Keyword search (4,163 papers available)

"Diagnosis" Keyword-tagged Publications:

Title Authors PubMed ID
1 Joint enhancement of automatic chest x-ray diagnosis and radiological gaze prediction with multistage cooperative learning Qiu Z; Rivaz H; Xiao Y; 40665596
ENCS
2 Microfluidic Liquid Biopsy Minimally Invasive Cancer Diagnosis by Nano-Plasmonic Label-Free Detection of Extracellular Vesicles: Review Neriya Hegade KP; Bhat RB; Packirisamy M; 40650129
ENCS
3 Alzheimer's early detection in post-acute COVID-19 syndrome: a systematic review and expert consensus on preclinical assessments Vandersteen C; Plonka A; Manera V; Sawchuk K; Lafontaine C; Galery K; Rouaud O; Bengaied N; Launay C; Guérin O; Robert P; Allali G; Beauchet O; Gros A; 37416323
CONCORDIA
4 Primary and Secondary Progressive Aphasia in Posterior Cortical Atrophy Brodeur C; Belley É; Deschênes LM; Enriquez-Rosas A; Hubert M; Guimond A; Bilodeau J; Soucy JP; Macoir J; 35629330
IMAGING
5 X-Vectors: New Quantitative Biomarkers for Early Parkinson's Disease Detection From Speech Jeancolas L; Petrovska-Delacrétaz D; Mangone G; Benkelfat BE; Corvol JC; Vidailhet M; Lehéricy S; Benali H; 33679361
PERFORM
6 Hybrid multi-mode machine learning-based fault diagnosis strategies with application to aircraft gas turbine engines. Shen Y, Khorasani K 32673847
ENCS
7 The Comprehensive Assessment of Neurodegeneration and Dementia: Canadian Cohort Study. Chertkow H, Borrie M, Whitehead V, Black SE, Feldman HH, Gauthier S, Hogan DB, Masellis M, McGilton K, Rockwood K, Tierney MC, Andrew M, Hsiung GR, Camicioli R, Smith EE, Fogarty J, Lindsay J, Best S, Evans A, Das S, Mohaddes Z, Pilon R, Poirier J, Phillips NA, MacNamara E, Dixon RA, Duchesne S, MacKenzie I, Rylett RJ 31309917
PSYCHOLOGY
8 Deep model integrated with data correlation analysis for multiple intermittent faults diagnosis. Yang J, Xie G, Yang Y, Zhang Y, Liu W 31174854
ENCS

 

Title:X-Vectors: New Quantitative Biomarkers for Early Parkinson's Disease Detection From Speech
Authors:Jeancolas LPetrovska-Delacrétaz DMangone GBenkelfat BECorvol JCVidailhet MLehéricy SBenali H
Link:https://pubmed.ncbi.nlm.nih.gov/33679361/
DOI:10.3389/fninf.2021.578369
Publication:Frontiers in neuroinformatics
Keywords:MFCCParkinson's diseaseautomatic detectiondeep neural networksearly detectiontelediagnosisvoice analysisx-vectors
PMID:33679361 Category: Date Added:2021-03-08
Dept Affiliation: PERFORM
1 Paris Brain Institute-ICM, Centre de NeuroImagerie de Recherche-CENIR, Paris, France.
2 Laboratoire SAMOVAR, Télécom SudParis, Institut Polytechnique de Paris, Palaiseau, France.
3 Sorbonne University, Inserm, CNRS, Paris Brain Institute-ICM, Paris, France.
4 Assistance Publique Hôpitaux de Paris, Hôpital Pitié-Salpêtrière, Department of Neurology, Clinical Investigation Center for Neurosciences, Paris, France.
5 Assistance Publique Hôpitaux de Paris, Hôpital Pitié-Salpêtrière, Department of Neuroradiology, Paris, France.
6 Department of Electrical & Computer Engineering, PERFORM Center, Concordia University, Montreal, QC, Canada.

Description:

Many articles have used voice analysis to detect Parkinson's disease (PD), but few have focused on the early stages of the disease and the gender effect. In this article, we have adapted the latest speaker recognition system, called x-vectors, in order to detect PD at an early stage using voice analysis. X-vectors are embeddings extracted from Deep Neural Networks (DNNs), which provide robust speaker representations and improve speaker recognition when large amounts of training data are used. Our goal was to assess whether, in the context of early PD detection, this technique would outperform the more standard classifier MFCC-GMM (Mel-Frequency Cepstral Coefficients-Gaussian Mixture Model) and, if so, under which conditions. We recorded 221 French speakers (recently diagnosed PD subjects and healthy controls) with a high-quality microphone and via the telephone network. Men and women were analyzed separately in order to have more precise models and to assess a possible gender effect. Several experimental and methodological aspects were tested in order to analyze their impacts on classification performance. We assessed the impact of the audio segment durations, data augmentation, type of dataset used for the neural network training, kind of speech tasks, and back-end analyses. X-vectors technique provided better classification performances than MFCC-GMM for the text-independent tasks, and seemed to be particularly suited for the early detection of PD in women (7-15% improvement). This result was observed for both recording types (high-quality microphone and telephone).





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