Smartphones could help monitor mental health by recording ambient sounds: 做厙TV researchers
A multidisciplinary research team from the University of Toronto is looking at the possibility of using smartphones to monitor certain aspects of mental health.
By recording short bursts of ambient noise and mapping that audio over time, the team found that keeping a regular daily routine was negatively correlated with subjects self-reporting a symptom of depression.
The team is led by Daniel Di Matteo, a PhD candidate in the Faculty of Applied Science & Engineering who is supervised by Professor Jonathan Rose in the Edward S. Rogers Sr. department of electrical and computer engineering and psychiatrist Martin Katzman of Torontos S.T.A.R.T. clinic for mood and anxiety disorders. Their new app turns on a smartphones microphone for 15 seconds every 5 minutes. The team installed the app on the phones of 112 volunteer subjects to record ambient noise over a two-week period.
The team then extracted the average volume of noise for short, discrete durations. When plotted over time, the volume data shows peaks and troughs like a wave whose regularity can be quantified.
To achieve a measurement of regularity this way, by means of ambient noise, has not been done before.
Its well known though not perfectly understood that theres a connection between mental health and regularity in your days, says Di Matteo.
This regularity measurement is a statistic, like blood pressure might be in a medical study. We looked for a relationship between this statistic and the subjects mental health questionnaire scores.
The findings of this explorative study, the first of three, were .
The driving force behind the research is to gather and objectively process passive, continuous data to compare alongside a broad range of symptoms from social anxiety disorder, generalized anxiety disorder, depression and general impairment.
Consider how mental health monitoring currently works, says Rose. Patients visit their therapist every week or so by going to a clinic or office. The patient chooses how to present themselves and the therapist interprets what they hear.
But with a smartphone in every backpack, pocket or purse these days, theres an opportunity to gather data far more frequently. And because intermittent recording goes unnoticed, the data-gathering is passive so the act of measuring isnt changing whats being measured.
This visualization shows a subjects environmental audio volume data over the course of a week.
One of the challenges for an observational study like this as with many similar studies in this field is managing privacy protections.
The research ethics board set limitations on how the team could use the audio. They couldnt listen to it, nor could they keep it for longer than a few weeks; any discernible words had to be stored in isolation so that conversations couldnt be recreated.
It has long been known that the presence or absence of voices is associated with depression. A second study, currently in review, considers this word-based data while a third will look at the predictive potential of an app that includes data for location, on/off screen activity and motion detection.
Building a medical model of mental health based on smartphone data could be a valuable asset for the field.
When someones going into depression they just kind of fade away, says Rose. Imagine an app with the capability to notify a spouse or a parent when this happens. Imagine one that could more finely track the efficacy of a prescription.
Rose says his imagination and research has been fired up by such scenarios for seven years since the inception of the Centre for Automation in Medicine and his collaboration with Katzman and fellow researchers at S.T.A.R.T.
Its a true partnership, says Rose of his research partners in the clinic. They learn whats possible with machine learning while we learn aspects of psychiatry and statistics. We dont just do what they tell us.
The research received support from the Natural Sciences and Engineering Research Council of Canada.