Machine learning approach for Migraine Aura Complexity Score prediction based on magnetic resonance imaging data

被引:7
作者
Mitrovic, Katarina [1 ]
Savic, Andrej M. [2 ]
Radojicic, Aleksandra [3 ,4 ]
Dakovic, Marko [5 ]
Petrusic, Igor [5 ]
机构
[1] Univ Kragujevac, Fac Tech Sci Cacak, Dept Informat Technol, Svetog Save 65, Cacak 32000, Serbia
[2] Univ Belgrade, Sci & Res Ctr, Sch Elect Engn, 73 Bulevar Kralja Aleksandra, Belgrade 11000, Serbia
[3] Clin Ctr Serbia, Headache Ctr, Neurol Clin, 6 Dr Subotica, Belgrade 11000, Serbia
[4] Univ Belgrade, Fac Med, 8 Dr Subotica, Belgrade 11000, Serbia
[5] Univ Belgrade, Fac Phys Chem, Lab Adv Anal Neuroimages, Studentski Trg 12-16, Belgrade 11000, Serbia
关键词
Artificial intelligence; Support vector machine; Machine learning; Magnetic resonance imaging; Migraine with Aura; Prediction; regression; CEREBRAL-CORTEX;
D O I
10.1186/s10194-023-01704-z
中图分类号
R74 [神经病学与精神病学];
学科分类号
摘要
BackgroundPrevious studies have developed the Migraine Aura Complexity Score (MACS) system. MACS shows great potential in studying the complexity of migraine with aura (MwA) pathophysiology especially when implemented in neuroimaging studies. The use of sophisticated machine learning (ML) algorithms, together with deep profiling of MwA, could bring new knowledge in this field. We aimed to test several ML algorithms to study the potential of structural cortical features for predicting the MACS and therefore gain a better insight into MwA pathophysiology.MethodsThe data set used in this research consists of 340 MRI features collected from 40 MwA patients. Average MACS score was obtained for each subject. Feature selection for ML models was performed using several approaches, including a correlation test and a wrapper feature selection methodology. Regression was performed with the Support Vector Machine (SVM), Linear Regression, and Radial Basis Function network.ResultsSVM achieved a 0.89 coefficient of determination score with a wrapper feature selection. The results suggest a set of cortical features, located mostly in the parietal and temporal lobes, that show changes in MwA patients depending on aura complexity.ConclusionsThe SVM algorithm demonstrated the best potential in average MACS prediction when using a wrapper feature selection methodology. The proposed method achieved promising results in determining MwA complexity, which can provide a basis for future MwA studies and the development of MwA diagnosis and treatment.
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页数:12
相关论文
共 38 条
  • [1] Whole brain surface-based morphometry and tract-based spatial statistics in migraine with aura patients: difference between pure visual and complex auras
    Abagnale, Chiara
    Di Renzo, Antonio
    Sebastianelli, Gabriele
    Casillo, Francesco
    Tinelli, Emanuele
    Giuliani, Giada
    Tullo, Maria Giulia
    Serrao, Mariano
    Parisi, Vincenzo
    Fiorelli, Marco
    Caramia, Francesca
    Schoenen, Jean
    Di Piero, Vittorio
    Coppola, Gianluca
    [J]. FRONTIERS IN HUMAN NEUROSCIENCE, 2023, 17
  • [2] User's guide to correlation coefficients
    Akoglu, Haldun
    [J]. TURKISH JOURNAL OF EMERGENCY MEDICINE, 2018, 18 (03): : 91 - 93
  • [3] Support Vector Machines and Kernels for Computational Biology
    Ben-Hur, Asa
    Ong, Cheng Soon
    Sonnenburg, Soeren
    Schoelkopf, Bernhard
    Raetsch, Gunnar
    [J]. PLOS COMPUTATIONAL BIOLOGY, 2008, 4 (10)
  • [4] Sample size requirements for estimating Pearson, Kendall and Spearman correlations
    Bonett, DG
    Wright, TA
    [J]. PSYCHOMETRIKA, 2000, 65 (01) : 23 - 28
  • [5] Visual evoked potentials in subgroups of migraine with aura patients
    Coppola, Gianluca
    Bracaglia, Martina
    Di Lenola, Davide
    Di Lorenzo, Cherubino
    Serrao, Mariano
    Parisi, Vincenzo
    Di Renzo, Antonio
    Martelli, Francesco
    Fadda, Antonello
    Schoenen, Jean
    Pierelli, Francesco
    [J]. JOURNAL OF HEADACHE AND PAIN, 2015, 16
  • [6] An automated labeling system for subdividing the human cerebral cortex on MRI scans into gyral based regions of interest
    Desikan, Rahul S.
    Segonne, Florent
    Fischl, Bruce
    Quinn, Brian T.
    Dickerson, Bradford C.
    Blacker, Deborah
    Buckner, Randy L.
    Dale, Anders M.
    Maguire, R. Paul
    Hyman, Bradley T.
    Albert, Marilyn S.
    Killiany, Ronald J.
    [J]. NEUROIMAGE, 2006, 31 (03) : 968 - 980
  • [7] FreeSurfer
    Fischl, Bruce
    [J]. NEUROIMAGE, 2012, 62 (02) : 774 - 781
  • [8] A Biomarker for Discriminating Between Migraine With and Without Aura: Machine Learning on Functional Connectivity on Resting-State EEGs
    Frid, Alex
    Shor, Meirav
    Shifrin, Alla
    Yarnitsky, David
    Granovsky, Yelena
    [J]. ANNALS OF BIOMEDICAL ENGINEERING, 2020, 48 (01) : 403 - 412
  • [9] Groβ J., 2003, Lecture Notes in Statistics, P3
  • [10] Early alterations of cortical thickness and gyrification in migraine without aura: a retrospective MRI study in pediatric patients
    Guarnera, Alessia
    Bottino, Francesca
    Napolitano, Antonio
    Sforza, Giorgia
    Cappa, Marco
    Chioma, Laura
    Pasquini, Luca
    Rossi-Espagnet, Maria Camilla
    Lucignani, Giulia
    Figa-Talamanca, Lorenzo
    Carducci, Chiara
    Ruscitto, Claudia
    Valeriani, Massimiliano
    Longo, Daniela
    Papetti, Laura
    [J]. JOURNAL OF HEADACHE AND PAIN, 2021, 22 (01)