Literature DB >> 32361146

Finding warning markers: Leveraging natural language processing and machine learning technologies to detect risk of school violence.

Yizhao Ni1, Drew Barzman2, Alycia Bachtel3, Marcus Griffey3, Alexander Osborn3, Michael Sorter2.   

Abstract

INTRODUCTION: School violence has a far-reaching effect, impacting the entire school population including staff, students and their families. Among youth attending the most violent schools, studies have reported higher dropout rates, poor school attendance, and poor scholastic achievement. It was noted that the largest crime-prevention results occurred when youth at elevated risk were given an individualized prevention program. However, much work is needed to establish an effective approach to identify at-risk subjects.
OBJECTIVE: In our earlier research, we developed a risk assessment program to interview subjects, identify risk and protective factors, and evaluate risk for school violence. This study focused on developing natural language processing (NLP) and machine learning technologies to automate the risk assessment process.
MATERIAL AND METHODS: We prospectively recruited 131 students with or without behavioral concerns from 89 schools between 05/01/2015 and 04/30/2018. The subjects were interviewed with two risk assessment scales and a questionnaire, and their risk of violence were determined by pediatric psychiatrists based on clinical judgment. Using NLP technologies, different types of linguistic features were extracted from the interview content. Machine learning classifiers were then applied to predict risk of school violence for individual subjects. A two-stage feature selection was implemented to identify violence-related predictors. The performance was validated on the psychiatrist-generated reference standard of risk levels, where positive predictive value (PPV), sensitivity (SEN), negative predictive value (NPV), specificity (SPEC) and area under the ROC curve (AUC) were assessed.
RESULTS: Compared to subjects' sociodemographic information, use of linguistic features significantly improved classifiers' predictive performance (P < 0.01). The best-performing classifier with n-gram features achieved 86.5 %/86.5 %/85.7 %/85.7 %/94.0 % (PPV/SEN/NPV/SPEC/AUC) on the cross-validation set and 83.3 %/93.8 %/91.7 %/78.6 %/94.6 % (PPV/SEN/NPV/SPEC/AUC) on the test data. The feature selection process identified a set of predictors covering the discussion of subjects' thoughts, perspectives, behaviors, individual characteristics, peers and family dynamics, and protective factors.
CONCLUSIONS: By analyzing the content from subject interviews, the NLP and machine learning algorithms showed good capacity for detecting risk of school violence. The feature selection uncovered multiple warning markers that could deliver useful clinical insights to assist personalizing intervention. Consequently, the developed approach offered the promise of an accurate and scalable computerized screening service for preventing school violence.
Copyright © 2020 The Authors. Published by Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Automated risk assessment; Machine learning; Natural language processing; School violence

Mesh:

Year:  2020        PMID: 32361146      PMCID: PMC7257261          DOI: 10.1016/j.ijmedinf.2020.104137

Source DB:  PubMed          Journal:  Int J Med Inform        ISSN: 1386-5056            Impact factor:   4.046


  27 in total

1.  The predictive validity of the Structured Assessment of Violence Risk in Youth in secondary educational settings.

Authors:  Mark R McGowan; Robert A Horn; Ramona N Mellott
Journal:  Psychol Assess       Date:  2011-06

2.  A Pilot Study on Developing a Standardized and Sensitive School Violence Risk Assessment with Manual Annotation.

Authors:  Drew H Barzman; Yizhao Ni; Marcus Griffey; Bianca Patel; Ashaki Warren; Edward Latessa; Michael Sorter
Journal:  Psychiatr Q       Date:  2017-09

3.  Diagnostic tests. 1: Sensitivity and specificity.

Authors:  D G Altman; J M Bland
Journal:  BMJ       Date:  1994-06-11

Review 4.  Assessing predictions of violence: being accurate about accuracy.

Authors:  D Mossman
Journal:  J Consult Clin Psychol       Date:  1994-08

5.  Stimulant-responsive and stimulant-refractory aggressive behavior among children with ADHD.

Authors:  Joseph C Blader; Steven R Pliszka; Peter S Jensen; Nina R Schooler; Vivian Kafantaris
Journal:  Pediatrics       Date:  2010-09-13       Impact factor: 7.124

6.  Automated Risk Assessment for School Violence: a Pilot Study.

Authors:  Drew Barzman; Yizhao Ni; Marcus Griffey; Alycia Bachtel; Kenneth Lin; Hannah Jackson; Michael Sorter; Melissa DelBello
Journal:  Psychiatr Q       Date:  2018-12

7.  Increasing the efficiency of trial-patient matching: automated clinical trial eligibility pre-screening for pediatric oncology patients.

Authors:  Yizhao Ni; Jordan Wright; John Perentesis; Todd Lingren; Louise Deleger; Megan Kaiser; Isaac Kohane; Imre Solti
Journal:  BMC Med Inform Decis Mak       Date:  2015-04-14       Impact factor: 2.796

8.  An end-to-end hybrid algorithm for automated medication discrepancy detection.

Authors:  Qi Li; Stephen Andrew Spooner; Megan Kaiser; Nataline Lingren; Jessica Robbins; Todd Lingren; Huaxiu Tang; Imre Solti; Yizhao Ni
Journal:  BMC Med Inform Decis Mak       Date:  2015-05-06       Impact factor: 2.796

9.  What's In a Note: Construction of a Suicide Note Corpus.

Authors:  John P Pestian; Pawel Matykiewicz; Michelle Linn-Gust
Journal:  Biomed Inform Insights       Date:  2012-11-05

10.  Interrater reliability: the kappa statistic.

Authors:  Mary L McHugh
Journal:  Biochem Med (Zagreb)       Date:  2012       Impact factor: 2.313

View more
  2 in total

Review 1.  Artificial intelligence: A rapid case for advancement in the personalization of Gynaecology/Obstetric and Mental Health care.

Authors:  Gayathri Delanerolle; Xuzhi Yang; Suchith Shetty; Vanessa Raymont; Ashish Shetty; Peter Phiri; Dharani K Hapangama; Nicola Tempest; Kingshuk Majumder; Jian Qing Shi
Journal:  Womens Health (Lond)       Date:  2021 Jan-Dec

Review 2.  Technology-Based Mental Health Interventions for Domestic Violence Victims Amid COVID-19.

Authors:  Zhaohui Su; Ali Cheshmehzangi; Dean McDonnell; Hengcai Chen; Junaid Ahmad; Sabina Šegalo; Claudimar Pereira da Veiga
Journal:  Int J Environ Res Public Health       Date:  2022-04-03       Impact factor: 3.390

  2 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.