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How AI is helping to predict and prevent suicides

The Conversation with ϲ's Sidney Kennedy and Trehani M. Fonseka

Suicide is a growing public health concern. – that is 10 lives per day.

For every one of these suicide deaths, there are five people hospitalized following self-injury, 25 to 30 suicide attempts and seven to 10 people affected by each tragedy, according to analysis by the Public Health Agency of Canada.

Suicide rates are highest among certain groups – such as – and are on the rise.

The impacts of suicide are felt widely. The Toronto Transit Commission (TTC) recently reported an increase in transit suicides at the end of 2017, with eight attempts in December alone, and .

Could artificial intelligence (AI), or intelligence demonstrated by machines, possibly help to prevent these deaths?

As researchers in psychiatry, in the Canadian Biomarker Integration Network for Depression, we are collecting clinical and biological data during treatment interventions for people with major depression. We are exploring early clues to changes in behaviour and mood states using mobile health technologies.

One of our goals is to identify early predictors of relapse, and increased risk of suicidal behaviour.

Here we review other promising applications of AI to suicide prevention, and draw attention to the barriers within this field.

AI predicts suicide rates

Early in 2018, the Public Health Agency of Canada announced , an Ottawa-based AI company .

The project will , including suicide-related content, although user identity will not be collected.

The program will not isolate high-risk cases or intervene at the individual level. Instead, findings will be used to inform mental health resource planning.

Facebook alerts emergency responders

In 2011, Facebook developed a manual suicide reporting system where users could upload screenshots of suicide content for review.

In 2015, the system , which would prompt Facebook staff to review the post and respond with supportive resources.

Due to the tool’s success, . There are also more .

Chatbots give therapy for depression

AI has been used in health care since the 1990s .

Within mental health, AI has enhanced the speed and accuracy of diagnosis, and applied “decision trees” to guide treatment selection.

A new approach to “therapy” involves conversational bots (or chatbots) which are computer programs designed to simulate human-like conversation using voice or text responses.

Chatbots can deliver psychological interventions for depression and anxiety based on cognitive behavioural therapy (CBT). Since chatbots uniquely respond to presented dialogue, . , and the user-adapted responses of the chatbot itself have been well reviewed.

Similar technology is being added to smartphones to allow voice assistants, like the iPhone’s Siri, to recognize and respond to user mental health concerns with appropriate information and supportive resources. However, . Other smartphone applications even .

AI technology has also been integrated into suicide management to improve patient care in other areas. AI assessment tools have been shown to predict short-term suicide risk and make treatment recommendations that are as good as clinicians. The .

AI models predict individual risk

Current evaluation and management of suicide risk is still highly subjective. To improve outcomes, more objective AI strategies are needed. Promising applications include suicide risk prediction and clinical management.

Suicide is influenced by . AI can be used to explore the association between these factors and suicide outcomes.

AI can also model the combined effect of multiple factors on suicide, and use these models to predict individual risk.

As an example, that predicted suicide risk, using electronic health records, with 84 to 92 per cent accuracy within one week of a suicide event and 80 to 86 per cent within two years.

Moving forward with caution

As the field of suicide prevention using artificial intelligence advances, there are several potential barriers to be addressed:

  1. Privacy: Protective legislation will need to expand to include risks associated with AI, specifically the collection, storage, transfer and use of confidential health information.

  2. Accuracy: AI accuracy in correctly determining suicide intent will need to be confirmed, specifically in regards to system biases or errors, before labelling a person as high (versus low) risk.

  3. Safety: It is essential to ensure AI programs can appropriately respond to suicidal users, so as to not worsen their emotional state or accidentally facilitate suicide planning.

  4. Responsibility: Response protocols are needed on how to handle properly high-risk cases that are flagged by AI technology, and what to do if AI risk assessments differ from clinical opinion.

  5. Lack of understanding: There is a knowledge gap among key users on how AI technology fits into suicide prevention. More education on the topic is needed to address this.

Overall, AI technology is here to stay in many aspects of health care, including suicide screening and intervention delivery.

 is a professor of psychiatry and Arthur Sommer Rotenberg Chair in suicide and depression studies at the .  is a research associate in psychiatry at the University Health Network and project lead for the Canadian Biomarker Integration Network in Depression (CAN-BIND)’s Indigenous Program at St. Michael’s Hospital.

This article was originally published on . Read the .

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