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[WIP] GAM Tract Profile Tutorial #1122

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101 changes: 101 additions & 0 deletions examples/howto_examples/gam-tract-profiles-example.Rmd
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---
title: "AFQ-GAMS-Tutorial"
author: "Jason Yeatman"
date: "2024-03-30"
output: html_document
---

```{r setup, include=FALSE}
knitr::opts_chunk$set(echo = TRUE)
```

## GAMs Tutorial

First we'll pull the Sarica data and merge nodes.csv (diffusion data) with subjects.csv (participant meta data)

```{r, warning=FALSE, message=FALSE}
library(dplyr)
library(mgcv)
library(gratia)
library(ggplot2)
df <- read.csv('https://raw.githubusercontent.com/yeatmanlab/Sarica_2017/gh-pages/data/nodes.csv')
df <- inner_join(df, read.csv('https://raw.githubusercontent.com/yeatmanlab/Sarica_2017/gh-pages/data/subjects.csv'))
mutate(df, class = factor(class), subjectID = factor(subjectID))-> df

```

```{r, message=FALSE, warning=FALSE}
# Fit a simple GAM with a random effect of subject and smoothers that
# differ by class (control or ALS)
g1 <- gam(md ~ s(nodeID,class, bs='fs') + s(subjectID, bs= 're'), data=df)
# Get smooth estimates
dfs <- smooth_estimates(g1) %>% add_confint(coverage=.68)

# Remove random effects and plot
filter(dfs, type != 'Random effect') %>%
ggplot(aes(x=nodeID,y=est, color=class)) +
geom_line() +
geom_ribbon(aes(ymin = lower_ci, ymax=upper_ci),alpha = 0.2 )

```

```{r, message=FALSE, warning=FALSE}
# The above plot looks good but now let's let the curves vary across # subjects too. What I notice here is that it dramatically effects the standard error
g2 <- gam(md ~ s(nodeID,class, bs='fs') + s(nodeID, subjectID, bs= 're'), data=df)
# Get smooth estimates
dfs <- smooth_estimates(g2) %>% add_confint(coverage=.68)

# Remove random effects and plot
filter(dfs, type != 'Random effect') %>%
ggplot(aes(x=nodeID,y=est, color=class)) +
geom_line() +
geom_ribbon(aes(ymin = lower_ci, ymax=upper_ci),alpha = 0.2 )
```

```{r, message=FALSE, warning=FALSE}
# Yet another way to do the same thing and I don't get the difference
g3 <- gam(md ~ s(nodeID,by=class, bs='fs', k=10) + s(subjectID, bs= 're'), data=df)
# Get smooth estimates
dfs <- smooth_estimates(g3) %>% add_confint(coverage=.68)

# Remove random effects and plot
filter(dfs, type != 'Random effect') %>%
ggplot(aes(x=nodeID,y=est, color=class)) +
geom_line() +
geom_ribbon(aes(ymin = lower_ci, ymax=upper_ci),alpha = 0.2 )
```

Now calculate differences between the smooths for the different factors and plot out the difference an 95% CI

```{r}
ds<-difference_smooths(g3, smooth="s(nodeID)")
ggplot(ds,aes(x=nodeID,y=diff)) +
geom_line() +
geom_ribbon(aes(ymin = lower, ymax=upper),alpha = 0.2 ) +
geom_hline(yintercept=0)
```

Now look at continuous measures along the tract profile

```{r}
# Yet another way to do the same thing and I don't get the difference
g4 <- gam(md ~ s(nodeID,ALSFRSbulbar, bs='fs', k=10) + s(subjectID, bs= 're'), data=df)
dfs <- smooth_estimates(g4) %>% add_confint(coverage=.68)
#filter(dfs,smooth=='s(nodeID)') %>%
# ggplot(aes(x=nodeID,y=est)) +
# geom_line() +
# geom_ribbon(aes(ymin = lower_ci, ymax=upper_ci),alpha = 0.2 )

# 2d plot showing how tract profiles vary as a function of AFS bulbar
filter(dfs,smooth=='s(nodeID,ALSFRSbulbar)') %>%
ggplot(aes(x=nodeID, y=ALSFRSbulbar))+
geom_raster(aes(fill=est))

# Now plot separate tract profiles by bulbar
dfs %>% mutate(ALSFRSbulbar.factor=factor(ALSFRSbulbar)) %>% filter(ALSFRSbulbar== sort(unique(dfs$ALSFRSbulbar))[2] | ALSFRSbulbar== sort(unique(dfs$ALSFRSbulbar))[99]) %>%
filter(smooth=='s(nodeID,ALSFRSbulbar)') %>%
ggplot(aes(x=nodeID,y=est,color=ALSFRSbulbar.factor)) +
geom_line(show.legend = FALSE) +
geom_ribbon(aes(ymin = lower_ci, ymax=upper_ci),alpha = 0.2 )

```
482 changes: 482 additions & 0 deletions examples/howto_examples/gam-tract-profiles-example.html

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