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Deep Learning/Artificial Intelligence and Blood-Based DNA Epigenomic Prediction of Cerebral Palsy

机译:大脑麻痹的深度学习/人工智能和基于血液的DNA表观基因组预测

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摘要

The etiology of cerebral palsy (CP) is complex and remains inadequately understood. Early detection of CP is an important clinical objective as this improves long term outcomes. We performed genome-wide DNA methylation analysis to identify epigenomic predictors of CP in newborns and to investigate disease pathogenesis. Methylation analysis of newborn blood DNA using an Illumina HumanMethylation450K array was performed in 23 CP cases and 21 unaffected controls. There were 230 significantly differentially-methylated CpG loci in 258 genes. Each locus had at least 2.0-fold change in methylation in CP versus controls with a FDR p-value ≤ 0.05. Methylation level for each CpG locus had an area under the receiver operating curve (AUC) ≥ 0.75 for CP detection. Using Artificial Intelligence (AI) platforms/Machine Learning (ML) analysis, CpG methylation levels in a combination of 230 significantly differentially-methylated CpG loci in 258 genes had a 95% sensitivity and 94.4% specificity for newborn prediction of CP. Using pathway analysis, multiple canonical pathways plausibly linked to neuronal function were over-represented. Altered biological processes and functions included: neuromotor damage, malformation of major brain structures, brain growth, neuroprotection, neuronal development and de-differentiation, and cranial sensory neuron development. In conclusion, blood leucocyte epigenetic changes analyzed using AI/ML techniques appeared to accurately predict CP and provided plausible mechanistic information on CP pathogenesis.
机译:脑性瘫痪(CP)的病因很复杂,仍缺乏足够的了解。 CP的早期检测是重要的临床目标,因为这可以改善长期结果。我们进行了全基因组DNA甲基化分析,以确定新生儿CP的表观基因组预测因子,并调查疾病的发病机理。使用Illumina HumanMethylation450K阵列对新生儿血液DNA进行甲基化分析,该方法用于23位CP病例和21位未受影响的对照组。在258个基因中有230个显着差异甲基化的CpG基因座。与FDR p值≤0.05的对照相比,CP中每个基因座的甲基化变化至少2.0倍。每个CpG位点的甲基化水平在接收器工作曲线(AUC)下都有一个大于0.75的区域用于CP检测。使用人工智能(AI)平台/机器学习(ML)分析,在258个基因中的230个显着甲基化的CpG基因座的组合中,CpG甲基化水平对新生儿CP预测的敏感性为95%,特异性为94.4%。使用通路分析,似乎与神经元功能相关的多个规范通路被过度代表。改变的生物学过程和功能包括:神经运动损伤,主要脑结构畸形,大脑生长,神经保护,神经元发育和去分化以及颅内感觉神经元发育。总之,使用AI / ML技术分析的血液白细胞表观遗传学变化似乎可以准确预测CP,并提供有关CP发病机理的合理机制信息。

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