Depression Diagnosis and Forecast based on Mobile Phone Sensor Data
- URL: http://arxiv.org/abs/2205.07861v1
- Date: Tue, 10 May 2022 10:05:36 GMT
- Title: Depression Diagnosis and Forecast based on Mobile Phone Sensor Data
- Authors: Xiangheng He, Andreas Triantafyllopoulos, Alexander Kathan, Manuel
Milling, Tianhao Yan, Srividya Tirunellai Rajamani, Ludwig K\"uster, Mathias
Harrer, Elena Heber, Inga Grossmann, David D. Ebert, Bj\"orn W. Schuller
- Abstract summary: Previous studies have shown the correlation between sensor data collected from mobile phones and human depression states.
In this work, we extract four types of passive features from mobile phone data, including phone call, phone usage, user activity, and GPS features.
We implement a long short-term memory (LSTM) network in a subject-independent 10-fold cross-validation setup to model both a diagnostic and a forecasting tasks.
- Score: 47.93070579578704
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Previous studies have shown the correlation between sensor data collected
from mobile phones and human depression states. Compared to the traditional
self-assessment questionnaires, the passive data collected from mobile phones
is easier to access and less time-consuming. In particular, passive mobile
phone data can be collected on a flexible time interval, thus detecting
moment-by-moment psychological changes and helping achieve earlier
interventions. Moreover, while previous studies mainly focused on depression
diagnosis using mobile phone data, depression forecasting has not received
sufficient attention. In this work, we extract four types of passive features
from mobile phone data, including phone call, phone usage, user activity, and
GPS features. We implement a long short-term memory (LSTM) network in a
subject-independent 10-fold cross-validation setup to model both a diagnostic
and a forecasting tasks. Experimental results show that the forecasting task
achieves comparable results with the diagnostic task, which indicates the
possibility of forecasting depression from mobile phone sensor data. Our model
achieves an accuracy of 77.0 % for major depression forecasting (binary), an
accuracy of 53.7 % for depression severity forecasting (5 classes), and a best
RMSE score of 4.094 (PHQ-9, range from 0 to 27).
Related papers
- Integrating Wearable Sensor Data and Self-reported Diaries for Personalized Affect Forecasting [2.36325543943271]
We propose a multimodal deep learning model for affect status forecasting.
This model combines a transformer encoder with a pre-trained language model, facilitating the integrated analysis of objective metrics and self-reported diaries.
Our results demonstrate that the proposed model achieves predictive accuracy of 82.50% for positive affect and 82.76% for negative affect, a full week in advance.
arXiv Detail & Related papers (2024-03-16T17:24:38Z) - Personality Trait Inference Via Mobile Phone Sensors: A Machine Learning
Approach [0.0]
This study provides evidence that personality can be reliably predicted from activity data collected through mobile phone sensors.
We were able to predict users' personality up to a 0.78 F1 score on a two class problem.
We show how a combination of rich behavioral data obtained with smartphone sensing and the use of machine learning techniques can help to advance personality research.
arXiv Detail & Related papers (2024-01-18T13:18:51Z) - The Relationship Between Speech Features Changes When You Get Depressed:
Feature Correlations for Improving Speed and Performance of Depression
Detection [69.88072583383085]
This work shows that depression changes the correlation between features extracted from speech.
Using such an insight can improve the training speed and performance of depression detectors based on SVMs and LSTMs.
arXiv Detail & Related papers (2023-07-06T09:54:35Z) - Deep Temporal Modelling of Clinical Depression through Social Media Text [1.513693945164213]
We develop a model to detect user-level clinical depression based on a user's temporal social media posts.
Our model uses a Depression Detection (DSD) classifier, which is trained on the largest existing samples of clinician annotated tweets for clinical depression symptoms.
arXiv Detail & Related papers (2022-10-28T18:31:52Z) - Remote Medication Status Prediction for Individuals with Parkinson's
Disease using Time-series Data from Smartphones [75.23250968928578]
We present a method for predicting the medication status of Parkinson's disease patients using the public mPower dataset.
The proposed method shows promising results in predicting three medication statuses objectively.
arXiv Detail & Related papers (2022-07-26T02:08:08Z) - Self-supervised Pretraining and Transfer Learning Enable Flu and
COVID-19 Predictions in Small Mobile Sensing Datasets [10.50818746268231]
Mobile sensing data offer unparalleled opportunity to quantify and act upon unmeasurable behavioral changes.
Unlike in natural language processing and computer vision, deep representation learning has yet to broadly impact this domain.
This is due to unique challenges in the behavioral health domain, including very small datasets.
arXiv Detail & Related papers (2022-05-26T20:23:55Z) - Journaling Data for Daily PHQ-2 Depression Prediction and Forecasting [47.93070579578704]
We explore the potential of using actively-collected data to predict and forecast daily PHQ-2 scores on a newly-collected longitudinal dataset.
We obtain a best MAE of 1.417 for daily prediction of PHQ-2 scores, which specifically in the used dataset have a range of 0 to 12.
This illustrates the additive value that can be obtained by incorporating actively-collected data in a depression monitoring application.
arXiv Detail & Related papers (2022-05-06T17:47:05Z) - Learning Language and Multimodal Privacy-Preserving Markers of Mood from
Mobile Data [74.60507696087966]
Mental health conditions remain underdiagnosed even in countries with common access to advanced medical care.
One promising data source to help monitor human behavior is daily smartphone usage.
We study behavioral markers of daily mood using a recent dataset of mobile behaviors from adolescent populations at high risk of suicidal behaviors.
arXiv Detail & Related papers (2021-06-24T17:46:03Z) - Deep Multi-task Learning for Depression Detection and Prediction in
Longitudinal Data [50.02223091927777]
Depression is among the most prevalent mental disorders, affecting millions of people of all ages globally.
Machine learning techniques have shown effective in enabling automated detection and prediction of depression for early intervention and treatment.
We introduce a novel deep multi-task recurrent neural network to tackle this challenge, in which depression classification is jointly optimized with two auxiliary tasks.
arXiv Detail & Related papers (2020-12-05T05:14:14Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.