Ensemble of Deep Learning Architectures with Machine Learning for Pneumonia Classification Using Chest X-rays.

Rupali Vyas, Deepak Rao Khadatkar
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Abstract

Pneumonia is a severe health concern, particularly for vulnerable groups, needing early and correct classification for optimal treatment. This study addresses the use of deep learning combined with machine learning classifiers (DLxMLCs) for pneumonia classification from chest X-ray (CXR) images. We deployed modified VGG19, ResNet50V2, and DenseNet121 models for feature extraction, followed by five machine learning classifiers (logistic regression, support vector machine, decision tree, random forest, artificial neural network). The approach we suggested displayed remarkable accuracy, with VGG19 and DenseNet121 models obtaining 99.98% accuracy when combined with random forest or decision tree classifiers. ResNet50V2 achieved 99.25% accuracy with random forest. These results illustrate the advantages of merging deep learning models with machine learning classifiers in boosting the speedy and accurate identification of pneumonia. The study underlines the potential of DLxMLC systems in enhancing diagnostic accuracy and efficiency. By integrating these models into clinical practice, healthcare practitioners could greatly boost patient care and results. Future research should focus on refining these models and exploring their application to other medical imaging tasks, as well as including explainability methodologies to better understand their decision-making processes and build trust in their clinical use. This technique promises promising breakthroughs in medical imaging and patient management.

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利用胸部 X 光片进行肺炎分类的深度学习架构与机器学习的集合。
肺炎是一个严重的健康问题,尤其是对弱势群体而言,需要及早进行正确的分类,以获得最佳治疗。本研究将深度学习与机器学习分类器(DLxMLCs)相结合,对胸部 X 光(CXR)图像进行肺炎分类。我们部署了修改后的 VGG19、ResNet50V2 和 DenseNet121 模型用于特征提取,然后部署了五个机器学习分类器(逻辑回归、支持向量机、决策树、随机森林、人工神经网络)。我们建议的方法显示了卓越的准确性,当 VGG19 和 DenseNet121 模型与随机森林或决策树分类器相结合时,准确率达到 99.98%。ResNet50V2 与随机森林相结合的准确率达到 99.25%。这些结果表明,将深度学习模型与机器学习分类器相结合可提高肺炎识别的速度和准确性。这项研究强调了 DLxMLC 系统在提高诊断准确性和效率方面的潜力。通过将这些模型与临床实践相结合,医疗从业人员可以大大提高患者护理水平和效果。未来的研究应侧重于完善这些模型,探索它们在其他医学成像任务中的应用,并纳入可解释性方法,以更好地了解它们的决策过程,并在临床使用中建立信任。这项技术有望在医学成像和患者管理方面取得突破。
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