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n2011.Rmd
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n2011.Rmd
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---
title: "n2011"
output: word_document
---
```{r setup, include=FALSE}
knitr::opts_chunk$set(echo = TRUE)
```
```{r}
library(haven);library(tidyverse);library(survey)
```
```{r read the raw df into the document}
df <- read_csv("H:/cabg_pci/nis2011mod.csv")
```
Now, prior to further analysis, remove the variables that are not needed in this study.
Also:
1. Keep only primary surgery; remove patients with prior CABG
2. Remove patients with concomitant valve surgery
```{r}
n11 <- df
pricabg <- as.character(c("V4581")) # prior MI
a <- pricabg
n11$pricabg <- with(n11, ifelse((DX1 %in% a | DX2 %in% a | DX3 %in% a | DX4 %in% a | DX4 %in% a | DX5 %in% a | DX6 %in% a | DX7 %in% a | DX8 %in% a | DX10 %in% a | DX11 %in% a | DX12 %in% a | DX13 %in% a | DX14 %in% a | DX15 %in% a ), "yes","no"))
n11 %>% count(pricabg)
```
Remove patients with prior CABG:
```{r remove prior CABG patients}
df2 <- n11 %>% filter(pricabg == "no")
dim(df2) # df2 contains only patients with primary CABG surgery and no prior CABG surgery.
```
```{r remove patients undergoing concomitant valve surgery}
# valve replacement/ valve repair
valve <- as.character(c('3511','3512','3513','3514','3521','3522','3523','3524','3526','3525','3527',
'3528'))
a <- valve
df2$valve <- with(df2, ifelse((PR1 %in% a | PR2 %in% a | PR3 %in% a | PR4 %in% a | PR4 %in% a | PR5 %in% a | PR6 %in% a | PR7 %in% a | PR8 %in% a | PR10 %in% a | PR11 %in% a | PR12 %in% a | PR13 %in% a | PR14 %in% a | PR15 %in% a), "yes","no"))
df2 %>% count(valve)
```
```{r remove valve patients too}
df3 <- df2 %>% filter(valve == "no")
dim(df3)
```
1. Keep only patients who underwent CABG; remove patients with underwent PCI:
```{r remove PCI patients}
df4 <- df3 %>% filter(cabg == 1)
```
```{r change name of df to get more variables}
n11 <- df4
```
```{r prior conditions}
priormi <- as.character(c("412")) # prior MI
a <- priormi
n11$priormi <- with(n11, ifelse((DX1 %in% a | DX2 %in% a | DX3 %in% a | DX4 %in% a | DX4 %in% a | DX5 %in% a | DX6 %in% a | DX7 %in% a | DX8 %in% a | DX10 %in% a | DX11 %in% a | DX12 %in% a | DX13 %in% a | DX14 %in% a | DX15 %in% a ), "yes","no"))
n11 %>% count(priormi)
```
```{r}
priorpci <- as.character(c("V4582")) # prior PCI
a <- priorpci
n11$priorpci <- with(n11, ifelse((DX1 %in% a | DX2 %in% a | DX3 %in% a | DX4 %in% a | DX4 %in% a | DX5 %in% a | DX6 %in% a | DX7 %in% a | DX8 %in% a | DX10 %in% a | DX11 %in% a | DX12 %in% a | DX13 %in% a | DX14 %in% a | DX15 %in% a), "yes","no"))
n11 %>% count(priorpci)
```
```{r}
chf <- as.character('4280','4281','4282','4283','4284','4285','4286','4287','4288') # ICD9 codes for CHF
a <- chf
n11$chf <- with(n11, ifelse((DX1 %in% a | DX2 %in% a | DX3 %in% a | DX4 %in% a | DX4 %in% a | DX5 %in% a | DX6 %in% a | DX7 %in% a | DX8 %in% a | DX10 %in% a | DX11 %in% a | DX12 %in% a | DX13 %in% a | DX14 %in% a | DX15 %in% a), "yes","no"))
n11 %>% count(chf)
```
```{r}
shock <- as.character(c("78551")) # prior CABG
a <- shock
n11$shock <- with(n11, ifelse((DX1 %in% a | DX2 %in% a | DX3 %in% a | DX4 %in% a | DX4 %in% a | DX5 %in% a | DX6 %in% a | DX7 %in% a | DX8 %in% a | DX10 %in% a | DX11 %in% a | DX12 %in% a | DX13 %in% a | DX14 %in% a | DX15 %in% a ), "yes","no"))
n11 %>% count(shock)
```
```{r}
stemi <- as.character(c("41071")) # prior CABG
a <- stemi
n11$stemi <- with(n11, ifelse((DX1 %in% a | DX2 %in% a | DX3 %in% a | DX4 %in% a | DX4 %in% a | DX5 %in% a | DX6 %in% a | DX7 %in% a | DX8 %in% a | DX10 %in% a | DX11 %in% a | DX12 %in% a | DX13 %in% a | DX14 %in% a | DX15 %in% a ), "yes","no"))
n11 %>% count(stemi)
```
```{r change df name to get more variables }
df <- n11
```
```{r carotid disease}
carotid.d <- as.character(c("43310")) # carotid artery disease
a <- carotid.d
df$carotid <- with(df, ifelse((DX1 %in% a | DX2 %in% a | DX3 %in% a | DX4 %in% a | DX4 %in% a | DX5 %in% a | DX6 %in% a | DX7 %in% a | DX8 %in% a | DX10 %in% a | DX11 %in% a | DX12 %in% a | DX13 %in% a | DX14 %in% a | DX15 %in% a), "yes","no"))
table(df$carotid)
```
```{r}
pristroke <- as.character(c("V1254","4380")) # prior stroke
a <- pristroke
df$pristroke <- with(df, ifelse((DX1 %in% a | DX2 %in% a | DX3 %in% a | DX4 %in% a | DX4 %in% a | DX5 %in% a | DX6 %in% a | DX7 %in% a | DX8 %in% a | DX10 %in% a | DX11 %in% a | DX12 %in% a | DX13 %in% a | DX14 %in% a | DX15 %in% a ), "yes","no"))
table(df$pristroke)
```
```{r}
priicd <- as.character(c("V4502")) # prior ICD implant
a <- priicd
df$priicd <- with(df, ifelse((DX1 %in% a | DX2 %in% a | DX3 %in% a | DX4 %in% a | DX4 %in% a | DX5 %in% a | DX6 %in% a | DX7 %in% a | DX8 %in% a | DX10 %in% a | DX11 %in% a | DX12 %in% a | DX13 %in% a | DX14 %in% a | DX15 %in% a ), "yes","no"))
table(df$priicd)
```
```{r}
dementia <- as.character(c("2900","2941","2942","2948","3310","3311","3312","33182")) # dementia
a <- dementia
df$dementia <- with(df, ifelse((DX1 %in% a | DX2 %in% a | DX3 %in% a | DX4 %in% a | DX4 %in% a | DX5 %in% a | DX6 %in% a | DX7 %in% a | DX8 %in% a | DX10 %in% a | DX11 %in% a | DX12 %in% a | DX13 %in% a | DX14 %in% a | DX15 %in% a ), "yes","no"))
table(df$dementia)
```
```{r get var for n11 and convert them to lower case}
n11 <- df
names(n11)
names(n11) <- tolower(names(n11))
names(n11)
```
1. Now we need to add the cm_variables from the core dataframe:
```{r}
sev <- read_spss("H:/nis_material/nis_data/nis2011/NIS_2011_Severity.sav")
names(sev) <- tolower(names(sev))
names(sev)
sev2 <- sev %>% dplyr::select(hospid, key, cm_aids:cm_wghtloss)
names(sev2)
```
Now combine the two df with key:
```{r combine }
df2 <- left_join(n11, sev2, by = "key")
names(df2)
```
1. Now we need to get the hospital information into the df:
```{r get hospital df}
hosp <- read_spss("H:/nis_material/nis_data/nis2011/NIS_2011_Hospital.sav")
names(hosp) <- tolower(names(hosp))
names(hosp)
```
```{r merge both df together}
df2$hospid <- df2$hospid.x
df2$hospid <- as.numeric(df2$hospid)
hosp$hospid <- as.numeric(hosp$hospid)
df3 <- left_join(df2, hosp, by = "hospid")
dim(df3)
```
```{r save df for now}
write_csv(df3, "H:/bita_nis/df2011.csv")
```
```{r}
m1 <- df3 %>% dplyr::select(age, atype, died, discwt.x, dispub04, dispuniform, drg, dx1,
dx2, dx3, dx4, dx5, dx6, dx7, dx8, dx9, dx10,
dx11, dx12, dx13, dx14, dx15, female, key, los, nis_stratum.x,
pay1, pay2, pr1, pr2,
pr3, pr4, pr5, pr6, pr7, pr8, pr9,pr10, pr11,
pr12, pr13, pr14, pr15, race, totchg,
totchg_x, year.x,trendwt, cabg,
pci, bita, want, pricabg, valve, priormi, priorpci,
chf, shock, stemi, cm_aids, cm_alcohol,
cm_anemdef, cm_arth, cm_bldloss, cm_chf, cm_chrnlung,
cm_coag, cm_depress, cm_dm, cm_dmcx, cm_drug, cm_htn_c,
cm_hypothy, cm_liver, cm_lymph, cm_lytes, cm_mets,
cm_neuro, cm_obese, cm_para, cm_perivasc, cm_psych,
cm_pulmcirc, cm_renlfail, cm_tumor, cm_ulcer, cm_valve,
cm_wghtloss, hospid, discwt.y,
hosp_bedsize, hosp_location, hosp_locteach,
hosp_region, hosp_teach, nis_stratum.y, year.y)
names(m1)
```
```{r write df to folder}
write_csv(m1, "H:/bita_nis/df/m2011.csv")
```