Recurrent Neural Networks for Improved Medical Image Classification

Umesh Kumar Singh, K. R, Pankaj Saraswat
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Abstract

In recent years, scientific imagery has ended up with an increasing number of essential approaches for diagnosing and monitoring many sicknesses. As a result, scientific photo classification has become a crucial research area. Deep learning procedures have opened new avenues for the medical photo category, with current tendencies because of recurrent neural networks (RNNs). Recurrent neural networks are robust neural networks that could discover ways to version temporal or sequential systems. Using RNNs, researchers can train a deep community in a supervised fashion without the need for manual photo segmentation. It has been validated to improve performance in scientific image type, with examples in the skin lesion category and lung nodule classification. The latest paintings have additionally validated the usage of RNNs to find latent features in clinical imagery, including latent anatomical systems and covariate relationships between disorder states. This type of evaluation can be beneficial in developing greater correct classifiers for medical images, similar to presenting a higher know-how of the imaging records. In precis, recurrent neural networks (RNNs) display promise in improving the accuracy of medical image class obligations. RNNs are crucial to discovering new features and covariate relationships between disease states in medical pics. With ongoing advances, RNNs will offer powerful equipment for scientific imaging.
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用于改进医学图像分类的递归神经网络
近年来,科学图像越来越多地成为诊断和监测许多疾病的重要方法。因此,科学照片分类已成为一个重要的研究领域。深度学习程序为医学照片分类开辟了新途径,目前的趋势是采用递归神经网络(RNN)。递归神经网络是一种强大的神经网络,可以发现时间或顺序系统的版本。利用 RNNs,研究人员可以以一种有监督的方式训练一个深度社区,而无需手动进行照片分割。它在提高科学图像类型的性能方面得到了验证,在皮肤病变分类和肺结节分类方面都有实例。最新的研究还验证了使用 RNNs 在临床图像中寻找潜在特征,包括潜在解剖系统和疾病状态之间的协变量关系。这种类型的评估有助于为医学图像开发更正确的分类器,类似于提供更高的成像记录知识。简而言之,递归神经网络(RNN)有望提高医学影像分类义务的准确性。RNN 对于发现医学影像中的新特征和疾病状态之间的协变量关系至关重要。随着不断进步,RNN 将为科学成像提供强大的设备。
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