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首页> 外文期刊>Applied Intelligence: The International Journal of Artificial Intelligence, Neural Networks, and Complex Problem-Solving Technologies >Multi-branch cross attention model for prediction of KRAS mutation in rectal cancer with t2-weighted MRI
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Multi-branch cross attention model for prediction of KRAS mutation in rectal cancer with t2-weighted MRI

机译:T2加权MRI预测直肠癌KRAS突变的多分支横向注意模型

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The accurate identification of KRAS mutation status on medical images is critical for doctors to specify treatment options for patients with rectal cancer. Deep learning methods have recently been successfully introduced to medical diagnosis and treatment problems, although substantial challenges remain in the computer-aided diagnosis (CAD) due to the lack of large training datasets. In this paper, we propose a multi-branch cross attention model (MBCAM) to separate KRAS mutation cases from wild type cases using limited T2-weighted MRI data. Our model is built on multiple different branches generated based on our existing MRI data, which can take full advantage of the information contained in small data sets. The cross attention block (CA block) is proposed to fuse formerly independent branches to ensure that the model can learn as many common features as possible for preventing the overfitting of the model due to the limited dataset. The inter-branch loss is proposed to constrain the learning range of the model, confirming that the model can learn more general features from multi-branch data. We tested our method on the collected dataset and compared it to four previous works and five popular deep learning models using transfer learning. Our result shows that the MBCAM achieved an accuracy of 88.92% for the prediction of KRAS mutations with an AUC of 95.75%. These results are a significant improvement over those existing methods (p < 0.05).
机译:在医学图像上准确识别KRAS突变状态对于医生来说至关重要,以指定直肠癌患者的治疗选择。最近已经成功地介绍了医学诊断和治疗问题的深度学习方法,尽管由于缺乏大型训练数据集,但在计算机辅助诊断(CAD)中仍然存在大量挑战。在本文中,我们提出了一种多分支杂交模型(MBCAM),以使用有限的T2加权MRI数据与野生型病例分离KRAS突变病例。我们的模型是基于我们现有MRI数据生成的多个不同分支的模型,可以充分利用小数据集中包含的信息。横向注意力块(CA块)被提出为保险丝以前独立的分支,以确保模型可以学习尽可能多的常见特征,以防止由于有限的数据集导致模型的过度接收。建议分支机间丢失来限制模型的学习范围,确认该模型可以从多分支数据中了解更多的一般功能。我们在收集的数据集上测试了我们的方法,并将其与四个以前的工作和五个流行的深度学习模型进行了比较。我们的结果表明,MBCAM达到了88.92%的准确性,用于预测AUC的克拉斯突变95.75%。这些结果是对现有方法的显着改进(P <0.05)。

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