Want to know your mental health status? There’s an app for that – CU Boulder Today

Posted: Published on November 12th, 2019

This post was added by Alex Diaz-Granados

Thanks to advances in artificial intelligence, computers can now assist doctors in diagnosing disease and help monitor patient sleep patterns and vital signs from hundreds of miles away.

Now, CU Boulder researchers are working to apply machine learning to psychiatry, with a speech-based mobile app that can categorize a patients mental health status as well as or better than a human can.

We are not in any way trying to replace clinicians, says Peter Foltz, a research professor at the Institute of Cognitive Science and co-author of anew paperinSchizophrenia Bulletinthat lays out the promise and potential pitfalls of AI in psychiatry. But we do believe we can create tools that will allow them to better monitor their patients.

Nearly one in five U.S. adults lives with a mental illness, many in remote areas where access to psychiatrists or psychologists is scarce. Others cant afford to see a clinician frequently, dont have time or cant get in to see one.

Even when a patient does make it in for an occasional visit, therapists base their diagnosis and treatment plan largely on listening to a patient talk an age-old method that can be subjective and unreliable, notes paper co-author Brita Elvevg, a cognitive neuroscientist at the University of Troms, Norway.

Humans are not perfect. They can get distracted and sometimes miss out on subtle speech cues and warning signs, Elvevg says. Unfortunately, there is no objective blood test for mental health.

In pursuit of an AI version of that blood test, Elvevg and Foltz teamed up to develop machine learning technology able to detect day-to-day changes in speech that hint at mental health decline.

For instance, disjointed speechsentences that dont follow a logical patterncan be a critical symptom in schizophrenia. Shifts in tone or pace can hint at mania or depression. And memory loss can be a sign of both cognitive and mental health problems.

Language is a critical pathway to detecting patient mental states, says Foltz. Using mobile devices and AI, we are able to track patients daily and monitor these subtle changes.

The new mobile app asks patients to answer a 5- to 10-minute series of questions by talking into their phone.

Among various other tasks,theyre asked about their emotional state, asked to tell a short story, listen to a story and repeat it and given a series of touch-and-swipe motor skills tests.

In collaboration with Chelsea Chandler, a computer science graduate student at CU Boulder, and other colleagues, they developed an AI system that assesses those speech samples, compares them to previous samples by the same patient as well as the broader population and rates the patients mental state.

In one recent study, the team asked human clinicians to listen to speech samples of 225 participantshalf with severe psychiatric issues; half healthy volunteersin rural Louisiana and Northern Norway and assess them. They then compared those results to those of the machine learning system.

We found that the computers AI models can be at least as accurate as clinicians, says Foltz.

He and his colleaguesenvision a day when AI systems they're developingfor psychiatry could be in the room with a therapist and a patient to provide additional data-driven insight, or serve as a remote-monitoring system for the severely mentally ill.

If the app detected a worrisome change, it could notify the patients doctor to check in.

Patientsoften need to be monitored with frequent clinical interviews by trained professionals to avoid costly emergency care and unfortunate events, says Foltz. But there are simply not enough clinicians for that.

Peter Foltz

Foltz previously helped develop and commercializean AI-based essay-grading technology which is now broadly used to help educators do their job.

In their new paper, the researchers lay out a call to action for larger studies to prove efficacy and earn public trust before AItechnology could be broadly brought into clinical practice for psychiatry.

The mystery around AI does not nurture trustworthiness, which is critical when applying medical technology, they write. Rather than looking for machine learning models to become the ultimate decision-maker in medicine, we should leverage the things that machines do well that are distinct from what humans do well.

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Want to know your mental health status? There's an app for that - CU Boulder Today

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