A Fuzzy Hybrid MCDM Approach for Assessing the Emergency Department Performance during the COVID-19 Outbreak
Abstract
:1. Introduction
- First, AHP, a pairwise comparison technique, was combined with intuitionistic fuzzy set theory, the advanced version of fuzzy set theory, to determine the relative importance levels of the criteria used to evaluate the COVID-19 performance of EDs. This is because AHP’s key features (hierarchical structure, pairwise comparison, consistency, etc.) include the degree of non-membership.
- While conventional methods consider the criteria independent, IF-DEMATEL considers the cause-and-effect relationships between the criteria, which is more suitable for evaluating the criteria in EDs. With IF-DEMATEL, it also provided the opportunity to present cause–effect relationships and critical ones to decision-makers in a visual structure. Thus, it provides a framework for decision-makers about how future improvements can affect the whole system.
- Finally, the CoCoSo method is adopted to determine the performance of emergency services in Turkey. Since this method is a combination of simple additive weighting (SAW), weighted aggregated product evaluation (WASPAS), and multiplicative exponential weighting (MEW) methods, it is stated in the literature that it gives more reliable results than these three methods [12]. As a result of CoCoSo being a holistic method, it allows a more robust model to be built and more accurate decisions to be made. Further, CoCoSo can handle complex problems more easily and efficiently [13].
- The combination of IF-AHP, IF-DEMATEL, and CoCoSo can be easily applied not only for listing ED alternatives but also for handling real-world problems in different disciplines. Thanks to this combination, the alternatives are ranked and a projection can be obtained for decision-makers about potential improvements in which criteria will affect the ranking. In this way, a roadmap can be created.
2. Related Work
2.1. Performance Assessment of Health Facilities during Outbreaks
2.2. Outbreak Readiness Assessment by MCDM Methods
3. Proposed Methodology
- Step 1. Creation of an expert team: A set of decision-makers is selected considering their background in ED management. The experts are expected to provide information on which factors may affect the performance of these units throughout the current pandemic. Furthermore, they will be asked to carry out paired judgments to define both the importance and influence of the decision elements.
- Step 2. Structuring the ED performance evaluation model: The decision model is then defined by including ED performance criteria and sub-criteria from the pertinent reported literature, legal healthcare framework, and decision-makers’ recommendations.
- Step 3. Computation of criteria and sub-criteria relative priorities considering uncertainty: IF-AHP method is later applied to derive the relative weights of criteria and sub-criteria while modelling the uncertainty and vagueness of human thought when performing the paired judgments. The IF-AHP results will lay the groundwork for the proposal of short-term improvement interventions that is highly needed in a rapidly evolving pandemic.
- Step 4. Appraisal of cause–effect interrelations among criteria and sub-criteria considering uncertainty: IF-DEMATEL is applied to detect significant interdependence and feedback among criteria/sub-criteria whilst representing the expected uncertainty of decision-makers when eliciting the influence comparisons in the model. IF-DEMATEL goes beyond measuring the strength of these interrelations, so that the main drivers of long-term plans can be easily defined.
- Step 5. Calculation of the ED performance index and ranking derivation: In this phase, CoCoSo is employed for computing a performance index for each ED. Following this, the emergency care units are ranked from the highest to the lowest value of this index to discriminate those with high performance as well as the EDs with an urgent need for improvement .
- Step 6. Identification of intervention points and creation of intervention plans per each ED: Detect the sub-criteria most contributing to a poor response by EDs against the COVID-19 outbreak and delineate focused improvement plans targeting upgraded performance.
3.1. Intuitionistic Fuzzy Analytic Hierarchy Process (IF-AHP)
3.2. Intuitionistic Fuzzy Decision-Making Trial and Evaluation Laboratory (IF-DEMATEL)
3.3. Combined Compromise Solution (CoCoSo)
4. Results
- measure the performance of EDs and create strategies to increase their response to the ongoing sanitary crisis;
- identify influential factors that can be prioritized by health authorities when designing the ED policies at a national level;
- pinpoint the limitations of each ED and implement focused improvement plans.
4.1. The Expert Team
- Three ED supervisors (DM1, DM2, and DM3): They were linked to public sector hospitals and presented in-depth knowledge in the field of hospital emergency services. Moreover, they had a significant background represented by a trajectory of more than 15 years in the healthcare industry.
- Two healthcare quality auditors (DM4 and DM5): The two experts were chosen for their roles as spokespersons involved in radical changes improving emergency care. Further, they were related to the implementation of healthcare government policies and can be thereby useful for devising improvement plans and contributing to the optimal development of emergency services in public hospitals.
- One senior academician (DM6): She currently has a high level of experience in the application of multi-criteria decision-making techniques. Moreover, she had a constant enrollment in projects related to the health sector, thereby knowing the main weaknesses of the emergency care services in public hospitals.
4.2. The ED Performance Evaluation Model
4.3. Estimation of Intuitionistic Fuzzy Weights: The IF-AHP Method
4.4. Intuitionistic Interdependence and Feedback: The IF-DEMATEL Approach
- ensure medical equipment consumables for a minimum 3 months;
- provide training on the use of vital medical devices for physicians and nurses;
- adapt the medical equipment to the healthcare workforce and infrastructure available in the ED;
- design specialized maintenance plans to further enhance the functionality of critical devices during the pandemic;
- test the conformity of the device with the minimum requirements established by the WHO.
4.5. Calculation of ED Performance Index: The CoCoSo Method
- calculate the ED performance index (EDPI) to rank the Turkish emergency centers (D1, D2, and D3);
- detect weaknesses in each ED to improve their overall response against pandemic scenarios caused by COVID-19 and similar respiratory diseases;
- establish individual improvement plans supporting interventions by ED administrators and healthcare authorities.
- repurpose non-health facilities inside (i.e., administrative offices) and outside (i.e., hotels, parking lots) the EDs to accommodate patients with mild COVID-19 and low risk of severe complications;
- implement infrastructure adequation plans to rapidly set up ED areas with poor infrastructure condition;
- transfer low-risk COVID-19 patients to other regions with spare capacity.
- design predictive models estimating the number of EDs required depending on social factors, the virus spread, and policies implemented by the government;
- establish collaborative agreements with the bed supply chain actors where their production and logistics capabilities can be mostly destinated to the EDs with bed shortages;
- develop MCDM models identifying which COVID-19 patient can be safely discharged home and who should be immediately attended to, supporting scarce resource allocation activities and minimizing the mortality rate.
- develop practical artificial intelligence models predicting the occurrence of adverse events in COVID-19 patients;
- assign staff from the quality departments to constantly control and investigate the adverse events related to this disease;
- create resilience plans discriminating which activities should be rolled out by the ED depending on the risk of adverse events.
- create inventory models with high fill rates responding to the COVID-19 dynamic;
- diminish the importation approval time to 24 h as some medication ingredients are mostly imported;
- augment the domestic installed production capacity of the medicines with shortages supported by demand prediction models.
- tout retention bonuses for healthcare workers on the frontline of this pandemic;
- identify barriers to lessening medicine and nursing graduation rates in the universities to design collaborative interventions;
- train non-ALS-certified medical staff through courses designed by education authorities in conjunction with the Ministry of Health;
- assign specialists that were put on hold to stem the virus spread to assist physicians in caring for COVID-19 patients;
- form groups of physicians and nurses led by ICU clinicians to address patients with a higher risk of mortality;
- deploy virtual hospitals to identify COVID-19 patients with an urgent need for care and consequently diminish the patient flow arriving at the EDs.
- establish agreements with the related supply chain actors for the purchase of medical consumables and instruments under the principles of quality, timeliness, flexibility, and scale economy;
- the use of information technologies for the efficient and reliable management of medical supplies;
- the development and implementation of protocols for the rational management of accessories and instrumentation;
- the design of inventory models responding to the changing dynamics of the pandemic.
- implement machine learning models predicting the stay length of COVID-19 patients;
- optimally increase the number of hospitalization beds to decrease overcrowding and waiting times in the ED;
- identify the treatments that can be provided through homecare services so that the number of COVID-19 patients within the ED rooms can be substantially diminished;
- reduce the diagnosis times by lessening the radiology and lab turnaround times as further explicated above.
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Decision-Maker | DM1 | DM2 | DM3 | DM4 | DM5 | DM6 |
---|---|---|---|---|---|---|
IFN | (0.9; 0.05; 0.05) | (0.9; 0.05; 0.05) | (0.9; 0.05; 0.05) | (0.9; 0.05; 0.05) | (0.9; 0.05; 0.05) | (0.75; 0.2; 0.05) |
Weight | 0.171429 | 0.171429 | 0.171429 | 0.171429 | 0.171429 | 0.142857 |
SH6 | SH7 | SH8 | |
---|---|---|---|
SH6 | [0.020; 0.180; 0.800] | [0.105; 0.195; 0.698] | [0.123; 0.209; 0.666] |
SH7 | [0.132; 0.172; 0.695] | [0.020; 0.180; 0.800] | [0.100; 0.206; 0.692] |
SH8 | [0.174; 0.163; 0.662] | [0.114; 0.188; 0.697] | [0.020; 0.180; 0.800] |
Sub-Criterion | Intuitionistic Fuzzy Weight | Non-Fuzzy Weight | Overall Weight |
---|---|---|---|
SH6 | [0.083; 0.195; 0.722] | 0.307 | 0.291 |
SH7 | [0.084; 0.186; 0.729] | 0.329 | 0.312 |
SH8 | [0.103; 0.177; 0.720] | 0.418 | 0.396 |
Total | 1.054 | 1.000 |
Criterion/Sub-Criterion | LW | OW | CR * |
---|---|---|---|
ER facilities (H1) | 0.144 | 0.046 | |
Physical status (SH1) | 0.197 | 0.028 | |
Airing and lighting (SH2) | 0.202 | 0.029 | |
Sanitary installation (SH3) | 0.220 | 0.032 | |
Delineation of emergency areas (SH4) | 0.179 | 0.026 | |
Bed availability (SH5) | 0.201 | 0.029 | |
Healthcare equipment (H2) | 0.119 | 0.024 | |
Availability of healthcare equipment (SH6) | 0.316 | 0.038 | |
Appropriateness of medical equipment (SH7) | 0.326 | 0.039 | |
Medical equipment condition (SH8) | 0.358 | 0.043 | |
Procedures and protocols(H3) | 0.117 | 0.003 | |
Presence of medical care procedures (SH9) | 0.333 | 0.039 | |
Diffusion of procedures and protocols (SH10) | 0.333 | 0.039 | |
Compliance with medical care protocols and procedures (SH11) | 0.333 | 0.039 | |
Assisting processes (H4) | 0.134 | 0.046 | |
Efficacy of radiology process (SH12) | 0.140 | 0.019 | |
Efficacy of clinical lab (SH13) | 0.148 | 0.020 | |
Efficacy of hospitalization process (SH14) | 0.121 | 0.016 | |
Efficacy of pharmaceutical service (SH15) | 0.143 | 0.019 | |
Transportation efficacy (SH16) | 0.140 | 0.019 | |
Efficacy of sterilization process (SH17) | 0.141 | 0.019 | |
Efficacy of non-core activities (SH18) | 0.168 | 0.022 | |
Human talent (H5) | 0.137 | 0.062 | |
Number of specialists (SH19) | 0.214 | 0.029 | |
Number of general practitioners (SH20) | 0.259 | 0.035 | |
Certification in Advanced Life Support (SH21) | 0.267 | 0.037 | |
Number of nurses (SH22) | 0.260 | 0.036 | |
Supply of medicines and medical accessories (H6) | 0.109 | 0.057 | |
Readiness of accessories and instrumentation (SH23) | 0.228 | 0.025 | |
Supplies fill rate (SH24) | 0.256 | 0.028 | |
Medication fill rate (SH25) | 0.231 | 0.025 | |
Bed occupancy rate (SH26) | 0.286 | 0.031 | |
Quality in healthcare (H7) | 0.123 | 0.097 | |
Mean physician waiting time (SH27) | 0.198 | 0.024 | |
Patient satisfaction (SH28) | 0.208 | 0.026 | |
Mean length of stay (SH29) | 0.201 | 0.025 | |
Re-entry rate (SH30) | 0.200 | 0.025 | |
Waiting time for triage categorization (SH31) | 0.193 | 0.024 | |
Patient safety (H8) | 0.119 | 0.020 | |
Hospital-obtained infections (SH32) | 0.239 | 0.028 | |
Medication mistakes (SH33) | 0.244 | 0.029 | |
Clinical diagnosis mistakes (SH34) | 0.266 | 0.032 | |
Patient identification errors (SH35) | 0.251 | 0.030 |
SH19 | SH20 | SH21 | SH22 | |
---|---|---|---|---|
SH19 | [0; 0] | [0.9; 0.1] | [0.75; 0.2] | [0.9; 0.1] |
SH20 | [0.75; 0.2] | [0; 0] | [0.5; 0.45] | [0.75; 0.2] |
SH21 | [0.75; 0.2] | [0.9; 0.1] | [0; 0] | [0.5; 0.45] |
SH22 | [0.9; 0.1] | [0.5; 0.45] | [0.35; 0.6] | [0; 0] |
SH19 | SH20 | SH21 | SH22 | |
---|---|---|---|---|
SH19 | 0.000 | 0.900 | 0.775 | 0.900 |
SH20 | 0.775 | 0.000 | 0.900 | 0.775 |
SH21 | 0.775 | 0.900 | 0.000 | 0.525 |
SH22 | 0.900 | 0.525 | 0.900 | 0.000 |
SH19 | SH20 | SH21 | SH22 | |
---|---|---|---|---|
SH19 | 0.000 | 3.600 | 3.100 | 3.600 |
SH20 | 3.100 | 0.000 | 3.600 | 3.100 |
SH21 | 3.100 | 3.600 | 0.000 | 2.100 |
SH22 | 3.600 | 2.100 | 3.600 | 0.000 |
SH19 | SH20 | SH21 | SH22 | |
---|---|---|---|---|
SH19 | 0.000 | 3.017 | 2.850 | 2.933 |
SH20 | 3.183 | 0.000 | 3.350 | 2.767 |
SH21 | 2.683 | 2.833 | 0.000 | 2.850 |
SH22 | 2.850 | 2.850 | 2.917 | 0.000 |
SH19 | SH20 | SH21 | SH22 | |
---|---|---|---|---|
SH19 | 0.000 | 3.017 | 2.850 | 2.933 |
SH20 | 3.183 | 0.000 | 3.350 | 2.767 |
SH21 | 2.683 | 2.833 | 0.000 | 2.850 |
SH22 | 2.850 | 2.850 | 2.917 | 0.000 |
SH19 | SH20 | SH21 | SH22 | D | |
---|---|---|---|---|---|
SH19 | 0.000 | 0.324 | 0.306 | 0.315 | 16.532 |
SH20 | 0.342 | 0.000 | 0.360 | 0.297 | 17.222 |
SH21 | 0.289 | 0.305 | 0.000 | 0.306 | 15.898 |
SH22 | 0.306 | 0.306 | 0.314 | 0.000 | 16.256 |
R | 16.394 | 16.377 | 16.973 | 16.164 |
Code | Criterion/Sub-Criterion | D + R | D − R | Dispatcher | Receiver |
---|---|---|---|---|---|
H1 | ER facilities | 16.790 | 0.740 | X | |
SH1 | Physical status | 10.407 | −0.721 | X | |
SH2 | Airing and lighting | 9.528 | 0.408 | X | |
SH3 | Sanitary installation | 9.350 | 0.323 | X | |
SH4 | Delineation of emergency areas | 9.782 | 0.374 | X | |
SH5 | Bed availability | 10.115 | −0.384 | X | |
H2 | Healthcare equipment | 17.685 | −0.183 | X | |
SH6 | Availability of healthcare equipment | 32.646 | −1.078 | X | |
SH7 | Appropriateness of medical equipment | 32.187 | 0.618 | X | |
SH8 | Medical equipment condition | 32.335 | 0.459 | X | |
H3 | Procedures and protocols | 18.239 | 0.083 | X | |
SH9 | Presence of medical care procedures | 56.750 | 0.759 | X | |
SH10 | Diffusion of procedures and protocols | 56.223 | 0.754 | X | |
SH11 | Compliance with medical care protocols and procedures | 55.447 | −1.513 | X | |
H4 | Assisting processes | 17.445 | 0.349 | X | |
SH12 | Efficacy of radiology process | 10.489 | 0.056 | X | |
SH13 | Efficacy of clinical lab | 10.316 | 0.208 | X | |
SH14 | Efficacy of hospitalization process | 11.664 | −0.463 | X | |
SH15 | Efficacy of pharmaceutical service | 10.365 | −0.030 | X | |
SH16 | Transportation efficacy | 10.064 | 0.324 | X | |
SH17 | Efficacy of sterilization process | 9.842 | 0.044 | X | |
SH18 | Efficacy of non-core activities | 10.212 | −0.139 | X | |
H5 | Human talent | 17.494 | 0.195 | X | |
SH19 | Number of specialists | 32.926 | 0.138 | X | |
SH20 | Number of general practitioners | 33.599 | 0.844 | X | |
SH21 | Certification in Advanced Life Support | 32.871 | −1.075 | X | |
SH22 | Number of nurses | 32.420 | 0.093 | X | |
H6 | Supply of medicines and medical accessories | 17.536 | −0.157 | X | |
SH23 | Readiness of accessories and instrumentation | 22.788 | 0.649 | X | |
SH24 | Supplies fill rate | 22.903 | −1.280 | X | |
SH25 | Medication fill rate | 22.689 | −0.196 | X | |
SH26 | Bed occupancy rate | 22.370 | 0.828 | X | |
H7 | Quality in healthcare | 18.649 | −0.683 | X | |
SH27 | Mean physician waiting time | 49.070 | 0.879 | X | |
SH28 | Patient satisfaction | 47.439 | −1.265 | X | |
SH29 | Mean length of stay | 49.301 | 0.298 | X | |
SH30 | Re-entry rate | 48.133 | 0.320 | X | |
SH31 | Waiting time for triage categorization | 47.607 | −0.232 | X | |
H8 | Patient safety | 19.275 | −0.343 | X | |
SH32 | Hospital-obtained infections | 15.163 | −0.313 | X | |
SH33 | Medication mistakes | 16.116 | −0.734 | X | |
SH34 | Clinical diagnosis mistakes | 15.317 | −0.182 | X | |
SH35 | Patient identification errors | 14.805 | 1.229 | X |
Sub-Criterion | Performance Metric | Calculation Method |
---|---|---|
Physical status (SH1) | % of ED wards with suitable infrastructure status | NEDWSI: Number of ED wards with suitable infrastructure w: Total number of ED wards |
Airing and lighting (SH2) | % of ED wards without suitable illumination and cleansing | NEDW—wSAL: Number of ED wards without suitable illumination and cleansing conditions w: Total number of ED wards |
Sanitary installations (SH3) | Availability of sanitary installations | If ready to use (1), otherwise (0) |
Delineation of emergency areas (SH4) | Delineation of ED areas | If delineated (1), otherwise (0) |
Bed availability (SH5) | Number of available beds in the ED | Number of beds available for COVID-19 patients in an emergency unit |
Availability of healthcare equipment (SH6) | % of ready-to-use healthcare equipment | NRTUE: Number of ready-to-use healthcare equipment m: Total number of medical devices |
Appropriateness of medical equipment (SH7) | % of medical equipment that is pertinent to COVID-19-related requirements | NPME: Number of medical devices pertinent to COVID-19-related requirements m: Total number of medical devices |
Medical equipment condition (SH8) | % of flawed medical equipment | NFME: Number of flawed medical equipment m: Total number of medical devices |
Presence of medical care procedures (SH9) | Design of medical care procedures related to COVID-19 management | If designed (1), otherwise (0) |
Diffusion of procedures and protocols (SH10) | % of widespread COVID-19-related procedures and protocols | NWPP: Number of widespread COVID-19-related procedures and protocols p: Total number of procedures and protocols |
Compliance with medical care protocols and procedures (SH11) | Percentage of monitored adverse events in the ED | NSAE: Number of supervised adverse events related to COVID-19 patients ae: Total number of adverse events |
Efficacy of radiology process (SH12) | Average turnaround time for radiology outcomes | ANRT: Annual number of radiology tests. DDi: Delivery date of radiology test i ODi: Order date of radiology test i |
Efficacy of clinical lab (SH13) | Average turnaround time for lab test results | ANLT: Annual number of lab tests. DDj: Delivery date of lab test j ODj: Order date of laboratory test j |
Efficacy of hospitalization process (SH14) | Average patient transfer time from the ED to hospitalization bed | ANTP: Annual number of transferred COVID-19 patients RTDk: Real transfer date for COVID-19 patient k STDk: Scheduled transfer date for COVID-19 patient k |
Efficacy of pharmaceutical service (SH15) | Average lead time for medication delivery | ANMO: Annual number of medication orders DDl: Delivery date of medication order l RDl: Request date of medication order l |
Transportation efficacy (SH16) | Availability of ambulances satisfying the WHO COVID-19 management standards | If available (1), otherwise (0) |
Efficacy of sterilization process (SH17) | Implementation of sterilization protocols against COVID-19 | If implemented (1), otherwise (0) |
Efficacy of non-core activities (SH18) | Number of functioning non-core activities | Number of noncore activities that are currently underpinning ED operations |
Number of specialists (SH19) | Amount of available positions for ED specialists | Amount of specialists necessitated in the ED for balancing the COVID-19 demand |
Number of general practitioners (SH20) | Amount of available positions for ED general physicians | Amount of general physicians in the ED for balancing the COVID-19 demand |
Certification in Advanced Life Support (SH21) | Percentage of medical staff with ALS certification | NCMS: Number of certified medical staff NMS: Number of medical staff |
Number of nurses (SH22) | Amount of available positions for ED nurses | Amount of nurses necessitated in the ED for balancing the COVID-19 demand. |
Readiness of accessories and instrumentation (SH23) | Availability of accessories and instrumentation required by the ED for COVID-19 management | Number of medical accessories and instruments necessitated for balancing the COVID-19 demand |
Supplies fill rate (SH24) | Inventory service level (medical consumables) | ASOC: Amount of satisfied orders of medical consumables o: Total number of orders |
Medication fill rate (SH25) | Inventory service level (medication) | ASMO: Amount of satisfied medication orders mo: Total number of medication orders |
Bed occupancy rate (SH26) | Bed occupation ratio | NBOcovid-19: Number of ED beds occupied by COVID-19 patients NBcovid-19: Total number of ED beds assigned to COVID-19 patients |
Mean physician waiting time (SH27) | Average doctor’s waiting time | ANCP: Annual number of COVID-19 patients ATk: Arrival time for COVID-19 patient k CTk: Consultation time for COVID-19 patient k |
Patient satisfaction (SH28) | Patient satisfaction ratio | NSCP: Number of satisfied COVID-19 patients NCP: Number of COVID-19 patients admitted in the ED |
Mean length of stay (SH29) | Mean length of stay in the ED | TLS: Total length of stay in the ED NCP: Number of COVID-19 patients admitted in the ED |
Re-entry rate (SH30) | 72-h readmission rate | NRPT: Number of readmitted COVID-19 patients within a 72-h period due to this disease NCP: Number of COVID-19 patients admitted in the ED |
Waiting time for triage categorization (SH31) | Mean waiting time for triage categorization | NCP: Number of COVID-19 patients admitted in the ED ATk: Arrival time for COVID-19 patient k TCTk: Triage categorization time for COVID-19 patient k |
Hospital-obtained infections (SH32) | Average monthly number of intra-hospital COVID-19 infection | ANIHCI: Annual number of intra-hospital COVID-19 infections |
Medication mistakes (SH33) | Average monthly number of medication mistakes | ANMM: Annual number of medication mistakes |
Clinical diagnosis mistakes (SH34) | Average monthly number of COVID-19 diagnosis mistakes | ANCDM: Annual number of COVID-19 diagnosis mistakes |
Patient identification errors (SH35) | Average monthly number of patient misidentification mistakes | ANPMM: Annual number of patient misidentification mistakes |
AW | D1 | D2 | D3 | Weight |
---|---|---|---|---|
SH1 | 80 | 100 | 90 | 0.028 |
SH2 | 0 | 0 | 0 | 0.029 |
SH3 | 1 | 1 | 1 | 0.032 |
SH4 | 1 | 1 | 1 | 0.026 |
SH5 | 2200 | 2800 | 3000 | 0.029 |
SH6 | 100 | 100 | 95 | 0.038 |
SH7 | 98 | 95 | 95 | 0.039 |
SH8 | 0 | 0.5 | 1 | 0.043 |
SH9 | 1 | 1 | 1 | 0.039 |
SH10 | 99 | 100 | 95 | 0.039 |
SH11 | 0 | 0 | 0 | 0.039 |
SH12 | 90 | 60 | 120 | 0.019 |
SH13 | 90 | 60 | 60 | 0.020 |
SH14 | 15 | 15 | 20 | 0.016 |
SH15 | 5 | 60 | 5 | 0.019 |
SH16 | 1 | 1 | 1 | 0.019 |
SH17 | 1 | 1 | 1 | 0.019 |
SH18 | 0 | 0 | 0 | 0.022 |
SH19 | 6 | 3 | 8 | 0.029 |
SH20 | 30 | 4 | 36 | 0.035 |
SH21 | 60 | 80 | 90 | 0.037 |
SH22 | 26 | 23 | 20 | 0.036 |
SH23 | 68 | 85 | 100 | 0.025 |
SH24 | 95 | 95 | 90 | 0.028 |
SH25 | 90 | 95 | 90 | 0.025 |
SH26 | 40 | 90 | 70 | 0.031 |
SH27 | 5 | 5 | 7 | 0.024 |
SH28 | 85 | 91 | 90 | 0.026 |
SH29 | 60 | 60 | 65 | 0.025 |
SH30 | 0.1 | 1 | 0.5 | 0.025 |
SH31 | 5 | 5 | 5 | 0.024 |
SH32 | 0 | 0 | 0 | 0.028 |
SH33 | 0 | 0 | 0 | 0.029 |
SH34 | 0 | 0 | 0 | 0.032 |
SH35 | 0 | 0.002 | 0.001 | 0.030 |
Emergency Department | Si | Pi | Mia | Mib | Mic | Mi |
---|---|---|---|---|---|---|
D1 | 0.74 | 27.89 | 0.350 | 2.605 | 0.933 | 2.243 |
D2 | 0.78 | 29.91 | 0.375 | 2.783 | 1.000 | 2.401 |
D3 | 0.55 | 21.91 | 0.275 | 2.000 | 0.732 | 1.740 |
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Ortíz-Barrios, M.; Jaramillo-Rueda, N.; Gul, M.; Yucesan, M.; Jiménez-Delgado, G.; Alfaro-Saíz, J.-J. A Fuzzy Hybrid MCDM Approach for Assessing the Emergency Department Performance during the COVID-19 Outbreak. Int. J. Environ. Res. Public Health 2023, 20, 4591. https://doi.org/10.3390/ijerph20054591
Ortíz-Barrios M, Jaramillo-Rueda N, Gul M, Yucesan M, Jiménez-Delgado G, Alfaro-Saíz J-J. A Fuzzy Hybrid MCDM Approach for Assessing the Emergency Department Performance during the COVID-19 Outbreak. International Journal of Environmental Research and Public Health. 2023; 20(5):4591. https://doi.org/10.3390/ijerph20054591
Chicago/Turabian StyleOrtíz-Barrios, Miguel, Natalia Jaramillo-Rueda, Muhammet Gul, Melih Yucesan, Genett Jiménez-Delgado, and Juan-José Alfaro-Saíz. 2023. "A Fuzzy Hybrid MCDM Approach for Assessing the Emergency Department Performance during the COVID-19 Outbreak" International Journal of Environmental Research and Public Health 20, no. 5: 4591. https://doi.org/10.3390/ijerph20054591