Literature DB >> 31691160

Supervised machine learning for diagnostic classification from large-scale neuroimaging datasets.

Pradyumna Lanka1,2, D Rangaprakash1,3, Michael N Dretsch4,5,6, Jeffrey S Katz1,6,7,8, Thomas S Denney1,6,7,8, Gopikrishna Deshpande9,10,11,12,13,14.   

Abstract

There are growing concerns about the generalizability of machine learning classifiers in neuroimaging. In order to evaluate this aspect across relatively large heterogeneous populations, we investigated four disorders: Autism spectrum disorder (N = 988), Attention deficit hyperactivity disorder (N = 930), Post-traumatic stress disorder (N = 87) and Alzheimer's disease (N = 132). We applied 18 different machine learning classifiers (based on diverse principles) wherein the training/validation and the hold-out test data belonged to samples with the same diagnosis but differing in either the age range or the acquisition site. Our results indicate that overfitting can be a huge problem in heterogeneous datasets, especially with fewer samples, leading to inflated measures of accuracy that fail to generalize well to the general clinical population. Further, different classifiers tended to perform well on different datasets. In order to address this, we propose a consensus-classifier by combining the predictive power of all 18 classifiers. The consensus-classifier was less sensitive to unmatched training/validation and holdout test data. Finally, we combined feature importance scores obtained from all classifiers to infer the discriminative ability of connectivity features. The functional connectivity patterns thus identified were robust to the classification algorithm used, age and acquisition site differences, and had diagnostic predictive ability in addition to univariate statistically significant group differences between the groups. A MATLAB toolbox called Machine Learning in NeuroImaging (MALINI), which implements all the 18 different classifiers along with the consensus classifier is available from Lanka et al. (2019) The toolbox can also be found at the following URL: https://github.com/pradlanka/malini .

Entities:  

Keywords:  ADHD; Alzheimer’s disease; Autism; Diagnostic classification; Functional connectivity; PTSD; Resting-state functional MRI; Supervised machine learning

Year:  2020        PMID: 31691160      PMCID: PMC7198352          DOI: 10.1007/s11682-019-00191-8

Source DB:  PubMed          Journal:  Brain Imaging Behav        ISSN: 1931-7557            Impact factor:   3.978


  148 in total

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7.  Reduced activation and inter-regional functional connectivity of fronto-striatal networks in adults with childhood Attention-Deficit Hyperactivity Disorder (ADHD) and persisting symptoms during tasks of motor inhibition and cognitive switching.

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10.  Automated diagnoses of attention deficit hyperactive disorder using magnetic resonance imaging.

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  14 in total

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Review 5.  The Road to Personalized Medicine in Alzheimer's Disease: The Use of Artificial Intelligence.

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6.  Machine Learning for Detecting Parkinson's Disease by Resting-State Functional Magnetic Resonance Imaging: A Multicenter Radiomics Analysis.

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7.  Optimising a Simple Fully Convolutional Network for Accurate Brain Age Prediction in the PAC 2019 Challenge.

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8.  MALINI (Machine Learning in NeuroImaging): A MATLAB toolbox for aiding clinical diagnostics using resting-state fMRI data.

Authors:  Pradyumna Lanka; D Rangaprakash; Sai Sheshan Roy Gotoor; Michael N Dretsch; Jeffrey S Katz; Thomas S Denney; Gopikrishna Deshpande
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