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(Referência obtida automaticamente do Web of Science, por meio da informação sobre o financiamento pela FAPESP e o número do processo correspondente, incluída na publicação pelos autores.)

A framework for quality control of corpus callosum segmentation in large-scale studies

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Autor(es):
Herrera, William Garcia [1] ; Pereira, Mariana [1] ; Bento, Mariana [2] ; Lapa, Aline Tamires [3] ; Appenzeller, Simone [3] ; Rittner, Leticia [1]
Número total de Autores: 6
Afiliação do(s) autor(es):
[1] Univ Estadual Campinas, Sch Elect & Comp Engn, Med Image Comp Lab MICLab, UNICAMP, Campinas - Brazil
[2] Univ Calgary, Hotchkiss Brain Inst, Radiol & Clin Neurosci, Calgary, AB - Canada
[3] Univ Estadual Campinas, Fac Med Sci, Rheumatol Dept, UNICAMP, Campinas - Brazil
Número total de Afiliações: 3
Tipo de documento: Artigo Científico
Fonte: JOURNAL OF NEUROSCIENCE METHODS; v. 334, MAR 15 2020.
Citações Web of Science: 0
Resumo

Background: The corpus callosum (CC) is the largest white matter structure in the brain, responsible for the interconnection of the brain hemispheres. Its segmentation is a required preliminary step for any posterior analysis, such as parcellation, registration, and feature extraction. In this context, the quality control (QC) of CC segmentation allows studies on large datasets with no human interaction, and the proper usage of available automated and semi-automated algorithms. New method: We propose a framework for QC of CC segmentation based on the shape signature, computed at 49 distinct resolutions. At each resolution, a support vector machine (SVM) classifier was trained, generating 49 individual classifiers. Then, a disagreement metric was used to cluster these individual classifiers. The final ensemble was constructed by selecting one representation from each cluster. Results: The proposed framework achieved an area under the curve (AUC) metric of 98.25% on the test set (207 subjects) employing an ensemble composed of 12 components. This ensemble outperformed all individual classifiers. Comparison with existing methods: To the best of our knowledge, this is the first approach to assess quality of CC segmentations on large datasets without the need for a ground-truth. Conclusions: The shape descriptor is robust and versatile, describing the segmentation at different resolutions. The selection of classifiers and the disagreement measure lead to an ensemble composed of high-quality and heterogeneous classifiers, ensuring an optimal trade-off between the ensemble size and high AUC. (AU)

Processo FAPESP: 13/07559-3 - Instituto Brasileiro de Neurociência e Neurotecnologia - BRAINN
Beneficiário:Fernando Cendes
Modalidade de apoio: Auxílio à Pesquisa - Centros de Pesquisa, Inovação e Difusão - CEPIDs