Implementation of Ant Colony Optimization – Artificial Neural Network in Predicting the Activity of Indenopyrazole Derivative as Anti-Cancer Agent

I. Kurniawan, N. Kamil, A. Aditsania, E. B. Setiawan
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Abstract

Cancer is a disease induced by the abnormal growth of cells in body tissues. This disease is commonly treated by chemotherapy. However, at first, cancer cells can respond to the activity of chemotherapy over time, but over time, resistance to cancer cells appears. Therefore, it is required to develop new anti-cancer drugs. Indenopyrazole and its derivative have been investigated to be a potential drug to treat cancer. This study aims to predict indenopyrazole derivative compounds as anti-cancer drugs by using Ant Colony Optimization (ACO) and Artificial Neural Network (ANN) methods. We used 93 compounds of indenopyrazole derivative with a total of 1876 descriptors. Then, the descriptors were reduced by using the Pearson Correlation Coefficient (PCC) and followed by the ACO algorithm to get the most relevant features. We found that the best number of descriptors obtained from ACO is ten descriptors. The ANN prediction model was developed with three architectures, which are different in hidden layer number, i.e., 1, 2, and 3 hidden layers. Based on the results, we found that the model with three hidden layers gives the best performance, with the value of the R2 test, R2 train, and Q2 train being 0.8822, 0.8495, and 0.8472, respectively.
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蚁群优化-人工神经网络在茚吡唑衍生物抗癌活性预测中的应用
癌症是由身体组织中细胞异常生长引起的疾病。这种疾病通常用化疗治疗。然而,一开始,随着时间的推移,癌细胞可以对化疗的活性做出反应,但随着时间的推移,对癌细胞的耐药性出现了。因此,需要开发新的抗癌药物。茚吡唑及其衍生物已被研究为一种潜在的治疗癌症的药物。本研究旨在利用蚁群优化(Ant Colony Optimization, ACO)和人工神经网络(Artificial Neural Network, ANN)方法预测独立吡唑衍生物作为抗癌药物的应用前景。我们使用了93个独立吡唑衍生物,共有1876个描述符。然后,使用Pearson相关系数(PCC)对描述符进行约简,然后使用蚁群算法获得最相关的特征。我们发现从蚁群算法中得到的最佳描述子数是10个。该人工神经网络预测模型采用三种结构,隐层数不同,分别为1层、2层和3层。基于结果,我们发现具有三个隐藏层的模型表现最好,R2检验、R2训练和Q2训练的值分别为0.8822、0.8495和0.8472。
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审稿时长
12 weeks
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