Litcius/Paper detail

Early Alzheimer’s Disease Diagnosis Using Wearable Sensors and Multilevel Gait Assessment: A Machine Learning Ensemble Approach

Younghoon Jeon, Jaeyong Kang, Byeong C. Kim, Kun Ho Lee, Jong‐In Song, Jeonghwan Gwak

2023IEEE Sensors Journal44 citationsDOI

Abstract

Alzheimer’s disease (AD) is a progressive neurological disorder, and mild cognitive impairment (MCI) is a stage between cognitive normal (CN) and AD. Although timely diagnosis is the key to treatment, the conventional diagnostic methods make periodic diagnosis impossible due to various issues, such as pain and cost. Therefore, we propose a method for early diagnosing by focusing on gait, which is safe and efficient. Seven wearable devices with a built-in inertial measurement unit were used to collect gait data from 145 subjects, and seven gait experiment paradigms, including multilevel subtasks, were developed to clarify the characteristics of gait of each severity. Based on the acquired gait datasets, we proposed a machine learning (ML)-based classification model—an elimination method-based ensemble and oversampling model—which is applied to our proposed method. Experimental results show that our proposed model is effective in detecting the early stages of AD and demonstrate the potential of using an auxiliary diagnostic tool.

Topics & Concepts

GaitWearable computerGait analysisComputer scienceOversamplingArtificial intelligenceMachine learningEnsemble learningCognitionCognitive impairmentPhysical medicine and rehabilitationMedicinePsychologyNeuroscienceEmbedded systemComputer networkBandwidth (computing)Gait Recognition and AnalysisAnomaly Detection Techniques and ApplicationsHuman Pose and Action Recognition