在深度学习和DDE谱中使用超参数优化识别癌凝集素蛋白

IF 0.6 Q3 ENGINEERING, MULTIDISCIPLINARY
Rahu Sikander, Ali Ghulam, Jawad Hassan, Laiba Rehman, Nida Jabeen, Natasha Iqbal
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引用次数: 1

摘要

本研究的重点是癌症的发生、转移和扩散。因此,建立一种高效、有效地对肿瘤凝集素蛋白功能进行分类的深度学习方法是非常必要的。我们使用特征提取模型对癌变凝集素的理化性质,如蛋白质结构、功能和其他化合物进行特征提取。我们提出了一种计算方法,即cancerlecn二维卷积神经网络(Lectin2D-CNN),用于预测cancerlecn蛋白。此外,我们进行了交叉验证实验。除了这种方法之外,我们的论文还提出使用cancerlectin二维卷积神经网络(Lectin2D-CNN)进行基于图像的分类。结果表明,本文提出的方法Lectin2D-CNN在对比数据集上具有较高的准确度和满意的特异性,优于对比方法。各种分类器被用来预测癌凝集素蛋白的功能。为了提高肿瘤凝集素的识别灵敏度和准确性,我们开发了基于2D-CNN架构的预测模型。结果为估计癌症凝集素提供了基础,并展示了在计算蛋白质组学中的深度学习方法。当使用2D-CNN随机数生成器进行交叉验证时,准确度得分为0.7169%,灵敏度得分为0.7012%,特异性得分为0.7326%,MCC得分为0.4428%,ROC-AUC得分为0.76%,则我们知道我们已经获得了可靠的结果。使用2D-CNN随机数生成器生成的独立数据集,准确度得分为0.6375%,灵敏度得分为0.6160%,特异性得分为0.6589%,MCC得分为0.2851%,ROC (auc)得分为0.76%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification of cancerlectin proteins using hyperparameter optimization in deep learning and DDE profiles
This study focuses on the development, metastasis, and spread of cancer diseases. It is therefore very desirable to establish deep learning method that classify cancerlectin proteins function efficiently and effectively. We used feature extraction model for physicochemical properties, such as Cancerlectins protein structure, functions, and other compounds. We propose a computational method, namely, cancerlectin two-dimensional convolutional neural networks (Lectin2D-CNN), for predicting cancerlectin proteins. Additionally, we conduct the cross-validation experiments. In addition to this approach, our paper proposes using cancerlectin two-dimensional convolutional neural networks (Lectin2D-CNN) to do image-based classification. The results indicate the proposed method Lectin2D-CNN achieved high accuracy and satisfactory specificity for comparison data sets and was superior to the compared methods. Various classifiers were used to predict cancerlectin protein functions. We developed a prediction model based on the 2D-CNN architecture to increase the recognition sensitivity and accuracy for cancerlectins. Results provide a basis for the estimation of cancer lectins and demonstrate deep learning approaches in in computational proteomics. When the Cross-validation using 2D-CNN random number generator has produced accuracy score obtain 0.7169%, Sensitivity score obtain 0.7012%, Specificity score obtain 0.7326%, MCC score obtain 0.4428%, ROC-AUC score is 0.76%, respectively, then we know we've attained a reliable result. When the Independent datasets using 2D-CNN random number generator has produced accuracy score obtain 0.6375%, Sensitivity score obtain 0.6160%, Specificity score obtain 0.6589%, MCC score obtain 0.2851%, and ROC (auc) score is 0.76%, respectively.
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