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Longitudinal Speech Biomarkers for Automated Alzheimer's Detection

Authors :
Massachusetts Institute of Technology. Auto-ID Laboratory
Massachusetts Institute of Technology. Department of Mechanical Engineering
Laguarta Soler, Jordi
Subirana-Vilanova, J. Brian
Massachusetts Institute of Technology. Auto-ID Laboratory
Massachusetts Institute of Technology. Department of Mechanical Engineering
Laguarta Soler, Jordi
Subirana-Vilanova, J. Brian
Source :
Frontiers
Publication Year :
2021

Abstract

We introduce a novel audio processing architecture, the Open Voice Brain Model (OVBM), improving detection accuracy for Alzheimer's (AD) longitudinal discrimination from spontaneous speech. We also outline the OVBM design methodology leading us to such architecture, which in general can incorporate multimodal biomarkers and target simultaneously several diseases and other AI tasks. Key in our methodology is the use of multiple biomarkers complementing each other, and when two of them uniquely identify different subjects in a target disease we say they are orthogonal. We illustrate the OBVM design methodology by introducing sixteen biomarkers, three of which are orthogonal, demonstrating simultaneous above state-of-the-art discrimination for two apparently unrelated diseases such as AD and COVID-19. Depending on the context, throughout the paper we use OVBM indistinctly to refer to the specific architecture or to the broader design methodology. Inspired by research conducted at the MIT Center for Brain Minds and Machines (CBMM), OVBM combines biomarker implementations of the four modules of intelligence: The brain OS chunks and overlaps audio samples and aggregates biomarker features from the sensory stream and cognitive core creating a multi-modal graph neural network of symbolic compositional models for the target task. In this paper we apply the OVBM design methodology to the automated diagnostic of Alzheimer's Dementia (AD) patients, achieving above state-of-the-art accuracy of 93.8% using only raw audio, while extracting a personalized subject saliency map designed to longitudinally track relative disease progression using multiple biomarkers, 16 in the reported AD task. The ultimate aim is to help medical practice by detecting onset and treatment impact so that intervention options can be longitudinally tested. Using the OBVM design methodology, we introduce a novel lung and respiratory tract biomarker created using 200,000+ cough samples to pre-train a model d

Details

Database :
OAIster
Journal :
Frontiers
Notes :
application/pdf
Publication Type :
Electronic Resource
Accession number :
edsoai.on1286404001
Document Type :
Electronic Resource