Study demonstrates way to identify patients who might attempt suicide

The findings confirmed the value of adapting the model to each site, since health care centers may have unique predictive factors, based on different hospital coding practices and local demographics and health patterns.

Written by April 27, 2020 08:41

Washington D.C. [USA]: Suicide risk has been an alarming issue among youths. However, a predictive computer model can now identify patients at risk for attempting suicide, two years ahead of time — from patterns in their electronic health records.

A study led by Boston Children’s Hospital and Massachusetts General Hospital demonstrates models that could potentially alert health professionals in advance of a visit, helping patients get appropriate interventions.
The findings were published in JAMA Network Open.

The victim's brothers, who were allegedly confined in another room by police, have alleged that the cops remained mute spectators when the victim took her life.
“Computers cannot replace care teams in identifying mental health issues,” said Ben Reis, PhD, director of the Predictive Medicine Group, part of the Computational Health Informatics Program (CHIP) at Boston Children’s Hospital, and co-senior author on the paper.

“But we feel that computers, if well designed, could identify high-risk patients who may currently be falling through the cracks, unnoticed by the health system. We envision a system that could tell the doctor, ‘of all your patients, these three falls into a high-risk category. Take a few extra minutes to speak with them.'”

The team analyzed electronic health record data from more than 3.7 million American patients ages 10 to 90 across five diverse U.S. health care systems.

Six to 17 years’ worth of data were available from the different centers, including diagnostic codes, laboratory test results, medical procedure codes, and medications.

The records showed a total of 39,162 suicide attempts. The models were able to detect 38 percent of them (this ranged 33 to 39 percent across the five centers) with 90 percent specificity. Cases were picked up a mean of 2.1 years before the actual suicide attempt (range, 1.3 to 3.5 years).

suicide in exam
The strongest predictors, not surprisingly, included drug poisonings, drug dependence, acute alcohol intoxication, and several mental health conditions. But other predictors were ones that wouldn’t ordinarily come to mind, like rhabdomyolysis, cellulitis or abscess of the hand, and HIV medications.

The investigators developed the model in two steps, using a machine learning approach.

First, they showed half of their patient data to a computer model, directing it to find patterns that were associated with documented suicide attempts. Then, they took lessons learned from that “training” exercise and validated them using the other half of their data — asking the model to predict, based on those patterns alone, which patients would eventually attempt suicide.

On the whole, the model performed similarly at all five medical centers, but retraining the model at individual centers brought better results.

“We could have created one model to fit all medical centers, using the same codes,” said Yuval Barak-Corren, MD, of CHIP, first author on the paper.

“But we chose an approach that automatically builds a slightly different model, tailored to suit the specifics of each health care site.”

The findings confirmed the value of adapting the model to each site, since health care centers may have unique predictive factors, based on different hospital coding practices and local demographics and health patterns.

Under a grant from the National Institute of Mental Health, the team will now seek to enhance their modeling approach, for example incorporating doctor’s clinical notes into their data. (ANI)