Artificial intelligence may improve suicide prevention in the future – EurekAlert

The loss of any life can be devastating, but the loss of a life from suicide is especially tragic.

Around nine Australians take their own lifeeach day, and it is theleading cause of death for Australians aged 1544. Suicide attempts are more common, with some estimates stating that they occur up to 30 times as often as deaths.

Suicide has large effects when it happens. It impacts many people and has far-reaching consequences for family, friends and communities, says Karen Kusuma, a UNSW Sydney PhD candidate in psychiatry at theBlack Dog Institute, who investigates suicide prevention in adolescents.

Ms Kusuma and a team of researchers from the Black Dog Institute and theCentre for Big Data Research in Healthrecently investigated the evidence base of machine learning models and their ability to predict future suicidal behaviours and thoughts. They evaluated the performance of 54 machine learning algorithms previously developed by researchers to predict suicide-related outcomes of ideation, attempt and death.

The meta-analysis, published in theJournal of Psychiatric Research, found machine learning models outperformed traditional risk prediction models in predicting suicide-related outcomes, which have traditionally performed poorly.

Overall, the findings show there is a preliminary but compelling evidence base that machine learning can be used to predict future suicide-related outcomes with very good performance, Ms Kusuma says.

Identifying individuals at risk of suicide is essential for preventing and managing suicidal behaviours. However, risk prediction is difficult.

In emergency departments (EDs), risk assessment tools such as questionnaires and rating scales are commonly used by clinicians to identify patients at elevated risk of suicide. However, evidence suggests they are ineffective in accurately predicting suicide risk in practice.

While there are some common factors shown to be associated with suicide attempts, what the risks look like for one person may look very different in another, Ms Kusuma says. But suicide is complex, with many dynamic factors that make it difficult to assess a risk profile using this assessment process.

A post-mortem analysis of people who died by suicide in Queensland found, of those who received a formal suicide risk assessment,75 per cent were classified as low risk, and none was classified as high risk. Previous research examining the past 50 years of quantitative suicide risk prediction models also found they were onlyslightly better than chance in predicting future suicide risk.

Suicide is a leading cause of years of life lost in many parts of the world, including Australia. But the way suicide risk assessment is done hasnt developed recently, and we havent seen substantial decreases in suicide deaths. In some years, weve seen increases, Ms Kusuma says.

Despite the shortage of evidence in favour of traditional suicide risk assessments, their administration remains a standard practice in healthcare settings to determine a patients level of care and support. Those identified as having a high risk typically receive the highest level of care, while those identified as low risk are discharged.

Using this approach, unfortunately, the high-level interventions arent being given to the people who really need help. So we must look to reform the process and explore ways we can improve suicide prevention, Ms Kusuma says.

Ms Kusuma says there is a need for more innovation in suicidology and a re-evaluation of standard suicide risk prediction models. Efforts to improve risk prediction have led to her research using artificial intelligence (AI) to develop suicide risk algorithms.

Having AI that could take in a lot more data than a clinician would be able to better recognise which patterns are associated with suicide risk, Ms Kusuma says.

In the meta-analysis study, machine learning models outperformed the benchmarks set previously by traditional clinical, theoretical and statistical suicide risk prediction models. They correctly predicted 66 per cent of people who would experience a suicide outcome and correctly predicted 87 per cent of people who would not experience a suicide outcome.

Machine learning models can predict suicide deaths well relative to traditional prediction models and could become an efficient and effective alternative to conventional risk assessments, Ms Kusuma says.

The strict assumptions of traditional statistical models do not bind machine learning models. Instead, they can be flexibly applied to large datasets to model complex relationships between many risk factors and suicidal outcomes. They can also incorporate responsive data sources, including social media, to identify peaks of suicide risk and flag times where interventions are most needed.

Over time, machine learning models could be configured to take in more complex and larger data to better identify patterns associated with suicide risk, Ms Kusuma says.

The use of machine learning algorithms to predict suicide-related outcomes is still an emerging research area, with 80 per cent of the identified studies published in the past five years. Ms Kusuma says future research will also help address the risk of aggregation bias found in algorithmic models to date.

More research is necessary to improve and validate these algorithms, which will then help progress the application of machine learning in suicidology, Ms Kusuma says. While were still a way off implementation in a clinical setting, research suggests this is a promising avenue for improving suicide risk screening accuracy in the future.

Journal of Psychiatric Research

Meta-analysis

People

The performance of machine learning models in predicting suicidal ideation, attempts, and deaths: A meta-analysis and systematic review

29-Sep-2022

The authors declare no conflict of interest.

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.

Follow this link:
Artificial intelligence may improve suicide prevention in the future - EurekAlert

Related Post
This entry was posted in $1$s. Bookmark the permalink.