Prediction of gender by odontometric data using logistic regression analysis


Original Article

Author Details : Mrinal Mayank, Samhita Bijlani, Dinraj Kulkarni, Aamera Mulla, Gaganjot Kaur Sharma, Manish Sharma

Volume : 4, Issue : 2, Year : 2016

Article Page : 157-161


Suggest article by email

Get Permission

Abstract

Introduction: Determination of gender by anthropologists can be done by various methods e.g. skull bones, pelvic bones and other skeletal determinants. Assessment of odontometric data is a promising tool for gender prediction, which is usually preserved due to its robust nature.
Aim and Objectives: The objective of the study was to predict the gender of an individual, using the odontometric data with powerful statistical tools like Logistic Regression Analysis (LRA) and Discriminant Analysis (DA).
Materials & Methods: 100 subjects were selected (50 male and 50 female) within the age group of 18-28 years. An alginate impression was made and models were prepared. The odontometric data was collected in the form of various mesiodistal and buccolingual measurements with Vernier calipers which was subjected to statistical analysis, using the two tests LRA and DA. Thereafter, results were compared for accurate gender prediction.
Results: The statistical analysis of the measurements obtained was done by using two tests logistic regression analysis and discriminant analysis. After analysis and comparisons of the two methods for gender prediction, it was observed that LRA provides more accurate prediction than DA in determining the gender. Also, when data from both the arches was analyzed, it was more accurate in predicting the gender as in comparison to the analysis from either of the arch.
Conclusion: The study has revealed that LRA may be better than DA for odontometric sex prediction. Overall, the results depict that the complete dentition, when used as a unit and through the application of flexible multivariate statistics such as LRA, has potential for its use as a prominent and sole indicator of sex prediction.

Keywords: Forensic Odontology; Logistic Regression Analysis; Discriminant Analysis; Gender Prediction; Odontometric Data


How to cite : Mayank M, Bijlani S, Kulkarni D, Mulla A, Sharma G K, Sharma M, Prediction of gender by odontometric data using logistic regression analysis. J Dent Spec 2016;4(2):157-161


This is an Open Access (OA) journal, and articles are distributed under the terms of the Creative Commons Attribution-NonCommercial-ShareAlike 4.0 License, which allows others to remix, tweak, and build upon the work non-commercially, as long as appropriate credit is given and the new creations are licensed under the identical terms.







View Article

PDF File  


Copyright permission

Get article permission for commercial use

Downlaod

PDF File    






Article Access statistics

Viewed: 1662

PDF Downloaded: 364



Medical Abbreviation List