Herrera Lara Maria, Strapasson Raíssa Ananda Paim, da Silva Jorge Vicente Lopes, Melani Rodolfo Francisco Haltenhoff
Department of Community Dentistry, School of Dentistry, University of São Paulo, Avenida Professor Lineu Prestes, 2227, São Paulo, SP 05508-000, Brazil; Department of Community Dentistry, Araraquara School of Dentistry, São Paulo State University, Rua Humaitá, 1680, Araraquara, SP 14801-903, Brazil.
Department of Community Dentistry, School of Dentistry, University of São Paulo, Avenida Professor Lineu Prestes, 2227, São Paulo, SP 05508-000, Brazil.
Forensic Sci Int. 2016 Sep;266:311-319. doi: 10.1016/j.forsciint.2016.06.015. Epub 2016 Jun 17.
Facial soft tissue thicknesses (FSTT) are important guidelines for modeling faces from skull. Amid so many FSTT data, Forensic artists have to make a subjective choice of a dataset that best meets their needs. This study investigated the performance of four FSTT datasets in the recognition and resemblance of Brazilian living individuals and the performance of assessors in recognizing people, according to sex and knowledge on Human Anatomy and Forensic Dentistry. Sixteen manual facial approximations (FAs) were constructed using three-dimensional (3D) prototypes of skulls (targets). The American method was chosen for the construction of the faces. One hundred and twenty participants evaluated all FAs by means of recognition and resemblance tests. This study showed higher proportions of recognition by FAs conducted with FSTT data from cadavers compared with those conducted with medical imaging data. Targets were also considered more similar to FAs conducted with FSTT data from cadavers. Nose and face shape, respectively, were considered the most similar regions to targets. The sex of assessors (male and female) and the knowledge on Human Anatomy and Forensic Dentistry did not play a determinant role to reach greater recognition rates. It was possible to conclude that FSTT data obtained from imaging may not facilitate recognition and establish acceptable level of resemblance. Grouping FSTT data by regions of the face, as proposed in this paper, may contribute to more accurate FAs.
面部软组织厚度(FSTT)是从颅骨对面部进行建模的重要指导原则。在众多FSTT数据中,法医艺术家必须主观选择最符合其需求的数据集。本研究根据性别以及人体解剖学和法医牙科学知识,调查了四个FSTT数据集在识别巴西在世个体以及评估者识别人员方面的表现。使用颅骨(目标)的三维(3D)原型构建了16个手动面部复原模型(FAs)。选择美国方法来构建面部。120名参与者通过识别和相似度测试对所有FAs进行了评估。本研究表明,与使用医学影像数据进行的面部复原相比,使用尸体FSTT数据进行的面部复原具有更高的识别比例。目标也被认为与使用尸体FSTT数据进行的面部复原更为相似。鼻子和面部形状分别被认为是与目标最相似的区域。评估者的性别(男性和女性)以及人体解剖学和法医牙科学知识在获得更高识别率方面并未起到决定性作用。可以得出结论,从影像中获取的FSTT数据可能不利于识别,也无法建立可接受的相似度水平。如本文所提议的,按面部区域对面部软组织厚度数据进行分组,可能有助于更准确的面部复原。