Predictive Analytics Using Smartphone Sensors for Depressive Episodes

03/24/2016
by   Taeheon Jeong, et al.
0

The behaviors of patients with depression are usually difficult to predict because the patients demonstrate the symptoms of a depressive episode without a warning at unexpected times. The goal of this research is to build algorithms that detect signals of such unusual moments so that doctors can be proactive in approaching already diagnosed patients before they fall in depression. Each patient is equipped with a smartphone with the capability to track its sensors. We first find the home location of a patient, which is then augmented with other sensor data to identify sleep patterns and select communication patterns. The algorithms require two to three weeks of training data to build standard patterns, which are considered normal behaviors; and then, the methods identify any anomalies in day-to-day data readings of sensors. Four smartphone sensors, including the accelerometer, the gyroscope, the location probe and the communication log probe are used for anomaly detection in sleeping and communication patterns.

READ FULL TEXT
research
03/13/2020

A report on personally identifiable sensor data from smartphone devices

An average smartphone is equipped with an abundance of sensors to provid...
research
06/22/2021

Detecting Anomalous User Behavior in Remote Patient Monitoring

The growth in Remote Patient Monitoring (RPM) services using wearable an...
research
12/15/2022

Anomaly Detection in Driving by Cluster Analysis Twice

Events deviating from normal traffic patterns in driving, anomalies, suc...
research
08/07/2020

Can Smartphone Co-locations Detect Friendship? It Depends How You Model It

We present a study to detect friendship, its strength, and its change fr...
research
09/02/2021

Combining Accelerometer and Gyroscope Data in Smartphone-Based Activity Recognition using Movelets

Objective: A patient's activity patterns can be informative about her/hi...
research
02/10/2018

Automatic Phone Slip Detection System

Mobile phones are becoming increasingly advanced and the latest ones are...
research
11/11/2020

Understanding College Students' Phone Call Behaviors Towards a Sustainable Mobile Health and Wellbeing Solution

During the transition from high school to on-campus college life, a stud...

Please sign up or login with your details

Forgot password? Click here to reset