Towards interpretable machine learning models for diagnosis aid: A case study on attention deficit/hyperactivity disorder.

Attention Deficit/Hyperactivity Disorder (ADHD) is a neurodevelopmental disorder that has heavy consequences on a child's wellbeing, especially in the academic, psychological and relational planes. The current evaluation of the disorder is supported by clinical assessment and written tests. A d...

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Main Authors: Sarah Itani, Mandy Rossignol, Fabian Lecron, Philippe Fortemps
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2019-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0215720
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spelling doaj-cf19de212beb47129a38994405887e102021-03-03T20:42:55ZengPublic Library of Science (PLoS)PLoS ONE1932-62032019-01-01144e021572010.1371/journal.pone.0215720Towards interpretable machine learning models for diagnosis aid: A case study on attention deficit/hyperactivity disorder.Sarah ItaniMandy RossignolFabian LecronPhilippe FortempsAttention Deficit/Hyperactivity Disorder (ADHD) is a neurodevelopmental disorder that has heavy consequences on a child's wellbeing, especially in the academic, psychological and relational planes. The current evaluation of the disorder is supported by clinical assessment and written tests. A definitive diagnosis is usually made based on the DSM-V criteria. There is a lot of ongoing research on ADHD, in order to determine the neurophysiological basis of the disorder and to reach a more objective diagnosis. The advent of Machine Learning (ML) opens up promising prospects for the development of systems able to predict a diagnosis from phenotypic and neuroimaging data. This was the reason why the ADHD-200 contest was launched a few years ago. Based on the publicly available ADHD-200 collection, participants were challenged to predict ADHD with the best possible predictive accuracy. In the present work, we propose instead a ML methodology which primarily places importance on the explanatory power of a model. Such an approach is intended to achieve a fair trade-off between the needs of performance and interpretability expected from medical diagnosis aid systems. We applied our methodology on a data sample extracted from the ADHD-200 collection, through the development of decision trees which are valued for their readability. Our analysis indicates the relevance of the limbic system for the diagnosis of the disorder. Moreover, while providing explanations that make sense, the resulting decision tree performs favorably given the recent results reported in the literature.https://doi.org/10.1371/journal.pone.0215720
collection DOAJ
language English
format Article
sources DOAJ
author Sarah Itani
Mandy Rossignol
Fabian Lecron
Philippe Fortemps
spellingShingle Sarah Itani
Mandy Rossignol
Fabian Lecron
Philippe Fortemps
Towards interpretable machine learning models for diagnosis aid: A case study on attention deficit/hyperactivity disorder.
PLoS ONE
author_facet Sarah Itani
Mandy Rossignol
Fabian Lecron
Philippe Fortemps
author_sort Sarah Itani
title Towards interpretable machine learning models for diagnosis aid: A case study on attention deficit/hyperactivity disorder.
title_short Towards interpretable machine learning models for diagnosis aid: A case study on attention deficit/hyperactivity disorder.
title_full Towards interpretable machine learning models for diagnosis aid: A case study on attention deficit/hyperactivity disorder.
title_fullStr Towards interpretable machine learning models for diagnosis aid: A case study on attention deficit/hyperactivity disorder.
title_full_unstemmed Towards interpretable machine learning models for diagnosis aid: A case study on attention deficit/hyperactivity disorder.
title_sort towards interpretable machine learning models for diagnosis aid: a case study on attention deficit/hyperactivity disorder.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2019-01-01
description Attention Deficit/Hyperactivity Disorder (ADHD) is a neurodevelopmental disorder that has heavy consequences on a child's wellbeing, especially in the academic, psychological and relational planes. The current evaluation of the disorder is supported by clinical assessment and written tests. A definitive diagnosis is usually made based on the DSM-V criteria. There is a lot of ongoing research on ADHD, in order to determine the neurophysiological basis of the disorder and to reach a more objective diagnosis. The advent of Machine Learning (ML) opens up promising prospects for the development of systems able to predict a diagnosis from phenotypic and neuroimaging data. This was the reason why the ADHD-200 contest was launched a few years ago. Based on the publicly available ADHD-200 collection, participants were challenged to predict ADHD with the best possible predictive accuracy. In the present work, we propose instead a ML methodology which primarily places importance on the explanatory power of a model. Such an approach is intended to achieve a fair trade-off between the needs of performance and interpretability expected from medical diagnosis aid systems. We applied our methodology on a data sample extracted from the ADHD-200 collection, through the development of decision trees which are valued for their readability. Our analysis indicates the relevance of the limbic system for the diagnosis of the disorder. Moreover, while providing explanations that make sense, the resulting decision tree performs favorably given the recent results reported in the literature.
url https://doi.org/10.1371/journal.pone.0215720
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