Chengdu is one of the earliest pilot cities for urban-rural basic medical insurance integration in China. This study aimed to analyze the influencing factors of hospitalization costs of senile cataract in a tertiary hospital in Chengdu by robust method, especially considering the influence of medical insurance type. A total of 1310 discharged patients from a tertiary hospital from January 2020 to June 2021 who were mainly diagnosed with senile cataracts were selected as the research subjects. Kruskal-Wallis H test and Spearman correlation analysis are used to conduct univariate statistical analysis. The robust multivariate linear regression model and a semi-parametric multivariate regression model are established to obtain the influencing factors for their hospitalization costs. The robust multivariate regression model results show that reimbursement ratio, number of surgeries, type of medical insurance, hospitalization days, number of additional diagnoses and material proportion have significant correlations with the response variable, i.e. total hospitalization costs of the senile cataract patients. In the robust multivariate regression analysis, the type of insurance is significantly associated with the hospitalization costs. Fixing other variables, the hospitalization costs of patients with UEBMI insurance were 7.6% higher than those with URRBMI insurance. Generalized additive model (GAM) can express the nonlinear relationship between explanatory variables and response variable. Because of the nonlinear part of the GAM, the interpretation and description of the model can provide more knowledge than the linear models. In the GAM model, the type of insurance is also significantly related to the total costs. According to the regression effects of reimbursement ratio, number of surgeries, type of medical insurance, hospitalization days, number of additional diagnoses and material proportion on total costs, the paper aims to provide some references for promoting the reform of the local medical system and improving the eye health status and quality of life of middle-aged and elderly groups.
Published in | American Journal of Life Sciences (Volume 12, Issue 2) |
DOI | 10.11648/j.ajls.20241202.12 |
Page(s) | 33-43 |
Creative Commons |
This is an Open Access article, distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution and reproduction in any medium or format, provided the original work is properly cited. |
Copyright |
Copyright © The Author(s), 2024. Published by Science Publishing Group |
Senile Cataract, Medical Insurance, Hospitalization Costs, Influencing Factors, Robust Regression, Generalized Additive Model
2.1. The Data Source
2.2. Descriptive Analysis of Data
Variable | Num | % | total costs (RMB) | ||||
---|---|---|---|---|---|---|---|
Mean | Sd | Median | P value | ||||
Age | 40~60 | 141 | 0.11 | 10650.40 | 3912.67 | 8419.57 | 0.504 |
60~80 | 998 | 0.76 | 10047.68 | 4922.88 | 8416.95 | ||
>80 | 168 | 0.13 | 10406.69 | 4981.44 | 8563.96 | ||
Gender | M | 489 | 0.37 | 9931.99 | 4884.46 | 8401.26 | 0.522 |
F | 818 | 0.63 | 10294.46 | 5089.54 | 8435.11 | ||
Insurance | R | 199 | 0.15 | 9429.74 | 3765.95 | 8134.07 | 0.005 |
E | 1108 | 0.85 | 10289.80 | 5198.25 | 8461.16 | ||
Reimbursement ratio | <=0.3 | 162 | 0.12 | 17428.88 | 8518.23 | 16795.10 | <0.001 |
0.3~0.4 | 299 | 0.23 | 8168.05 | 2625.60 | 7245.45 | ||
0.4~0.5 | 806 | 0.62 | 9478.75 | 3211.50 | 8491.58 | ||
>0.5 | 40 | 0.03 | 9300.46 | 4105.41 | 8156.40 | ||
Material proportion | <=0.4 | 25 | 0.02 | 12019.54 | 8026.26 | 8792.84 | <0.001 |
0.4~0.5 | 373 | 0.29 | 9687.91 | 3103.14 | 8722.71 | ||
0.5~0.6 | 615 | 0.47 | 9071.33 | 3387.89 | 8315.22 | ||
>0.6 | 294 | 0.22 | 12873.01 | 7752.11 | 9612.35 | ||
Number of surgeries | 1 | 1145 | 0.88 | 8872.86 | 2795.91 | 8257.85 | <0.001 |
2 | 162 | 0.12 | 19248.10 | 7319.70 | 16820.50 | ||
Additional diagnoses | 0 | 189 | 0.15 | 11847.10 | 7221.35 | 8678.72 | <0.001 |
1-2 | 722 | 0.55 | 10157.41 | 4597.19 | 8451.97 | ||
3 | 239 | 0.18 | 9410.62 | 3967.44 | 8232.85 | ||
>=4 | 157 | 0.12 | 9272.14 | 4572.97 | 7865.32 |
Variable | materials fee | surgery fee | ||
---|---|---|---|---|
correlation coefficient | P value | correlation coefficient | P value | |
Age | -0.010 | 0.726 | 0.072 | 0.009 |
Gender | -0.060 | 0.031 | -0.066 | 0.018 |
Hospitalization days | 0.437 | <0.001 | 0.637 | <0.001 |
Reimbursement ratio | -0.353 | <0.001 | 0.026 | 0.346 |
Insurance | 0.087 | 0.002 | 0.034 | 0.217 |
Number of surgeries | 0.467 | <0.001 | 0.830 | <0.001 |
Material proportion | 0.308 | <0.001 | -0.028 | 0.317 |
Additional diagnoses | -0.140 | <0.001 | -0.043 | 0.117 |
2.3. Introduction to Statistical Models
Gender | F→0; M→ 1 |
Insurance | R→0; E→ 1 |
| Log (Hospitalization costs) |
---|---|
| Age |
| Gender |
| Hospitalization days |
| Reimbursement ratio |
| Insurance |
| Number of surgeries |
| Material proportion |
| Additional diagnoses |
Classical multivariate regression (OLS) | Robust multivariate regression (M-estimation) | |||
---|---|---|---|---|
Estimator | P value | Estimator | P value | |
Intercept item | 9.440 | <0.001 | 9.675 | <0.001 |
Age | -0.0002 | 0.674 | -0.0004 | 0.548 |
Gender | 0.011 | 0.250 | 0.011 | 0.258 |
Hospitalization days | 0.068 | <0.001 | 0.062 | <0.001 |
Reimbursement ratio | -2.298 | <0.001 | -2.510 | <0.001 |
Insurance | 0.080 | <0.001 | 0.076 | <0.001 |
Number of surgeries | 0.514 | <0.001 | 0.526 | <0.001 |
Material proportion | -0.132 | 0.277 | -0.388 | 0.002 |
Additional diagnoses | -0.022 | <0.001 | -0.022 | <0.001 |
AIC | -970.366 | -921.324 | ||
Sd(res) | 0.167 | 0.169 | ||
MSE | 0.027 | 0.029 | ||
MAE | 0.138 | 0.137 |
Parameter estimation of GAM parameter section | ||
---|---|---|
Variable | Estimator | P value |
Intercept item | 8.361 | <0.001 |
Age | 0.001 | 0.028 |
Gender | -0.002 | 0.699 |
Hospitalization days | 0.036 | <0.001 |
Insurance | 0.037 | <0.001 |
Number of surgeries | 0.580 | <0.001 |
Additional diagnoses | -0.007 | 0.002 |
Results of the non-parametric part of GAM | ||
Smooth component | Df | P value |
Reimbursement ratio | 8.311 | <0.001 |
Material proportion | 8.572 | <0.001 |
AIC: -2330.992 | GCV: 0.010 | Sd(res): 0.097 |
MSE: 0.009 | MAE: 0.065 |
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APA Style
Tian, H., Li, T., Lu, S. (2024). Robust Analysis of the Influencing Factors for Hospitalization Costs of Senile Cataracts Patients in Chengdu Considering Different Types of Insurance. American Journal of Life Sciences, 12(2), 33-43. https://doi.org/10.11648/j.ajls.20241202.12
ACS Style
Tian, H.; Li, T.; Lu, S. Robust Analysis of the Influencing Factors for Hospitalization Costs of Senile Cataracts Patients in Chengdu Considering Different Types of Insurance. Am. J. Life Sci. 2024, 12(2), 33-43. doi: 10.11648/j.ajls.20241202.12
AMA Style
Tian H, Li T, Lu S. Robust Analysis of the Influencing Factors for Hospitalization Costs of Senile Cataracts Patients in Chengdu Considering Different Types of Insurance. Am J Life Sci. 2024;12(2):33-43. doi: 10.11648/j.ajls.20241202.12
@article{10.11648/j.ajls.20241202.12, author = {Haitao Tian and Tianjun Li and Shiqi Lu}, title = {Robust Analysis of the Influencing Factors for Hospitalization Costs of Senile Cataracts Patients in Chengdu Considering Different Types of Insurance }, journal = {American Journal of Life Sciences}, volume = {12}, number = {2}, pages = {33-43}, doi = {10.11648/j.ajls.20241202.12}, url = {https://doi.org/10.11648/j.ajls.20241202.12}, eprint = {https://article.sciencepublishinggroup.com/pdf/10.11648.j.ajls.20241202.12}, abstract = {Chengdu is one of the earliest pilot cities for urban-rural basic medical insurance integration in China. This study aimed to analyze the influencing factors of hospitalization costs of senile cataract in a tertiary hospital in Chengdu by robust method, especially considering the influence of medical insurance type. A total of 1310 discharged patients from a tertiary hospital from January 2020 to June 2021 who were mainly diagnosed with senile cataracts were selected as the research subjects. Kruskal-Wallis H test and Spearman correlation analysis are used to conduct univariate statistical analysis. The robust multivariate linear regression model and a semi-parametric multivariate regression model are established to obtain the influencing factors for their hospitalization costs. The robust multivariate regression model results show that reimbursement ratio, number of surgeries, type of medical insurance, hospitalization days, number of additional diagnoses and material proportion have significant correlations with the response variable, i.e. total hospitalization costs of the senile cataract patients. In the robust multivariate regression analysis, the type of insurance is significantly associated with the hospitalization costs. Fixing other variables, the hospitalization costs of patients with UEBMI insurance were 7.6% higher than those with URRBMI insurance. Generalized additive model (GAM) can express the nonlinear relationship between explanatory variables and response variable. Because of the nonlinear part of the GAM, the interpretation and description of the model can provide more knowledge than the linear models. In the GAM model, the type of insurance is also significantly related to the total costs. According to the regression effects of reimbursement ratio, number of surgeries, type of medical insurance, hospitalization days, number of additional diagnoses and material proportion on total costs, the paper aims to provide some references for promoting the reform of the local medical system and improving the eye health status and quality of life of middle-aged and elderly groups. }, year = {2024} }
TY - JOUR T1 - Robust Analysis of the Influencing Factors for Hospitalization Costs of Senile Cataracts Patients in Chengdu Considering Different Types of Insurance AU - Haitao Tian AU - Tianjun Li AU - Shiqi Lu Y1 - 2024/04/12 PY - 2024 N1 - https://doi.org/10.11648/j.ajls.20241202.12 DO - 10.11648/j.ajls.20241202.12 T2 - American Journal of Life Sciences JF - American Journal of Life Sciences JO - American Journal of Life Sciences SP - 33 EP - 43 PB - Science Publishing Group SN - 2328-5737 UR - https://doi.org/10.11648/j.ajls.20241202.12 AB - Chengdu is one of the earliest pilot cities for urban-rural basic medical insurance integration in China. This study aimed to analyze the influencing factors of hospitalization costs of senile cataract in a tertiary hospital in Chengdu by robust method, especially considering the influence of medical insurance type. A total of 1310 discharged patients from a tertiary hospital from January 2020 to June 2021 who were mainly diagnosed with senile cataracts were selected as the research subjects. Kruskal-Wallis H test and Spearman correlation analysis are used to conduct univariate statistical analysis. The robust multivariate linear regression model and a semi-parametric multivariate regression model are established to obtain the influencing factors for their hospitalization costs. The robust multivariate regression model results show that reimbursement ratio, number of surgeries, type of medical insurance, hospitalization days, number of additional diagnoses and material proportion have significant correlations with the response variable, i.e. total hospitalization costs of the senile cataract patients. In the robust multivariate regression analysis, the type of insurance is significantly associated with the hospitalization costs. Fixing other variables, the hospitalization costs of patients with UEBMI insurance were 7.6% higher than those with URRBMI insurance. Generalized additive model (GAM) can express the nonlinear relationship between explanatory variables and response variable. Because of the nonlinear part of the GAM, the interpretation and description of the model can provide more knowledge than the linear models. In the GAM model, the type of insurance is also significantly related to the total costs. According to the regression effects of reimbursement ratio, number of surgeries, type of medical insurance, hospitalization days, number of additional diagnoses and material proportion on total costs, the paper aims to provide some references for promoting the reform of the local medical system and improving the eye health status and quality of life of middle-aged and elderly groups. VL - 12 IS - 2 ER -