无边界深度学习:肝脏疾病超声图像分类的最新进展。

IF 2.7
Midya Yousefzamani, Farshid Babapour Mofrad
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引用次数: 0

摘要

肝病是全球最严重的健康负担之一。最近,在不给病人带来不适的情况下进行诊断越来越重要;其中,超声波是使用最多的。深度学习,特别是卷积神经网络,通过自动执行一些复杂图像的特定分析,已经彻底改变了肝脏疾病的分类。涵盖领域:本文综述了利用超声成像进行肝脏疾病分类的深度学习技术的进展。它评估了从cnn到其混合版本(如CNN-Transformer)的各种模型,用于检测脂肪肝、纤维化和肝癌等。还讨论了在不同临床环境中数据和模型泛化的几个挑战。专家意见:深度学习在肝脏疾病自动诊断方面有很大的前景。大多数模型在不同的临床研究中表现出较高的准确性。尽管有这样的希望,但与泛化相关的挑战仍然存在。未来硬件的发展和高质量临床数据的获取将继续进一步提高这些模型的性能,并确保它们在肝脏疾病诊断中的重要作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep learning without borders: recent advances in ultrasound image classification for liver diseases diagnosis.

Introduction: Liver diseases are among the top global health burdens. Recently, there has been an increasing significance of diagnostics without discomfort to the patient; among them, ultrasound is the most used. Deep learning, in particular convolutional neural networks, has revolutionized the classification of liver diseases by automatically performing some specific analyses of difficult images.

Areas covered: This review summarizes the progress that has been made in deep learning techniques for the classification of liver diseases using ultrasound imaging. It evaluates various models from CNNs to their hybrid versions, such as CNN-Transformer, for detecting fatty liver, fibrosis, and liver cancer, among others. Several challenges in the generalization of data and models across a different clinical environment are also discussed.

Expert opinion: Deep learning has great prospects for automatic diagnosis of liver diseases. Most of the models have performed with high accuracy in different clinical studies. Despite this promise, challenges relating to generalization have remained. Future hardware developments and access to quality clinical data continue to further improve the performance of these models and ensure their vital role in the diagnosis of liver diseases.

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