心脏疾病分类医学图像和微阵列数据分析的新机器学习方法。

Jinglan Guo, Jue Liao, Yuanlian Chen, Lisha Wen, Song Cheng
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引用次数: 0

摘要

微阵列技术已经成为心血管研究的重要工具,可以同时分析数千种基因表达。这种能力为心脏病分类和生物标志物的发现提供了坚实的基础。然而,微阵列数据的高维、噪声和稀疏性对有效分析提出了重大挑战。基因选择旨在识别最相关的基因子集,是提高分类准确性、降低计算复杂度和增强生物可解释性的关键预处理步骤。传统的基因选择方法往往无法捕捉到基因之间复杂的非线性相互作用,限制了它们在心脏病分类任务中的有效性。在这项研究中,我们提出了一个新的框架,利用深度神经网络(dnn)来优化基因选择和使用微阵列数据的心脏病分类。深度神经网络以其模拟复杂非线性模式的能力而闻名,它与特征选择技术相结合,以解决高维数据的挑战。所提出的方法DeepGeneNet (DGN)将基因选择和基于dnn的分类结合到一个统一的框架中,确保了强大的性能和对潜在生物学机制的有意义的见解。此外,该框架还结合了超参数优化和创新的U-Net分割技术,进一步提高了计算性能和分类精度。这些优化使DGN能够提供强大且可扩展的结果,在预测准确性和可解释性方面优于传统方法。实验结果表明,与其他方法相比,该方法显著提高了心脏病分类的准确率。通过关注基因选择和深度学习之间的相互作用,这项工作推动了心血管基因组学领域的发展,为未来的应用提供了一个可扩展和可解释的框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
New Machine Learning Method for Medical Image and Microarray Data Analysis for Heart Disease Classification.

Microarray technology has become a vital tool in cardiovascular research, enabling the simultaneous analysis of thousands of gene expressions. This capability provides a robust foundation for heart disease classification and biomarker discovery. However, the high dimensionality, noise, and sparsity of microarray data present significant challenges for effective analysis. Gene selection, which aims to identify the most relevant subset of genes, is a crucial preprocessing step for improving classification accuracy, reducing computational complexity, and enhancing biological interpretability. Traditional gene selection methods often fall short in capturing complex, nonlinear interactions among genes, limiting their effectiveness in heart disease classification tasks. In this study, we propose a novel framework that leverages deep neural networks (DNNs) for optimizing gene selection and heart disease classification using microarray data. DNNs, known for their ability to model complex, nonlinear patterns, are integrated with feature selection techniques to address the challenges of high-dimensional data. The proposed method, DeepGeneNet (DGN), combines gene selection and DNN-based classification into a unified framework, ensuring robust performance and meaningful insights into the underlying biological mechanisms. Additionally, the framework incorporates hyperparameter optimization and innovative U-Net segmentation techniques to further enhance computational performance and classification accuracy. These optimizations enable DGN to deliver robust and scalable results, outperforming traditional methods in both predictive accuracy and interpretability. Experimental results demonstrate that the proposed approach significantly improves heart disease classification accuracy compared to other methods. By focusing on the interplay between gene selection and deep learning, this work advances the field of cardiovascular genomics, providing a scalable and interpretable framework for future applications.

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