scholarly journals Comparison of Prediction Models for Mortality Related to Injuries from Road Traffic Accidents after Correcting for Undersampling

Author(s):  
Yookyung Boo ◽  
Youngjin Choi

In this study, four models—logistic regression (LR), random forest (RF), linear support vector machine (SVM), and radial basis function (RBF)-SVM—were compared for their accuracy in determining mortality caused by road traffic injuries. They were tested using five years of national-level data from the Korea Disease Control and Prevention Agency’s (KDCA) National Hospital Discharge In-Depth Survey (2013 through to 2017). Model performance was measured for accuracy, precision, recall, F1 score, and Brier score metrics using classification analysis that included characteristics of patients, accidents, injuries, and illnesses. Due to the number of variables and differing units, the rates of survival and mortality related to road traffic accidents were imbalanced, so the data was corrected and standardized before the classification models’ performances were compared. Using the importance analysis, the main diagnosis, the type of injury, the site of the injury, the type of injury, the operation status, the type of accident, the role at the time of the accident, and the sex were selected as the analysis factors. The biggest contributing factor was the role in the accident, which is the driver, and the major sites of the injuries were head injuries and deep injuries. Using selected factors, comparisons of the classification performance of each model indicated RBF-SVM and RF models were superior to the others. Of the SVM models, the RBF kernel model was superior to the linear kernel model; it can be inferred that the performance of the high-dimensional transformed RBF model is superior when the dimension is complex because of the use of multiple variables. The findings suggest there are limitations to analyses involving imbalanced, multidimensional original data, such as data on road traffic mortality. Thus, analyses must be performed after imbalances are corrected.

2022 ◽  
Vol 12 (2) ◽  
pp. 828
Author(s):  
Tebogo Bokaba ◽  
Wesley Doorsamy ◽  
Babu Sena Paul

Road traffic accidents (RTAs) are a major cause of injuries and fatalities worldwide. In recent years, there has been a growing global interest in analysing RTAs, specifically concerned with analysing and modelling accident data to better understand and assess the causes and effects of accidents. This study analysed the performance of widely used machine learning classifiers using a real-life RTA dataset from Gauteng, South Africa. The study aimed to assess prediction model designs for RTAs to assist transport authorities and policymakers. It considered classifiers such as naïve Bayes, logistic regression, k-nearest neighbour, AdaBoost, support vector machine, random forest, and five missing data methods. These classifiers were evaluated using five evaluation metrics: accuracy, root-mean-square error, precision, recall, and receiver operating characteristic curves. Furthermore, the assessment involved parameter adjustment and incorporated dimensionality reduction techniques. The empirical results and analyses show that the RF classifier, combined with multiple imputations by chained equations, yielded the best performance when compared with the other combinations.


Author(s):  
Siddharth Rao P. S. ◽  
Sumayya Nazneen Sayyada ◽  
Souri Reddy Pyreddy

Background: Road traffic accidents (RTAs) are a major cause of misery, disability and death globally, with a disproportionate number occurring in developing countries. With COVID-19 reaching pandemic proportion, a nationwide lockdown was announced on 24 March 2020 which resulted in the complete closure vehicular movement. This study aimed to assess the impact of lockdown on the number of RTAs brought to our rural tertiary care teaching hospital situated on National highway number 65.Methods: Medico-legal records were reviewed retrospectively at Kamineni institute of medical sciences hospital. The cases were classified into two groups. The pre-lockdown group included cases reporting to casualty from 1 April 2019 to 31 July 2019. The lockdown group included cases reporting to casualty from 1 April 2020 to 31 July 2020. Patient demographics, type of injury, time of injury, mode of injury were collected for all cases and analysed using simple mathematical tools.Results: There was a significant decrease in the total number of RTAs during lockdown phases 1 and 2 and during unlocking phases 1 and 2 by 52.1%. Bike skid was the most common mode of injury. The highest number of RTAs was observed between 6 am to 6 pm and the most commonly affected gender was male especially in the age group of 15-45 years.Conclusions: RTA numbers can be reduced by strict implementation of traffic rules and better road infrastructure. One positive effect of the measures implemented to control the spread of COVID-19 was the reduction of traffic accidents and mass casualties.


In recent years, road traffic accidents (RTA) have become one of the highest national health concerns worldwide. RTA have become the leading cause of losing lives among children and youth. Recent studies have proven that Data Mining Techniques can break down the complexity that prevails between RTA and corresponding factors. In this paper, Support Vector Machine (SVM) based on Radial basis function (RBF) and Linear Kernel Function is applied to predict fatal road accidents in Lebanon. The experimental results reveal that SVM using RBF give the highest accuracy (86%) and the best AUC (86.6%). The obtained decision-making model claims to tackle the fatal RTA phenomenon.


Author(s):  
Vladimir Vladimirovich Maslyakov ◽  
Yurii Evlampievich Barachevskii ◽  
Ol'ga Nikolaevna Pavlova ◽  
Dmitrii Aleksandrovich Polikarpov ◽  
Aleksandr Vladimirovich Pimenov ◽  
...  

For achieving the set goal, the author conducted a retrospective research. The study involved the victims of road traffic accidents aged from 18 to 70 years, who suffered maxillofacial injuries; total of 150 victims over the period from 2010 to 2020. The selected topic is a pressing medical and social problem. It is observed that the number of close and open injuries received in road traffic accidents is roughly the same. However, the open injuries qualified as moderate and severe were determined in 45 (30%) cases. The data analysis indicates that in 30.7% of cases, first aid was rendered by bystanders and/or relatives of the victims, who do not have the necessary competence and knowledge for providing such aid; in another 19.3% of cases, first aid was rendered by operational services personnel (traffic police, fire and rescue divisions), who have the necessary knowledge and skills. The absence of necessary skills for rendering first aid to the victims of road traffic accident with such type of injury explains high percentage of mistakes, which amounted to 41.3%. At the same time, the operational services personnel demonstrated good results in rendering first aid; no mistakes were detected. The analysis of the common mistakes indicates the application of physical efforts in the process of removing victims from the vehicle; no special means while the victim's head was not fixated, which causes additional injuries. In six (4.0%) cases, the spoor condition of the victims was mistaken with comatose.


2020 ◽  
Vol 6 (8) ◽  
pp. 1555-1580 ◽  
Author(s):  
Khawar Khan ◽  
Syed Bilal Zaidi ◽  
Asad Ali

For past two decades many researchers have been working on quantitative as well as qualitative study of distractive driving using different approaches. Road traffic accidents have been identified as the main source of human casualties and cause of damages to the economy and society, as millions of humans is killed every year in these accidents around the world. National-level studies in Pakistan reveal that a higher percentage of males in the age group from twenty to forty years lose their lives in road traffic accidents when compared with that of females. Due to these factors, it is alarming for a society, which is highly dependent on males such as Pakistan, as these losses put numerous families into the financial crisis that lead to poverty. This study envisaged identifying whether moods and emotions play any role in road traffic accidents of young drivers. The study reviews have shown various gaps in our understanding. For this purpose, qualitative interviews of young drivers who are university going and have met some road accidents in recent years in Pakistan had been conducted. Data from the interviews had been transcribed for analysis while maintaining the anonymity of the participants for confidentiality. Analysis of the transcribed data reveals various factors that contribute to road traffic accidents where major causes are distractions, different weather conditions, sleep deprivation, unsafe lane changes, night-time driving, and these factors are triggered by the behavior when youthful drivers engage in driving for sensation seeking and self-esteem. We conclude that it is just through the appropriation of a systems approach that coordinated countermeasures can be proposed and actualized to relieve driver mistakes caused by distraction.


2021 ◽  
Vol 41 (3) ◽  
pp. 165-170
Author(s):  
Hakem Alomani ◽  
Abdulbaset Fareed ◽  
Hassan Ibrahim ◽  
Ahmed Shaltoot ◽  
Ahmed Elhalawany ◽  
...  

BACKGROUND: Trauma is one of the leading causes of pediatric mortality so the prevention of pediatric trauma is an important goal of any healthcare system. There are only a few studies on pediatric trauma in Saudi Arabia. The availability of data is vital for healthcare leaders in planning for healthcare services. OBJECTIVE: Assess the epidemiology, patterns, and outcome of trauma in the pediatric population in the Qassim region in Saudi Arabia. DESIGN: Descriptive medical records review. SETTING: A single-center, academic specialized pediatric referral hospital. PATIENTS AND METHODS: We reviewed all electronic and paper records for children (<14 years of age) admitted with a diagnosis of trauma to Maternity and Childrens Hospital (MCH) in Buraidah city in the two-year period between January 2017 and December 2018. MAIN OUTCOME MEASURE: Type of injury, length of stay, and mortality. SAMPLE SIZE: 133 children. RESULT: In this cohort, 77 cases (58%) were admitted to the pediatric intensive care unit (PICU) and 56 (42%) to the pediatric surgery ward. The median (interquartile range) age was 5 (1.1-8) years, and 92 (69%) were boys. The most frequent trauma was road traffic accidents, accounting for 70 cases (52%), followed by fall from a height for 40 (30%) cases. Traumatic brain injury was the most frequent type of injury, accounting for 56 cases (42%), and blunt abdominal trauma was in 11 cases (8.3%). Neurosurgery was the primary subspecialty actively involved in 62 cases (47%). Of the injured children who were admitted to PICU, 36 (46%) needed mechanical ventilation support, while 7 (9%) of those admitted to PICU required the insertion of intra-costal drainage. The mortality in our study was 3.7% (5 cases); 4 of 5 deaths were secondary to road traffic accidents. CONCLUSION: Pediatric trauma is a serious problem in our region with high mortality compared to international benchmarks. Road traffic accidents are the leading type of pediatric trauma, followed by falls from height. Further studies and perhaps national efforts are needed to identify ways to prevent road traffic accidents, and optimize the data registry and trauma services. LIMITATION: There were many missing data and incomplete files that affect accuracy and preclude generalization. CONFLICT OF INTEREST: None.


Author(s):  
Vladimir Vladimirovich Maslyakov ◽  
Yurii Evlampievich Barachevskii ◽  
Ol'ga Nikolaevna Pavlova ◽  
Dmitrii Aleksandrovich Polikarpov ◽  
Aleksandr Vladimirovich Pimenov ◽  
...  

For achieving the set goal, the author conducted a retrospective research. The study involved the victims of road traffic accidents aged from 18 to 70 years, who suffered maxillofacial injuries; total of 150 victims over the period from 2010 to 2020. The selected topic is a pressing medical and social problem. It is observed that the number of close and open injuries received in road traffic accidents is roughly the same. However, the open injuries qualified as moderate and severe were determined in 45 (30%) cases. The data analysis indicates that in 30.7% of cases, first aid was rendered by bystanders and/or relatives of the victims, who do not have the necessary competence and knowledge for providing such aid; in another 19.3% of cases, first aid was rendered by operational services personnel (traffic police, fire and rescue divisions), who have the necessary knowledge and skills. The absence of necessary skills for rendering first aid to the victims of road traffic accident with such type of injury explains high percentage of mistakes, which amounted to 41.3%. At the same time, the operational services personnel demonstrated good results in rendering first aid; no mistakes were detected. The analysis of the common mistakes indicates the application of physical efforts in the process of removing victims from the vehicle; no special means while the victim's head was not fixated, which causes additional injuries. In six (4.0%) cases, the spoor condition of the victims was mistaken with comatose.


2019 ◽  
Vol 17 (2) ◽  
pp. 206-208
Author(s):  
Anu Kushwaha ◽  
Pankaj Singh

Background: Road traffic accidents are the major public health problem. The objective of the study was to analyze road traffic accidents presenting in Kathmandu Medical College Emergency Department.Methods: The data from all consecutive road traffic accident cases brought to Emergency Department Kathmandu Medical College Teaching Hospital were collected from 2018 Jan-2018 June. Factors like age of the patients, time of the accident, influence of illicit substances and type of injury were documented.Results: Males (74) were common victims than the females (26). Eldest patient was 65 years of the age while youngest patient was 4 years. Most common type of injury was fracture in male 28 (37%)and laceration in females8 (38%). Alcohol intoxication was evident by positive alcohol smell test in 10 (13.6%) males and 6(23%) females. Conclusions: Road traffic accidents are major health concern in Kathmandu Medical College Teaching Hospital and preventive measures should be considered to reduce such health burden. Keywords: Alcohol; Injury;Pattern; RTA.


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