Enhancing drug discovery in schizophrenia: a deep learning approach for accurate drug-target interaction prediction - DrugSchizoNet.

IF 1.7 4区 医学 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Sherine Glory J, Durgadevi P, Ezhumalai P
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引用次数: 0

Abstract

Drug discovery relies on the precise prognosis of drug-target interactions (DTI). Due to their ability to learn from raw data, deep learning (DL) methods have displayed outstanding performance over traditional approaches. However, challenges such as imbalanced data, noise, poor generalization, high cost, and time-consuming processes hinder progress in this field. To overcome the above challenges, we propose a DL-based model termed DrugSchizoNet for drug interaction (DI) prediction of Schizophrenia. Our model leverages drug-related data from the DrugBank and repoDB databases, employing three key preprocessing techniques. First, data cleaning eliminates duplicate or incomplete entries to ensure data integrity. Next, normalization is performed to enhance security and reduce costs associated with data acquisition. Finally, feature extraction is applied to improve the quality of input data. The three layers of the DrugSchizoNet model are the input, hidden and output layers. In the hidden layer, we employ dropout regularization to mitigate overfitting and improve generalization. The fully connected (FC) layer extracts relevant features, while the LSTM layer captures the sequential nature of DIs. In the output layer, our model provides confidence scores for potential DIs. To optimize the prediction accuracy, we utilize hyperparameter tuning through OB-MOA optimization. Experimental results demonstrate that DrugSchizoNet achieves a superior accuracy of 98.70%. The existing models, including CNN-RNN, DANN, CKA-MKL, DGAN, and CNN, across various evaluation metrics such as accuracy, recall, specificity, precision, F1 score, AUPR, and AUROC are compared with the proposed model. By effectively addressing the challenges of imbalanced data, noise, poor generalization, high cost and time-consuming processes, DrugSchizoNet offers a promising approach for accurate DTI prediction in Schizophrenia. Its superior performance demonstrates the potential of DL in advancing drug discovery and development processes.

加强精神分裂症的药物发现:准确预测药物-靶点相互作用的深度学习方法--DrugSchizoNet。
药物发现依赖于药物与靶点相互作用(DTI)的精确预测。由于能够从原始数据中学习,深度学习(DL)方法与传统方法相比表现出了卓越的性能。然而,数据不平衡、噪声、泛化能力差、成本高、过程耗时等挑战阻碍了这一领域的发展。为了克服上述挑战,我们提出了一种基于 DL 的模型,称为 DrugSchizoNet,用于精神分裂症的药物相互作用(DI)预测。我们的模型利用了 DrugBank 和 repoDB 数据库中的药物相关数据,并采用了三种关键的预处理技术。首先,数据清理会消除重复或不完整的条目,以确保数据的完整性。其次,进行规范化处理,以提高安全性并降低数据采集的相关成本。最后是特征提取,以提高输入数据的质量。DrugSchizoNet 模型的三层分别是输入层、隐藏层和输出层。在隐藏层中,我们采用了滤除正则化技术,以减少过拟合并提高泛化效果。全连接(FC)层提取相关特征,而 LSTM 层则捕捉 DI 的顺序性。在输出层,我们的模型为潜在的 DI 提供置信度分数。为了优化预测准确性,我们通过 OB-MOA 优化来调整超参数。实验结果表明,DrugSchizoNet 的准确率高达 98.70%。我们将 CNN-RNN、DANN、CKA-MKL、DGAN 和 CNN 等现有模型的准确率、召回率、特异性、精确度、F1 分数、AUPR 和 AUROC 等各种评价指标与所提出的模型进行了比较。DrugSchizoNet 有效地解决了不平衡数据、噪声、泛化能力差、成本高和耗时长等难题,为精神分裂症的 DTI 精确预测提供了一种前景广阔的方法。其卓越的性能证明了 DL 在推进药物发现和开发过程中的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
4.10
自引率
6.20%
发文量
179
审稿时长
4-8 weeks
期刊介绍: The primary aims of Computer Methods in Biomechanics and Biomedical Engineering are to provide a means of communicating the advances being made in the areas of biomechanics and biomedical engineering and to stimulate interest in the continually emerging computer based technologies which are being applied in these multidisciplinary subjects. Computer Methods in Biomechanics and Biomedical Engineering will also provide a focus for the importance of integrating the disciplines of engineering with medical technology and clinical expertise. Such integration will have a major impact on health care in the future.
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