School of Pharmacy, National Defense Medical Center, Taipei, Taiwan, ROC.
J Clin Pharm Ther. 2011 Apr;36(2):135-43. doi: 10.1111/j.1365-2710.2009.01103.x.
Drug interaction information has been extensively compiled into large databases. The objective of the present study was to provide a systematic overview of the available drug interaction information, using a network approach.
The drug-drug interaction information was retrieved from a comprehensive source reference that documents primary drug interaction information over an extended period of time. With careful examination of the information, we identified three continuously growing databases that consisted of 351, 636 and 966 drugs and 742, 1858 and 3351 pairs of interaction, respectively. We then constructed three drug-drug interaction networks in which the interacting drugs were treated as nodes and were connected with links that represent interactions. For each network, we determined the number of interactions that each drug in that network has, and prepared histograms to show the frequency distribution.
The frequency distribution or the probability that a given drug has k interactions, P(k), followed a power-law distribution, where the power law exponent was close to -1·5 and was independent of the network size. The results suggested that while the majority of the drugs in the network had few interactions (small k), highly interacting drugs (large k) were rare but contributed most of the network interactions.
The present study demonstrated that drug interaction information can be viewed and analysed as a connecting, growing network. As with many real-world networks, the drug interaction network was scale free, indicating that drug interaction information has been dominated by a relatively small number of highly interacting drugs.
药物相互作用信息已被广泛编入大型数据库中。本研究的目的是采用网络方法,对现有药物相互作用信息进行系统综述。
从一个全面的来源参考中检索药物-药物相互作用信息,该参考记录了一段时间内的主要药物相互作用信息。通过仔细检查这些信息,我们确定了三个不断增长的数据库,分别包含 351、636 和 966 种药物以及 742、1858 和 3351 对相互作用。然后,我们构建了三个药物-药物相互作用网络,其中相互作用的药物被视为节点,并用表示相互作用的链接连接。对于每个网络,我们确定了该网络中每种药物的相互作用数量,并准备了直方图来显示频率分布。
给定药物具有 k 种相互作用的频率分布或概率 P(k)遵循幂律分布,幂律指数接近-1.5,且与网络大小无关。结果表明,虽然网络中的大多数药物具有较少的相互作用(小 k),但具有高相互作用的药物(大 k)很少,但却贡献了大部分网络相互作用。
本研究表明,药物相互作用信息可以被视为连接的、不断增长的网络进行观察和分析。与许多真实世界的网络一样,药物相互作用网络是无标度的,这表明药物相互作用信息主要由少数具有高相互作用的药物主导。