Age Estimation in Sportspersons From the Epiphyseal Fusion Around Wrist, Elbow, and Pelvic Joints

被引:0
|
作者
Hosmani, Abhijit [1 ]
Pathak, Harish [2 ]
Khartade, Harshwardhan [3 ]
Jadav, Devendra [4 ]
Shedge, Rutwik
Pawar, Mohan [5 ,6 ]
Meshram, Vikas [4 ]
机构
[1] Aundh Chest Hosp, Forens Med & Toxicol, Pune, India
[2] Seth Gordhandas Sunderdas Med Coll & King Edward M, Forens Med & Toxicol, Mumbai, India
[3] Shyam Shah Med Coll, Forens Med & Toxicol, Rewa, India
[4] All India Inst Med Sci, Forens Med & Toxicol, Jodhpur, India
[5] Natl Forens Sci Univ, Sch Forens Sci, Forens Anthropol, Agartala, India
[6] Dr Balasaheb Vikhe Patil Rural Med Coll, Forens Med & Toxicol, Ahmednagar, India
关键词
age fraud; sportsperson; bone age estimation; anthropology; forensic identification; ULNAR EPIPHYSES; DISTAL RADIUS; TIME FRAME; OSSIFICATION; RADIOGRAPHS; MRI;
D O I
10.7759/cureus.33282
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Background Age estimation of an individual is an integral part of medicolegal work. Out of many scenarios for which age estimation is performed, competitive sports is the one emerging field where experts are consulted for providing accurate age of the athlete. Owing to the chances of deliberately increasing (padding) or decreasing (shaving) the age of the athlete for his own advantage, accurate age estimation is crucial. The Sports Authority of India (SAI) mandates age verification from experts prior to participation in sports events in various age group categories. One of the widely used methods of age estimation in athletes is the radiological examination of the ossification centers of bones. Methodology The study was performed on 134 athletes (72 males and 62 females) with an age range of 12-18 years old with due permission from the Sports Authority of India (SAI) for this study. These participants compete at state, national, and international levels in squash, handball, swimming, cricket, and judo in under-14, under-16, and under-19 age categories. X-rays of the wrists, elbows, and pelvis were analyzed using the Schmeling five-stage method for the fusion of ossification centers. Results A greater degree of correlation between the fusion stages of all regions of interest and chronological age was observed in males than in females. The highest correlation in both sexes is observed between the fusion score of the head of the radius and the age (R = 0.814 for males and R = 0.647 for females). The lowest correlation for both males and females is seen between the fusion score of the lateral epicondyle of the humerus and age (R = 0.754 for males and R = 0.441 for females). Multiple linear regression models showed a standard error of estimate (SEE) of 1.093 years for the elbow joint, 1.147 years for the wrist joint, 1.039 years for the pelvis joint, and 1.030 years for all three joints. Conclusion Regression models generated for estimating the age of sportspersons from the ossification centers of the elbow, wrist, and pelvis in the present study can be applied for the age estimation of individuals aged between 12 and 18 years. Future population-specific studies on the age estimation of sportspersons with greater sample sizes are necessary to validate the findings of the present study.
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页数:9
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