Comparing interpretation methods in mental state decoding analyses with deep learning models

05/31/2022
by   Armin W. Thomas, et al.
6

Deep learning (DL) methods find increasing application in mental state decoding, where researchers seek to understand the mapping between mental states (such as accepting or rejecting a gamble) and brain activity, by identifying those brain regions (and networks) whose activity allows to accurately identify (i.e., decode) these states. Once DL models have been trained to accurately decode a set of mental states, neuroimaging researchers often make use of interpretation methods from explainable artificial intelligence research to understand their learned mappings between mental states and brain activity. Here, we compare the explanations of prominent interpretation methods for the mental state decoding decisions of DL models trained on three functional Magnetic Resonance Imaging (fMRI) datasets. We find that interpretation methods that capture the model's decision process well, by producing faithful explanations, generally produce explanations that are less in line with the results of standard analyses of the fMRI data, when compared to the explanations of interpretation methods with less explanation faithfulness. Specifically, we find that interpretation methods that focus on how sensitively a model's decoding decision changes with the values of the input produce explanations that better match with the results of a standard general linear model analysis of the fMRI data, while interpretation methods that focus on identifying the specific contribution of an input feature's value to the decoding decision produce overall more faithful explanations that align less well with the results of standard analyses of the fMRI data.

READ FULL TEXT
research
07/02/2019

Deep Transfer Learning For Whole-Brain fMRI Analyses

The application of deep learning (DL) models to the decoding of cognitiv...
research
11/01/2021

Evaluating deep transfer learning for whole-brain cognitive decoding

Research in many fields has shown that transfer learning (TL) is well-su...
research
08/16/2021

Challenges for cognitive decoding using deep learning methods

In cognitive decoding, researchers aim to characterize a brain region's ...
research
07/18/2023

DreaMR: Diffusion-driven Counterfactual Explanation for Functional MRI

Deep learning analyses have offered sensitivity leaps in detection of co...
research
07/15/2012

Improved brain pattern recovery through ranking approaches

Inferring the functional specificity of brain regions from functional Ma...
research
12/14/2018

Efficient Interpretation of Deep Learning Models Using Graph Structure and Cooperative Game Theory: Application to ASD Biomarker Discovery

Discovering imaging biomarkers for autism spectrum disorder (ASD) is cri...
research
03/09/2022

Pruning Graph Convolutional Networks to select meaningful graph frequencies for fMRI decoding

Graph Signal Processing is a promising framework to manipulate brain sig...

Please sign up or login with your details

Forgot password? Click here to reset