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The application of artificial intelligence methods to gene expression data for differentiation of uncomplicated and complicated appendicitis in children and adolescents - a proof of concept study –

机译:人工智能方法在儿童和青少年简单和复杂的阑尾炎分化中的应用 - 概念研究证明 -

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Genome wide gene expression analysis has revealed hints for independent immunological pathways underlying the pathophysiologies of phlegmonous (PA) and gangrenous appendicitis (GA). Methods of artificial intelligence (AI) have successfully been applied to routine laboratory and sonographic parameters for differentiation of the inflammatory manifestations. In this study we aimed to apply AI methods to gene expression data to provide evidence for feasibility. Modern algorithms from AI were applied to 56.666 gene expression data sets from 13 patients with PA and 16 with GA aged 7–17?years by using resampling methods (bootstrap). Performance with respect to sensitivities and specificities where investigated with receiver operating characteristic (ROC) analysis. Within the experimental setting a best performing discriminatory biomarker signature consisting of a set of 4 genes could be defined: ERGIC and golgi 3, regulator of G-protein signaling 2, Rho GTPase activating protein 33, and Golgi Reassembly Stacking Protein 2. ROC analysis showed a mean area under the curve of 84%. Gene expression based application of AI methods is feasible and represents a promising approach for future discriminatory diagnostics in children with acute appendicitis.
机译:基因组宽基因表达分析揭示了含有胆怯(PA)和坏疽性阑尾炎(GA)的归属化学生理学的独立免疫途径的提示。人工智能(AI)的方法已成功应用于常规实验室和超声参数,以分化炎症表现。在这项研究中,我们旨在将AI方法应用于基因表达数据,以提供可行性的证据。来自AI的现代算法应用于56.666个基因表达数据集,从13名PA和16患者使用7-17岁的GA使用重采样方法(Bootstrap)。关于接收器操作特征(ROC)分析的敏感性和特异性的性能。在实验设置内,可以定义由一组4个基因组成的最佳性能歧视生物标志物签名:ERGIC和GOLGI 3,G蛋白信号传导2,RHO GTP酶活化蛋白33的调节剂和GOLGI重组堆积蛋白2. ROC分析显示曲线下的平均面积为84%。基于基因的AI方法的应用是可行的,并且代表了急性阑尾炎儿童未来歧视性诊断的有希望的方法。

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