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Generalized sleep decoding with basal ganglia signals in multiple movement disorders.

Authors :
Yin, Zixiao
Yin, Zixiao
Yu, Huiling
Yuan, Tianshuo
Smyth, Clay
Anjum, Md
Zhu, Guanyu
Ma, Ruoyu
Xu, Yichen
An, Qi
Gan, Yifei
Merk, Timon
Qin, Guofan
Xie, Hutao
Zhang, Ning
Wang, Chunxue
Jiang, Yin
Meng, Fangang
Yang, Anchao
Neumann, Wolf-Julian
Li, Luming
Zhang, Jianguo
Starr, Philip
Little, Simon
Yin, Zixiao
Yin, Zixiao
Yu, Huiling
Yuan, Tianshuo
Smyth, Clay
Anjum, Md
Zhu, Guanyu
Ma, Ruoyu
Xu, Yichen
An, Qi
Gan, Yifei
Merk, Timon
Qin, Guofan
Xie, Hutao
Zhang, Ning
Wang, Chunxue
Jiang, Yin
Meng, Fangang
Yang, Anchao
Neumann, Wolf-Julian
Li, Luming
Zhang, Jianguo
Starr, Philip
Little, Simon
Source :
npj Digital Medicine; vol 7, iss 1
Publication Year :
2024

Abstract

Sleep disturbances profoundly affect the quality of life in individuals with neurological disorders. Closed-loop deep brain stimulation (DBS) holds promise for alleviating sleep symptoms, however, this technique necessitates automated sleep stage decoding from intracranial signals. We leveraged overnight data from 121 patients with movement disorders (Parkinsons disease, Essential Tremor, Dystonia, Essential Tremor, Huntingtons disease, and Tourettes syndrome) in whom synchronized polysomnograms and basal ganglia local field potentials were recorded, to develop a generalized, multi-class, sleep specific decoder - BGOOSE. This generalized model achieved 85% average accuracy across patients and across disease conditions, even in the presence of recordings from different basal ganglia targets. Furthermore, we also investigated the role of electrocorticography on decoding performances and proposed an optimal decoding map, which was shown to facilitate channel selection for optimal model performances. BGOOSE emerges as a powerful tool for generalized sleep decoding, offering exciting potentials for the precision stimulation delivery of DBS and better management of sleep disturbances in movement disorders.

Details

Database :
OAIster
Journal :
npj Digital Medicine; vol 7, iss 1
Notes :
application/pdf, npj Digital Medicine vol 7, iss 1
Publication Type :
Electronic Resource
Accession number :
edsoai.on1449593784
Document Type :
Electronic Resource