INSTRAS:基于红外光谱成像的医学图像分割 TRAnsformers

Hangzheng Lin , Kianoush Falahkheirkhah , Volodymyr Kindratenko , Rohit Bhargava
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引用次数: 0

摘要

红外(IR)光谱成像能够捕捉化学和空间信息,因此在医学成像应用中具有广泛的潜在用途。数据的这种复杂性既要求使用机器智能,也为利用高维度数据集提供了机会,该数据集提供的信息量远远超过目前人工解读的图像。虽然卷积神经网络(CNN),包括著名的 U-Net 模型,在图像分割方面表现出了令人印象深刻的性能,但卷积固有的局部性限制了这些模型对红外数据编码的有效性,导致性能不理想。在这项工作中,我们提出了一种基于红外光谱成像的医学图像分割 TRAnsformers(INSTRAS)。这一新颖的模型利用变压器编码器的优势有效分割红外乳腺图像。INSTRAS 结合了跳接和变压器编码器,克服了纯卷积模型的问题,如难以捕捉长距离依赖关系。为了评估我们的模型和现有卷积模型的性能,我们使用乳腺红外图像数据集对各种编码器-解码器模型进行了训练。INSTRAS 利用 9 个光谱波段进行分割,取得了 0.9788 的出色 AUC 分数,与纯粹的卷积模型相比凸显了其卓越的能力。这些实验结果证明了 INSTRAS 在红外图像分割方面的先进性和改进性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
INSTRAS: INfrared Spectroscopic imaging-based TRAnsformers for medical image Segmentation

Infrared (IR) spectroscopic imaging is of potentially wide use in medical imaging applications due to its ability to capture both chemical and spatial information. This complexity of the data both necessitates using machine intelligence as well as presents an opportunity to harness a high-dimensionality data set that offers far more information than today’s manually-interpreted images. While convolutional neural networks (CNNs), including the well-known U-Net model, have demonstrated impressive performance in image segmentation, the inherent locality of convolution limits the effectiveness of these models for encoding IR data, resulting in suboptimal performance. In this work, we propose an INfrared Spectroscopic imaging-based TRAnsformers for medical image Segmentation (INSTRAS). This novel model leverages the strength of the transformer encoders to segment IR breast images effectively. Incorporating skip-connection and transformer encoders, INSTRAS overcomes the issue of pure convolution models, such as the difficulty of capturing long-range dependencies. To evaluate the performance of our model and existing convolutional models, we conducted training on various encoder–decoder models using a breast dataset of IR images. INSTRAS, utilizing 9 spectral bands for segmentation, achieved a remarkable AUC score of 0.9788, underscoring its superior capabilities compared to purely convolutional models. These experimental results attest to INSTRAS’s advanced and improved segmentation abilities for IR imaging.

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来源期刊
Machine learning with applications
Machine learning with applications Management Science and Operations Research, Artificial Intelligence, Computer Science Applications
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