Accuracy of MRI Classification Algorithms in a Tertiary Memory Center
Clinical Routine Cohort
- URL: http://arxiv.org/abs/2003.09260v1
- Date: Thu, 19 Mar 2020 08:44:46 GMT
- Title: Accuracy of MRI Classification Algorithms in a Tertiary Memory Center
Clinical Routine Cohort
- Authors: Alexandre Morin (ARAMIS), Jorge Samper-Gonz\'alez (ARAMIS), Anne
Bertrand (ARAMIS), Sebastian Stroer, Didier Dormont (ICM, ARAMIS), Aline
Mendes, Pierrick Coup\'e, Jamila Ahdidan, Marcel L\'evy (IM2A), Dalila Samri,
Harald Hampel, Bruno Dubois (APM), Marc Teichmann (FRONTlab), St\'ephane
Epelbaum (ARAMIS), Olivier Colliot (ARAMIS)
- Abstract summary: Automated volumetry software (AVS) has recently become widely available to neuroradiologists.
Machine learning techniques have emerged as promising approaches to assist diagnosis.
- Score: 40.24757332810004
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: BACKGROUND:Automated volumetry software (AVS) has recently become widely
available to neuroradiologists. MRI volumetry with AVS may support the
diagnosis of dementias by identifying regional atrophy. Moreover, automatic
classifiers using machine learning techniques have recently emerged as
promising approaches to assist diagnosis. However, the performance of both AVS
and automatic classifiers has been evaluated mostly in the artificial setting
of research datasets.OBJECTIVE:Our aim was to evaluate the performance of two
AVS and an automatic classifier in the clinical routine condition of a memory
clinic.METHODS:We studied 239 patients with cognitive troubles from a single
memory center cohort. Using clinical routine T1-weighted MRI, we evaluated the
classification performance of: 1) univariate volumetry using two AVS (volBrain
and Neuroreader$^{TM}$); 2) Support Vector Machine (SVM) automatic classifier,
using either the AVS volumes (SVM-AVS), or whole gray matter (SVM-WGM); 3)
reading by two neuroradiologists. The performance measure was the balanced
diagnostic accuracy. The reference standard was consensus diagnosis by three
neurologists using clinical, biological (cerebrospinal fluid) and imaging data
and following international criteria.RESULTS:Univariate AVS volumetry provided
only moderate accuracies (46% to 71% with hippocampal volume). The accuracy
improved when using SVM-AVS classifier (52% to 85%), becoming close to that of
SVM-WGM (52 to 90%). Visual classification by neuroradiologists ranged between
SVM-AVS and SVM-WGM.CONCLUSION:In the routine practice of a memory clinic, the
use of volumetric measures provided by AVS yields only moderate accuracy.
Automatic classifiers can improve accuracy and could be a useful tool to assist
diagnosis.
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