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DivGI:深入研究消化内镜图像分类

DivGI: delve into digestive endoscopy image classification.

作者信息

He Qi, Bano Sophia, Stoyanov Danail, Zuo Siyang

机构信息

The Key Laboratory of Mechanism Theory and Equipment Design of Ministry of Education, Tianjin University, Tianjin, China.

Wellcome/EPSRC Centre for Interventional and Surgical Sciences (WEISS) and Department of Computer Science, University College London, London, UK.

出版信息

Int J Comput Assist Radiol Surg. 2025 Jun 6. doi: 10.1007/s11548-025-03441-x.

Abstract

PURPOSE

Gastrointestinal (GI) endoscopic imaging involves capturing routine anatomical landmarks and suspected lesions during endoscopic procedures for the clinical diagnosis of GI diseases. These images present three key challenges compared to typical scene images: significant class imbalance, a lack of distinctive features, and high similarity between some categories. While existing research has addressed the issue of image quantity imbalance, the challenges posed by indistinct features and inter-category similarity remain unresolved. This study proposes a unified image classification framework designed to tackle all three of these challenges comprehensively.

METHODS

We present a novel network architecture, DivGI, which integrates three essential strategies-balanced sampling, fine-grained classification, and multi-label classification-within a single framework. The balanced sampling strategy is implemented via resampling and mix-up techniques, fine-grained classification is enabled through multi-granularity feature learning, and multi-label classification is achieved using hierarchical label joint learning. The performance of our method is validated using three publicly available datasets.

RESULTS

Extensive experimental results demonstrate that DivGI significantly improves classification accuracy compared to existing approaches, with Matthews correlation coefficients (MCC) of 91.31% on the HyperKvasir dataset, 86.72% on the Upper GI dataset, and 82.88% on the GastroVision dataset. These results highlight that DivGI is more effective and efficient compared to existing methods.

CONCLUSION

The proposed GI classification network, which incorporates multiple strategies, effectively classifies both routine landmark and suspected lesion images, aiming to facilitate better clinical diagnostics in gastrointestinal endoscopy. The code and data are publicly available at https://github.com/howardchina/DivGI.

摘要

目的

胃肠道(GI)内镜成像涉及在内镜检查过程中捕捉常规解剖标志和疑似病变,用于胃肠道疾病的临床诊断。与典型场景图像相比,这些图像存在三个关键挑战:显著的类别不平衡、缺乏独特特征以及某些类别之间的高度相似性。虽然现有研究已经解决了图像数量不平衡的问题,但不清晰特征和类别间相似性带来的挑战仍未得到解决。本研究提出了一个统一的图像分类框架,旨在全面应对所有这三个挑战。

方法

我们提出了一种新颖的网络架构DivGI,它在单个框架内集成了三种基本策略——平衡采样、细粒度分类和多标签分类。平衡采样策略通过重采样和混合技术实现,细粒度分类通过多粒度特征学习实现,多标签分类通过分层标签联合学习实现。我们使用三个公开可用的数据集验证了我们方法的性能。

结果

广泛的实验结果表明,与现有方法相比,DivGI显著提高了分类准确率,在HyperKvasir数据集上的马修斯相关系数(MCC)为91.31%,在上消化道数据集上为86.72%,在GastroVision数据集上为82.88%。这些结果表明,DivGI与现有方法相比更有效且高效。

结论

所提出的胃肠道分类网络结合了多种策略,有效地对常规标志和疑似病变图像进行分类,旨在促进胃肠道内镜检查中更好的临床诊断。代码和数据可在https://github.com/howardchina/DivGI上公开获取。

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