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分形维数:利用机器学习分析其作为脑肿瘤诊断神经影像生物标志物的潜力。

Fractal dimension: analyzing its potential as a neuroimaging biomarker for brain tumor diagnosis using machine learning.

作者信息

Battalapalli Dheerendranath, Vidyadharan Sreejith, Prabhakar Rao B V V S N, Yogeeswari P, Kesavadas C, Rajagopalan Venkateswaran

机构信息

Department of Electrical and Electronics Engineering, Birla Institute of Technology and Science Pilani, Hyderabad Campus, Hyderabad, India.

Department of Pharmacy, Birla Institute of Technology and Science Pilani, Hyderabad Campus, Hyderabad, India.

出版信息

Front Physiol. 2023 Jul 17;14:1201617. doi: 10.3389/fphys.2023.1201617. eCollection 2023.

Abstract

The main purpose of this study was to comprehensively investigate the potential of fractal dimension (FD) measures in discriminating brain gliomas into low-grade glioma (LGG) and high-grade glioma (HGG) by examining tumor constituents and non-tumorous gray matter (GM) and white matter (WM) regions. Retrospective magnetic resonance imaging (MRI) data of 42 glioma patients (LGG, n = 27 and HGG, n = 15) were used in this study. Using MRI, we calculated different FD measures based on the general structure, boundary, and skeleton aspects of the tumorous and non-tumorous brain GM and WM regions. Texture features, namely, angular second moment, contrast, inverse difference moment, correlation, and entropy, were also measured in the tumorous and non-tumorous regions. The efficacy of FD features was assessed by comparing them with texture features. Statistical inference and machine learning approaches were used on the aforementioned measures to distinguish LGG and HGG patients. FD measures from tumorous and non-tumorous regions were able to distinguish LGG and HGG patients. Among the 15 different FD measures, the general structure FD values of enhanced tumor regions yielded high accuracy (93%), sensitivity (97%), specificity (98%), and area under the receiver operating characteristic curve (AUC) score (98%). Non-tumorous GM skeleton FD values also yielded good accuracy (83.3%), sensitivity (100%), specificity (60%), and AUC score (80%) in classifying the tumor grades. These measures were also found to be significantly ( < 0.05) different between LGG and HGG patients. On the other hand, among the 25 texture features, enhanced tumor region features, namely, contrast, correlation, and entropy, revealed significant differences between LGG and HGG. In machine learning, the enhanced tumor region texture features yielded high accuracy, sensitivity, specificity, and AUC score. A comparison between texture and FD features revealed that FD analysis on different aspects of the tumorous and non-tumorous components not only distinguished LGG and HGG patients with high statistical significance and classification accuracy but also provided better insights into glioma grade classification. Therefore, FD features can serve as potential neuroimaging biomarkers for glioma.

摘要

本研究的主要目的是通过检查肿瘤成分以及非肿瘤性灰质(GM)和白质(WM)区域,全面研究分形维数(FD)测量在区分脑胶质瘤为低级别胶质瘤(LGG)和高级别胶质瘤(HGG)方面的潜力。本研究使用了42例胶质瘤患者的回顾性磁共振成像(MRI)数据(LGG,n = 27;HGG,n = 15)。利用MRI,我们基于肿瘤性和非肿瘤性脑GM和WM区域的总体结构、边界和骨架方面计算了不同的FD测量值。还在肿瘤性和非肿瘤性区域测量了纹理特征,即角二阶矩、对比度、逆差矩、相关性和熵。通过将FD特征与纹理特征进行比较来评估FD特征的有效性。对上述测量值采用统计推断和机器学习方法来区分LGG和HGG患者。来自肿瘤性和非肿瘤性区域的FD测量值能够区分LGG和HGG患者。在15种不同的FD测量值中,增强肿瘤区域的总体结构FD值具有较高的准确性(93%)、敏感性(97%)、特异性(98%)和受试者操作特征曲线(AUC)下面积得分(98%)。非肿瘤性GM骨架FD值在对肿瘤级别进行分类时也具有良好的准确性(83.3%)、敏感性(100%)特异性(60%)和AUC得分(80%)。还发现这些测量值在LGG和HGG患者之间存在显著差异(<0.05)。另一方面,在25种纹理特征中,增强肿瘤区域特征,即对比度、相关性和熵,在LGG和HGG之间显示出显著差异。在机器学习中,增强肿瘤区域纹理特征具有较高的准确性、敏感性、特异性和AUC得分。纹理特征与FD特征的比较表明,对肿瘤性和非肿瘤性成分不同方面的FD分析不仅能以高统计学意义和分类准确性区分LGG和HGG患者,还能为胶质瘤分级分类提供更好的见解。因此,FD特征可作为胶质瘤潜在的神经影像学生物标志物。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1cc8/10390093/7e0ff17e14d9/fphys-14-1201617-g001.jpg

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