State Key Laboratory of Bioelectronics, Department of Biological Science and Medical Engineering, Southeast University, Nanjing, People's Republic of China.
J Neurosci Res. 2012 Jun;90(6):1119-25. doi: 10.1002/jnr.23015. Epub 2012 Feb 16.
Autism is a complex neuropsychiatric disorder with high heritability and an unclear etiology. The identification of key genes related to autism may elucidate its etiology. The current study provides an approach to predicting autism susceptibility genes. Genes are first extracted from the biomedical literature, and some autism susceptibility genes are then recognized as seeds by the prior knowledge. As candidates, the remaining genes are predicted by creating association rules between the seeds and candidates. In an evaluated data set, 27 autism susceptibility genes (type "Y") are extracted and 43 possible autism susceptibility genes (type "P") are predicted. The sum of "Y" and "P" genes accounts for 93.3% of the data set that are not contained in the typical database of autism susceptibility genes. Our approach can effectively extract and predict autism susceptibility genes from the biomedical literature. These predicted results complement the typical database of autism susceptibility genes. The web portal for the predicted results, which is freely available at http://biolab.hyit.edu.cn/ar, can be a valuable resource in studies of diseases related to genes.
自闭症是一种具有高遗传性和不明病因的复杂神经精神疾病。识别与自闭症相关的关键基因可能阐明其病因。本研究提供了一种预测自闭症易感基因的方法。首先从生物医学文献中提取基因,然后通过先验知识将一些自闭症易感基因识别为种子。作为候选基因,通过在种子和候选基因之间创建关联规则来预测剩余的基因。在评估的数据集上,提取了 27 个自闭症易感基因(类型“Y”)和 43 个可能的自闭症易感基因(类型“P”)。“Y”和“P”基因的总和占未包含在典型自闭症易感基因数据库中的数据集的 93.3%。我们的方法可以有效地从生物医学文献中提取和预测自闭症易感基因。这些预测结果补充了典型的自闭症易感基因数据库。预测结果的网络门户可在 http://biolab.hyit.edu.cn/ar 上免费获得,可作为与基因相关疾病研究的有价值资源。