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Machine Learning for Large-Scale Quality Control of 3D Shape Models in Neuroimaging

Authors :
Petrov, Dmitry
Gutman, Boris A.
Shih-Hua
Yu
van Erp, Theo G. M.
Turner, Jessica A.
Schmaal, Lianne
Veltman, Dick
Wang, Lei
Alpert, Kathryn
Isaev, Dmitry
Zavaliangos-Petropulu, Artemis
Ching, Christopher R. K.
Calhoun, Vince
Glahn, David
Satterthwaite, Theodore D.
Andreasen, Ole Andreas
Borgwardt, Stefan
Howells, Fleur
Groenewold, Nynke
Voineskos, Aristotle
Radua, Joaquim
Potkin, Steven G.
Crespo-Facorro, Benedicto
Tordesillas-Gutierrez, Diana
Shen, Li
Lebedeva, Irina
Spalletta, Gianfranco
Donohoe, Gary
Kochunov, Peter
Rosa, Pedro G. P.
James, Anthony
Dannlowski, Udo
Baune, Bernhard T.
Aleman, Andre
Gotlib, Ian H.
Walter, Henrik
Walter, Martin
Soares, Jair C.
Ehrlich, Stefan
Gur, Ruben C.
Doan, N. Trung
Agartz, Ingrid
Westlye, Lars T.
Harrisberger, Fabienne
Riecher-Rossler, Anita
Uhlmann, Anne
Stein, Dan J.
Dickie, Erin W.
Pomarol-Clotet, Edith
Fuentes-Claramonte, Paola
Canales-Rodriguez, Erick Jorge
Salvador, Raymond
Huang, Alexander J.
Roiz-Santianez, Roberto
Cong, Shan
Tomyshev, Alexander
Piras, Fabrizio
Vecchio, Daniela
Banaj, Nerisa
Ciullo, Valentina
Hong, Elliot
Busatto, Geraldo
Zanetti, Marcus V.
Serpa, Mauricio H.
Cervenka, Simon
Kelly, Sinead
Grotegerd, Dominik
Sacchet, Matthew D.
Veer, Ilya M.
Li, Meng
Wu, Mon-Ju
Irungu, Benson
Walton, Esther
Thompson, Paul M.
Publication Year :
2017

Abstract

As very large studies of complex neuroimaging phenotypes become more common, human quality assessment of MRI-derived data remains one of the last major bottlenecks. Few attempts have so far been made to address this issue with machine learning. In this work, we optimize predictive models of quality for meshes representing deep brain structure shapes. We use standard vertex-wise and global shape features computed homologously across 19 cohorts and over 7500 human-rated subjects, training kernelized Support Vector Machine and Gradient Boosted Decision Trees classifiers to detect meshes of failing quality. Our models generalize across datasets and diseases, reducing human workload by 30-70\%, or equivalently hundreds of human rater hours for datasets of comparable size, with recall rates approaching inter-rater reliability.<br />Comment: Arxiv version of the MICCAI 2017 Machine Learning in Medical Imaging workshop paper

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1707.06353
Document Type :
Working Paper