Transfer Learning on Interstitial Lung Disease Classification

Zhi Yi, Yuyang Wang
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引用次数: 4

Abstract

For the treatment of Interstitial Lung Disease, it is crucial to have an early diagnosis. However, doctors still have a lot of controversy in the diagnosis of lung nodules even with today’s highly developed medical imaging technology. In this article, we summarized the five major challenges we face in medical image recognition and systematically listed the applications from traditional image recognition technology to deep learning in lung CT image recognition. Compared to the traditional convolutional neural network built and trained from scratch, it is beneficial to apply transfer learning to the recognition of lung nodules. Transfer learning focus on transferring knowledge from previous well-trained task to target learning task. Transferring means pretrained networks utilize fine-tuning to reduce iteration times of weight so that it can cope with the problem of lack of high quality images. Various experiments demonstrate that transfer learning performances better than traditional convolutional neural network under complicated circumstances of image recognition such as medical images. In this article, transfer learning is classified into 3 types: inductive transfer learning, transductive transfer learning and unsupervised transfer learning. The main difference between them is label quantity of target training set. Inductive transfer learning highly depends on feature engineering. Compared to it, training sets of two remaining has few labels. However, transductive transfer learning and unsupervised transfer learning are unstable while facing sophisticated cases.
间质性肺疾病分类的迁移学习
对于间质性肺疾病的治疗,早期诊断是至关重要的。然而,即使在医学影像技术高度发达的今天,医生对肺结节的诊断仍然存在很多争议。本文总结了医学图像识别面临的五大挑战,系统列举了从传统图像识别技术到深度学习在肺部CT图像识别中的应用。与传统的从头构建和训练的卷积神经网络相比,将迁移学习应用于肺结节的识别是有益的。迁移学习的重点是将知识从先前训练良好的任务转移到目标学习任务。传递是指预训练的网络利用微调来减少权值的迭代次数,从而可以解决缺乏高质量图像的问题。各种实验表明,在医学图像等复杂的图像识别环境下,迁移学习的性能优于传统卷积神经网络。本文将迁移学习分为三种类型:归纳迁移学习、传导迁移学习和无监督迁移学习。它们之间的主要区别在于目标训练集的标签数量。归纳迁移学习高度依赖于特征工程。与之相比,剩下的两个训练集的标签较少。然而,在复杂的情况下,转换迁移学习和无监督迁移学习是不稳定的。
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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