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1.
Nat Commun ; 13(1): 3758, 2022 06 29.
Article in English | MEDLINE | ID: mdl-35768409

ABSTRACT

For most neuroimaging questions the range of possible analytic choices makes it unclear how to evaluate conclusions from any single analytic method. One possible way to address this issue is to evaluate all possible analyses using a multiverse approach, however, this can be computationally challenging and sequential analyses on the same data can compromise predictive power. Here, we establish how active learning on a low-dimensional space capturing the inter-relationships between pipelines can efficiently approximate the full spectrum of analyses. This approach balances the benefits of a multiverse analysis without incurring the cost on computational and predictive power. We illustrate this approach with two functional MRI datasets (predicting brain age and autism diagnosis) demonstrating how a multiverse of analyses can be efficiently navigated and mapped out using active learning. Furthermore, our presented approach not only identifies the subset of analysis techniques that are best able to predict age or classify individuals with autism spectrum disorder and healthy controls, but it also allows the relationships between analyses to be quantified.


Subject(s)
Autism Spectrum Disorder , Autism Spectrum Disorder/diagnostic imaging , Brain/diagnostic imaging , Humans , Magnetic Resonance Imaging/methods , Neuroimaging/methods
2.
Sci Rep ; 11(1): 15746, 2021 08 03.
Article in English | MEDLINE | ID: mdl-34344910

ABSTRACT

Normative modelling is an emerging method for quantifying how individuals deviate from the healthy populational pattern. Several machine learning models have been implemented to develop normative models to investigate brain disorders, including regression, support vector machines and Gaussian process models. With the advance of deep learning technology, the use of deep neural networks has also been proposed. In this study, we assessed normative models based on deep autoencoders using structural neuroimaging data from patients with Alzheimer's disease (n = 206) and mild cognitive impairment (n = 354). We first trained the autoencoder on an independent dataset (UK Biobank dataset) with 11,034 healthy controls. Then, we estimated how each patient deviated from this norm and established which brain regions were associated to this deviation. Finally, we compared the performance of our normative model against traditional classifiers. As expected, we found that patients exhibited deviations according to the severity of their clinical condition. The model identified medial temporal regions, including the hippocampus, and the ventricular system as critical regions for the calculation of the deviation score. Overall, the normative model had comparable cross-cohort generalizability to traditional classifiers. To promote open science, we are making all scripts and the trained models available to the wider research community.


Subject(s)
Alzheimer Disease/pathology , Brain/pathology , Cognitive Dysfunction/pathology , Machine Learning , Models, Statistical , Neural Networks, Computer , Aged , Alzheimer Disease/diagnostic imaging , Alzheimer Disease/epidemiology , Brain/diagnostic imaging , Case-Control Studies , Cognitive Dysfunction/diagnostic imaging , Cognitive Dysfunction/epidemiology , Cohort Studies , Cross-Sectional Studies , Disease Progression , Female , Humans , Male , Middle Aged , Neuroimaging/methods
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