[基于主动学习的肺结节计算机辅助诊断交互式复习设计]。

Q4 Medicine
Shuangping Tan, Jun Li, Xiaojuan Zhang, Xinyue Yan, Tong Zhang, Xiali Wu, Ziqiang Liu, Lili Li, Juan Feng, Haibin Han, Guoying Tang, Junzhou Han, Youfeng Deng
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引用次数: 0

摘要

基于计算机断层扫描(CT)图像的肺结节自动检测可显著改善肺癌的诊断和治疗。然而,目前缺乏有效的交互工具来实时记录放射科医生的标记结果,并反馈给算法模型进行迭代优化。本文设计并开发了一个在线互动审查系统,支持 CT 图像中肺部结节的辅助诊断。通过预设模型检测出肺结节并呈现给医生,医生利用专业知识对系统检测出的肺结节进行标注或修正,然后根据放射科医生的标注结果,采用主动学习策略对人工智能模型进行迭代优化,不断提高模型的准确性。迭代实验使用了 2016 年肺结节分析(LUNA16)的 5-9 数据集子集。随着迭代次数的增加,精确度、F1-score和MioU指标稳步提高,精确度从0.213 9提高到0.565 6。本文的结果表明,该系统不仅利用深度分割模型辅助放射科医生,还最大限度地利用放射科医生的反馈信息优化模型,迭代提高模型的精确度,更好地辅助放射科医生。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
[A design of interactive review for computer aided diagnosis of pulmonary nodules based on active learning].

Automatic detection of pulmonary nodule based on computer tomography (CT) images can significantly improve the diagnosis and treatment of lung cancer. However, there is a lack of effective interactive tools to record the marked results of radiologists in real time and feed them back to the algorithm model for iterative optimization. This paper designed and developed an online interactive review system supporting the assisted diagnosis of lung nodules in CT images. Lung nodules were detected by the preset model and presented to doctors, who marked or corrected the lung nodules detected by the system with their professional knowledge, and then iteratively optimized the AI model with active learning strategy according to the marked results of radiologists to continuously improve the accuracy of the model. The subset 5-9 dataset of the lung nodule analysis 2016(LUNA16) was used for iteration experiments. The precision, F1-score and MioU indexes were steadily improved with the increase of the number of iterations, and the precision increased from 0.213 9 to 0.565 6. The results in this paper show that the system not only uses deep segmentation model to assist radiologists, but also optimizes the model by using radiologists' feedback information to the maximum extent, iteratively improving the accuracy of the model and better assisting radiologists.

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来源期刊
生物医学工程学杂志
生物医学工程学杂志 Medicine-Medicine (all)
CiteScore
0.80
自引率
0.00%
发文量
4868
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