SqueezeViX-Net with SOAE: A Prevailing Deep Learning Framework for Accurate Pneumonia Classification using X-Ray and CT Imaging Modalities.

IF 1.1 4区 医学 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
N Kavitha, B Anand
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引用次数: 0

Abstract

Introduction: Pneumonia represents a dangerous respiratory illness that leads to severe health problems when proper diagnosis does not occur, followed by an increase in deaths, particularly among at-risk populations. Appropriate treatment requires the correct identification of pneumonia types in conjunction with swift and accurate diagnosis.

Materials and methods: This paper presents the deep learning framework SqueezeViX-Net, specifically designed for pneumonia classification. The model benefits from a Self-Optimized Adaptive Enhancement (SOAE) method, which makes programmed changes to the dropout rate during the training process. The adaptive dropout adjustment mechanism leads to better model suitability and stability. The evaluation of SqueezeViX-Net is conducted through the analysis of extensive X-ray and CT image collections derived from publicly accessible Kaggle repositories.

Results: SqueezeViX-Net outperformed various established deep learning architectures, including DenseNet-121, ResNet-152V2, and EfficientNet-B7, when evaluated in terms of performance. The model demonstrated better results, as it performed with higher accuracy levels, surpassing both precision and recall metrics, as well as the F1-score metric.

Discussion: The validation process of this model was conducted using a range of pneumonia data sets, comprising both CT images and X-ray images, which demonstrated its ability to handle modality variations.

Conclusion: SqueezeViX-Net integrates SOAE technology to develop an advanced framework that enables the specific identification of pneumonia for clinical use. The model demonstrates excellent diagnostic potential for medical staff through its dynamic learning capabilities and high precision, contributing to improved patient treatment outcomes.

基于SOAE的SqueezeViX-Net:基于x射线和CT成像模式的肺炎准确分类的流行深度学习框架。
肺炎是一种危险的呼吸道疾病,如果没有得到适当的诊断,就会导致严重的健康问题,随之而来的是死亡人数的增加,特别是在高危人群中。适当的治疗需要正确识别肺炎类型,并进行迅速和准确的诊断。材料和方法:本文介绍了专为肺炎分类设计的深度学习框架SqueezeViX-Net。该模型得益于自优化自适应增强(SOAE)方法,该方法在训练过程中对失分率进行编程改变。自适应差值调整机制使模型具有更好的适用性和稳定性。对SqueezeViX-Net的评估是通过分析大量的x射线和CT图像收集来进行的,这些图像收集来自可公开访问的Kaggle存储库。结果:在性能评估方面,SqueezeViX-Net优于各种现有的深度学习架构,包括DenseNet-121、ResNet-152V2和EfficientNet-B7。该模型显示出更好的结果,因为它具有更高的准确性水平,超过了精度和召回指标以及f1得分指标。讨论:该模型的验证过程是使用一系列肺炎数据集进行的,包括CT图像和x射线图像,这些数据集证明了其处理模态变化的能力。结论:SqueezeViX-Net集成了SOAE技术,开发了一种先进的框架,可以用于临床的肺炎特异性识别。该模型通过其动态学习能力和高精度,为医务人员展示了良好的诊断潜力,有助于改善患者的治疗效果。
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
2.60
自引率
0.00%
发文量
246
审稿时长
1 months
期刊介绍: Current Medical Imaging Reviews publishes frontier review articles, original research articles, drug clinical trial studies and guest edited thematic issues on all the latest advances on medical imaging dedicated to clinical research. All relevant areas are covered by the journal, including advances in the diagnosis, instrumentation and therapeutic applications related to all modern medical imaging techniques. The journal is essential reading for all clinicians and researchers involved in medical imaging and diagnosis.
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