Enhanced Factor Based Whale Optimization Algorithm with Improved Weight Based Long Short-Term Memory for Cancer Subtypes Diagnosis

P. A. Clemenshia, C. Deepa
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Abstract

The categorization of cancer subtypes using data from GEs (gene expressions) has gained popularity in recent years. In recent years, many supervised learning techniques, particularly those based on DLTs (deep learning techniques), have categorized cancer subtypes. DFN Forests (Deep Flexible Neural Forests) which incorporate FNTs (Flexible Neural Trees) were used more for the categorization of cancer subtypes. However, prior proposals have problems with execution speeds and precisions. To address this issue, this work proposes EFWOA (Enhanced Factor based Whale optimization Algorithm) along with IWLSTMs (Improved Weight based Long ShortTerm Memories) for identifying cancer subtypes. The phases of dimensionality reduction, feature selections, and classifications make up the proposed cancer diagnosis system. Datasets on GEs are used as the initial input. IICA (Improved Independent Component Analysis) was subsequently used to minimize the dimensions. Gene selection is carried out using the EFWOA to increase classification accuracy. Finally, IWLSTMs are used to diagnose cancer subtypes where experimental findings of this new system show better performances in terms of accuracies, precisions, recalls, and f-measures.
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基于权重长短期记忆的增强因子鲸鱼优化算法用于癌症亚型诊断
近年来,利用基因表达数据对癌症亚型进行分类的方法越来越流行。近年来,许多监督学习技术,特别是基于dlt(深度学习技术)的技术,已经对癌症亚型进行了分类。包含柔性神经树的DFN森林(Deep Flexible Neural Forests)被更多地用于癌症亚型的分类。然而,先前的建议在执行速度和精度方面存在问题。为了解决这个问题,本研究提出了EFWOA (Enhanced Factor based Whale optimization Algorithm)和IWLSTMs (Improved Weight based Long - short - term memory)来识别癌症亚型。该系统由降维、特征选择和分类三个阶段组成。使用ge上的数据集作为初始输入。随后使用IICA(改进的独立成分分析)来最小化尺寸。利用EFWOA进行基因选择以提高分类精度。最后,IWLSTMs被用于诊断癌症亚型,实验结果表明,该新系统在准确性、精密度、召回率和f-measures方面表现出更好的性能。
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