sensitive to the medical waste recycling systems in these cities, thereby providing feasible recommendations for local improvements.
As shown in
Figure 5, the medical waste generated volume in these cities showed an upward trend from 2017 to 2019, slowed down from 2019 to 2021, and then increased in 2022. This phenomenon is mainly attributed to the outbreak of COVID-19 in 2019 and the surge in medical activities caused by the shift in China’s epidemic prevention policies from “preventing infection” to “protecting health and preventing severe cases” in 2022.
Figure 6 displays a heat map of the medical waste volumes generated in these cities from 2017 to 2022.
Table 3 summarizes the descriptive statistics of the inputs and outputs of medical waste recycling systems. The variables of inputs and outputs are defined as follows. Due to the lack of direct data sources for some indicators, we estimated the relevant indicators based on previous research studies [
35,
36,
37], and the specific estimation method was as follows.
Medical waste generated volume. Domestically and internationally, the medical waste generated volume was primarily estimated based on a certain medical waste production coefficient. Referring to the forecasting method proposed by Li [
35], this paper derived the following formula for the medical waste generated volume.
Medical waste generated volume Outpatient medical waste generated volume inpatient medical waste generated volume
Outpatient medical waste generated volume The number of medical treatments provided by health and medical institutions Medical waste generation per patient visit
Inpatient medical waste generated volume The actual number of hospital beds in the city Bed occupancy rate Medical waste generation per bed
For cities that did not disclose the number of medical beds, the inpatient medical waste generated volume was estimated using the total annual number of hospital admissions and the average length of hospital stays per year. The formula used for this estimation is as follows:
Inpatient medical waste generated volume Total annual number of hospital admissions The average length of hospital stays per year Medical waste generation per bed
Referring to the assessment by the United Nations Planning Agency on waste generation rates from various parts of the world [
38], it is indicated that hospitals produce approximately 0.5 to 1 kg of waste per bed per day. Therefore, the medical waste generation per bed is arbitrarily taken to be between 0.5 and 1 kg. For outpatient departments, the daily waste generation is about 1 kg for every 20 to 30 people. Hence, the medical waste generation per patient visit is arbitrarily taken to be between 0.03 and 0.05 kg.
Annual precipitation. The data on annual precipitation was obtained from the China Statistical Yearbook on the Environment.
Labor. Manual skilled personnel are responsible for skilled operations and maintenance, logistical support, and services. Therefore, this paper selected manual skilled personnel as the labor input for the MWCS.
Transportation cost. In this paper, we estimated the transportation costs using the following formula.
Transportation cost The price of gasoline City’s fuel consumption Medical waste collected volume accounts for the proportion of road transportation
Degree of government support. There are currently no direct data available regarding specific investments by the municipal government in MWTS disposal projects. However, there are concrete data regarding the completion of investment in provincial solid waste management projects. The amount of investment by the government in solid waste management also reflects the government’s level of attention to the disposal of medical waste. Therefore, this article selected the completed investment in provincial solid waste management projects as a representative of the government’s level of support.
Energy. The data on energy were obtained from the China Electric Power Yearbook.
Operating costs. Medical waste is primarily disposed of through disinfection and high-temperature incineration, with operational costs ranging from 0.15 to 0.23 ten thousand CNY per ton [
39]. Therefore, this paper calculated the operational costs by multiplying the medical waste disposal volume by a randomly generated factor between 0.15 and 0.23.
Medical waste collected volume. The Municipal Bureau of Ecology and Environment issues annual announcements regarding information on the prevention and control of solid waste pollution.
Medical waste disposal volume. According to the survey, the centralized disposal rate for medical waste in China currently stands at 100%. Hence, the medical waste disposal volume is equivalent to the medical waste collected volume.
CO2 emissions. Medical waste is transported via road; hence, this paper estimated the CO2 emissions generated by the transportation of medical waste by considering indicators such as the proportion of the medical waste collected volume to the total road freight volume and the CO2 emissions produced by road transportation. The specific formula is as follows.
CO2 emissions The proportion of medical waste collected volume to the total road freight volume CO2 emissions produced by road transportation
Waste gas and residue. This paper estimated the waste gas and residue by considering the proportion of the medical waste disposal volume to the total volume of municipal solid waste.
Waste gas and residue The proportion of medical waste disposal volume to the total volume of municipal solid waste The total amount of urban waste gas and residue
The data used in the study cover the period from 2017 to 2022. They were collected from various sources: the Health Commission; Annual Statistics on the Environment in China; the China Electric Power Yearbook; the China Statistical Yearbook; the China Energy Statistical Yearbook; the maximum retail prices of gasoline and diesel in provinces; municipalities and central cities; Local Statistical Bureaus; the Municipal Bureau of Ecology and Environment; and the China CO
2 Accounting Database.
Table 4 reports the detailed data sources.
4.2. Empirical Results
This section begins by employing the BAM-G and BAM-VF-G models to evaluate China’s new first-tier cities’ medical waste recycling systems’ efficiency between 2017 and 2022. Subsequently, PE and EE are calculated to analyze the technological level and environmental emission capacity. Finally, the efficiencies of MWCSs and MWTSs are calculated to examine the internal factors influencing systems efficiency.
4.2.1. The Efficiency of BAM-G and BAM-VF-G
We use the BAM-G model to estimate the efficiency of these cities’ medical waste recycling systems.
Table 5 summarizes the system efficiency scores from 2017 to 2022. It can be observed that Hangzhou has been the least efficient city in terms of medical waste recycling, with an average efficiency score of a mere 0.432 between the years 2017 and 2022. Suzhou, Zhengzhou, Nanjing, Tianjin, Dongguan, Foshan, Hefei, and Qingdao all have efficiency scores of 1, indicating that the medical waste recycling systems established in these cities are relatively rational and that they have taken a leading position in medical waste recycling compared to other cities, such as Chengdu, Chongqing, and Hangzhou. These inefficient cities can learn from the successful experiences of cities like Suzhou and Zhengzhou to identify directions for improvement and enhancement. However, unfortunately, this analysis does not identify the differences among these eight efficient cities. To further rank Suzhou, Zhengzhou, Nanjing, Tianjin, Dongguan, Foshan, Hefei, and Qingdao specifically, the BAM-VF-G model was employed for efficiency measurement.
The principle of the virtual frontier is to set the input intervals for the
as [0.9, 1] and the output intervals as [1, 1.1], thereby generating a new set of reference
through random production. Since the efficiency of the reference
produced randomly is higher than that of the evaluated set of
, it is easier to differentiate between the efficiencies of effective
. The efficiency scores obtained through the virtual frontier will also be lower than those derived from the BAM-G model. The results are shown in
Table 6. It can be observed that none of the
has an efficiency score of 1, and all are lower than the efficiency scores obtained from the BAM-G model. A comparison of the efficiency scores and rankings calculated by the BAM-G model and the BAM-VF-G model is presented in
Table 7. The
with efficiency scores of 1, as calculated by the BAM-G model, are ranked in the following order: Foshan, Tianjin, Qingdao, Dongguan, Hefei, Suzhou, Zhengzhou, and Nanjing.
These fifteen cities are categorized into two groups: efficient
and inefficient
, as depicted in
Figure 7. Among them, Foshan, Tianjin, and Qingdao are the three cities with efficient scores, while Hangzhou, Chengdu, and Ningbo are the three cities with inefficient scores. Analyzing the efficiency scores of these two groups of cities from 2017 to 2022, it can be observed that during the years 2017 to 2019, there was an upward trend in the efficiency scores for both groups of cities. However, in the years 2020 to 2021, there was a decline in the efficiency scores of all cities to varying degrees. What is distinct is that in the year 2022, the efficiency scores for the group of efficient cities increased, while the efficiency scores for the group of inefficient cities decreased.
The COVID-19 pandemic has had a profound impact on China, the year 2020 being marked as the most challenging in terms of the speed of transmission, the extent of contagion, and the difficulty of prevention and control since the founding of the People’s Republic of China. The pandemic has led to a surge in medical activities, resulting in a continuous increase in the medical waste generated volume. In 2020, a total of 1.26 million tons of medical waste was produced nationwide, a year-on-year increase of 6.8%. In 2021, the total amount of medical waste generated nationwide reached 1.4 million tons (including 201,000 tons of epidemic-related medical waste), representing an increase of 18.6% and 11.1%, respectively, compared to the years 2019 and 2020. The disposal of medical waste in China mainly relies on the incineration capacity of domestic waste incineration enterprises. As the amount of domestic waste increases annually, the disposal capacity for medical waste is increasingly being squeezed. The sharp increase in the medical waste generated volume during the pandemic has put immense pressure on the already limited capacity for the recycling and disposal of medical waste, significantly reducing the efficiency of the recycling system. The outbreak has exposed the shortcomings of the medical waste recycling system.
On 26 February 2020, ten departments, including the National Health Commission, the Ministry of Ecology and Environment, and the Ministry of Housing and Urban–Rural Development, issued the “Comprehensive Management Work Plan for Medical Waste from Medical Institutions”. The plan provides specific guidelines for strengthening the comprehensive management of medical waste from medical institutions to achieve reduction, resource utilization, and harmless treatment of waste. On 25 March 2020, cities such as Foshan and Heyuan were urged to accelerate the construction of new medical waste facilities and to put them into operation as soon as possible. On 26 March, Shandong Province passed the first provincial-level local regulation on medical waste management, establishing a comprehensive system for the collection, transportation, and disposal of medical waste. The regulation also calls for increased financial investment and the consideration of geographical location and population served in setting up regional facilities for the collection, storage, and disposal of medical waste.
With the reclassification of COVID-19 from a “Class B infectious disease managed as Class A” to “Class B managed as Class B”, there was a resurgence in medical activities, leading to a peak in the medical waste generated volume. Cities including Foshan, Tianjin, and Qingdao were able to mitigate the impact on their medical waste recycling systems due to the bolstering of their previously identified shortcomings in recycling capabilities. The enhancements made to these systems allowed them to maintain their operational efficiency despite the increased demand. In contrast, cities like Hangzhou, Chengdu, and Ningbo did not take the necessary steps to improve the efficiency of their medical waste recycling systems prior to the rise in medical activities in 2022. This lack of preparation left their recycling systems vulnerable and ill-equipped to handle the surge, leading to a significant setback in their performance throughout the year. This is also one of the reasons why these cities’ medical waste recycling systems are considered inefficient.
According to the classification standards of the National Bureau of Statistics, China is divided into four major regions: the eastern, central, western, and northeastern regions. Since the new first-tier cities evaluated in this paper do not include those from the northeastern region,
Table 8 categorizes the efficiency of the medical waste recycling systems of the new first-tier cities in the eastern, central, and western regions. It can be observed that the majority of new first-tier cities are concentrated in the eastern region, and the cities with efficient scores are all located in the eastern region. The efficiencies of the central and western regions are comparable, indicating that the development level of China’s medical waste recycling systems is not balanced and that there is still significant room for development in the central and western regions.
4.2.2. Production Efficiency and Environment Efficiency Obtained from BAM-G
The average PE and EE scores are shown in
Figure 8. Zhengzhou, Qingdao, Dongguan, Nanjing, Suzhou, Foshan, and Tianjin all have PE and EE scores of 1, indicating a high technological level and environmental emission capacity. It is worth noting that Hangzhou still maintains low PE and EE scores, with the lowest scores at 0.334 and 0.281, respectively. PE and EE in these cities are closely correlated. This phenomenon can be attributed to two factors. First, cities with higher levels of waste disposal technology have stricter environmental requirements for waste management, leading to a strong correlation between production and environmental emission capacity. Second, environmentally friendly companies have a higher appeal to customers, contributing to the close relationship between production and environmental emission capacity.
As shown in
Figure 9, the new first-tier cities’ medical waste recycling systems had inefficient scores (the highest is only 0.942) over the entire sample period. Unified efficiency, PE, and EE show an increasing trend from 2017 to 2018, followed by a slight decline in 2019. They reach their lowest point in 2020 and gradually recover in 2021. When medical activities surged again in 2022, overall efficiency, PE, and EE decreased once more, revealing a significant deficiency and severe lack of resilience in the medical waste recycling systems of these cities. In particular, EE was the most severely affected, suggesting the need for additional attention to environmental protection in medical waste recycling systems.
Incineration disposal technology can achieve the objectives of harmlessness, reduction, stabilization, and complete destruction of medical waste, demonstrating good applicability to various types of waste, which is why it has been widely applied. However, the process of disposing of medical waste can produce substances such as dioxins and heavy metals, especially when the input of waste is unstable, leading to numerous issues in tail gas purification and significant environmental risks. Particularly during the pandemic period, the sudden surge in the generation of medical waste increased the difficulty of disposal, making it challenging to ensure the quality of tail gas treatment. The improvement in EE is closely related to the technology used for the disposal of medical waste. Limited by disposal technology, using a combination of various treatment methods (such as incineration and high-temperature treatment technologies) can enhance environmental efficiency. Different types of waste require the integration of different disposal technologies. However, the unfortunate reality on a global scale is that a large amount of healthcare waste is not disposed of using the correct technology. The enhancement of EE undoubtedly requires the investment of more human, material, and financial resources, which can impact production efficiency. Balancing EE with cost will be a topic that urgently needs to be discussed.
4.2.3. The MWCS Efficiency and the MWTS Efficiency Obtained from a Two-Stage BAM-G
Table 9 illustrates the efficiency of MWCSs and MWTSs in CNFCs from 2017 to 2022. Suzhou, Tianjin, Dongguan, Foshan, and Qingdao have higher efficiency in MWCSs and the MWTSs, indicating that these five cities have certain reference values for other cities in medical waste recycling. However, Hangzhou has the lowest MWCS and MWTS efficiencies for the past five years, at 0.493 and 0.440, respectively.
As shown in
Figure 10, the efficiencies of MWCSs show a gradual increase from 2017 to 2018, with 10 cities achieving a score of 1 in 2018. The efficiencies of MWTSs continue to increase from 2017 to 2019, with 12 cities achieving a score of 1 in 2019. Both the MWCSs and the MWTSs experienced their lowest efficiencies in 2020, with a gradual recovery observed in 2021. It is important to highlight that even though the overall efficiency and the efficiencies of MWTSs experienced a decline in 2022, there has been an observed improvement in MWCSs. This indicates that the resilience of the MWCSs has been significantly improved since the year 2020.
Figure 11 illustrates a strong correlation between the overall efficiency and the efficiency of MWCSs and MWTSs. The efficiency evaluation of MWCSs stands at 0.844, which is 0.035 lower than that of MWTSs. The inefficiency of MWCSs exposes the existing challenges in China’s medical waste segregation, collection, preliminary harmless treatment, storage, and transportation processes.