With digital phenotyping, smartphones may play a role in assessing severe mental illness

September 15, 2020 – Digital phenotyping approaches that collect and analyze Smartphone-user data on locations, activities, and even feelings – combined with machine learning to recognize patterns and make predictions from the data – have emerged as promising tools for monitoring patients with psychosis spectrum illnesses, according to a report in the September/October issue of Harvard Review of Psychiatry. The journal is published in the Lippincott portfolio by Wolters Kluwer.

John Tourous, MD, MBI, of Harvard Medical School and colleagues reviewed available evidence on digital phenotyping and machine learning to improve care for people living with schizophrenia, bipolar disorder, and related illnesses. “Digital phenotyping provides a much-needed bridge between patients’ symptomatology and the behaviors that can be used to assess and monitor psychiatric disorders,” the researchers write.

Digital Phenotyping in Schizophrenia and Bipolar Disorder – The Evidence So Far

“Digital phenotyping is the use of data from smartphones and wearables collected in situ for capturing a digital expression of human behaviors,” according to the authors. Psychiatry researchers think that collecting and analyzing this kind of behavioral information might be useful in understanding how patients with severe mental illness are functioning in everyday life outside of the clinic or lab – in particular, to assess symptoms and predict clinical relapses.

Dr. Tourous and colleagues identified 51 studies of digital phenotyping in patients with schizophrenia or bipolar disorder. The review focused on studies using “passively” collected data – for example, accelerometer readings (step counters) and GPS signals. Other digital phenotyping approaches use “actively” collected data – for example, surveys to ask patients to report their mood.

The studies varied in terms of the digital phenotyping features used, data handling, analytical techniques, algorithms tested, and outcome measures reported. Nearly all studies included patients with bipolar disorder or schizophrenia. The studies included an average of 31 participants and monitored them for about four months.

Most studies used passive data collected by accelerometers and GPS; other measures included voice call and text message logs. The studies used a wide range of different apps, as well as different clinical tools/questionnaires for assessing patients’ mental health status.

The studies presented higher variability in reporting of basic data such as smartphone model and operating system, patient age and race/ethnicity, and whether patients had received training in use of the technology. The authors make suggestions for a standardized reporting format that would improve the comparability of future studies.

Sixteen of the studies used machine learning-based approaches to analyze the passively collected data. As Dr. Tourous and coauthors note, the studies used various different algorithms, and for different purposes. The most commonly used algorithm type was “random forests,” which work by combining many small, weak decisions to make a single strong prediction. For example, one study used passively tracked behavioral data to predict mental health scores in patients with schizophrenia.

Other studies used machine-learning approaches such as support vector machine/support vector regression or neural nets. These algorithms work in different ways to use behavioral data – where patients are going, whether they’re returning calls, even their tone of voice – to assess patients’ current mental health status, predict their risk of relapse, and so forth.

“Digital phenotyping provides a much-needed bridge between patients’ symptomatology and the behaviors that can be used to assess and monitor psychotic disorders,” Dr. Tourous and colleagues write. They call for larger studies with higher-quality data – along with “expanded efforts to apply machine learning to passive digital phenotyping data in early diagnosis and treatment of psychosis, including in clinical high risk and early-course psychosis patients.”


Click here to read “Systematic Review of Digital Phenotyping and Machine Learning in Psychosis Spectrum Illnesses.”

DOI: 10.1097/HRP.0000000000000268

About the Harvard Review of Psychiatry

The Harvard Review of Psychiatry is the authoritative source for scholarly reviews and perspectives on a diverse range of important topics in psychiatry. Founded by the Harvard Medical School Department of Psychiatry, the journal is peer reviewed and not industry sponsored. It is the property of Harvard University and is affiliated with all of the Departments of Psychiatry at the Harvard teaching hospitals. Articles encompass major issues in contemporary psychiatry, including neuroscience, epidemiology, psychopharmacology, psychotherapy, history of psychiatry, and ethics.

About Wolters Kluwer

Wolters Kluwer (WKL) is a global leader in professional information, software solutions, and services for the clinicians, nurses, accountants, lawyers, and tax, finance, audit, risk, compliance, and regulatory sectors. We help our customers make critical decisions every day by providing expert solutions that combine deep domain knowledge with advanced technology and services.

Wolters Kluwer reported 2019 annual revenues of €4.6 billion. The group serves customers in over 180 countries, maintains operations in over 40 countries, and employs approximately 19,000 people worldwide. The company is headquartered in Alphen aan den Rijn, the Netherlands.

Wolters Kluwer provides trusted clinical technology and evidence-based solutions that engage clinicians, patients, researchers and students with advanced clinical decision support, learning and research and clinical intelligence. For more information about our solutions, visit https://www.wolterskluwer.com/en/health and follow us on LinkedIn and Twitter @WKHealth.

For more information, visit http://www.wolterskluwer.com, follow us on Twitter, Facebook, LinkedIn, and YouTube.

Disclaimer: AAAS and EurekAlert! are not responsible for the accuracy of news releases posted to EurekAlert! by contributing institutions or for the use of any information through the EurekAlert system.

Next Post

Protecting Mom & Dad's money -Consumer Reports Magazine

Thu Sep 17 , 2020
Scenario Solution(s) You visit your father every few weeks. Recently you looked at his bank statement and saw several checks that he can’t explain. Did your father write the checks? If he didn’t and does not know who did, he should file a police report. A common tactic of abusers […]
Protecting Mom & Dad's money -Consumer Reports Magazine

You May Like