This paper explores the effect of using different pipelines
to compute connectomes (matrices representing brain connections) and
use them to train machine learning models with the goal of diagnosing
Autism Spectrum Disorder. Five different pipelines are used to train six
different ML models, splitting the data into female, male and all subsets
so we can also research the effect of considering male and female patients
separately. Our results conclude that pipeline and model choice impact
results, along with using general or specific models.