Literature DB >> 33691491

Reconciling Statistical and Clinicians' Predictions of Suicide Risk.

Gregory E Simon1, Bridget B Matarazzo1, Colin G Walsh1, Jordan W Smoller1, Edwin D Boudreaux1, Bobbi Jo H Yarborough1, Susan M Shortreed1, R Yates Coley1, Brian K Ahmedani1, Riddhi P Doshi1, Leah I Harris1, Michael Schoenbaum1.   

Abstract

Statistical models, including those based on electronic health records, can accurately identify patients at high risk for a suicide attempt or death, leading to implementation of risk prediction models for population-based suicide prevention in health systems. However, some have questioned whether statistical predictions can really inform clinical decisions. Appropriately reconciling statistical algorithms with traditional clinician assessment depends on whether predictions from these two methods are competing, complementary, or merely duplicative. In June 2019, the National Institute of Mental Health convened a meeting, "Identifying Research Priorities for Risk Algorithms Applications in Healthcare Settings to Improve Suicide Prevention." Here, participants of this meeting summarize key issues regarding the potential clinical application of suicide prediction models. The authors attempt to clarify the key conceptual and technical differences between traditional risk prediction by clinicians and predictions from statistical models, review the limited evidence regarding both the accuracy of and the concordance between these alternative methods of prediction, present a conceptual framework for understanding agreement and disagreement between statistical and clinician predictions, identify priorities for improving data regarding suicide risk, and propose priority questions for future research. Future suicide risk assessment will likely combine statistical prediction with traditional clinician assessment, but research is needed to determine the optimal combination of these two methods.

Entities:  

Keywords:  Epidemiology; Machine learning; Prediction models; Statistical modeling; Suicide and self-destructive behavior

Mesh:

Year:  2021        PMID: 33691491     DOI: 10.1176/appi.ps.202000214

Source DB:  PubMed          Journal:  Psychiatr Serv        ISSN: 1075-2730            Impact factor:   3.084


  6 in total

1.  Detecting and distinguishing indicators of risk for suicide using clinical records.

Authors:  Brian K Ahmedani; Cara E Cannella; Hsueh-Han Yeh; Joslyn Westphal; Gregory E Simon; Arne Beck; Rebecca C Rossom; Frances L Lynch; Christine Y Lu; Ashli A Owen-Smith; Kelsey J Sala-Hamrick; Cathrine Frank; Esther Akinyemi; Ganj Beebani; Christopher Busuito; Jennifer M Boggs; Yihe G Daida; Stephen Waring; Hongsheng Gui; Albert M Levin
Journal:  Transl Psychiatry       Date:  2022-07-13       Impact factor: 7.989

2.  Integration of Face-to-Face Screening With Real-time Machine Learning to Predict Risk of Suicide Among Adults.

Authors:  Drew Wilimitis; Robert W Turer; Michael Ripperger; Allison B McCoy; Sarah H Sperry; Elliot M Fielstein; Troy Kurz; Colin G Walsh
Journal:  JAMA Netw Open       Date:  2022-05-02

3.  Prediction of patient disposition: comparison of computer and human approaches and a proposed synthesis.

Authors:  Yuval Barak-Corren; Isha Agarwal; Kenneth A Michelson; Todd W Lyons; Mark I Neuman; Susan C Lipsett; Amir A Kimia; Matthew A Eisenberg; Andrew J Capraro; Jason A Levy; Joel D Hudgins; Ben Y Reis; Andrew M Fine
Journal:  J Am Med Inform Assoc       Date:  2021-07-30       Impact factor: 4.497

4.  Prediction of Suicide Attempts Using Clinician Assessment, Patient Self-report, and Electronic Health Records.

Authors:  Matthew K Nock; Alexander J Millner; Eric L Ross; Chris J Kennedy; Maha Al-Suwaidi; Yuval Barak-Corren; Victor M Castro; Franchesca Castro-Ramirez; Tess Lauricella; Nicole Murman; Maria Petukhova; Suzanne A Bird; Ben Reis; Jordan W Smoller; Ronald C Kessler
Journal:  JAMA Netw Open       Date:  2022-01-04

5.  Resampling to address inequities in predictive modeling of suicide deaths.

Authors:  Majerle Reeves; Harish S Bhat; Sidra Goldman-Mellor
Journal:  BMJ Health Care Inform       Date:  2022-04

6.  Implementing Machine Learning Models for Suicide Risk Prediction in Clinical Practice: Focus Group Study With Hospital Providers.

Authors:  Kate H Bentley; Kelly L Zuromski; Rebecca G Fortgang; Emily M Madsen; Daniel Kessler; Hyunjoon Lee; Matthew K Nock; Ben Y Reis; Victor M Castro; Jordan W Smoller
Journal:  JMIR Form Res       Date:  2022-03-11
  6 in total

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