Zhang Tian Chi, Zhang Jing, Chen Shou Cun, Saada Bacem
School of Information Science and Engineering, Chongqing Jiaotong University, Chongqing, China.
School of Information Science and Engineering, University of Jinan, Jinan, China.
Front Med (Lausanne). 2022 Mar 18;9:794125. doi: 10.3389/fmed.2022.794125. eCollection 2022.
The input image of a blurry glioma image segmentation is, usually, very unclear. It is difficult to obtain the accurate contour line of image segmentation. The main challenge facing the researchers is to correctly determine the area where the points on the contour line belong to the glioma image. This article highlights the mechanism of formation of glioma and provides an image segmentation prediction model to assist in the accurate division of glioma contour points. The proposed prediction model of segmentation associated with the process of the formation of glioma is innovative and challenging. Bose-Einstein Condensate (BEC) is a microscopic quantum phenomenon in which atoms condense to the ground state of energy as the temperature approaches absolute zero. In this article, we propose a BEC kernel function and a novel prediction model based on the BEC kernel to detect the relationship between the process of the BEC and the formation of a brain glioma. Furthermore, the theoretical derivation and proof of the prediction model are given from micro to macro through quantum mechanics, wave, oscillation of glioma, and statistical distribution of laws. The prediction model is a distinct segmentation model that is guided by BEC theory for blurry glioma image segmentation.
Our approach is based on five tests. The first three tests aimed at confirming the measuring range of T and μ in the BEC kernel. The results are extended from -10 to 10, approximating the standard range to T ≤ 0, and μ from 0 to 6.7. Tests 4 and 5 are comparison tests. The comparison in Test 4 was based on various established cluster methods. The results show that our prediction model in image evaluation parameters of P, R, and F is the best amongst all the existent ten forms except for only one reference with the mean value of F that is between 0.88 and 0.93, while our approach returns between 0.85 and 0.99. Test 5 aimed to further compare our results, especially with CNN (Convolutional Neural Networks) methods, by challenging Brain Tumor Segmentation (BraTS) and clinic patient datasets. Our results were also better than all reference tests. In addition, the proposed prediction model with the BEC kernel is feasible and has a comparative validity in glioma image segmentation.
Theoretical derivation and experimental verification show that the prediction model based on the BEC kernel can solve the problem of accurate segmentation of blurry glioma images. It demonstrates that the BEC kernel is a more feasible, valid, and accurate approach than a lot of the recent year segmentation methods. It is also an advanced and innovative model of prediction deducing from micro BEC theory to macro glioma image segmentation.
模糊的胶质瘤图像分割的输入图像通常非常不清晰。很难获得图像分割的准确轮廓线。研究人员面临的主要挑战是正确确定轮廓线上的点属于胶质瘤图像的区域。本文重点介绍了胶质瘤的形成机制,并提供了一种图像分割预测模型,以协助准确划分胶质瘤轮廓点。所提出的与胶质瘤形成过程相关的分割预测模型具有创新性和挑战性。玻色 - 爱因斯坦凝聚(BEC)是一种微观量子现象,其中随着温度接近绝对零度,原子凝聚到能量的基态。在本文中,我们提出了一种BEC核函数和基于BEC核的新型预测模型,以检测BEC过程与脑胶质瘤形成之间的关系。此外,通过量子力学、波、胶质瘤的振荡和规律的统计分布,从微观到宏观给出了预测模型的理论推导和证明。该预测模型是一种独特的分割模型,以BEC理论为指导用于模糊胶质瘤图像分割。
我们的方法基于五项测试。前三项测试旨在确定BEC核中T和μ的测量范围。结果从 - 10扩展到10,将标准范围近似为T≤0,μ从0到6.7。测试4和5是比较测试。测试4中的比较基于各种已建立的聚类方法。结果表明,在除一种参考之外的所有现有十种形式中,我们的预测模型在图像评估参数P、R和F方面是最好的,该参考的F平均值在0.88和0.93之间,而我们的方法返回值在0.85和0.99之间。测试5旨在通过挑战脑肿瘤分割(BraTS)和临床患者数据集进一步比较我们的结果,特别是与卷积神经网络(CNN)方法进行比较。我们的结果也优于所有参考测试。此外,所提出的带有BEC核的预测模型是可行的,并且在胶质瘤图像分割中具有比较有效性。
理论推导和实验验证表明,基于BEC核的预测模型可以解决模糊胶质瘤图像的准确分割问题。这表明BEC核是一种比近年来许多分割方法更可行、有效和准确的方法。它也是一种从微观BEC理论推导到宏观胶质瘤图像分割的先进创新预测模型。