The long-term goal of the proposed work is to develop a tool to help diagnose and monitor movement disorders.
Due to increasing and aging world population, more people are living with these disorders. As there is already a
shortage of neurologists, and more specifically, movement disorder specialists that have the training to
adequately diagnose and manage these disorders, there is a large number of patients that are not receiving
optimal treatment. We propose to use a smartphone-based platform to assess the severity of symptoms that are
common across different movement disorders in order to achieve our long-term goal. To that end, the current
study proposes to tackle 4 specific aims. The first aim will be to develop a mobile application to
quantify common symptoms of movement disorders. We will develop a new mobile application that
will enable the quantification of symptom severity; namely rest tremor, postural tremor, intention tremor, kinetic
tremor, upper-limb coordination, bradykinesia, balance, gait, and cognitive impairments. The data collected
from the smartphone-embedded sensors will be transmitted to a secure server where data can be visualized and
analyzed. The second aim will be to collect data using the mobile application from healthy
individuals as well as individuals with different movement disorders. We will collect data from 30
healthy controls, 30 individuals with Essential tremor (ET), 30 individuals with Parkinson's disease (PD), 30
individuals with Huntington's disease (HD), 30 individuals with primary focal dystonia (PFD) of the upper-limb,
30 individuals with spinocerebellar ataxia (SCA, and 30 individuals with functional movement disorder (FMD).
This dataset will enable us to develop algorithms (Aim 3) that will be used to assess symptom severity and
differentiate the movement disorders according to the smartphone data. The third aim will be to develop
algorithms to estimate symptom severity and distinguish the different movement disorders
from one another. Using the data from the smartphone-embedded sensors, we will utilize machine learning
approaches to estimate symptom severity (i.e. tremor, bradykinesia, gait impairment, etc.). Then, based on the
symptom severity estimation as well as from features extracted from the sensor data, we will classify the subjects
in groups according to their clinical diagnosis. This will enable us to differentiate the selected movement
disorders. Finally, the fourth aim will be to assess the usability of the smartphone platform for
long-term monitoring of patients. Subjects of patients recruited for Aim 2 will be asked to use the
smartphone application at home for 8 weeks in order to determine compliance with its use and its stability over
time. This study will provide a novel tool to assess motor and non-motor symptoms that could be used in other
areas of research. It will provide a large database of movement, cognitive, demographic, and medical history data
of individuals with different movement disorders. Most importantly, it will help in the differentiation and
monitoring of movement disorders to improve the clinical management of individuals with these disorders.