结合深度学习模型和权重选择技术增强脑肿瘤诊断。

IF 2.5 4区 医学 Q2 MATHEMATICAL & COMPUTATIONAL BIOLOGY
Frontiers in Neuroinformatics Pub Date : 2024-11-26 eCollection Date: 2024-01-01 DOI:10.3389/fninf.2024.1444650
Karim Gasmi, Najib Ben Aoun, Khalaf Alsalem, Ibtihel Ben Ltaifa, Ibrahim Alrashdi, Lassaad Ben Ammar, Manel Mrabet, Abdulaziz Shehab
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引用次数: 0

摘要

脑肿瘤分类是医学影像学中的一项关键任务,因为准确的诊断直接影响治疗计划和患者的预后。由于脑肿瘤的复杂性和异质性,传统方法往往无法达到所需的精度。在这项研究中,我们提出了一种创新的脑肿瘤多分类方法,利用集成学习方法,将先进的深度学习模型与最优加权策略相结合。我们的方法集成了视觉变形器(ViT)和高效网络- v2模型,两者都以其强大的医学成像特征提取能力而闻名。由于将不同的深度学习模型与ViT模型相结合,该模型通过捕获全局和局部特征来增强特征提取步骤。然后使用加权集成方法将这些模型组合在一起,其中每个模型的预测被分配一个权重。为了优化这些权重,我们采用了一种遗传算法,该算法迭代地选择最佳的权重组合以最大化分类精度。我们使用包含标记脑MRI图像的精心策划的数据集来训练和验证我们的集成模型。该模型的性能与独立的ViT和EfficientNet-V2模型以及其他传统分类器进行了基准测试。与单个模型相比,集成方法在分类准确度、精度、召回率和f1分数方面取得了显著的进步。具体来说,我们的模型达到了95%的准确率,显著优于现有的方法。这项研究强调了将先进的深度学习模型与遗传算法优化的加权策略相结合来解决复杂的医学分类任务的潜力。我们的集成模型提供的更高的诊断精度可以导致更明智的临床决策,最终改善患者的预后。此外,我们的方法可以推广到其他医学成像分类问题,为人工智能在医疗保健领域的更广泛应用铺平了道路。脑肿瘤分类的这一进展为医疗人工智能领域提供了有价值的见解,支持了将先进计算工具整合到临床实践中的持续努力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhanced brain tumor diagnosis using combined deep learning models and weight selection technique.

Brain tumor classification is a critical task in medical imaging, as accurate diagnosis directly influences treatment planning and patient outcomes. Traditional methods often fall short in achieving the required precision due to the complex and heterogeneous nature of brain tumors. In this study, we propose an innovative approach to brain tumor multi-classification by leveraging an ensemble learning method that combines advanced deep learning models with an optimal weighting strategy. Our methodology integrates Vision Transformers (ViT) and EfficientNet-V2 models, both renowned for their powerful feature extraction capabilities in medical imaging. This model enhances the feature extraction step by capturing both global and local features, thanks to the combination of different deep learning models with the ViT model. These models are then combined using a weighted ensemble approach, where each model's prediction is assigned a weight. To optimize these weights, we employ a genetic algorithm, which iteratively selects the best weight combinations to maximize classification accuracy. We trained and validated our ensemble model using a well-curated dataset comprising labeled brain MRI images. The model's performance was benchmarked against standalone ViT and EfficientNet-V2 models, as well as other traditional classifiers. The ensemble approach achieved a notable improvement in classification accuracy, precision, recall, and F1-score compared to individual models. Specifically, our model attained an accuracy rate of 95%, significantly outperforming existing methods. This study underscores the potential of combining advanced deep learning models with a genetic algorithm-optimized weighting strategy to tackle complex medical classification tasks. The enhanced diagnostic precision offered by our ensemble model can lead to better-informed clinical decisions, ultimately improving patient outcomes. Furthermore, our approach can be generalized to other medical imaging classification problems, paving the way for broader applications of AI in healthcare. This advancement in brain tumor classification contributes valuable insights to the field of medical AI, supporting the ongoing efforts to integrate advanced computational tools in clinical practice.

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来源期刊
Frontiers in Neuroinformatics
Frontiers in Neuroinformatics MATHEMATICAL & COMPUTATIONAL BIOLOGY-NEUROSCIENCES
CiteScore
4.80
自引率
5.70%
发文量
132
审稿时长
14 weeks
期刊介绍: Frontiers in Neuroinformatics publishes rigorously peer-reviewed research on the development and implementation of numerical/computational models and analytical tools used to share, integrate and analyze experimental data and advance theories of the nervous system functions. Specialty Chief Editors Jan G. Bjaalie at the University of Oslo and Sean L. Hill at the École Polytechnique Fédérale de Lausanne are supported by an outstanding Editorial Board of international experts. This multidisciplinary open-access journal is at the forefront of disseminating and communicating scientific knowledge and impactful discoveries to researchers, academics and the public worldwide. Neuroscience is being propelled into the information age as the volume of information explodes, demanding organization and synthesis. Novel synthesis approaches are opening up a new dimension for the exploration of the components of brain elements and systems and the vast number of variables that underlie their functions. Neural data is highly heterogeneous with complex inter-relations across multiple levels, driving the need for innovative organizing and synthesizing approaches from genes to cognition, and covering a range of species and disease states. Frontiers in Neuroinformatics therefore welcomes submissions on existing neuroscience databases, development of data and knowledge bases for all levels of neuroscience, applications and technologies that can facilitate data sharing (interoperability, formats, terminologies, and ontologies), and novel tools for data acquisition, analyses, visualization, and dissemination of nervous system data. Our journal welcomes submissions on new tools (software and hardware) that support brain modeling, and the merging of neuroscience databases with brain models used for simulation and visualization.
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