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arxiv: 2005.11082 · v2 · pith:CEVAK2FQ · submitted 2020-05-22 · q-bio.QM · cs.LG

Tractometry-based Anomaly Detection for Single-subject White Matter Analysis

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classification q-bio.QM cs.LG
keywords analysismatterwhiteanomaliesanomalyautoencoderscasesclinically-heterogeneous
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There is an urgent need for a paradigm shift from group-wise comparisons to individual diagnosis in diffusion MRI (dMRI) to enable the analysis of rare cases and clinically-heterogeneous groups. Deep autoencoders have shown great potential to detect anomalies in neuroimaging data. We present a framework that operates on the manifold of white matter (WM) pathways to learn normative microstructural features, and discriminate those at genetic risk from controls in a paediatric population.

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