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A novel integrated action crossing method for drug-drug interaction prediction in non-communicable diseases

机译:一种新型非传染性疾病药物相互作用预测的综合动作交叉方法

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Background and objectiveDrug-drug interaction (DDI) is one of the main causes of toxicity and treatment inefficacy. This work focuses on non-communicable diseases (NCDs), the non-transmissible and long-lasting diseases since they are the leading cause of death globally. Drugs that are used in NCDs increase the probability of DDIs as a result of long time usage. This work proposes an Integrated Action Crossing (IAC) method that is effective in predicting the NCDs DDIs based on pharmacokinetic (PK) mechanism. MethodsDrug-Enzyme (CYP450) and Drug-Transporter actions including substrate, inhibitor and inducer affect the PK mechanism of other drugs. Hence, this paper proposes an enzyme and transporter protein integrated action crossing method for DDIs prediction in NCDs. The NCDs Drugs information was retrieved from the DrugBank database and the actions of enzymes and transporter proteins that were crossed and integrated. The datasets were generated for machine training. ResultsThree machine learning approaches: Support Vector Machine, k-Nearest Neighbors, and Neural Networks were used for the assessment of the method. Performance evaluation was performed through five-fold cross validation and the different datasets and learning methods were compared. Two layers NNs achieved the best performance at the accuracy of 83.15% (F-Measure 85.23% and AUC 0.901). ConclusionsThe IAC method delivers better performance compared to the conventional method for the identification of NCDs DDIs.
机译:背景和目标树脂 - 药物相互作用(DDI)是毒性和治疗的主要原因之一。这项工作侧重于非传染性疾病(NCD),非传染性和持久的疾病,因为它们是全球死亡的主要原因。在NCDS中使用的药物由于长时间使用而增加了DDIS的概率。这项工作提出了一种综合动作交叉(IAC)方法,其基于药代动力学(PK)机制可有效预测NCDS DDIS。方法水溶液 - 酶(CYP450)和药物转运蛋白作用,包括底物,抑制剂和诱导剂,影响其他药物的PK机制。因此,本文提出了一种酶和转运蛋白综合动作交叉方法,用于NCDS中的DDIS预测。从药物库数据库中检索NCDS药物信息以及交叉和整合的酶和转运蛋白的作用。生成数据集以用于机器培训。结果精致机器学习方法:支持向量机,K-CORMALY邻居和神经网络用于评估该方法。通过五倍交叉验证和比较不同的数据集和学习方法进行性能评估。两层NNS以83.15%的准确度实现了最佳性能(F-Mabote 85.23%和AUC 0.901)。结论与鉴定NCDS DDIS的常规方法相比,IAC方法可提供更好的性能。

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