| Literature DB >> 30809336 |
Li Luo1, Xueru Xu1, Yan Jiang2, Wei Zhu2.
Abstract
The vast majority of patients with intracerebral hemorrhage (ICH) suffer from long and uncertain length of stay (LOS). The aim of our study was to provide decision support for discharge and admission plans by predicting ICH patients' LOS probability distribution. The demographics, clinical predictors, admission diagnosis, and surgery information from 3,600 ICH patients were used in this study. We used univariable Cox analysis, multivariable Cox analysis, Cox-variable of importance (Cox-VIMP) analysis, and an intersection analysis to select predictors and used random survival forests (RSF)-a method in survival analysis-to predict LOS probability distribution. The Cox-VIMP method constructed by us effectively selected significant correlation predictors. The Cox-VIMP RSF model can improve prediction performance and is significantly different from the other models. The Cox-VIMP can contribute to the screening of predictors, and the RSF model can be established through those predictors to predict the probability distribution of LOS in each patient.Entities:
Mesh:
Year: 2019 PMID: 30809336 PMCID: PMC6369489 DOI: 10.1155/2019/4571636
Source DB: PubMed Journal: J Healthc Eng ISSN: 2040-2295 Impact factor: 2.682
Patient data.
|
| |
| Length of stay: mean, median | Mean: 12.61 days, median: 10 days |
|
| |
|
| |
| Gender | Male (53.5%), female (46.5%) |
| Age: mean, median | Mean: 53.79 years, median: 54 years (20 years) |
| Marital status | Single (6.8%), married (85.5%), divorced (2%), deceased (5%), other (0.8%) |
| Occupation | Unemployed (3.6%), employed (civil servant, student, farmer, worker, and so on) (96.4%) |
| Ethnicity | Han (94.3%), Tibetan (4%), other (1.7%) |
|
| |
|
| |
| Payment type1 | General medical insurance (26.8%), non-medical insurance (61.9%), special medical insurance (11.3%) |
| Doctor2 | 132 doctors |
| Admission type | Emergency (89.6%), outpatient (7.5%), other (0.8%) |
| Transfer3 | Yes (24.7%), no (71%), unrecorded (4.3%) |
|
| |
|
| |
| ICD-10 diagnosis | The total number of hemorrhage locations and preexisting disease is 550 |
| Diagnoses number4: mean, median | 3, 2 |
|
| |
|
| |
| Surgery contents | The total number of surgery contents is 7,933 |
| Surgery number5: mean, median | 3.6, 3 |
ICD 10 = 10th revision of the International Statistical Classification of Diseases and Related Health Problems. 1General medical insurance is a common type of medical insurance; special medical insurance means that there are some green channels to pay faster and receive services more quickly. 2Number of attending doctors in this department. 3Whether or not the patient was transferred from another medical institution. 4Number of main diagnoses and other diagnoses for each patient. 5Number of surgeries undergone by each patient. Note that the surgery information is not on the surgeries patients had undergone during hospitalization but on the surgery details of the first operation after admission.
Figure 1VIMP for predictors with VIMP > 0.
Figure 2Average C-indexes of nested analysis after 5-fold cross validation.
Figure 3Non-disease predictors in the four schemes.
Figure 4Main diagnosis predictors in each scheme.
Figure 5Preexisting diseases diagnosis predictors for each scheme.
Figure 6Surgery predictors of each scheme.
Figure 7C-index box plot of each model.
The C-index of each model.
| Model | Mean | SD | Paired sample | |||
|---|---|---|---|---|---|---|
| Model 1 | Model 2 | Model 3 | Model 4 | |||
| Model 1: univariable Cox RSF model | 0.6763 | 0.0036 | — | <0.001 | <0.001 | <0.001 |
| Model 2: multivariable Cox RSF model | 0.6834 | 0.0012 | — | — | <0.001 | 0.336 |
| Model 3: Cox-VIMP RSF model | 0.6873 | 0.0012 | — | — | — | <0.001 |
| Model 4: intersection RSF model | 0.6835 | 0.0010 | — | — | — | — |
RSF = random survival forests; SD = standard deviation; VIMP = value of importance. The original hypothesis was that there would be no significant differences among the models in the C-index.P value < 0.01.