多层关注的深层结构从CT扫描对肺结节恶性分层

IF 1.7 4区 医学 Q3 ENGINEERING, BIOMEDICAL
Alejandra Moreno , Andrea Rueda , Fabio Martínez
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引用次数: 0

摘要

肺癌仍然是癌症相关死亡的主要原因。结节是主要的放射学表现,通常在低剂量CT扫描中观察到。尽管如此,结节的特征诊断仍然是主观的,在专家的观察中报告了适度的一致,特别是在识别恶性肿瘤分层方面。该方法提出了一种深度多关注策略,经过充分验证,可以根据四种恶性程度对结节肿块进行分类。这项工作介绍了一个多关注的架构,致力于在恶性肿瘤分期中对结节进行分层。该架构接收体积结节区域并学习多尺度显著性图,专注于观察到的肿块的决定性恶性模式。专门的注意头捕捉与分叶、纹理和刺状特征相关的模式。验证包括对多重注意特征的广泛分析,允许建立与其他放射学发现的相关性。所提出的方法在经典的多分类中实现了85.35%的AUC,在一对一的验证方法中实现了82.90%的平均AUC,显示了最先进的竞争结果。所介绍的体系结构具有支持结节分层和对结节特征进行分类的功能。穷举验证还表明了适当的泛化性能,这是将该策略应用于实际场景的潜在特性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A multi-attention deep architecture to stratify lung nodule malignancy from CT scans

A multi-attention deep architecture to stratify lung nodule malignancy from CT scans
Lung cancer remains the principal cause of cancer-related deaths. Nodules are the main radiological finding, typically observed from low-dose CT scans. Nonetheless, the nodule characterization diagnosis remains subjective, reporting a moderate agreement among experts' observations, especially in identifying malignancy stratification. The proposed approach presents a deep multi-attention strategy, validated exhaustively to classify nodule masses according to four malignancy degrees. This work introduces a multi-attention architecture dedicated to stratifying nodules among malignancy stages. The architecture receives volumetric nodule regions and learns multi-scale saliency maps, focusing on determinant malignancy patterns of the observed masses. Specialized attention heads capture related patterns associated with lobulated, textural, and spiculated features. Validation includes an extensive analysis regarding multiple attention features, allowing to establish a correlation with other radiological findings. The proposed approach achieves an AUC of 85.35% for a classical multi-classification and a mean AUC of 82.90% in a one-vs-all validation methodology, showing competitive results in the state-of-the-art. The introduced architecture has capabilities to support nodule stratification and to classify nodule features. The exhaustive validation also suggests a proper generalization performance, which is a potential property to transfer this strategy in real scenarios.
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来源期刊
Medical Engineering & Physics
Medical Engineering & Physics 工程技术-工程:生物医学
CiteScore
4.30
自引率
4.50%
发文量
172
审稿时长
3.0 months
期刊介绍: Medical Engineering & Physics provides a forum for the publication of the latest developments in biomedical engineering, and reflects the essential multidisciplinary nature of the subject. The journal publishes in-depth critical reviews, scientific papers and technical notes. Our focus encompasses the application of the basic principles of physics and engineering to the development of medical devices and technology, with the ultimate aim of producing improvements in the quality of health care.Topics covered include biomechanics, biomaterials, mechanobiology, rehabilitation engineering, biomedical signal processing and medical device development. Medical Engineering & Physics aims to keep both engineers and clinicians abreast of the latest applications of technology to health care.
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