2020
DOI: 10.1073/pnas.2009165117
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A microstructural neural network biomarker for dystonia diagnosis identified by a DystoniaNet deep learning platform

Abstract: Isolated dystonia is a neurological disorder of heterogeneous pathophysiology, which causes involuntary muscle contractions leading to abnormal movements and postures. Its diagnosis is remarkably challenging due to the absence of a biomarker or gold standard diagnostic test. This leads to a low agreement between clinicians, with up to 50% of cases being misdiagnosed and diagnostic delays extending up to 10.1 y. We developed a deep learning algorithmic platform, DystoniaNet, to automatically identify and valida… Show more

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Cited by 32 publications
(30 citation statements)
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“…In addition, CD patients who can temporarily relieve dystonia using a sensory trick showed reduced resting connectivity of the SM network and increased cerebellar connectivity while imagining this trick ( 58 ). Thus, findings in focal dystonia are, to some extent, variable but limited to sensorimotor circuits, which has also been confirmed by multimodal studies ( 51 , 59 ).…”
Section: Diagnostic Processsupporting
confidence: 58%
“…In addition, CD patients who can temporarily relieve dystonia using a sensory trick showed reduced resting connectivity of the SM network and increased cerebellar connectivity while imagining this trick ( 58 ). Thus, findings in focal dystonia are, to some extent, variable but limited to sensorimotor circuits, which has also been confirmed by multimodal studies ( 51 , 59 ).…”
Section: Diagnostic Processsupporting
confidence: 58%
“…In the future, kinematic, neurophysiological, and imaging tools are likely to be available to assist decisions about diagnosis. 16 …”
Section: General Approachmentioning
confidence: 99%
“…In this Special Issue, Biase et al updated a dystonia classification algorithm based on phenomenology, which could be useful to movement disorder specialists [ 5 ]. Although recent developments in AI-based deep learning technology offer highly accurate diagnostic tools in neuroimaging [ 6 ], clinical phenomenology, mainly motor manifestations, remains the gold standard for diagnosing dystonia.…”
mentioning
confidence: 99%