基于机器学习的胃肠内镜病理检测方法的系统文献综述

Dinisuru Nisal Gunaratna, Pumudu Fernando
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引用次数: 0

摘要

内窥镜检查是最广泛使用的医疗程序,用于检查一个人的胃肠道。在内窥镜检查过程中,准确的病理检测是至关重要的,因为误诊或漏诊率会降低患者的生存机会。在人工智能与医学的成功合作之后,世界各地的研究人员尝试了不同的技术,将其用于胃肠病学。我们的研究展示了利用公开可用的数据集对内窥镜图像中现有病理检测方法的广泛调查。本文还讨论了最近发布的数据集的内容,在这些数据集上尝试的预处理技术以及它们如何影响机器学习模型的性能。此外,本研究还讨论了卷积神经网络架构的变化如何影响与不同数据集相关的模型的准确性。最后,本文介绍了每个审查文献的结果以及对已确定的差距的简要讨论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Systematic Literature Review of Machine Learning based Approaches on Pathology Detection in Gastrointestinal Endoscopy
Endoscopy is the most widely adhered medical procedure used to examine the gastrointestinal tract of a person. Accurate pathology detection during the endoscopic procedure is crucial as misidentifications or miss rates could reduce the chance of survival for the patient. After the successful collaboration of artificial intelligence with medicine, researchers around the world have tried different techniques in using this for gastroenterology. Our study demonstrates an extensive survey on existing pathology detection methodologies in endoscopic images using the publicly available datasets. The paper also discusses the content of the recently released datasets, preprocessing techniques tried on these datasets and how they affected the performance of the machine learning models. Furthermore, this study discusses how changing architectures of convolutional neural networks could affect the accuracy of models in relation to different datasets. Finally, the paper presents the results of each reviewed literature along with a brief discussion on the gaps that were identified.
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