Literature DB >> 24791746

Correction of inter-scanner and within-subject variance in structural MRI based automated diagnosing.

Daniel Kostro1, Ahmed Abdulkadir2, Alexandra Durr3, Raymund Roos4, Blair R Leavitt5, Hans Johnson6, David Cash7, Sarah J Tabrizi8, Rachael I Scahill8, Olaf Ronneberger9, Stefan Klöppel10.   

Abstract

Automated analysis of structural magnetic resonance images is a promising way to improve early detection of neurodegenerative brain diseases. Clinical applications of such methods involve multiple scanners with potentially different hardware and/or acquisition sequences and demographically heterogeneous groups. To improve classification performance, we propose to correct effects of subject-specific covariates (such as age, total intracranial volume, and sex) as well as effects of scanner by using a non-linear Gaussian process model. To test the efficacy of the correction, we performed classification of carriers of the genetic mutation leading to Huntington's disease (HD) versus healthy controls. Half of the HD carriers were free of typical HD symptoms and had an estimated 5 to 20years before onset of clinical symptoms, thus providing a model for preclinical diagnosis of a neurodegenerative disease. Structural magnetic resonance brain images were acquired at four sites with pairs of sites which had the identical scanner type, equipment, and acquisition parameters. For automatic classification, we used spatially normalized probabilistic maps of gray matter, then removed confounding effects by Gaussian process regression, and then performed classification with a support vector machine. Voxel-based morphometry of gray matter maps showed disease effects that were spatially wider spread than effects of scanner, but no significant interactions between scanner and disease were found. A model trained with data from a single scanner generalized well to data from a different scanner. When confounding diagnostics groups and scanner during training, e.g. by using controls from one scanner and gene carriers from another, classification accuracy dropped significantly in many cases. By regressing out confounds with Gaussian process regression, the performance levels were comparable to those obtained in scenarios without confound. We conclude that models trained on data acquired with a single scanner generalized well to data acquired with a different same-generation scanner even when the vendor differed. When confounding grouping and scanner during training is unavoidable to gather training data, regressing out inter-scanner and between-subject variability can reduce the loss in accuracy due to the confound.
Copyright © 2014 Elsevier Inc. All rights reserved.

Entities:  

Keywords:  Between-scanner variability; Classification; Huntington's disease; Neuro-degeneration; Structural MRI; Support vector machines

Mesh:

Year:  2014        PMID: 24791746     DOI: 10.1016/j.neuroimage.2014.04.057

Source DB:  PubMed          Journal:  Neuroimage        ISSN: 1053-8119            Impact factor:   6.556


  12 in total

1.  PSACNN: Pulse sequence adaptive fast whole brain segmentation.

Authors:  Amod Jog; Andrew Hoopes; Douglas N Greve; Koen Van Leemput; Bruce Fischl
Journal:  Neuroimage       Date:  2019-05-24       Impact factor: 6.556

2.  Magnetization transfer imaging alterations and its diagnostic value in antipsychotic-naïve first-episode schizophrenia.

Authors:  Du Lei; Xueling Suo; Kun Qin; Walter H L Pinaya; Yuan Ai; Wenbin Li; Weihong Kuang; Su Lui; Graham J Kemp; John A Sweeney; Qiyong Gong
Journal:  Transl Psychiatry       Date:  2022-05-06       Impact factor: 7.989

3.  A Computational Model for the Automatic Diagnosis of Attention Deficit Hyperactivity Disorder Based on Functional Brain Volume.

Authors:  Lirong Tan; Xinyu Guo; Sheng Ren; Jeff N Epstein; Long J Lu
Journal:  Front Comput Neurosci       Date:  2017-09-08       Impact factor: 2.380

4.  Predictive modelling using neuroimaging data in the presence of confounds.

Authors:  Anil Rao; Joao M Monteiro; Janaina Mourao-Miranda
Journal:  Neuroimage       Date:  2017-01-29       Impact factor: 6.556

5.  Integrating machining learning and multimodal neuroimaging to detect schizophrenia at the level of the individual.

Authors:  Du Lei; Walter H L Pinaya; Jonathan Young; Therese van Amelsvoort; Machteld Marcelis; Gary Donohoe; David O Mothersill; Aiden Corvin; Sandra Vieira; Xiaoqi Huang; Su Lui; Cristina Scarpazza; Celso Arango; Ed Bullmore; Qiyong Gong; Philip McGuire; Andrea Mechelli
Journal:  Hum Brain Mapp       Date:  2019-11-18       Impact factor: 5.399

6.  Baseline multimodal information predicts future motor impairment in premanifest Huntington's disease.

Authors:  Eduardo Castro; Pablo Polosecki; Irina Rish; Dorian Pustina; John H Warner; Andrew Wood; Cristina Sampaio; Guillermo A Cecchi
Journal:  Neuroimage Clin       Date:  2018-05-09       Impact factor: 4.881

7.  Confound modelling in UK Biobank brain imaging.

Authors:  Fidel Alfaro-Almagro; Paul McCarthy; Soroosh Afyouni; Jesper L R Andersson; Matteo Bastiani; Karla L Miller; Thomas E Nichols; Stephen M Smith
Journal:  Neuroimage       Date:  2020-06-02       Impact factor: 6.556

8.  Applying Automated MR-Based Diagnostic Methods to the Memory Clinic: A Prospective Study.

Authors:  Stefan Klöppel; Jessica Peter; Anna Ludl; Anne Pilatus; Sabrina Maier; Irina Mader; Bernhard Heimbach; Lars Frings; Karl Egger; Juergen Dukart; Matthias L Schroeter; Robert Perneczky; Peter Häussermann; Werner Vach; Horst Urbach; Stefan Teipel; Michael Hüll; Ahmed Abdulkadir
Journal:  J Alzheimers Dis       Date:  2015       Impact factor: 4.472

9.  Separating Symptomatic Alzheimer's Disease from Depression based on Structural MRI.

Authors:  Stefan Klöppel; Maria Kotschi; Jessica Peter; Karl Egger; Lucrezia Hausner; Lutz Frölich; Alex Förster; Bernhard Heimbach; Claus Normann; Werner Vach; Horst Urbach; Ahmed Abdulkadir
Journal:  J Alzheimers Dis       Date:  2018       Impact factor: 4.472

Review 10.  Diagnosis support systems for rare diseases: a scoping review.

Authors:  Carole Faviez; Xiaoyi Chen; Nicolas Garcelon; Antoine Neuraz; Bertrand Knebelmann; Rémi Salomon; Stanislas Lyonnet; Sophie Saunier; Anita Burgun
Journal:  Orphanet J Rare Dis       Date:  2020-04-16       Impact factor: 4.123

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