医学影像中癌症筛查的深度学习

Jihoon Jeong
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引用次数: 5

摘要

医学影像中的肿瘤筛查是计算机化医学软件的重要研究领域之一。特别是,利用计算机辅助检测(CAD)算法对胸部x线和乳房x线影像进行自动化早期诊断是放射学领域最重要的研究课题[1]。然而,CAD的临床疗效结果仍存在争议。甚至有一项关于CAD筛查性能的研究报告称,在有CAD和没有CAD的放射科医生中,诊断有CAD的乳房x线照片的敏感性明显降低(优势比,0.53;95% ci, 0.29-0.97)[2]。但是,最近得到长足发展的深度学习技术(deep learning)再次让人们对癌症检查相关的计算机软件的可能性产生了期待。深度学习是神经网络的一种。神经网络由输入层、隐藏层和输出层组成。深度学习是一种具有大量隐藏层的神经网络。在过去的几年里,深度学习取得了巨大的性能提升,特别是在图像分类[3]和语音识别[4]方面。通讯作者:Jihoon Jeong顾问,韩国首尔江南区驿三路175号6楼Lunit公司电话:+82-10-2512-2540 E-mail: jjeong@lunit.io
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 for Cancer Screening in Medical Imaging
Cancer screening in medical imaging is one of the most important areas in computerized medical software. Especially, attempts to automate the early diagnosis of cancer using computer aided detection (CAD) algorithm on chest X-ray and mammography images were the most important research topic in the field of radiology [1]. However, the results of the clinical effects of CAD are still controversial. Even there was a research about screening performance of CAD reporting that sensitivity was significantly decreased for mammograms interpreted with vs without CAD in the subset of radiologists who interpreted both with and without CAD (odds ratio, 0.53; 95% CI, 0.29-0.97) [2]. But, deep learning technology, which has recently been greatly developed, is raising expectations for the possibility of computer software related to cancer screening again. Deep learning is a kind of neural network. The neural network consists of an input layer, a hidden layer, and an output layer. Deep learning is a neural network with a large number of hidden layers. Over the past few years, deep learning has achieved tremendous performance improvements, especially in image classification [3] and speech recognition [4]. In recent Corresponding Author: Jihoon Jeong Advisor, Lunit Inc., 6th Floor, 175 Yeoksamro, Gangnam-gu, Seoul, Korea Tel: +82-10-2512-2540 E-mail: jjeong@lunit.io
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