Literature DB >> 23206504

Development and evaluation of a Naïve Bayesian model for coding causation of workers' compensation claims.

S J Bertke1, A R Meyers, S J Wurzelbacher, J Bell, M L Lampl, D Robins.   

Abstract

INTRODUCTION: Tracking and trending rates of injuries and illnesses classified as musculoskeletal disorders caused by ergonomic risk factors such as overexertion and repetitive motion (MSDs) and slips, trips, or falls (STFs) in different industry sectors is of high interest to many researchers. Unfortunately, identifying the cause of injuries and illnesses in large datasets such as workers' compensation systems often requires reading and coding the free form accident text narrative for potentially millions of records.
METHOD: To alleviate the need for manual coding, this paper describes and evaluates a computer auto-coding algorithm that demonstrated the ability to code millions of claims quickly and accurately by learning from a set of previously manually coded claims.
CONCLUSIONS: The auto-coding program was able to code claims as a musculoskeletal disorders, STF or other with approximately 90% accuracy. IMPACT ON INDUSTRY: The program developed and discussed in this paper provides an accurate and efficient method for identifying the causation of workers' compensation claims as a STF or MSD in a large database based on the unstructured text narrative and resulting injury diagnoses. The program coded thousands of claims in minutes. The method described in this paper can be used by researchers and practitioners to relieve the manual burden of reading and identifying the causation of claims as a STF or MSD. Furthermore, the method can be easily generalized to code/classify other unstructured text narratives. Published by Elsevier Ltd.

Entities:  

Mesh:

Year:  2012        PMID: 23206504      PMCID: PMC4550086          DOI: 10.1016/j.jsr.2012.10.012

Source DB:  PubMed          Journal:  J Safety Res        ISSN: 0022-4375


  3 in total

1.  Computerized coding of injury narrative data from the National Health Interview Survey.

Authors:  Helen M Wellman; Mark R Lehto; Gary S Sorock; Gordon S Smith
Journal:  Accid Anal Prev       Date:  2004-03

2.  Bayesian methods: a useful tool for classifying injury narratives into cause groups.

Authors:  M Lehto; H Marucci-Wellman; H Corns
Journal:  Inj Prev       Date:  2009-08       Impact factor: 2.399

3.  A combined Fuzzy and Naive Bayesian strategy can be used to assign event codes to injury narratives.

Authors:  H Marucci-Wellman; M Lehto; H Corns
Journal:  Inj Prev       Date:  2011-04-11       Impact factor: 2.399

  3 in total
  10 in total

1.  Occupational injuries in Ohio wood product manufacturing: a descriptive analysis with emphasis on saw-related injuries and associated causes.

Authors:  Lindsay Beery; James R Harris; James W Collins; Richard S Current; Alfred A Amendola; Alysha R Meyers; Steven J Wurzelbacher; Mike Lampl; Stephen J Bertke
Journal:  Am J Ind Med       Date:  2014-08-14       Impact factor: 2.214

2.  Applying Machine Learning to Workers' Compensation Data to Identify Industry-Specific Ergonomic and Safety Prevention Priorities: Ohio, 2001 to 2011.

Authors:  Alysha R Meyers; Ibraheem S Al-Tarawneh; Steven J Wurzelbacher; P Timothy Bushnell; Michael P Lampl; Jennifer L Bell; Stephen J Bertke; David C Robins; Chih-Yu Tseng; Chia Wei; Jill A Raudabaugh; Teresa M Schnorr
Journal:  J Occup Environ Med       Date:  2018-01       Impact factor: 2.162

3.  Harnessing information from injury narratives in the 'big data' era: understanding and applying machine learning for injury surveillance.

Authors:  Kirsten Vallmuur; Helen R Marucci-Wellman; Jennifer A Taylor; Mark Lehto; Helen L Corns; Gordon S Smith
Journal:  Inj Prev       Date:  2016-01-04       Impact factor: 2.399

4.  Computerized "Learn-As-You-Go" classification of traumatic brain injuries using NEISS narrative data.

Authors:  Wei Chen; Krista K Wheeler; Simon Lin; Yungui Huang; Huiyun Xiang
Journal:  Accid Anal Prev       Date:  2016-02-03

5.  Workers' compensation claim counts and rates by injury event/exposure among state-insured private employers in Ohio, 2007-2017.

Authors:  Steven J Wurzelbacher; Alysha R Meyers; Michael P Lampl; P Timothy Bushnell; Stephen J Bertke; David C Robins; Chih-Yu Tseng; Steven J Naber
Journal:  J Safety Res       Date:  2021-09-17

6.  Comparison of methods for auto-coding causation of injury narratives.

Authors:  S J Bertke; A R Meyers; S J Wurzelbacher; A Measure; M P Lampl; D Robins
Journal:  Accid Anal Prev       Date:  2015-12-30

7.  Testing and Validating Semi-automated Approaches to the Occupational Exposure Assessment of Polycyclic Aromatic Hydrocarbons.

Authors:  Albeliz Santiago-Colón; Carissa M Rocheleau; Stephen Bertke; Annette Christianson; Devon T Collins; Emma Trester-Wilson; Wayne Sanderson; Martha A Waters; Jennita Reefhuis
Journal:  Ann Work Expo Health       Date:  2021-07-03       Impact factor: 2.179

8.  Injury narrative text classification using factorization model.

Authors:  Lin Chen; Kirsten Vallmuur; Richi Nayak
Journal:  BMC Med Inform Decis Mak       Date:  2015-05-20       Impact factor: 2.796

9.  Association Mining of Near Misses in Hydropower Engineering Construction Based on Convolutional Neural Network Text Classification.

Authors:  Shu Chen; Junbo Xi; Yun Chen; Jinfan Zhao
Journal:  Comput Intell Neurosci       Date:  2022-01-03

10.  Wearable Devices for Classification of Inadequate Posture at Work Using Neural Networks.

Authors:  Eya Barkallah; Johan Freulard; Martin J-D Otis; Suzy Ngomo; Johannes C Ayena; Christian Desrosiers
Journal:  Sensors (Basel)       Date:  2017-09-01       Impact factor: 3.576

  10 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.