Interpretable Learning Approaches in Resting-State Functional Connectivity Analysis: The Case of Autism Spectrum Disorder
Deep neural networks have recently been applied to the study of brain disorders such as autism spectrum disorder (ASD) with great success. However, the internal logics of these networks are difficult to interpret, especially with regard to how specific network architecture decisions are made. In thi...
Main Authors: | , , , , , |
---|---|
Format: | Article |
Language: | English |
Published: |
Hindawi Limited
2020-01-01
|
Series: | Computational and Mathematical Methods in Medicine |
Online Access: | http://dx.doi.org/10.1155/2020/1394830 |
id |
doaj-548908a4d76a4256889837db737c9165 |
---|---|
record_format |
Article |
spelling |
doaj-548908a4d76a4256889837db737c91652020-11-25T03:09:22ZengHindawi LimitedComputational and Mathematical Methods in Medicine1748-670X1748-67182020-01-01202010.1155/2020/13948301394830Interpretable Learning Approaches in Resting-State Functional Connectivity Analysis: The Case of Autism Spectrum DisorderJinlong Hu0Lijie Cao1Tenghui Li2Bin Liao3Shoubin Dong4Ping Li5School of Computer Science and Engineering, South China University of Technology, Guangzhou, ChinaSchool of Computer Science and Engineering, South China University of Technology, Guangzhou, ChinaSchool of Computer Science and Engineering, South China University of Technology, Guangzhou, ChinaCollege of Mathematics and Informatics, South China Agricultural University, Guangzhou, ChinaSchool of Computer Science and Engineering, South China University of Technology, Guangzhou, ChinaFaculty of Humanities, The Hong Kong Polytechnic University, Hong Kong, ChinaDeep neural networks have recently been applied to the study of brain disorders such as autism spectrum disorder (ASD) with great success. However, the internal logics of these networks are difficult to interpret, especially with regard to how specific network architecture decisions are made. In this paper, we study an interpretable neural network model as a method to identify ASD participants from functional magnetic resonance imaging (fMRI) data and interpret results of the model in a precise and consistent manner. First, we propose an interpretable fully connected neural network (FCNN) to classify two groups, ASD versus healthy controls (HC), based on input data from resting-state functional connectivity (rsFC) between regions of interests (ROIs). The proposed FCNN model is a piecewise linear neural network (PLNN) which uses piecewise linear function LeakyReLU as its activation function. We experimentally compared the FCNN model against widely used classification models including support vector machine (SVM), random forest, and two new classes of deep neural network models in a large dataset containing 871 subjects from ABIDE I database. The results show the proposed FCNN model achieves the highest classification accuracy. Second, we further propose an interpreting method which could explain the trained model precisely with a precise linear formula for each input sample and decision features which contributed most to the classification of ASD versus HC participants in the model. We also discuss the implications of our proposed approach for fMRI data classification and interpretation.http://dx.doi.org/10.1155/2020/1394830 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Jinlong Hu Lijie Cao Tenghui Li Bin Liao Shoubin Dong Ping Li |
spellingShingle |
Jinlong Hu Lijie Cao Tenghui Li Bin Liao Shoubin Dong Ping Li Interpretable Learning Approaches in Resting-State Functional Connectivity Analysis: The Case of Autism Spectrum Disorder Computational and Mathematical Methods in Medicine |
author_facet |
Jinlong Hu Lijie Cao Tenghui Li Bin Liao Shoubin Dong Ping Li |
author_sort |
Jinlong Hu |
title |
Interpretable Learning Approaches in Resting-State Functional Connectivity Analysis: The Case of Autism Spectrum Disorder |
title_short |
Interpretable Learning Approaches in Resting-State Functional Connectivity Analysis: The Case of Autism Spectrum Disorder |
title_full |
Interpretable Learning Approaches in Resting-State Functional Connectivity Analysis: The Case of Autism Spectrum Disorder |
title_fullStr |
Interpretable Learning Approaches in Resting-State Functional Connectivity Analysis: The Case of Autism Spectrum Disorder |
title_full_unstemmed |
Interpretable Learning Approaches in Resting-State Functional Connectivity Analysis: The Case of Autism Spectrum Disorder |
title_sort |
interpretable learning approaches in resting-state functional connectivity analysis: the case of autism spectrum disorder |
publisher |
Hindawi Limited |
series |
Computational and Mathematical Methods in Medicine |
issn |
1748-670X 1748-6718 |
publishDate |
2020-01-01 |
description |
Deep neural networks have recently been applied to the study of brain disorders such as autism spectrum disorder (ASD) with great success. However, the internal logics of these networks are difficult to interpret, especially with regard to how specific network architecture decisions are made. In this paper, we study an interpretable neural network model as a method to identify ASD participants from functional magnetic resonance imaging (fMRI) data and interpret results of the model in a precise and consistent manner. First, we propose an interpretable fully connected neural network (FCNN) to classify two groups, ASD versus healthy controls (HC), based on input data from resting-state functional connectivity (rsFC) between regions of interests (ROIs). The proposed FCNN model is a piecewise linear neural network (PLNN) which uses piecewise linear function LeakyReLU as its activation function. We experimentally compared the FCNN model against widely used classification models including support vector machine (SVM), random forest, and two new classes of deep neural network models in a large dataset containing 871 subjects from ABIDE I database. The results show the proposed FCNN model achieves the highest classification accuracy. Second, we further propose an interpreting method which could explain the trained model precisely with a precise linear formula for each input sample and decision features which contributed most to the classification of ASD versus HC participants in the model. We also discuss the implications of our proposed approach for fMRI data classification and interpretation. |
url |
http://dx.doi.org/10.1155/2020/1394830 |
work_keys_str_mv |
AT jinlonghu interpretablelearningapproachesinrestingstatefunctionalconnectivityanalysisthecaseofautismspectrumdisorder AT lijiecao interpretablelearningapproachesinrestingstatefunctionalconnectivityanalysisthecaseofautismspectrumdisorder AT tenghuili interpretablelearningapproachesinrestingstatefunctionalconnectivityanalysisthecaseofautismspectrumdisorder AT binliao interpretablelearningapproachesinrestingstatefunctionalconnectivityanalysisthecaseofautismspectrumdisorder AT shoubindong interpretablelearningapproachesinrestingstatefunctionalconnectivityanalysisthecaseofautismspectrumdisorder AT pingli interpretablelearningapproachesinrestingstatefunctionalconnectivityanalysisthecaseofautismspectrumdisorder |
_version_ |
1715291820176441344 |