Catic Aida, Gurbeta Lejla, Kurtovic-Kozaric Amina, Mehmedbasic Senad, Badnjevic Almir
Department of Genetics and Bioengineering, International Burch University, Francuske revolucije bb, Ilidza, 71210, Sarajevo, Bosnia and Herzegovina.
Institute for Gynecology, Perinatology and Infertility "Mehmedbasic", Grbavicka 6a, 71000, Sarajevo, Bosnia and Herzegovina.
BMC Med Genomics. 2018 Feb 13;11(1):19. doi: 10.1186/s12920-018-0333-2.
The usage of Artificial Neural Networks (ANNs) for genome-enabled classifications and establishing genome-phenotype correlations have been investigated more extensively over the past few years. The reason for this is that ANNs are good approximates of complex functions, so classification can be performed without the need for explicitly defined input-output model. This engineering tool can be applied for optimization of existing methods for disease/syndrome classification. Cytogenetic and molecular analyses are the most frequent tests used in prenatal diagnostic for the early detection of Turner, Klinefelter, Patau, Edwards and Down syndrome. These procedures can be lengthy, repetitive; and often employ invasive techniques so a robust automated method for classifying and reporting prenatal diagnostics would greatly help the clinicians with their routine work.
The database consisted of data collected from 2500 pregnant woman that came to the Institute of Gynecology, Infertility and Perinatology "Mehmedbasic" for routine antenatal care between January 2000 and December 2016. During first trimester all women were subject to screening test where values of maternal serum pregnancy-associated plasma protein A (PAPP-A) and free beta human chorionic gonadotropin (β-hCG) were measured. Also, fetal nuchal translucency thickness and the presence or absence of the nasal bone was observed using ultrasound.
The architectures of linear feedforward and feedback neural networks were investigated for various training data distributions and number of neurons in hidden layer. Feedback neural network architecture out performed feedforward neural network architecture in predictive ability for all five aneuploidy prenatal syndrome classes. Feedforward neural network with 15 neurons in hidden layer achieved classification sensitivity of 92.00%. Classification sensitivity of feedback (Elman's) neural network was 99.00%. Average accuracy of feedforward neural network was 89.6% and for feedback was 98.8%.
The results presented in this paper prove that an expert diagnostic system based on neural networks can be efficiently used for classification of five aneuploidy syndromes, covered with this study, based on first trimester maternal serum screening data, ultrasonographic findings and patient demographics. Developed Expert System proved to be simple, robust, and powerful in properly classifying prenatal aneuploidy syndromes.
在过去几年中,人工神经网络(ANNs)在基于基因组的分类以及建立基因组 - 表型相关性方面的应用得到了更广泛的研究。原因在于人工神经网络是复杂函数的良好近似,因此无需明确界定输入输出模型即可进行分类。这种工程工具可用于优化现有的疾病/综合征分类方法。细胞遗传学和分子分析是产前诊断中用于早期检测特纳综合征、克兰费尔特综合征、帕陶综合征、爱德华兹综合征和唐氏综合征最常用的检测方法。这些程序可能冗长、重复,且常常采用侵入性技术,因此一种强大的自动分类和报告产前诊断结果的方法将极大地帮助临床医生开展日常工作。
该数据库由2000年1月至2016年12月期间到“穆罕默德巴希奇”妇科、不孕症与围产医学研究所进行常规产前检查的2500名孕妇收集的数据组成。在孕早期,所有女性都接受了筛查测试,测量了母体血清妊娠相关血浆蛋白A(PAPP - A)和游离β人绒毛膜促性腺激素(β - hCG)的值。此外,通过超声观察胎儿颈部透明带厚度以及鼻骨的有无。
针对各种训练数据分布和隐藏层神经元数量,研究了线性前馈神经网络和反馈神经网络的架构。在所有五种非整倍体产前综合征类别的预测能力方面,反馈神经网络架构优于前馈神经网络架构。隐藏层有15个神经元的前馈神经网络实现了92.00%的分类灵敏度。反馈(埃尔曼)神经网络的分类灵敏度为99.00%。前馈神经网络的平均准确率为89.6%,反馈神经网络的平均准确率为98.8%。
本文给出的结果证明,基于神经网络的专家诊断系统可有效地用于根据孕早期母体血清筛查数据、超声检查结果和患者人口统计学信息对本研究涵盖的五种非整倍体综合征进行分类。所开发的专家系统在正确分类产前非整倍体综合征方面被证明是简单、强大且可靠的。