Before leaving the house you most likely check to ensure you have your ID, your shoes and most importantly your smartphone. In the past decade American smartphone usage has grown over 50% according to a . Smartphones have become as commonplace as a wallet or car keys and Ńż¼§Ö±²„ State University researchers are taking advantage of this new commodity by using cell phone data to study individualsā behavioral patterns during the COVID 19 pandemic and link cell phone use behaviors to mental health.
Ruoming Jin, Ph.D., partnered with Deric Kenne, Ph.D., in an exploratory research effort to develop a computer learning framework that collects mobile sensor data and tracks participating smartphone usersā movements while keeping personal information private.
āWe have an interest in understanding college studentsā behavior and how they behaved during the pandemic as a representation of the overall population,ā said Jin.
The pilot-study is funded by a $150,000 grant from the National Science Foundation as well as funding from the University Research Council.
Jin, a professor in the Department of Computer Sciences in Ńż¼§Ö±²„ Stateās College of Arts and Sciences, explained that study participants will download an app allowing sensor-based metadata to be pulled and analyzed in the first stage, and in a second stage, the participants will help test the app which can predict their behavior and mental wellness through federated learning machine process, a process emphasized in privacy protection.
āIn the last few years thereās been a lot of interest in building a federated learning framework,ā Jin said, āwhich essentially allows every personās personalized data to be used in the learning framework without sharing all data to the cloud.ā
Jin explained that by using a federated learning framework, mobile data can be collected and interpreted without including personalized information. Study participantsā personal details will be protected while the metadata, things like location, screen time and sensor data, will contribute to the overall machine learning process.
āWe cannot see the content of what you really do, only the profile,ā Jin said.
Sensor data will be used to give researchers a sense of physical behaviors, whether an individual is sitting, standing or riding a bicycle. In terms of pandemic responses, it can be used to see how often the person is at home or how much time is spent on their phones.
The app will also prompt participants to fill out short surveys and complete self evaluations to gauge anxiety and mental health effects.
āThe app will periodically ask questions about what you are doing, and send surveys to learn the personās mental state,ā Jin said. āThose data points will help us to potentially link the personās behaviors to their mental health.ā
Jin explained that beyond the COVID-19 framework, the app could be developed as a potential mental health resource for students that would be specified to that individualsā physical behaviors and mental health responses.
Kenne, an associate professor in the College of Public Health, said the mental health component has the potential to act as an early intervention resource for students.
āIf weāve got students walking around with cell phones and we can detect certain levels of depression or anxiety, we can give the student feedback that there might be issues of depression creeping up,ā Kenne said. āDepression and anxiety is different for everyone, it can ebb and flow and goes in waves. If this works itās an opportunity to pick up on those things very early and be able to intervene if necessary.ā
Kenne explained that intervention from the app could look like a message sent from the app or possibly a peer-led care team that could reach out to students to prevent a mental health issue from becoming more severe.
āThis pilot study will help us work out kinks with the app; maybe students donāt respond to messaging through the app, so we can tweak things going forward,ā Kenne said. āI see years and years of research evolving from this initial study.ā
Kenne said the popularity of smartphone use among several generations opens a large demographic range for future studies.
āThere is such broad applicability with this technology. We are starting with the student population because itās convenient for us and itās important, but we potentially could be reaching populations from 10-years-old all the way to senior citizens,ā Kenne said. āEverybody could be part of this at some point.ā
This study is a collaboration with New Jersey Institute of Technology. Jin explains there will be students from both campuses contributing, and the study will involve three months of tracking sensor data.
For more information on Ńż¼§Ö±²„ Stateās Department of Computer Science visit: /cs
For more information on the Center for Public Policy & Health in Ńż¼§Ö±²„ State's College of Public Health visit: /mhsu