#install.packages("pacman") #es un paquete que llama a otros paquetes y si no esta los instala
library("pacman") #esta funcion llama al paquete instalado
p_load("ggplot2","dplyr","vroom")

llamar a base de datos

datos_pcr<- vroom(file = "https://raw.githubusercontent.com/ManuelLaraMVZ/resultados_PCR_practica/refs/heads/main/Genes.csv")
## Rows: 7 Columns: 7
## ── Column specification ────────────────────────────────────────────────────────
## Delimiter: ","
## chr (1): Gen
## dbl (6): C1, C2, C3, T1, T2, T3
## 
## ℹ Use `spec()` to retrieve the full column specification for this data.
## ℹ Specify the column types or set `show_col_types = FALSE` to quiet this message.
datos_pcr
## # A tibble: 7 × 7
##   Gen         C1    C2    C3    T1    T2    T3
##   <chr>    <dbl> <dbl> <dbl> <dbl> <dbl> <dbl>
## 1 B-actina  19    19.5  18.9  18.5  18.8  18.2
## 2 PIF1      22.4  22    21    28    28.2  27.9
## 3 PLK1      22    21.8  21.6  21.7  21    21.5
## 4 CCNB1     30.1  31.2  30.8  25.2  25.2  25.3
## 5 PCNA      20    20.3  20.2  24    24.2  NA  
## 6 CCNB2     33    NA    33.1  24    25    26  
## 7 BRCA      21    20.5  20.4  19.1  19.2  19.5

aislar los genes de referenica para cada condicion

gen_referencia<-datos_pcr%>%
  filter(Gen=="B-actina")#seleccionar filas
gen_referencia
## # A tibble: 1 × 7
##   Gen         C1    C2    C3    T1    T2    T3
##   <chr>    <dbl> <dbl> <dbl> <dbl> <dbl> <dbl>
## 1 B-actina    19  19.5  18.9  18.5  18.8  18.2

generar base de datos con genes de interes

gen_int<-datos_pcr%>%
  filter(Gen != "B-actina")
gen_int
## # A tibble: 6 × 7
##   Gen      C1    C2    C3    T1    T2    T3
##   <chr> <dbl> <dbl> <dbl> <dbl> <dbl> <dbl>
## 1 PIF1   22.4  22    21    28    28.2  27.9
## 2 PLK1   22    21.8  21.6  21.7  21    21.5
## 3 CCNB1  30.1  31.2  30.8  25.2  25.2  25.3
## 4 PCNA   20    20.3  20.2  24    24.2  NA  
## 5 CCNB2  33    NA    33.1  24    25    26  
## 6 BRCA   21    20.5  20.4  19.1  19.2  19.5

Analisis

DCT <- gen_int%>%
  mutate(DC1=C1-gen_referencia$C1,
         DC2=C2-gen_referencia$C2,
         DC3=C3-gen_referencia$C3,
         DT1=T1-gen_referencia$T1,
         DT2=T2-gen_referencia$T2,
         DT3=T3-gen_referencia$T3)%>%
  mutate(DosDCTC1=2^-DC1,
         DosDCTC2=2^-DC2,
         DosDCTC3=2^-DC3,
         DosDCTT1=2^-DT1,
         DosDCTT2=2^-DT2,
         DosDCTT3=2^-DT3)%>%
  mutate(DosDCTCx=(DosDCTC1+DosDCTC2+DosDCTC3)/3,
         DosDCTTx=(DosDCTT1+DosDCTT2+DosDCTT3)/3)%>%
  mutate(DosDDCT=DosDCTTx/DosDCTCx)
DCT
## # A tibble: 6 × 22
##   Gen      C1    C2    C3    T1    T2    T3   DC1    DC2   DC3   DT1   DT2   DT3
##   <chr> <dbl> <dbl> <dbl> <dbl> <dbl> <dbl> <dbl>  <dbl> <dbl> <dbl> <dbl> <dbl>
## 1 PIF1   22.4  22    21    28    28.2  27.9   3.4  2.5    2.08 9.5   9.45    9.7
## 2 PLK1   22    21.8  21.6  21.7  21    21.5   3    2.3    2.68 3.2   2.25    3.3
## 3 CCNB1  30.1  31.2  30.8  25.2  25.2  25.3  11.1 11.7   11.9  6.7   6.45    7.1
## 4 PCNA   20    20.3  20.2  24    24.2  NA     1    0.800  1.28 5.5   5.45   NA  
## 5 CCNB2  33    NA    33.1  24    25    26    14   NA     14.2  5.5   6.25    7.8
## 6 BRCA   21    20.5  20.4  19.1  19.2  19.5   2    1      1.48 0.600 0.450   1.3
## # ℹ 9 more variables: DosDCTC1 <dbl>, DosDCTC2 <dbl>, DosDCTC3 <dbl>,
## #   DosDCTT1 <dbl>, DosDCTT2 <dbl>, DosDCTT3 <dbl>, DosDCTCx <dbl>,
## #   DosDCTTx <dbl>, DosDDCT <dbl>

Aislar datos

Datos_grafica<- DCT%>%
  select("Gen","DosDDCT")
Datos_grafica
## # A tibble: 6 × 2
##   Gen    DosDDCT
##   <chr>    <dbl>
## 1 PIF1   0.00790
## 2 PLK1   0.869  
## 3 CCNB1 27.7    
## 4 PCNA  NA      
## 5 CCNB2 NA      
## 6 BRCA   1.62

Grafica

Grafica_PCR <-ggplot(Datos_grafica,
                     aes(x=Gen,
                         y=DosDDCT))+
  geom_col()+
  theme_classic()
Grafica_PCR
## Warning: Removed 2 rows containing missing values or values outside the scale range
## (`geom_col()`).

Grafica regresion lineal

Datos_regresion <- DCT%>%
  select("Gen","DosDCTCx","DosDCTTx")
Datos_regresion
## # A tibble: 6 × 3
##   Gen    DosDCTCx DosDCTTx
##   <chr>     <dbl>    <dbl>
## 1 PIF1   0.169     0.00134
## 2 PLK1   0.161     0.140  
## 3 CCNB1  0.000340  0.00945
## 4 PCNA   0.495    NA      
## 5 CCNB2 NA         0.0132 
## 6 BRCA   0.369     0.599

Grafica_regresion

Grafica_regresion <- ggplot(Datos_regresion,
                            aes(x = DosDCTCx, y = DosDCTTx)) +
  geom_point(color = "steelblue", size = 3, alpha = 0.7) +   
  
  # Línea de pendiente 1 (y = x)
  geom_abline(intercept = 0, slope = 1, 
              color = "red", linetype = "dashed", size = 1) +
  
  # Línea de regresión ajustada a los datos
  geom_smooth(method = "lm", se = FALSE, 
              color = "darkgreen", size = 1) +
  
  labs(title = "Comparación: regresión ajustada vs. línea con pendiente 1",
       x = "DosDCTCx",
       y = "DosDCTTx") +
  theme_minimal(base_size = 14) +
  theme(plot.title = element_text(hjust = 0.5, face = "bold"))
## Warning: Using `size` aesthetic for lines was deprecated in ggplot2 3.4.0.
## ℹ Please use `linewidth` instead.
## This warning is displayed once every 8 hours.
## Call `lifecycle::last_lifecycle_warnings()` to see where this warning was
## generated.
Grafica_regresion
## `geom_smooth()` using formula = 'y ~ x'
## Warning: Removed 2 rows containing non-finite outside the scale range
## (`stat_smooth()`).
## Warning: Removed 2 rows containing missing values or values outside the scale range
## (`geom_point()`).