Title :
Analysis of postural kinetics data using Artificial Neural Networks in Alzheimer´s Disease
Author :
Ferreira, J. A. ; Gago, M.F. ; Fernandes, Vitor ; Silva, Hugo ; Sousa, Nuno ; Rocha, Leonardo ; Bicho, Estela
Author_Institution :
Center ALGORITMI, Univ. of Minho, Braga, Portugal
Abstract :
Inertial measurement Units (IMU) (accelerometers and gyroscopes), placed in strategic parts of the human body, are a growing field on kinetic posture and imbalance study in Alzheimer´s Disease (AD). On the other hand, Artificial Neural Network (ANN) are a powerful statistical tool used on pattern recognition on big data such as IMU kinetic records. Still, on ANN research, issues like the best number of hidden layers and the best number of neurons in each hidden layer remain open. In our study we developed a software tool of Multilayer Perceptrons ANN analysis (Back Propagation and Scale Gradient Conjugate training algorithms) that automatically tests different configurations for the ANNs on the diagnosis of Alzheimer´s disease. Analysis was performed primarily on all 159 variables, biometrics and IMU records of 21 AD patients and 21 healthy subjects exposed to seven different tasks with increasing postural stress, and posteriorly on selected data derived from Mann-Whitney analysis. Multilayer Perceptron ANN reached a performance of 95% on the diagnosis of AD, proving to be a potential useful clinical tool.
Keywords :
Big Data; accelerometers; backpropagation; biomechanics; biomedical measurement; conjugate gradient methods; diseases; gyroscopes; inertial systems; medical computing; multilayer perceptrons; patient diagnosis; pattern recognition; statistics; Alzheimer´s disease diagnosis; Back Propagation; IMU kinetic records; IMU records; Mann-Whitney analysis; Multilayer Perceptron ANN analysis; Scale Gradient Conjugate training algorithms; accelerometers; artificial neural networks; big data; biometrics; clinical tool; gyroscopes; hidden layers; human body; imbalance study; inertial measurement Units; kinetic posture; neurons; pattern recognition; postural kinetics data; postural stress; statistical tool; Alzheimer´s disease; Artificial neural networks; Kinetic theory; Neurons; Stability analysis; Training; Alzheimer´s disease; Artificial Neural Network; Inertia Measurement Units; Postural Stability;
Conference_Titel :
Medical Measurements and Applications (MeMeA), 2014 IEEE International Symposium on
Conference_Location :
Lisboa
Print_ISBN :
978-1-4799-2920-7
DOI :
10.1109/MeMeA.2014.6860040