胸片中肺部结节的检测:利用纯合成数据集进行有效网络训练的新型成本函数。

IF 2.3 3区 医学 Q3 ENGINEERING, BIOMEDICAL
Shouhei Hanaoka, Yukihiro Nomura, Takeharu Yoshikawa, Takahiro Nakao, Tomomi Takenaga, Hirotaka Matsuzaki, Nobutake Yamamichi, Osamu Abe
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引用次数: 0

摘要

目的:目前有许多肺结节的大型影像数据集,但通过计算机断层扫描验证的小结节和难以检测的结节却很少。这些难以检测的结节对于训练结节检测方法至关重要。人工结节合成算法可以创建人工嵌入的结节,从而解决缺乏困难结节进行训练的问题。本研究旨在开发和评估一种新的成本函数,用于训练检测此类病变的网络。在健康医学影像中嵌入人工病灶,在阳性病例不足以进行网络训练时非常有效。虽然这种方法能提供阳性(嵌入病灶)图像和相应的阴性(无病灶)图像,但目前还没有已知的方法能有效地利用这些图像对进行训练。本文提出了一种新的成本函数,用于在有正负图像对的情况下建立基于分割的检测网络:方法:以经典的 U-Net 为基础,在原有的 Dice 损失中添加了新的项,以减少假阳性和对比学习图像对中的病变区域。实验网络分别在 131,072 对完全合成的模拟肺癌图像和日本放射技术学会数据集中的真实胸部 X 光图像上进行了训练和评估:结果:所提出的方法优于 RetinaNet 和单发多箱检测器。结论:据我们所知,这是在 "leave-one-case-out "设置下进行微调和不进行微调的情况下,当每幅图像的假阳性数量为 0.2 时,灵敏度分别为 0.688 和 0.507:据我们所知,这是第一项在真实临床数据集上对胸部 X 光图像中肺部结节的检测方法进行评估的研究。合成数据集可在 https://zenodo.org/records/10648433 上获取。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Detection of pulmonary nodules in chest radiographs: novel cost function for effective network training with purely synthesized datasets.

Detection of pulmonary nodules in chest radiographs: novel cost function for effective network training with purely synthesized datasets.

Purpose: Many large radiographic datasets of lung nodules are available, but the small and hard-to-detect nodules are rarely validated by computed tomography. Such difficult nodules are crucial for training nodule detection methods. This lack of difficult nodules for training can be addressed by artificial nodule synthesis algorithms, which can create artificially embedded nodules. This study aimed to develop and evaluate a novel cost function for training networks to detect such lesions. Embedding artificial lesions in healthy medical images is effective when positive cases are insufficient for network training. Although this approach provides both positive (lesion-embedded) images and the corresponding negative (lesion-free) images, no known methods effectively use these pairs for training. This paper presents a novel cost function for segmentation-based detection networks when positive-negative pairs are available.

Methods: Based on the classic U-Net, new terms were added to the original Dice loss for reducing false positives and the contrastive learning of diseased regions in the image pairs. The experimental network was trained and evaluated, respectively, on 131,072 fully synthesized pairs of images simulating lung cancer and real chest X-ray images from the Japanese Society of Radiological Technology dataset.

Results: The proposed method outperformed RetinaNet and a single-shot multibox detector. The sensitivities were 0.688 and 0.507 when the number of false positives per image was 0.2, respectively, with and without fine-tuning under the leave-one-case-out setting.

Conclusion: To our knowledge, this is the first study in which a method for detecting pulmonary nodules in chest X-ray images was evaluated on a real clinical dataset after being trained on fully synthesized images. The synthesized dataset is available at https://zenodo.org/records/10648433 .

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来源期刊
International Journal of Computer Assisted Radiology and Surgery
International Journal of Computer Assisted Radiology and Surgery ENGINEERING, BIOMEDICAL-RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
CiteScore
5.90
自引率
6.70%
发文量
243
审稿时长
6-12 weeks
期刊介绍: The International Journal for Computer Assisted Radiology and Surgery (IJCARS) is a peer-reviewed journal that provides a platform for closing the gap between medical and technical disciplines, and encourages interdisciplinary research and development activities in an international environment.
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