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Voice Analysis with Machine Learning: One Step Closer to an Objective Diagnosis of Essential Tremor

Antonio SuppaDepartment of Human Neurosciences Sapienza University of Rome Rome ItalyFrancesco AsciDepartment of Human Neurosciences Sapienza University of Rome Rome ItalyGiovanni SaggioDepartment of Electronic Engineering University of Rome Tor Vergata Rome ItalyPietro LeoDepartment of Electronic Engineering University of Rome Tor Vergata Rome ItalyZakarya ZarezadehDepartment of Electronic Engineering University of Rome Tor Vergata Rome ItalyGina FerrazzanoDepartment of Human Neurosciences Sapienza University of Rome Rome ItalyGiovanni RuoppoloDepartment of Sense Organs, Otorhinolaryngology Section Sapienza University of Rome Rome ItalyAlfredo BerardelliDepartment of Human Neurosciences Sapienza University of Rome Rome ItalyGiovanni CostantiniDepartment of Electronic Engineering University of Rome Tor Vergata Rome Italy
2021en
ABI

Аннотация

BACKGROUND: Patients with essential tremor have upper limb postural and action tremor often associated with voice tremor. The objective of this study was to objectively examine voice tremor and its response to symptomatic pharmacological treatment in patients with essential tremor using voice analysis consisting of power spectral analysis and machine learning. METHODS: We investigated 58 patients (24 men; mean age ± SD, 71.7 ± 9.2 years; range, 38-85 years) and 74 age- and sex-matched healthy subjects (20 men; mean age ± SD, 71.0 ± 12.4 years; range, 43-95 years). We recorded voice samples during sustained vowel emission using a high-definition audio recorder. Voice samples underwent sound signal analysis, including power spectral analysis and support vector machine classification. We compared voice recordings in patients with essential tremor who did and did not manifest clinically overt voice tremor and in patients who were and were not under the symptomatic effect of the best medical treatment. RESULTS: Power spectral analysis demonstrated a prominent oscillatory activity peak at 2-6 Hz in patients who manifested a clinically overt voice tremor. Voice analysis with support vector machine classifier objectively discriminated with high accuracy between controls and patients who did and did not manifest clinically overt voice tremor and between patients who were and were not under the symptomatic effect of the best medical treatment. CONCLUSIONS: In patients with essential tremor, voice tremor is characterized by abnormal oscillatory activity at 2-6 Hz. Voice analysis, including power spectral analysis and support vector machine classification, objectively detected voice tremor and its response to symptomatic pharmacological treatment in patients with essential tremor. © 2021 International Parkinson and Movement Disorder Society.

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