PRESS-NEWS.org - Press Release Distribution
PRESS RELEASES DISTRIBUTION

Researchers develop machine learning models that could improve suicide-risk prediction among children

New study shows why many predictive algorithms may miss out on children at risk of self-harm

2023-07-26
(Press-News.org) A new study from UCLA Health researchers finds that the typical ways health systems store and track data on children receiving emergency care miss a sizable portion of those who are having self-injurious thoughts or behaviors. The researchers also found that several machine learning models they designed were significantly better at identifying those children at risk of self-harm. 

Amid a nationwide youth mental health crisis, mental health providers are trying to improve their understanding of which children are at-risk of suicide or self-harm so providers can intervene earlier. However, health systems often do not have a full understanding of who is coming through their doors for self-injurious thoughts or behaviors, meaning that many risk-prediction models designed to flag children at future risk are based on incomplete data, limiting prediction accuracy.  

“Our ability to anticipate which children may have suicidal thoughts or behaviors in the future is not great – a key reason is our field jumped to prediction rather than pausing to figure out if we are actually systematically detecting everyone who is coming in for suicide-related care,” said Juliet Edgcomb, MD, PhD, the study’s lead author and associate director of UCLA’s Mental Health Informatics and Data Science (MINDS) Hub. “We sought to understand if we can first get better at detection.” 

Many risk-prediction models for suicide and self-harm rely on how providers categorize care they’ve provided through diagnostic codes known as International Classification of Diseases, version 10 (ICD-10). However, this may exclude many children who have self-injurious thoughts or behaviors but have been coded in their health records for an underlying mental health diagnosis, such as depression or anxiety. Another commonly used method for flagging at-risk patients is the “chief complaint,” a brief statement provided at the beginning of a health care visit describing why a patient is seeking care, but children may not always report suicidal thoughts and behaviors when they first come into the emergency department.  

Experts reviewed clinical notes for 600 emergency department visits for children ages 10-17 at a large health system to understand how well ICD-10 codes and chief complaint identify children with self-injurious thoughts or behaviors.  

Experts who reviewed the patients’ clinical notes found that ICD codes missed 29% of children who came to the emergency department for self-injurious thoughts or behaviors, while the chief complaint missed over half (54%) of those patients. Using the ICD code and the chief complaint together still missed about 22% of those patients. 

Screening methods that relied on ICD codes or chief complaint were also more likely to miss male children than female children, as well as preteens compared to teens. There was also a signal that Black and Latino youth were more likely to be left out, raising concerns that these groups could be disproportionately underrepresented in risk prediction models.  

Researchers designed three different machine learning models to test whether an automated system could do a better job of flagging children with self-injurious thoughts or behaviors. The most comprehensive model incorporated 84 data points available in a patient’s electronic record, including previous medical care, medications, demographic information, and whether the child lives in a disadvantaged neighborhood, among others. A second model used all diagnostic codes for mental health, rather than just the suicide-related codes that come from CDC’s suicide surveillance program, and a third looked at other indicators, such as a patient’s medications and lab tests.  

All three machine learning models were better at identifying children with self-injurious thoughts and behaviors than just ICD codes and chief complaint alone. No machine learning model performed significantly better than any of the others, indicating that health systems could improve their ability to flag at-risk patients without having to build especially sophisticated models. 

“Adding more information helps, but you don’t necessarily need a bells-and-whistles approach to get better detection,” Edgcomb said.  

The machine learning models were more likely to flag patients not at risk of self-harm, but Edgcomb said there is little downside to using these more sensitive screening tools. “Depending on the situation, it may better to have some false positives and have a medical records analyst double-check those charts that screen positive, than to miss many children entirely,” she said.  

Edgcomb’s upcoming research will continue to examine ways of improving youth suicide risk prediction models, including those for elementary-school age children, which have been particularly scarce.  

The study was published on July 21, 2023 in JMIR Mental Health .

Other study authors include Chi-hong Tseng, PhD, Mengtong Pan, and Alexandra Klomhaus, PhD, all of the Department of Medicine at the UCLA David Geffen School of Medicine, and Bonnie Zima, MD, MPH, of the UCLA MINDS Hub in the Semel Institute Center for Community Health. 

Article: Edgcomb, J.B., Tseng, C.T., Pan, M., Klomhaus, A., Zima, B.T., Assessing detection of children with suicide-related emergencies: evaluation and development of computable phenotyping approaches. JMIR Mental Health. 10:e47084 DOI:10.2196/47084.

END


ELSE PRESS RELEASES FROM THIS DATE:

DOE announces $33 million to advance energy research across America

2023-07-26
WASHINGTON, D.C. — The U.S. Department of Energy (DOE) today announced $33 million to support 14 clean-energy research projects as part of a program to ensure the Department’s research funding is reaching pockets of the country that traditionally have received disproportionally low amounts of Federal scientific funding. The projects will cover a range of topics—including grid integration, renewable solar and wind energy, and advanced manufacturing. Today’s funding will help ensure all regions of the country share in the ownership of priority research that advances science and addresses energy ...

Predicting lifespan-extending chemical compounds for C. elegans with machine learning

Predicting lifespan-extending chemical compounds for C. elegans with machine learning
2023-07-26
“We created datasets for predicting whether or not a compound extends the lifespan of C. elegans [...]” BUFFALO, NY- July 26, 2023 – A new research paper was published in Aging (listed by MEDLINE/PubMed as "Aging (Albany NY)" and "Aging-US" by Web of Science) Volume 15, Issue 13, entitled, “Predicting lifespan-extending chemical compounds for C. elegans with machine learning and biologically interpretable features.” Recently, there has been a growing interest in the development of pharmacological interventions targeting ...

KIAA0930: A cachexic phenotype inducer in cancer cells

KIAA0930: A cachexic phenotype inducer in cancer cells
2023-07-26
“We believe that KIAA0930 would be a novel cachexia therapeutic target.” BUFFALO, NY- July 26, 2023 – A new research paper was published in Oncotarget's Volume 14 on July 20, 2023, entitled, “The uncharacterized transcript KIAA0930 confers a cachexic phenotype on cancer cells.” Patients with cancer cachexia have a poor prognosis and impaired quality of life. Numerous studies using preclinical models have shown that inflammatory cytokines play an important role in the development of cancer cachexia; however, no clinical trial targeting cytokines has been successful. Therefore, ...

Lifespan of ageing science’s model organism driven by reproductive self-destruction

2023-07-26
The lifespan of a small roundworm that has been used as a key model organism in ageing research is limited by how it self-sacrifices to feed its young, finds a new study led by UCL researchers. The authors of the new Nature Communications paper say their findings raise questions about how well insights from the Caenorhabditis elegans (C. elegans) worm can be translated to human ageing advances. C. elegans is widely used as a laboratory animal, and has been central to ageing research for 40 years thanks to discoveries of genes that can be supressed to produce up to a tenfold increase in ...

A study outlines the optimal strategy for accelerating the energy transition in China

2023-07-26
China has set itself the goal of reaching its peak of carbon dioxide emissions in 2030 and thereafter to reduce emissions to reach carbon neutrality by 2060. To achieve this, it needs to increase photovoltaic (PV) and wind power to 10-15 petawatt hours (PWh) by 2060. However, according to historical installation rates and a recent high-resolution energy-system-model and forecasts based on China's 14th Five-Year Energy Development Programme (CFEDP), the capacity of China for producing non-fossil-fuel energy will reach a maximum of only 9.5 PWh per year by 2060. Now, an international study with the participation ...

How eavesdropping viruses battle it out to infect us

How eavesdropping viruses battle it out to infect us
2023-07-26
Viruses, like movie villains, operate in one of two ways: chill or kill. They can lay low, quietly infiltrating the body’s defenses, or go on the attack, exploding out of hiding and firing in all directions. Viral attacks are almost always suicide missions, ripping apart the cell that the virus has been depending on. The attack can only succeed if enough other healthy cells are around to infect. If the barrage of viral particles hits nothing, the virus cannot sustain itself. It doesn’t die, since viruses aren’t technically alive, but it ceases to function. So for a virus, the key challenge is deciding when to flip from chill mode into kill mode. Four years ago, Princeton ...

Unraveling a protein that may inspire a new biotechnology tool

2023-07-26
COLUMBUS, Ohio – Scientists have unraveled the step-by-step activation process of a protein with a deep evolutionary history in all domains of life, opening the door to harnessing its functions for use as a biotechnology tool. The protein belongs to the “superfamily” of Argonaute proteins, which previous research has suggested to be involved in gene silencing, a fundamental process known as RNA interference. These proteins are well-characterized in eukaryotes – the plants, fungi, animals, humans and other life forms with cells that have a defined ...

Study: Insect protein slows weight gain, boosts health status in obese mice

Study: Insect protein slows weight gain, boosts health status in obese mice
2023-07-26
URBANA, Ill. — As the global population grows under a changing climate, the urgency to find sustainable protein sources is greater than ever. Plant-based “meat” and “dairy” products may be popular, but they’re not the only environmentally friendly meat alternatives.  A new study in mice from the University of Illinois Urbana-Champaign suggests replacing traditional protein sources with mealworms in high-fat diets could slow weight gain, improve immune response, reduce inflammation, enhance energy metabolism, and ...

Recent advances in research to identify sources of nano- and microplastics

2023-07-26
Exposure to microplastics and nanoplastics — particles smaller than 5 millimeters and 1 micrometer across, respectively — have been linked to adverse health outcomes. Although some of their sources are well known, others haven’t been thoroughly vetted yet. Below are recent papers published in ACS journals that report new insights into the origins of some microscopic plastic pieces: laser-cut acrylic sheets, orthodontic rubber bands and children’s food containers. Reporters can request free access to these papers by emailing newsroom@acs.org. “Characterization ...

Mount Sinai researchers uncover how mammary glands control overall energy balance and fat metabolism

2023-07-26
An Icahn School of Medicine at Mount Sinai study sheds light on the intricate interplay between mammary adipose (fat) tissue and breast health, and offers exciting possibilities for understanding breast development, lactation, cancer, and obesity and related metabolic disorders. The study was published today in Nature. The research team was led by Prashant Rajbhandari, PhD, Assistant Professor of Medicine (Endocrinology, Diabetes and Bone Disease), and a member of the Diabetes, Obesity, and Metabolism Institute at Icahn Mount Sinai. The ...

LAST 30 PRESS RELEASES:

UC Irvine researchers discover atomic-level mechanism in polycrystalline materials

USC’s Rong Lu and Caltech’s Michael B. Elowitz win the NIH Director’s Transformative Research Award for their new approach to study blood and immune cell production in bone marrow

Microwave-induced synthesis of bioactive nitrogen heterocycles

Research to use machine learning to ’reverse-engineer’ new composite materials

New research calls for transparency in Medicare Advantage operations

Applied Biological Laboratories, maker of Biovanta, to present at American Society of Microbiology’s Clinical Virology Symposium 2024

How academia drives sustainability: Discover the impact of science on the SDGs

NOAA awards grant to enhance decision-ready climate projections for diverse stakeholders

Why using a brand nickname in marketing is not a good idea

Asymmetric placebo effect in response to spicy food

Echoes in the brain: Why today’s workout could fuel next week’s bright idea

Salk Institute’s Nicola Allen receives 2024 NIH Director’s Pioneer Award

The secret strength of our cell guards

DataSeer and AAAS partner to boost reporting standards

Mizzou researchers awarded $8 million in grants to discover new bullying prevention strategies

Holographic 3D printing has the potential to revolutionize multiple industries, say Concordia researchers

Cerebral blood flow and arterial transit in older adults

How diabetes risk genes make cells less resilient to stress

Aerobic physical activity and depression among patients with cancer

Incidence of hospitalizations involving alcohol withdrawal syndrome

Study: One-time cooperation decisions unaffected by increased benefits to society

Soil volatile organic compound profiles as indicators for soil evaluation in soybean fields

Shedding light on how tissues grow with sharply defined structures

JAMA Network launches JAMA+ AI

Climate report warns of escalating crisis, urges immediate action as UN summit nears

Scientists issue urgent warning on climate emergency

First successful demonstration of a dual-media NV diamond laser system

A call to bridge the gap in cancer clinical trial funding

Despite heavy marketing, most Americans reject the new weight-loss drugs

Ochsner Children’s Hospital named No.1 hospital for kids in Louisiana for fourth consecutive year

[Press-News.org] Researchers develop machine learning models that could improve suicide-risk prediction among children
New study shows why many predictive algorithms may miss out on children at risk of self-harm