首页> 美国卫生研究院文献>Journal of Medical Imaging >Deep learning can be used to train naïve nonprofessional observers to detect diagnostic visual patterns of certain cancers in mammograms: a proof-of-principle study
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Deep learning can be used to train naïve nonprofessional observers to detect diagnostic visual patterns of certain cancers in mammograms: a proof-of-principle study

机译:深度学习可用于培训Naïve非专业观察者以检测乳房X光检查中某些癌症的诊断视觉模式:原则上的研究

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摘要

The scientific, clinical, and pedagogical significance of devising methodologies to train nonprofessional subjects to recognize diagnostic visual patterns in medical images has been broadly recognized. However, systematic approaches to doing so remain poorly established. Using mammography as an exemplar case, we use a series of experiments to demonstrate that deep learning (DL) techniques can, in principle, be used to train naïve subjects to reliably detect certain diagnostic visual patterns of cancer in medical images. In the main experiment, subjects were required to learn to detect statistical visual patterns diagnostic of cancer in mammograms using only the mammograms and feedback provided following the subjects’ response. We found not only that the subjects learned to perform the task at statistically significant levels, but also that their eye movements related to image scrutiny changed in a learning-dependent fashion. Two additional, smaller exploratory experiments suggested that allowing subjects to re-examine the mammogram in light of various items of diagnostic information may help further improve DL of the diagnostic patterns. Finally, a fourth small, exploratory experiment suggested that the image information learned was similar across subjects. Together, these results prove the principle that DL methodologies can be used to train nonprofessional subjects to reliably perform those aspects of medical image perception tasks that depend on visual pattern recognition expertise.
机译:制定方法,以培养非专业科目承认在医学图像诊断视觉模式的科学,临床和教学意义已被广泛认可。然而,系统化的方法来这样做是很差劲成立。使用乳房造影术作为示例性的情况下,我们使用了一系列的实验,以证明深学习(DL)技术可以,在原则上可以用于训练幼稚受试者可靠地检测在医学图像的某些癌症诊断的视觉图案。在主实验中,要求受试者学习,以检测只使用所提供的乳房X线照片和反馈以下受试者的响应诊断癌症统计视觉模式在乳房X线照片。我们发现不仅该科目学会了在统计学上显著水平执行任务,而且还涉及到图像的审查他们的眼球运动在学习相关的方式改变。另外两个较小的探索性实验表明,允许受试者重新审视乳房X射线照片中的诊断各种信息的光可进一步帮助提高诊断模式的DL。最后,第四小,实验探索表明,学到的图像信息是跨学科相似。总之,这些结果证明,DL方法可以用来训练科目非职业可靠地执行依赖于视觉模式识别专业知识医学图像的感知任务,这些方面的原则。

著录项

  • 期刊名称 Journal of Medical Imaging
  • 作者

    Jay Hegdé;

  • 作者单位
  • 年(卷),期 2020(7),2
  • 年度 2020
  • 页码 022410
  • 总页数 22
  • 原文格式 PDF
  • 正文语种
  • 中图分类 放射医学;影像诊断学;
  • 关键词

    机译:深度学习;隐含学习;乳房X线照相术;眼球;代表性相似性分析;统计学习;视觉搜索;
  • 入库时间 2022-08-21 12:12:56

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