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Placental determinants of fetal growth: identification of key factors in the insulin-like growth factor and cytokine systems using artificial neural networks

机译:胎盘决定胎儿生长:使用人工神经网络识别胰岛素样生长因子和细胞因子系统中的关键因子

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Background Changes and relationships of components of the cytokine and IGF systems have been shown in placenta and cord serum of fetal growth restricted (FGR) compared with normal newborns (AGA). This study aimed to analyse a data set of clinical and biochemical data in FGR and AGA newborns to assess if a mathematical model existed and was capable of identifying these two different conditions in order to identify the variables which had a mathematically consistent biological relevance to fetal growth. Methods Whole villous tissue was collected at birth from FGR (N = 20) and AGA neonates (N = 28). Total RNA was extracted, reverse transcribed and then real-time quantitative (TaqMan) RT-PCR was performed to quantify cDNA for IGF-I, IGF-II, IGFBP-1, IGFBP-2 and IL-6. The corresponding proteins with TNF-α in addition were assayed in placental lysates using specific kits. The data were analysed using Artificial Neural Networks (supervised networks), and principal component analysis and connectivity map. Results The IGF system and IL-6 allowed to predict FGR in approximately 92% of the cases and AGA in 85% of the cases with a low number of errors. IGF-II, IGFBP-2, and IL-6 content in the placental lysates were the most important factors connected with FGR. The condition of being FGR was connected mainly with the IGF-II placental content, and the latter with IL-6 and IGFBP-2 concentrations in placental lysates. Conclusion These results suggest that further research in humans should focus on these biochemical data. Furthermore, this study offered a critical revision of previous studies. The understanding of this system biology is relevant to the development of future therapeutical interventions possibly aiming at reducing IL-6 and IGFBP-2 concentrations preserving IGF bioactivity in both placenta and fetus.
机译:与正常新生儿(AGA)相比,胎儿生长受限(FGR)的胎盘和脐带血清中已显示出细胞因子和IGF系统组成的变化及其相互关系。这项研究旨在分析FGR和AGA新生儿的临床和生化数据集,以评估是否存在数学模型并且能够识别这两种不同情况,从而识别出与胎儿生长在数学上具有生物学相关性的变量。方法收集出生时FGR(N = 20)和AGA新生儿(N = 28)的完整绒毛组织。提取总RNA,逆转录,然后进行实时定量(TaqMan)RT-PCR定量IGF-I,IGF-II,IGFBP-1,IGFBP-2和IL-6的cDNA。使用特定试剂盒在胎盘裂解液中测定了另外具有TNF-α的相应蛋白质。使用人工神经网络(监督网络),主成分分析和连接图对数据进行了分析。结果IGF系统和IL-6可以在大约92%的病例中预测FGR,而在85%的病例中可以预测AGA,且错误率较低。胎盘裂解物中的IGF-II,IGFBP-2和IL-6含量是与FGR相关的最重要因素。 FGR的状况主要与IGF-II胎盘的含量有关,而后者与胎盘裂解物中IL-6和IGFBP-2的浓度有关。结论这些结果表明,人类的进一步研究应集中在这些生化数据上。此外,该研究对以前的研究进行了重要的修订。对这种系统生物学的理解与未来治疗性干预的发展有关,可能旨在降低IL-6和IGFBP-2的浓度,从而在胎盘和胎儿中均保持IGF的生物活性。

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