Literature DB >> 31286203

Towards computerized diagnosis of neurological stance disorders: data mining and machine learning of posturography and sway.

Seyed-Ahmad Ahmadi1,2, Gerome Vivar3,4, Johann Frei3,4, Sergej Nowoshilow5, Stanislav Bardins3, Thomas Brandt3, Siegbert Krafczyk3.   

Abstract

We perform classification, ranking and mapping of body sway parameters from static posturography data of patients using recent machine-learning and data-mining techniques. Body sway is measured in 293 individuals with the clinical diagnoses of acute unilateral vestibulopathy (AVS, n = 49), distal sensory polyneuropathy (PNP, n = 12), anterior lobe cerebellar atrophy (CA, n = 48), downbeat nystagmus syndrome (DN, n = 16), primary orthostatic tremor (OT, n = 25), Parkinson's disease (PD, n = 27), phobic postural vertigo (PPV n = 59) and healthy controls (HC, n = 57). We classify disorders and rank sway features using supervised machine learning. We compute a continuous, human-interpretable 2D map of stance disorders using t-stochastic neighborhood embedding (t-SNE). Classification of eight diagnoses yielded 82.7% accuracy [95% CI (80.9%, 84.5%)]. Five (CA, PPV, AVS, HC, OT) were classified with a mean sensitivity and specificity of 88.4% and 97.1%, while three (PD, PNP, and DN) achieved a mean sensitivity of 53.7%. The most discriminative stance condition was ranked as "standing on foam-rubber, eyes closed". Mapping of sway path features into 2D space revealed clear clusters among CA, PPV, AVS, HC and OT subjects. We confirm previous claims that machine learning can aid in classification of clinical sway patterns measured with static posturography. Given a standardized, long-term acquisition of quantitative patient databases, modern machine learning and data analysis techniques help in visualizing, understanding and utilizing high-dimensional sensor data from clinical routine.

Entities:  

Keywords:  Body sway; Machine learning; Neurological stance and gait disorders; Static posturography; Visualization

Mesh:

Year:  2019        PMID: 31286203     DOI: 10.1007/s00415-019-09458-y

Source DB:  PubMed          Journal:  J Neurol        ISSN: 0340-5354            Impact factor:   4.849


  5 in total

1.  Modern machine-learning can support diagnostic differentiation of central and peripheral acute vestibular disorders.

Authors:  Seyed-Ahmad Ahmadi; Gerome Vivar; Nassir Navab; Ken Möhwald; Andreas Maier; Hristo Hadzhikolev; Thomas Brandt; Eva Grill; Marianne Dieterich; Klaus Jahn; Andreas Zwergal
Journal:  J Neurol       Date:  2020-06-11       Impact factor: 4.849

2.  Quantitative assessment of postural instability in spinocerebellar ataxia type 3 patients.

Authors:  Xia-Hua Liu; Ying Li; Hao-Ling Xu; Arif Sikandar; Wei-Hong Lin; Gui-He Li; Xiao-Fen Li; Alimire Alimu; Sheng-Bin Yu; Xiang-Hui Ye; Ning Wang; Jun Ni; Wan-Jin Chen; Shi-Rui Gan
Journal:  Ann Clin Transl Neurol       Date:  2020-07-07       Impact factor: 4.511

3.  Incongruity of Geometric and Spectral Markers in the Assessment of Body Sway.

Authors:  Stefania Sozzi; Shashank Ghai; Marco Schieppati
Journal:  Front Neurol       Date:  2022-07-18       Impact factor: 4.086

4.  Internet-based vestibular rehabilitation versus standard care after acute onset vertigo: a study protocol for a randomized controlled trial.

Authors:  Solmaz Surano; Helena Grip; Fredrik Öhberg; Marcus Karlsson; Erik Faergemann; Maria Bjurman; Hugo Davidsson; Torbjörn Ledin; Ellen Lindell; Jan Mathé; Fredrik Tjernström; Tatjana Tomanovic; Gabriel Granåsen; Jonatan Salzer
Journal:  Trials       Date:  2022-06-16       Impact factor: 2.728

5.  Predictive value of neutrophil-to-lymphocyte ratio for the fatality of COVID-19 patients complicated with cardiovascular diseases and/or risk factors.

Authors:  Akinori Higaki; Hideki Okayama; Yoshito Homma; Takahide Sano; Takeshi Kitai; Taishi Yonetsu; Sho Torii; Shun Kohsaka; Shunsuke Kuroda; Koichi Node; Yuya Matsue; Shingo Matsumoto
Journal:  Sci Rep       Date:  2022-08-10       Impact factor: 4.996

  5 in total

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