Fast and robust parameter estimation for statistical partial volume models in brain MRI J Tohka, A Zijdenbos, A Evans Neuroimage 23 (1), 84-97, 2004 | 733 | 2004 |
Machine learning framework for early MRI-based Alzheimer's conversion prediction in MCI subjects E Moradi, A Pepe, C Gaser, H Huttunen, J Tohka, ... Neuroimage 104, 398-412, 2015 | 726 | 2015 |
Standardized evaluation of algorithms for computer-aided diagnosis of dementia based on structural MRI: the CADDementia challenge EE Bron, M Smits, WM Van Der Flier, H Vrenken, F Barkhof, P Scheltens, ... NeuroImage 111, 562-579, 2015 | 362 | 2015 |
Automatic independent component labeling for artifact removal in fMRI J Tohka, K Foerde, AR Aron, SM Tom, AW Toga, RA Poldrack Neuroimage 39 (3), 1227-1245, 2008 | 272 | 2008 |
Inter-subject correlation of brain hemodynamic responses during watching a movie: localization in space and frequency JP Kauppi, IP Jääskeläinen, M Sams, J Tohka Frontiers in neuroinformatics 4, 669, 2010 | 236 | 2010 |
Evaluation and comparison of current fetal ultrasound image segmentation methods for biometric measurements: a grand challenge S Rueda, S Fathima, CL Knight, M Yaqub, AT Papageorghiou, ... IEEE Transactions on medical imaging 33 (4), 797-813, 2013 | 189 | 2013 |
Deconvolution-based partial volume correction in Raclopride-PET and Monte Carlo comparison to MR-based method J Tohka, A Reilhac Neuroimage 39 (4), 1570-1584, 2008 | 181 | 2008 |
Rey's Auditory Verbal Learning Test scores can be predicted from whole brain MRI in Alzheimer's disease E Moradi, I Hallikainen, T Hänninen, J Tohka, ... NeuroImage: Clinical 13, 415-427, 2017 | 172 | 2017 |
Genetic algorithms for finite mixture model based voxel classification in neuroimaging J Tohka, E Krestyannikov, ID Dinov, AMK Graham, DW Shattuck, ... IEEE transactions on medical imaging 26 (5), 696-711, 2007 | 139 | 2007 |
PET-SORTEO: validation and development of database of simulated PET volumes A Reilhac, G Batan, C Michel, C Grova, J Tohka, DL Collins, N Costes, ... IEEE Transactions on Nuclear Science 52 (5), 1321-1328, 2005 | 102 | 2005 |
Transfer learning in magnetic resonance brain imaging: a systematic review JM Valverde, V Imani, A Abdollahzadeh, R De Feo, M Prakash, R Ciszek, ... Journal of imaging 7 (4), 66, 2021 | 98 | 2021 |
Inter-subject correlation in fMRI: method validation against stimulus-model based analysis J Pajula, JP Kauppi, J Tohka Public Library of Science 7 (8), e41196, 2012 | 97 | 2012 |
Partial volume effect modeling for segmentation and tissue classification of brain magnetic resonance images: A review J Tohka World journal of radiology 6 (11), 855, 2014 | 94 | 2014 |
Prediction of brain maturity based on cortical thickness at different spatial resolutions BS Khundrakpam, J Tohka, AC Evans, ... Neuroimage 111, 350-359, 2015 | 93 | 2015 |
Comparison of feature selection techniques in machine learning for anatomical brain MRI in dementia J Tohka, E Moradi, H Huttunen, ... Neuroinformatics 14, 279-296, 2016 | 92 | 2016 |
Predicting symptom severity in autism spectrum disorder based on cortical thickness measures in agglomerative data E Moradi, B Khundrakpam, JD Lewis, AC Evans, J Tohka Neuroimage 144, 128-141, 2017 | 87 | 2017 |
Evaluation of machine learning algorithms for health and wellness applications: A tutorial J Tohka, M Van Gils Computers in Biology and Medicine 132, 104324, 2021 | 86 | 2021 |
Brain MRI tissue classification based on local Markov random fields J Tohka, ID Dinov, DW Shattuck, AW Toga Magnetic resonance imaging 28 (4), 557-573, 2010 | 86 | 2010 |
A versatile software package for inter-subject correlation based analyses of fMRI JP Kauppi, J Pajula, J Tohka Frontiers in neuroinformatics 8, 2, 2014 | 84 | 2014 |
How many is enough? Effect of sample size in inter‐subject correlation analysis of fMRI J Pajula, J Tohka Computational intelligence and neuroscience 2016 (1), 2094601, 2016 | 75 | 2016 |