| Literature DB >> 30035274 |
Dmitry Petrov1,2, Boris A Gutman1, Shih-Hua Julie Yu1, Theo G M van Erp3, Jessica A Turner4, Lianne Schmaal5,6, Dick Veltman6, Lei Wang7, Kathryn Alpert7, Dmitry Isaev1, Artemis Zavaliangos-Petropulu1, Christopher R K Ching1, Vince Calhoun8, David Glahn9, Theodore D Satterthwaite10, Ole Andreas Andreasen11, Stefan Borgwardt12, Fleur Howells13, Nynke Groenewold13, Aristotle Voineskos14, Joaquim Radua15,16,17,18, Steven G Potkin3, Benedicto Crespo-Facorro19,20, Diana Tordesillas-Gutiérrez19,20, Li Shen21, Irina Lebedeva22, Gianfranco Spalletta23, Gary Donohoe24, Peter Kochunov25, Pedro G P Rosa26,27, Anthony James28, Udo Dannlowski29, Bernhard T Baune30, André Aleman31, Ian H Gotlib32, Henrik Walter33, Martin Walter34,35,36, Jair C Soares37, Stefan Ehrlich38, Ruben C Gur10, N Trung Doan11, Ingrid Agartz11, Lars T Westlye11,39, Fabienne Harrisberger12, Anita Riecher-Rössler12, Anne Uhlmann13, Dan J Stein13, Erin W Dickie14, Edith Pomarol-Clotet15,16, Paola Fuentes-Claramonte15,16, Erick Jorge Canales-Rodríguez15,16,40, Raymond Salvador15,16, Alexander J Huang3, Roberto Roiz-Santiañez19,20, Shan Cong21, Alexander Tomyshev22, Fabrizio Piras23, Daniela Vecchio23, Nerisa Banaj23, Valentina Ciullo23, Elliot Hong25, Geraldo Busatto26,27, Marcus V Zanetti26,27, Mauricio H Serpa26,27, Simon Cervenka41, Sinead Kelly42, Dominik Grotegerd29, Matthew D Sacchet32, Ilya M Veer33, Meng Li34, Mon-Ju Wu37, Benson Irungu37, Esther Walton38,43, Paul M Thompson1.
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.Entities:
Keywords: machine learning; quality control; shape analysis
Year: 2017 PMID: 30035274 PMCID: PMC6049825 DOI: 10.1007/978-3-319-67389-9_43
Source DB: PubMed Journal: Mach Learn Med Imaging