| Literature DB >> 34136109 |
Jialing Li1, Guiju Zhu1, Li Luo2, Wenwu Shen3.
Abstract
The length of waiting time has become an important indicator of the efficiency of medical services and the quality of medical care. Lengthy waiting times for patients will inevitably affect their mood and reduce satisfaction. For patients who are in urgent need of hospitalization, delayed admission often leads to exacerbation of the patient's condition and may threaten the patient's life. We gathered patients' information about outpatient visits and hospital admissions in the Nephrology Department of a large tertiary hospital in western China from January 1st, 2014, to December 31st, 2016, and we used big data-enabled analysis methods, including univariate analysis and multivariate linear regression models, to explore the factors affecting waiting time. We found that gender (P=0.048), the day of issuing the admission card (Saturday, P=0.028), the applied period for admission (P < 0.001), and the registration interval (P < 0.001) were positive influencing factors of patients' waiting time. Disease type (after kidney transplantation, P < 0.001), number of diagnoses (P=0.037), and the day of issuing the admission card (Sunday, P=0.001) were negative factors. A linear regression model built using these data performed well in the identification of factors affecting the waiting time of patients in the Nephrology Department. These results can be extended to other departments and could be valuable for improving patient satisfaction and hospital service quality by identifying the factors affecting waiting time.Entities:
Mesh:
Year: 2021 PMID: 34136109 PMCID: PMC8178001 DOI: 10.1155/2021/5555029
Source DB: PubMed Journal: J Healthc Eng ISSN: 2040-2295 Impact factor: 2.682
Figure 1Flow chart of the elective patient admission process.
Variable assignment table.
| Categories | Variables | Assignment |
|---|---|---|
| Descriptive statistics | Age | 1 = juvenile (0–17 years old), 2 = youth (18–40 years old), 3 = middle age (41–65 years old), 4 = old age (over 66 years old) |
| Gender | 1 = male, 2 = female | |
| Time information | Week of issuing the admission card (WIAC) | 1 = Monday, 2 = Tuesday, 3 = Wednesday, 4 = Thursday, 5 = Friday, 6 = Saturday, 7 = Sunday |
| Applied period for admission (APA) | 1 = morning (00 : 00–11 : 59), 2 = afternoon (12 : 00–23 : 59) | |
| Registration interval (RI) | Continuous variable | |
| Disease information | Type of disease (TD) | 1 = renal biopsy, 2 = peritoneal dialysis, 3 = vascular access, 4 = after renal transplant, 5 = other |
| Number of disease diagnosis (NDD) | 1 = 1 diagnosis, 2 = 2 diagnoses, |
Figure 2Characteristics of descriptive information. (a) Distribution of gender. (b) The number of cases by age and waiting time in days by age.
Figure 3Characteristics of time-related information. (a) Pie chart of the applied period for admission. (b) Day of issuance of the admission card and waiting time by day.
Figure 4Characteristics of disease-related information. (a) Type of disease and waiting time. (b) The number of disease diagnoses and waiting time.
Comparison of the waiting time of hospitalized patients with different characteristics.
| Variable | Cases | Waiting time |
|
|
|---|---|---|---|---|
|
| 2.365 | 0.069 | ||
| Juvenile (0–17 years old) | 341 | 5.08 | ||
| Youth (18–40 years old) | 4 342 | 5.39 | ||
| Middle age (41–65 years old) | 6 234 | 5.70 | ||
| Old age (over 66 years old) | 2 419 | 4.29 | ||
|
| ||||
|
| 4.705 | 0.030 | ||
| Male | 7 106 | 5.72 | ||
| Female | 6 230 | 4.88 | ||
|
| ||||
|
| 5.648 | <0.01 | ||
| Monday | 3 161 | 4.24 | ||
| Tuesday | 2 443 | 4.42 | ||
| Wednesday | 2 785 | 6.21 | ||
| Thursday | 2 524 | 5.75 | ||
| Friday | 1 784 | 5.53 | ||
| Saturday | 496 | 9.30 | ||
| Sunday | 143 | 3.85 | ||
|
| ||||
|
| 2.365 | 0.124 | ||
| Morning | 7 530 | 5.12 | ||
| Afternoon | 5 806 | 5.60 | ||
|
| ||||
|
| 2.872 | 0.021 | ||
| Renal biopsy | 4 408 | 5.15 | ||
| Peritoneal dialysis | 1 517 | 6.97 | ||
| Vascular access | 3 595 | 5.31 | ||
| After renal transplant | 1 492 | 2.62 | ||
| Other | 2 324 | 5.72 | ||
|
| ||||
|
| 0.083 | 0.9 | ||
| 1 diagnosis | 10 460 | 5.34 | ||
| 2 diagnoses | 2 190 | 5.22 | ||
| 3 diagnoses | 444 | 5.19 | ||
| ≥4 diagnoses | 242 | 4.96 | ||
Analysis of linear regression model of the waiting time and factors.
| Variables | Unstandardized coefficient | Standardization coefficient |
|
| 95% confidence interval | |
|---|---|---|---|---|---|---|
|
| Standard error |
| ||||
| Intercept | 5.647 | 1.087 | 0.066 | 1.353 | 0.1762 | (–0.030, 0.162) |
| Gender (male) |
|
|
|
|
| (0.000, 0.047) |
|
| ||||||
| Thursday | 0.042 | 0.473 | 0.002 | 0.088 | 0.930 | (–0.040, 0.044) |
| Monday | –0.839 | 0.453 | –0.038 | –1.853 | 0.064 | (–0.078, 0.002) |
|
|
|
|
|
|
| (–0.309, –0.074) |
|
|
|
|
|
|
| (0.008, 0.146) |
| Wednesday | 0.136 | 0.463 | 0.006 | 0.294 | 0.769 | (–0.035, 0.047) |
| Tuesday | –0.777 | 0.476 | –0.035 | –1.633 | 0.103 | (–0.077, 0.007) |
| APA (Afternoon) |
|
|
|
|
| (0.024, 0.071) |
|
|
|
|
|
|
| (0.712, 0.736) |
|
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|
| ||||||
|
|
|
|
|
|
| (–0.205, –0.074) |
| Peritoneal dialysis | –0.520 | 0.351 | –0.023 | –1.481 | 0.139 | (–0.054, 0.008) |
| Vascular access | –0.373 | 0.350 | –0.017 | –1.066 | 0.286 | (–0.048, 0.014) |
| After renal transplant | 1.212 | 0.722 | 0.055 | 1.679 | 0.093 | (–0.009, 0.119) |
|
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|
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| 2 diagnoses | –1.445 | 0.993 | –0.065 | –1.455 | 0.146 | (–0.154, 0.022) |
| 3 diagnoses | –1.472 | 1.22 | –0.065 | –1.206 | 0.228 | (–0.176, 0.040) |
| ≥4 diagnoses |
|
|
|
|
| (–0.190, –0.007) |
Note. Bold fields indicate statistically significant variables.
Collinearity diagnosis results of multivariate linear regression model.
| Variables | GVIF | VIF |
|---|---|---|
| Gender | 1.012 | 1.006 |
| WIAC | 1.036 | 1.003 |
| APA | 1.012 | 1.006 |
| RI | 1.002 | 1.001 |
| TD | 1.039 | 1.004 |
| NDD | 1.008 | 1.001 |
Figure 5Primary important variable in the linear regression model.