[基于增量元学习的肺结节检测模型的实现]。

Q4 Medicine
Zihao Zhang, Yuanyuan Yang
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引用次数: 0

摘要

针对传统肺结节检测模型无法随着新数据的增加而动态优化和更新的问题,提出了一种新的肺结节检测模型--任务增量元学习模型(TIMLM)。该模型由两个循环组成:内循环施加增量学习正则化更新约束,外循环采用元更新策略对新旧知识进行采样,学习一组适应新旧数据的广义参数。在尽可能不改变模型主要结构的条件下,它保留了之前学习到的旧知识。在公开的肺部数据集上的实验验证表明,与传统的深度网络模型和主流的增量模型相比,TIMLM 在准确度、灵敏度等指标上都有很大的提高,表现出良好的持续学习和抗遗忘能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
[Implementation of Lung Nodule Detection Model Based on Incremental Meta-Learning].

In response to the issue that traditional lung nodule detection models cannot dynamically optimize and update with the increase of new data, a new lung nodule detection model-task incremental meta-learning model (TIMLM) is proposed. This model comprises of two loops: the inner loop imposes incremental learning regularization update constraints, while the outer loop employs a meta-update strategy to sample old and new knowledge and learn a set of generalized parameters that adapt to old and new data. Under the condition that the main structure of the model is not changed as much as possible, it preserves the old knowledge that was learned previously. Experimental verification on the publicly available lung dataset showed that, compared with traditional deep network models and mainstream incremental models, TIMLM has greatly improved in terms of accuracy, sensitivity, and other indicators, demonstrating good continuous learning and anti-forgetting capabilities.

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来源期刊
中国医疗器械杂志
中国医疗器械杂志 Medicine-Medicine (all)
CiteScore
0.40
自引率
0.00%
发文量
8086
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