基于精细随机数据增强和硬边界盒训练的实用x线胃癌诊断支持

IF 6.2 2区 医学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Artificial Intelligence in Medicine Pub Date : 2025-03-01 Epub Date: 2025-02-01 DOI:10.1016/j.artmed.2025.103075
Hideaki Okamoto , Quan Huu Cap , Takakiyo Nomura , Kazuhito Nabeshima , Jun Hashimoto , Hitoshi Iyatomi
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引用次数: 0

摘要

胃镜检查被广泛应用于胃癌的诊断,具有很高的诊断效能,但它必须由医生进行,这限制了可以诊断的人数。相比之下,胃x光片可以由放射技师拍摄,从而允许更多的患者接受成像。然而,x射线图像的诊断在很大程度上依赖于医生的专业知识和经验,并且很少有机器学习方法被开发出来协助这一过程。我们提出了一种新颖实用的胃癌x线影像诊断支持系统,使更多的人能够接受筛查。该系统基于一般的基于深度学习的目标检测模型,并结合了两种新技术:精细概率胃图像增强(R-sGAIA)和硬边界盒训练(HBBT)。R-sGAIA增强了概率胃褶区域,为癌症检测模型提供了更多的学习模式。HBBT是一种有效的训练方法,允许使用常规检测模型中通常无法使用的未注释的阴性(即健康对照)样本,从而提高模型性能。该系统对胃癌的敏感性(SE)为90.2%,高于专家(85.5%)。在这些条件下,系统识别的五个候选框中有两个是癌性的(精度= 42.5%),每张图像的图像处理速度为0.51 s。该系统还比使用相同的目标检测模型和最先进的数据增强技术的方法,在F1得分上提高了5.9分。总之,该系统有效地确定了放射科医生在实际时间框架内检查的区域,从而大大减少了他们的工作量。
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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Practical X-ray gastric cancer diagnostic support using refined stochastic data augmentation and hard boundary box training
Endoscopy is widely used to diagnose gastric cancer and has a high diagnostic performance, but it must be performed by a physician, which limits the number of people who can be diagnosed. In contrast, gastric X-rays can be taken by radiographers, thus allowing a much larger number of patients to undergo imaging. However, the diagnosis of X-ray images relies heavily on the expertise and experience of physicians, and few machine learning methods have been developed to assist in this process. We propose a novel and practical gastric cancer diagnostic support system for gastric X-ray images that will enable more people to be screened. The system is based on a general deep learning-based object detection model and incorporates two novel techniques: refined probabilistic stomach image augmentation (R-sGAIA) and hard boundary box training (HBBT). R-sGAIA enhances the probabilistic gastric fold region and provides more learning patterns for cancer detection models. HBBT is an efficient training method that improves model performance by allowing the use of unannotated negative (i.e., healthy control) samples, which are typically unusable in conventional detection models. The proposed system achieved a sensitivity (SE) for gastric cancer of 90.2%, higher than that of an expert (85.5%). Under these conditions, two out of five candidate boxes identified by the system were cancerous (precision = 42.5%), with an image processing speed of 0.51 s per image. The system also outperformed methods using the same object detection model and state-of-the-art data augmentation by showing a 5.9-point improvement in the F1 score. In summary, this system efficiently identifies areas for radiologists to examine within a practical time frame, thus significantly reducing their workload.
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来源期刊
Artificial Intelligence in Medicine
Artificial Intelligence in Medicine 工程技术-工程:生物医学
CiteScore
15.00
自引率
2.70%
发文量
143
审稿时长
6.3 months
期刊介绍: Artificial Intelligence in Medicine publishes original articles from a wide variety of interdisciplinary perspectives concerning the theory and practice of artificial intelligence (AI) in medicine, medically-oriented human biology, and health care. Artificial intelligence in medicine may be characterized as the scientific discipline pertaining to research studies, projects, and applications that aim at supporting decision-based medical tasks through knowledge- and/or data-intensive computer-based solutions that ultimately support and improve the performance of a human care provider.
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