Javascript must be enabled to continue!
Stature Prediction from Handprint Measurements: Searching for New Parameters
View through CrossRef
AbstractBackground:Handprints are a common finding in crime scenes. Estimating stature is one of the four pillars of establishing the identity of an unknown individual.Aims:The commonly used parameters – hand length and hand breadth were tested. In addition, new parameters, namely hypothenar (HC) and thenar curvatures (TC) and palm area (PA) were examined for their usefulness in stature prediction.Subjects and Methods:A sample from the Jordanian population was used for this study. Regression analysis was employed to evaluate the accuracy of predicting stature from a handprint. Seventy-five male and female hands were scanned and processed to measure 10 parameters.Results:The results indicated that male stature and all parameters were significantly larger than their female counterparts. Regression analysis predicted the stature with a standard error of estimate of 2.09–3.90 cm in males and 5.68–3.72 cm in females. Multiple regression analysis showed a significant improvement in stature estimation.Conclusions:This study represents the first attempt to estimate stature using handprints in the Jordanian population. The newly tested parameters (HC, TC, and PA) contributed to the prediction of stature. One limitation of this study is that the research group was confined to university students aged 18–24 years.
Title: Stature Prediction from Handprint Measurements: Searching for New Parameters
Description:
AbstractBackground:Handprints are a common finding in crime scenes.
Estimating stature is one of the four pillars of establishing the identity of an unknown individual.
Aims:The commonly used parameters – hand length and hand breadth were tested.
In addition, new parameters, namely hypothenar (HC) and thenar curvatures (TC) and palm area (PA) were examined for their usefulness in stature prediction.
Subjects and Methods:A sample from the Jordanian population was used for this study.
Regression analysis was employed to evaluate the accuracy of predicting stature from a handprint.
Seventy-five male and female hands were scanned and processed to measure 10 parameters.
Results:The results indicated that male stature and all parameters were significantly larger than their female counterparts.
Regression analysis predicted the stature with a standard error of estimate of 2.
09–3.
90 cm in males and 5.
68–3.
72 cm in females.
Multiple regression analysis showed a significant improvement in stature estimation.
Conclusions:This study represents the first attempt to estimate stature using handprints in the Jordanian population.
The newly tested parameters (HC, TC, and PA) contributed to the prediction of stature.
One limitation of this study is that the research group was confined to university students aged 18–24 years.
Related Results
Development of Formulae to Determine Living Stature using Handprint Anthropometry of Tagalog People in the Philippines
Development of Formulae to Determine Living Stature using Handprint Anthropometry of Tagalog People in the Philippines
Highlights:
1. This is the first-ever anthropological study on Tagalog people in the Philippines that has established formulae for determining stature using handprint length measur...
FREQUENCY OF IDIOPATHIC SHORT STATURE AT PEDIATRIC ENDOCRINE CLINIC IN A TERTIARY CARE HOSPITAL AT LAHORE
FREQUENCY OF IDIOPATHIC SHORT STATURE AT PEDIATRIC ENDOCRINE CLINIC IN A TERTIARY CARE HOSPITAL AT LAHORE
Background: Short stature of children is a very common concern for the parents in developing countries. Short stature is defined as “Height which is less than 2 standard deviations...
Relationship between Cephalofacial Anthropometry and Stature among Adults of Bade Tribe in Faga Town, Bade Local Government Area, Yobe State, Nigeria
Relationship between Cephalofacial Anthropometry and Stature among Adults of Bade Tribe in Faga Town, Bade Local Government Area, Yobe State, Nigeria
Background and Aim: Cephalofacial anthropometry involves measurements of parameters on the skull and face. The dimensions of the head and face are dependent on various factors, suc...
Estimation of Stature from Arm Span: A Prospective Study Among Medical Students of Rangpur Medical College
Estimation of Stature from Arm Span: A Prospective Study Among Medical Students of Rangpur Medical College
Background: Arm span is one of the most reliable body parameters for predicting the stature of an individual. It is useful in an age-related loss in stature and in identifying indi...
Stature Estimation of an Individual Using Nasal, Facial, and Palatal Height among Tamil Nadu Population
Stature Estimation of an Individual Using Nasal, Facial, and Palatal Height among Tamil Nadu Population
Background:
Stature estimation in human identification has a significant forensic importance. The stature correlates positively with bones or human body parts. Measurem...
Stature Estimation from Anthropometry of Foot in Adults of Border Areas of Punjab
Stature Estimation from Anthropometry of Foot in Adults of Border Areas of Punjab
Background: Stature is one of the various parameters of identification of the individuality of a person. Estimation of stature from various measurements of the body is of value in ...
Estimation of Stature from Stride Length and Lower Limb Length of Efiks in Calabar South, Cross River State, South-South Nigeria
Estimation of Stature from Stride Length and Lower Limb Length of Efiks in Calabar South, Cross River State, South-South Nigeria
Introduction:
The stride length of individuals is believed to correlate with their stature. The aim of the present study was to estimate stature using stride length and...
Stature Estimation from the Measures of Upper Limb Segments in Hisar Population Migrated from India
Stature Estimation from the Measures of Upper Limb Segments in Hisar Population Migrated from India
Background: The relationship between stature and various body segments has long been utilized in forensic anthropology to estimate height from partial remains in medico-legal cases...

