A systematic review of statistical models and outcomes of predicting fatal and serious injury crashes from driver crash and offense history data

Abstract Background Expenditure on driver-related behavioral interventions and road use policy is often justified by their impact on the frequency of fatal and serious injury crashes. Given the rarity of fatal and serious injury crashes, offense history, and crash history of drivers are sometimes us...

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Main Authors: Reneta Slikboer, Samuel D. Muir, S. S. M. Silva, Denny Meyer
Format: Article
Language:English
Published: BMC 2020-09-01
Series:Systematic Reviews
Subjects:
Online Access:http://link.springer.com/article/10.1186/s13643-020-01475-7
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spelling doaj-9256adacc9f04c8499badbc1567333d12020-11-25T03:57:02ZengBMCSystematic Reviews2046-40532020-09-019111510.1186/s13643-020-01475-7A systematic review of statistical models and outcomes of predicting fatal and serious injury crashes from driver crash and offense history dataReneta Slikboer0Samuel D. Muir1S. S. M. Silva2Denny Meyer3Centre for Mental Health, Faculty of Health Arts and Design, Swinburne University of TechnologyCentre for Mental Health, Faculty of Health Arts and Design, Swinburne University of TechnologyCentre for Mental Health, Faculty of Health Arts and Design, Swinburne University of TechnologyCentre for Mental Health, Faculty of Health Arts and Design, Swinburne University of TechnologyAbstract Background Expenditure on driver-related behavioral interventions and road use policy is often justified by their impact on the frequency of fatal and serious injury crashes. Given the rarity of fatal and serious injury crashes, offense history, and crash history of drivers are sometimes used as an alternative measure of the impact of interventions and changes to policy. The primary purpose of this systematic review was to assess the rigor of statistical modeling used to predict fatal and serious crashes from offense history and crash history using a purpose-made quality assessment tool. A secondary purpose was to explore study outcomes. Methods Only studies that used observational data and presented a statistical model of crash prediction from offense history or crash history were included. A quality assessment tool was developed for the systematic evaluation of statistical quality indicators across studies. The search was conducted in June 2019. Results One thousand one hundred and five unique records were identified, 252 full texts were screened for inclusion, resulting in 20 studies being included in the review. The results indicate substantial and important limitations in the modeling methods used. Most studies demonstrated poor statistical rigor ranging from low to middle quality. There was a lack of confidence in published findings due to poor variable selection, poor adherence to statistical assumptions relating to multicollinearity, and lack of validation using new data. Conclusions It was concluded that future research should consider machine learning to overcome correlations in the data, use rigorous vetting procedures to identify predictor variables, and validate statistical models using new data to improve utility and generalizability of models. Systematic review registration PROSPERO CRD42019137081http://link.springer.com/article/10.1186/s13643-020-01475-7Systematic reviewQuality assessment toolCrashTrafficOffenseStatistics
collection DOAJ
language English
format Article
sources DOAJ
author Reneta Slikboer
Samuel D. Muir
S. S. M. Silva
Denny Meyer
spellingShingle Reneta Slikboer
Samuel D. Muir
S. S. M. Silva
Denny Meyer
A systematic review of statistical models and outcomes of predicting fatal and serious injury crashes from driver crash and offense history data
Systematic Reviews
Systematic review
Quality assessment tool
Crash
Traffic
Offense
Statistics
author_facet Reneta Slikboer
Samuel D. Muir
S. S. M. Silva
Denny Meyer
author_sort Reneta Slikboer
title A systematic review of statistical models and outcomes of predicting fatal and serious injury crashes from driver crash and offense history data
title_short A systematic review of statistical models and outcomes of predicting fatal and serious injury crashes from driver crash and offense history data
title_full A systematic review of statistical models and outcomes of predicting fatal and serious injury crashes from driver crash and offense history data
title_fullStr A systematic review of statistical models and outcomes of predicting fatal and serious injury crashes from driver crash and offense history data
title_full_unstemmed A systematic review of statistical models and outcomes of predicting fatal and serious injury crashes from driver crash and offense history data
title_sort systematic review of statistical models and outcomes of predicting fatal and serious injury crashes from driver crash and offense history data
publisher BMC
series Systematic Reviews
issn 2046-4053
publishDate 2020-09-01
description Abstract Background Expenditure on driver-related behavioral interventions and road use policy is often justified by their impact on the frequency of fatal and serious injury crashes. Given the rarity of fatal and serious injury crashes, offense history, and crash history of drivers are sometimes used as an alternative measure of the impact of interventions and changes to policy. The primary purpose of this systematic review was to assess the rigor of statistical modeling used to predict fatal and serious crashes from offense history and crash history using a purpose-made quality assessment tool. A secondary purpose was to explore study outcomes. Methods Only studies that used observational data and presented a statistical model of crash prediction from offense history or crash history were included. A quality assessment tool was developed for the systematic evaluation of statistical quality indicators across studies. The search was conducted in June 2019. Results One thousand one hundred and five unique records were identified, 252 full texts were screened for inclusion, resulting in 20 studies being included in the review. The results indicate substantial and important limitations in the modeling methods used. Most studies demonstrated poor statistical rigor ranging from low to middle quality. There was a lack of confidence in published findings due to poor variable selection, poor adherence to statistical assumptions relating to multicollinearity, and lack of validation using new data. Conclusions It was concluded that future research should consider machine learning to overcome correlations in the data, use rigorous vetting procedures to identify predictor variables, and validate statistical models using new data to improve utility and generalizability of models. Systematic review registration PROSPERO CRD42019137081
topic Systematic review
Quality assessment tool
Crash
Traffic
Offense
Statistics
url http://link.springer.com/article/10.1186/s13643-020-01475-7
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