Abstract

BackgroundFeature selection methods are commonly used to identify subsets of relevant features to facilitate the construction of models for classification, yet little is known about how feature selection methods perform in diffusion tensor images (DTIs). In this study, feature selection and machine learning classification methods were tested for the purpose of automating diagnosis of migraines using both DTIs and questionnaire answers related to emotion and cognition – factors that influence of pain perceptions.MethodsWe select 52 adult subjects for the study divided into three groups: control group (15), subjects with sporadic migraine (19) and subjects with chronic migraine and medication overuse (18). These subjects underwent magnetic resonance with diffusion tensor to see white matter pathway integrity of the regions of interest involved in pain and emotion. The tests also gather data about pathology. The DTI images and test results were then introduced into feature selection algorithms (Gradient Tree Boosting, L1-based, Random Forest and Univariate) to reduce features of the first dataset and classification algorithms (SVM (Support Vector Machine), Boosting (Adaboost) and Naive Bayes) to perform a classification of migraine group. Moreover we implement a committee method to improve the classification accuracy based on feature selection algorithms.ResultsWhen classifying the migraine group, the greatest improvements in accuracy were made using the proposed committee-based feature selection method. Using this approach, the accuracy of classification into three types improved from 67 to 93% when using the Naive Bayes classifier, from 90 to 95% with the support vector machine classifier, 93 to 94% in boosting. The features that were determined to be most useful for classification included are related with the pain, analgesics and left uncinate brain (connected with the pain and emotions).ConclusionsThe proposed feature selection committee method improved the performance of migraine diagnosis classifiers compared to individual feature selection methods, producing a robust system that achieved over 90% accuracy in all classifiers. The results suggest that the proposed methods can be used to support specialists in the classification of migraines in patients undergoing magnetic resonance imaging.

Highlights

  • Feature selection methods are commonly used to identify subsets of relevant features to facilitate the construction of models for classification, yet little is known about how feature selection methods perform in diffusion tensor images (DTIs)

  • Feature selection forms part of data mining techniques, in which we calculated the scores for each feature and by selecting those that obtained the best scores in which the threshold or to adjust the decision functions to make the selection more restrictive, or to adjust it to the set of data that one wishes to subject to study [5]

  • The main goal of this study is to automate the diagnosis of patients with migraine through the classification of features obtained from DTI images and psychological tests applied to patients

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Summary

Introduction

Feature selection methods are commonly used to identify subsets of relevant features to facilitate the construction of models for classification, yet little is known about how feature selection methods perform in diffusion tensor images (DTIs). While most patients have an episodic form of variable frequency, a subset develops chronic migraine (CM), a condition characterised by headaches on 15 or more days per month and present in approximately 2% of the general population [3]. The episodic form evolves into chronic migraine at a rate of 2.5% per year, in patients with obesity, low-income, medication overuse and a high attack rate [4]. Many methods exist [6,7,8,9,10] We make this selection using a criterion function which is the separability between the classes, whereby we need classification in order to make the selection so that the decision function may reveal the critical features that make the subjects belong to one class or another

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