Improved automatic identification of isolated rapid eye movement sleep behavior disorder with a 3D time‐of‐flight camera
Background and purpose Automatic 3D video analysis of the lower body during rapid eye movement (REM) sleep has been recently proposed as a novel tool for identifying people with isolated REM sleep behavior disorder (iRBD), but, so far, it has not been validated on unseen subjects. This study aims at...
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| Published in | European journal of neurology Vol. 30; no. 8; pp. 2206 - 2214 |
|---|---|
| Main Authors | , , , , , , , , , , |
| Format | Journal Article |
| Language | English |
| Published |
England
John Wiley & Sons, Inc
01.08.2023
John Wiley and Sons Inc |
| Subjects | |
| Online Access | Get full text |
| ISSN | 1351-5101 1468-1331 1468-1331 |
| DOI | 10.1111/ene.15822 |
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| Abstract | Background and purpose
Automatic 3D video analysis of the lower body during rapid eye movement (REM) sleep has been recently proposed as a novel tool for identifying people with isolated REM sleep behavior disorder (iRBD), but, so far, it has not been validated on unseen subjects. This study aims at validating this technology in a large cohort and at improving its performances by also including an analysis of movements in the head, hands and upper body.
Methods
Fifty‐three people with iRBD and 128 people without RBD (of whom 89 had sleep disorders considered RBD differential diagnoses) were included in the study. An automatic algorithm identified movements from 3D videos during REM sleep in four regions of interest (ROIs): head, hands, upper body and lower body. The movements were divided into categories according to duration: short (0.1–2 s), medium (2–15 s) and long (15–300 s). For each ROI and duration range, features were obtained from the identified movements. Logistic regression models using as predictors the features from one single ROI or a combination of ROIs were trained and tested in a 10‐runs 10‐fold cross‐validation scheme on the task of differentiating people with iRBD from people without RBD.
Results
The best differentiation was achieved using short movements in all four ROIs (test accuracy 0.866 ± 0.007, test F1 score = 0.783 ± 0.010). Single group analyses showed that people with iRBD were distinguished successfully from subjects with RBD differential diagnoses.
Conclusions
Automatic 3D video analysis might be implemented in clinical routine as a supportive screening tool for identifying people with RBD. |
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| AbstractList | Background and purpose
Automatic 3D video analysis of the lower body during rapid eye movement (REM) sleep has been recently proposed as a novel tool for identifying people with isolated REM sleep behavior disorder (iRBD), but, so far, it has not been validated on unseen subjects. This study aims at validating this technology in a large cohort and at improving its performances by also including an analysis of movements in the head, hands and upper body.
Methods
Fifty‐three people with iRBD and 128 people without RBD (of whom 89 had sleep disorders considered RBD differential diagnoses) were included in the study. An automatic algorithm identified movements from 3D videos during REM sleep in four regions of interest (ROIs): head, hands, upper body and lower body. The movements were divided into categories according to duration: short (0.1–2 s), medium (2–15 s) and long (15–300 s). For each ROI and duration range, features were obtained from the identified movements. Logistic regression models using as predictors the features from one single ROI or a combination of ROIs were trained and tested in a 10‐runs 10‐fold cross‐validation scheme on the task of differentiating people with iRBD from people without RBD.
Results
The best differentiation was achieved using short movements in all four ROIs (test accuracy 0.866 ± 0.007, test F1 score = 0.783 ± 0.010). Single group analyses showed that people with iRBD were distinguished successfully from subjects with RBD differential diagnoses.
Conclusions
Automatic 3D video analysis might be implemented in clinical routine as a supportive screening tool for identifying people with RBD. Automatic 3D video analysis of the lower body during rapid eye movement (REM) sleep has been recently proposed as a novel tool for identifying people with isolated REM sleep behavior disorder (iRBD), but, so far, it has not been validated on unseen subjects. This study aims at validating this technology in a large cohort and at improving its performances by also including an analysis of movements in the head, hands and upper body.BACKGROUND AND PURPOSEAutomatic 3D video analysis of the lower body during rapid eye movement (REM) sleep has been recently proposed as a novel tool for identifying people with isolated REM sleep behavior disorder (iRBD), but, so far, it has not been validated on unseen subjects. This study aims at validating this technology in a large cohort and at improving its performances by also including an analysis of movements in the head, hands and upper body.Fifty-three people with iRBD and 128 people without RBD (of whom 89 had sleep disorders considered RBD differential diagnoses) were included in the study. An automatic algorithm identified movements from 3D videos during REM sleep in four regions of interest (ROIs): head, hands, upper body and lower body. The movements were divided into categories according to duration: short (0.1-2 s), medium (2-15 s) and long (15-300 s). For each ROI and duration range, features were obtained from the identified movements. Logistic regression models using as predictors the features from one single ROI or a combination of ROIs were trained and tested in a 10-runs 10-fold cross-validation scheme on the task of differentiating people with iRBD from people without RBD.METHODSFifty-three people with iRBD and 128 people without RBD (of whom 89 had sleep disorders considered RBD differential diagnoses) were included in the study. An automatic algorithm identified movements from 3D videos during REM sleep in four regions of interest (ROIs): head, hands, upper body and lower body. The movements were divided into categories according to duration: short (0.1-2 s), medium (2-15 s) and long (15-300 s). For each ROI and duration range, features were obtained from the identified movements. Logistic regression models using as predictors the features from one single ROI or a combination of ROIs were trained and tested in a 10-runs 10-fold cross-validation scheme on the task of differentiating people with iRBD from people without RBD.The best differentiation was achieved using short movements in all four ROIs (test accuracy 0.866 ± 0.007, test F1 score = 0.783 ± 0.010). Single group analyses showed that people with iRBD were distinguished successfully from subjects with RBD differential diagnoses.RESULTSThe best differentiation was achieved using short movements in all four ROIs (test accuracy 0.866 ± 0.007, test F1 score = 0.783 ± 0.010). Single group analyses showed that people with iRBD were distinguished successfully from subjects with RBD differential diagnoses.Automatic 3D video analysis might be implemented in clinical routine as a supportive screening tool for identifying people with RBD.CONCLUSIONSAutomatic 3D video analysis might be implemented in clinical routine as a supportive screening tool for identifying people with RBD. Automatic 3D video analysis of the lower body during rapid eye movement (REM) sleep has been recently proposed as a novel tool for identifying people with isolated REM sleep behavior disorder (iRBD), but, so far, it has not been validated on unseen subjects. This study aims at validating this technology in a large cohort and at improving its performances by also including an analysis of movements in the head, hands and upper body. Fifty-three people with iRBD and 128 people without RBD (of whom 89 had sleep disorders considered RBD differential diagnoses) were included in the study. An automatic algorithm identified movements from 3D videos during REM sleep in four regions of interest (ROIs): head, hands, upper body and lower body. The movements were divided into categories according to duration: short (0.1-2 s), medium (2-15 s) and long (15-300 s). For each ROI and duration range, features were obtained from the identified movements. Logistic regression models using as predictors the features from one single ROI or a combination of ROIs were trained and tested in a 10-runs 10-fold cross-validation scheme on the task of differentiating people with iRBD from people without RBD. The best differentiation was achieved using short movements in all four ROIs (test accuracy 0.866 ± 0.007, test F1 score = 0.783 ± 0.010). Single group analyses showed that people with iRBD were distinguished successfully from subjects with RBD differential diagnoses. Automatic 3D video analysis might be implemented in clinical routine as a supportive screening tool for identifying people with RBD. Background and purposeAutomatic 3D video analysis of the lower body during rapid eye movement (REM) sleep has been recently proposed as a novel tool for identifying people with isolated REM sleep behavior disorder (iRBD), but, so far, it has not been validated on unseen subjects. This study aims at validating this technology in a large cohort and at improving its performances by also including an analysis of movements in the head, hands and upper body.MethodsFifty‐three people with iRBD and 128 people without RBD (of whom 89 had sleep disorders considered RBD differential diagnoses) were included in the study. An automatic algorithm identified movements from 3D videos during REM sleep in four regions of interest (ROIs): head, hands, upper body and lower body. The movements were divided into categories according to duration: short (0.1–2 s), medium (2–15 s) and long (15–300 s). For each ROI and duration range, features were obtained from the identified movements. Logistic regression models using as predictors the features from one single ROI or a combination of ROIs were trained and tested in a 10‐runs 10‐fold cross‐validation scheme on the task of differentiating people with iRBD from people without RBD.ResultsThe best differentiation was achieved using short movements in all four ROIs (test accuracy 0.866 ± 0.007, test F1 score = 0.783 ± 0.010). Single group analyses showed that people with iRBD were distinguished successfully from subjects with RBD differential diagnoses.ConclusionsAutomatic 3D video analysis might be implemented in clinical routine as a supportive screening tool for identifying people with RBD. |
| Author | Högl, Birgit Heidbreder, Anna Ruzicka, Laurenz Brandauer, Elisabeth Garn, Heinrich Kohn, Bernhard Bergmann, Melanie Cesari, Matteo Holzknecht, Evi Ibrahim, Abubaker Stefani, Ambra |
| AuthorAffiliation | 1 Department of Neurology Medical University of Innsbruck Innsbruck Austria 2 Competence Unit Sensing and Vision Solutions AIT Austrian Institute of Technology GmbH Vienna Austria |
| AuthorAffiliation_xml | – name: 1 Department of Neurology Medical University of Innsbruck Innsbruck Austria – name: 2 Competence Unit Sensing and Vision Solutions AIT Austrian Institute of Technology GmbH Vienna Austria |
| Author_xml | – sequence: 1 givenname: Matteo orcidid: 0000-0001-6554-1033 surname: Cesari fullname: Cesari, Matteo organization: Medical University of Innsbruck – sequence: 2 givenname: Laurenz orcidid: 0000-0002-0823-9601 surname: Ruzicka fullname: Ruzicka, Laurenz organization: AIT Austrian Institute of Technology GmbH – sequence: 3 givenname: Birgit orcidid: 0000-0003-1894-7641 surname: Högl fullname: Högl, Birgit organization: Medical University of Innsbruck – sequence: 4 givenname: Abubaker surname: Ibrahim fullname: Ibrahim, Abubaker organization: Medical University of Innsbruck – sequence: 5 givenname: Evi surname: Holzknecht fullname: Holzknecht, Evi organization: Medical University of Innsbruck – sequence: 6 givenname: Anna surname: Heidbreder fullname: Heidbreder, Anna organization: Medical University of Innsbruck – sequence: 7 givenname: Melanie surname: Bergmann fullname: Bergmann, Melanie organization: Medical University of Innsbruck – sequence: 8 givenname: Elisabeth surname: Brandauer fullname: Brandauer, Elisabeth organization: Medical University of Innsbruck – sequence: 9 givenname: Heinrich surname: Garn fullname: Garn, Heinrich organization: AIT Austrian Institute of Technology GmbH – sequence: 10 givenname: Bernhard surname: Kohn fullname: Kohn, Bernhard organization: AIT Austrian Institute of Technology GmbH – sequence: 11 givenname: Ambra orcidid: 0000-0003-4259-8824 surname: Stefani fullname: Stefani, Ambra email: ambra.stefani@i‐med.ac.at organization: Medical University of Innsbruck |
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| Snippet | Background and purpose
Automatic 3D video analysis of the lower body during rapid eye movement (REM) sleep has been recently proposed as a novel tool for... Automatic 3D video analysis of the lower body during rapid eye movement (REM) sleep has been recently proposed as a novel tool for identifying people with... Background and purposeAutomatic 3D video analysis of the lower body during rapid eye movement (REM) sleep has been recently proposed as a novel tool for... |
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| SubjectTerms | Algorithms alpha‐synucleinopathy Behavior disorders computerized method Eye movements Humans Movement nearable sensor Original Polysomnography prodromal Regression analysis Regression models REM sleep REM Sleep Behavior Disorder - diagnosis Sleep Sleep Disorders Sleep, REM upper extremities |
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| Title | Improved automatic identification of isolated rapid eye movement sleep behavior disorder with a 3D time‐of‐flight camera |
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