scholarly journals Suicide Risks and Prevention, Neuropathogenic Study

2020 ◽  
pp. 1-3
Author(s):  
Da-Yong Lu ◽  
Jin-Yu Che ◽  
Hong-Ying Wu ◽  
Ting-Ren Lu ◽  
Swathi Putta

Past clinical evidence suggests that there is partly an association between suicide risk/mortality and mentally health condition. It is an interesting subject for modern diagnostic implication and therapeutic targeting. As a result, neuropathy in brain and relevant treatment (eased by anti-depressive agents or herbs) can be extensively explored. In order to find useful way for cutting off unnecessary suicide-induced human mortality, mental-related genes or molecules study may move forwards suicide risk prediction, prevention, targeting and application. This perspective highlights emerging areas of human suicide and mental healthcare.

2019 ◽  
Vol 53 (10) ◽  
pp. 954-964 ◽  
Author(s):  
Trehani M Fonseka ◽  
Venkat Bhat ◽  
Sidney H Kennedy

Objective: Suicide is a growing public health concern with a global prevalence of approximately 800,000 deaths per year. The current process of evaluating suicide risk is highly subjective, which can limit the efficacy and accuracy of prediction efforts. Consequently, suicide detection strategies are shifting toward artificial intelligence platforms that can identify patterns within ‘big data’ to generate risk algorithms that can determine the effects of risk (and protective) factors on suicide outcomes, predict suicide outbreaks and identify at-risk individuals or populations. In this review, we summarize the role of artificial intelligence in optimizing suicide risk prediction and behavior management. Methods: This paper provides a general review of the literature. A literature search was conducted in OVID Medline, EMBASE and PsycINFO databases with coverage from January 1990 to June 2019. Results were restricted to peer-reviewed, English-language articles. Conference and dissertation proceedings, case reports, protocol papers and opinion pieces were excluded. Reference lists were also examined for additional articles of relevance. Results: At the individual level, prediction analytics help to identify individuals in crisis to intervene with emotional support, crisis and psychoeducational resources, and alerts for emergency assistance. At the population level, algorithms can identify at-risk groups or suicide hotspots, which help inform resource mobilization, policy reform and advocacy efforts. Artificial intelligence has also been used to support the clinical management of suicide across diagnostics and evaluation, medication management and behavioral therapy delivery. There could be several advantages of incorporating artificial intelligence into suicide care, which includes a time- and resource-effective alternative to clinician-based strategies, adaptability to various settings and demographics, and suitability for use in remote locations with limited access to mental healthcare supports. Conclusion: Based on the observed benefits to date, artificial intelligence has a demonstrated utility within suicide prediction and clinical management efforts and will continue to advance mental healthcare forward.


Author(s):  
Jakob Scheunemann ◽  
Lena Jelinek ◽  
Judith Peth ◽  
Anne Runde ◽  
Sönke Arlt ◽  
...  

2020 ◽  
Vol 4 (Supplement_1) ◽  
pp. 358-358
Author(s):  
Hyojin Choi ◽  
Kristin Litzelman ◽  
Molly Maher ◽  
Autumn Harnish

Abstract Spouses of cancer survivors are 33% less likely to receive guideline-concordant depression treatment than other married adults. However, depression is only one of many manifestations of psychological distress for caregivers. This exploratory study sought to assess the paths by which caregivers access mental health-related treatment. Using nationally representative data from the Medical Expenditures Panel Survey, we assessed the proportion of caregivers who received a mental health-related prescription or psychotherapy visit across care settings (office based versus outpatient hospital, emergency room, or inpatient visit), provider type (psychiatric, primary care, other specialty, or other), and visit purpose (regular checkup, diagnosis and treatment, follow-up, psychotherapy, other). In addition, we assessed the health condition(s) associated with the treatment. The findings indicate that a plurality of caregivers accessed mental health-related treatment through an office-based visit (90%) with a primary care provider (47%). A minority accessed this care through a psychologist or psychiatrist (11%) or a physician with another specialty (12%) or other provider types. Nearly a third accessed treatment as part of a regular check-up (32%). These patterns did not differ from the general population after controlling for sociodemographic characteristics. Interestingly, mental health-related treatments were associated with a mental health diagnosis in only a minority of caregivers. The findings confirm the importance of regular primary care as a door way to mental healthcare, and highlight the range of potential paths to care. Future research will examine the correlates of accessing care across path types.


2020 ◽  
Author(s):  
Emily Haroz ◽  
Fiona Grubin ◽  
Novalene Goklish ◽  
Shardai Pioche ◽  
Mary Cwik ◽  
...  

BACKGROUND Machine learning algorithms for suicide risk prediction have been developed with notable improvements in accuracy. Implementing these algorithms to enhance clinical care and reduce suicide has not been well studied. OBJECTIVE Our study aimed to design a Clinical Decision Support tool (CDS) and appropriate care pathways for a community-based suicide surveillance and case management systems operating on Native American reservations. METHODS Participants included Native American case managers and supervisors (N = 9) who work on suicide surveillance and case management programs on two Native American reservations. We used in-depth interviews to understand how case managers think about and respond to suicide risk. Results from interviews informed a draft CDS tool, which was then reviewed with supervisors and combined with appropriate care pathways. RESULTS Case managers reported acceptance of risk flags based on a predictive algorithm in their surveillance system tools, particularly if the information was available in a timely way and used in conjunction with their clinical judgement. Implementation of risk flags needed to be programmed on a dichotomous basis so the algorithm could produce output indicating high vs. low risk. To dichotomize the continuous predicted probabilities, we developed a cutoff point that favored specificity, with the understanding that case managers’ clinical judgment would help increase sensitivity. CONCLUSIONS Suicide risk prediction algorithms show promise, but implementation to guide clinical care has remained relatively elusive. Our study demonstrates the utility of working with partners to develop and guide operationalization of risk prediction algorithms to enhance clinical care in a community setting.


Author(s):  
Eric L. Ross ◽  
Kelly L. Zuromski ◽  
Ben Y. Reis ◽  
Matthew K. Nock ◽  
Ronald C. Kessler ◽  
...  

2021 ◽  
Author(s):  
Kate Bentley ◽  
Kelly Zuromski ◽  
Rebecca Fortgang ◽  
Emily Madsen ◽  
Daniel Kessler ◽  
...  

Background: Interest in developing machine learning algorithms that use electronic health record data to predict patients’ risk of suicidal behavior has recently proliferated. Whether and how such models might be implemented and useful in clinical practice, however, remains unknown. In order to ultimately make automated suicide risk prediction algorithms useful in practice, and thus better prevent patient suicides, it is critical to partner with key stakeholders (including the frontline providers who will be using such tools) at each stage of the implementation process.Objective: The aim of this focus group study was to inform ongoing and future efforts to deploy suicide risk prediction models in clinical practice. The specific goals were to better understand hospital providers’ current practices for assessing and managing suicide risk; determine providers’ perspectives on using automated suicide risk prediction algorithms; and identify barriers, facilitators, recommendations, and factors to consider for initiatives in this area. Methods: We conducted 10 two-hour focus groups with a total of 40 providers from psychiatry, internal medicine and primary care, emergency medicine, and obstetrics and gynecology departments within an urban academic medical center. Audio recordings of open-ended group discussions were transcribed and coded for relevant and recurrent themes by two independent study staff members. All coded text was reviewed and discrepancies resolved in consensus meetings with doctoral-level staff. Results: Though most providers reported using standardized suicide risk assessment tools in their clinical practices, existing tools were commonly described as unhelpful and providers indicated dissatisfaction with current suicide risk assessment methods. Overall, providers’ general attitudes toward the practical use of automated suicide risk prediction models and corresponding clinical decision support tools were positive. Providers were especially interested in the potential to identify high-risk patients who might be missed by traditional screening methods. Some expressed skepticism about the potential usefulness of these models in routine care; specific barriers included concerns about liability, alert fatigue, and increased demand on the healthcare system. Key facilitators included presenting specific patient-level features contributing to risk scores, emphasizing changes in risk over time, and developing systematic clinical workflows and provider trainings. Participants also recommended considering risk-prediction windows, timing of alerts, who will have access to model predictions, and variability across treatment settings.Conclusions: Providers were dissatisfied with current suicide risk assessment methods and open to the use of a machine learning-based risk prediction system to inform clinical decision-making. They also raised multiple concerns about potential barriers to the usefulness of this approach and suggested several possible facilitators. Future efforts in this area will benefit from incorporating systematic qualitative feedback from providers, patients, administrators, and payers on the use of new methods in routine care, especially given the complex, sensitive, and unfortunately still stigmatized nature of suicide risk.


2020 ◽  
Vol 3 (3) ◽  
pp. e201262 ◽  
Author(s):  
Yuval Barak-Corren ◽  
Victor M. Castro ◽  
Matthew K. Nock ◽  
Kenneth D. Mandl ◽  
Emily M. Madsen ◽  
...  

1973 ◽  
Vol 130 (12) ◽  
pp. 1327-1332 ◽  
Author(s):  
JOHN H. GREIST ◽  
THOMAS P. LAUGHREN ◽  
DAVID H. GUSTAFSON ◽  
FRED F. STAUSS ◽  
GLEN L. ROWSE ◽  
...  

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