利用人工神经网络通过胸骨部分长度进行性别估计。

Sex estimation using sternum part lenghts by means of artificial neural networks.

作者信息

Oner Zulal, Turan Muhammed Kamil, Oner Serkan, Secgin Yusuf, Sahin Bunyamin

机构信息

Faculty of Medicine Department of Anatomy, Karabuk University, Karabük, Turkey.

Faculty of Medicine Department of Medical Biology, Karabuk University, Karabük, Turkey.

出版信息

Forensic Sci Int. 2019 Aug;301:6-11. doi: 10.1016/j.forsciint.2019.05.011. Epub 2019 May 10.

Abstract

In addition to the pelvis, cranium and phalanges, the sternum is also used for postmortem sex identification. Bone measurements may be obtained on cadaveric bones. Alternatively, computerized tomography may be used to obtain measurements close to the original ones. Moreover, usage of artificial neural networks (ANNs) in the field of medicine has started to provide new horizons. In this study, we aimed to identify sex by an ANN using lengths of manubrium sterni (MSL), corpus sterni (CSL) and processus xiphoideus (XPL) and sternal angle (SA) from computerized tomography (CT) images brought to an orthogonal plane. This study used the thin-slice thoracic CT images of 422 cases (213 female, 209 male) with an age range of 27-60 years brought to the orthogonal plane. Measurements of MSL, CSL, XPL and SA were analyzed with a multilayer artificial neural network that used stochastic gradient descent (SGD) for optimization and two hidden layers. MSL, CSL and XPL were longer, and SA was wider in men (MSL p = 0.000, CSL p = 0.000, XPL p = 0.000, SA p = 0.02). In the case of the two hidden layers of the network with 20 and 14 neurons in the hidden layers, respectively, learning rate of 0.1 and momentum coefficient of 0.9, the accuracy (Acc) of sex prediction was 0.906. In order to define a more realistic performance of the network, bootstrap was run with the confidence interval of 94%. A sensitivity (Sen) value of 0.91 and a specificity (Spe) value of 0.90 were calculated. The success rates that were achieved in sex identification with measurements on the skeleton using ANN were observed to be higher than those achieved by linear models. Also, sometimes all parts of the bones may not be found or might be deformed. In this case, the number of parameters used for the estimation will be incomplete. The ANN has the strong advantage to be able to estimate despite the missing parameter.

摘要

除骨盆、颅骨和指骨外,胸骨也用于死后性别鉴定。可在尸体骨骼上进行骨骼测量。或者,可使用计算机断层扫描来获取接近原始值的测量结果。此外,人工神经网络(ANNs)在医学领域的应用已开始展现新前景。在本研究中,我们旨在通过人工神经网络,利用从计算机断层扫描(CT)图像中获取的胸骨柄长度(MSL)、胸骨体长度(CSL)、剑突长度(XPL)和胸骨角(SA)来鉴定性别,这些图像已被调整至正交平面。本研究使用了422例年龄在27至60岁之间的病例(213例女性,209例男性)的薄层胸部CT图像,并将其调整至正交平面。使用随机梯度下降(SGD)进行优化且具有两个隐藏层的多层人工神经网络对MSL、CSL、XPL和SA的测量值进行了分析。男性的MSL、CSL和XPL更长,SA更宽(MSL p = 0.000,CSL p = 0.000,XPL p = 0.000,SA p = 0.02)。在网络的两个隐藏层分别有20个和14个神经元、学习率为0.1且动量系数为0.9的情况下,性别预测的准确率(Acc)为0.906。为了定义网络更实际的性能,进行了置信区间为94%的自助法。计算得出灵敏度(Sen)值为0.91,特异度(Spe)值为0.90。观察到使用人工神经网络通过骨骼测量进行性别鉴定所取得的成功率高于线性模型所取得的成功率。此外,有时骨骼的所有部分可能无法找到或可能变形。在这种情况下,用于估计的参数数量将不完整。人工神经网络具有即使参数缺失也能进行估计的强大优势。

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