Analysis of Hybrid Feature Optimization Techniques Based on the Classification Accuracy of Brain Tumor Regions Using Machine Learning and Further Evaluation Based on the Institute Test Data.

IF 0.7 Q4 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Journal of Medical Physics Pub Date : 2024-01-01 Epub Date: 2024-03-30 DOI:10.4103/jmp.jmp_77_23
Soniya Pal, Raj Pal Singh, Anuj Kumar
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引用次数: 0

Abstract

Aim: The goal of this study was to get optimal brain tumor features from magnetic resonance imaging (MRI) images and classify them based on the three groups of the tumor region: Peritumoral edema, enhancing-core, and necrotic tumor core, using machine learning classification models.

Materials and methods: This study's dataset was obtained from the multimodal brain tumor segmentation challenge. A total of 599 brain MRI studies were employed, all in neuroimaging informatics technology initiative format. The dataset was divided into training, validation, and testing subsets online test dataset (OTD). The dataset includes four types of MRI series, which were combined together and processed for intensity normalization using contrast limited adaptive histogram equalization methodology. To extract radiomics features, a python-based library called pyRadiomics was employed. Particle-swarm optimization (PSO) with varying inertia weights was used for feature optimization. Inertia weight with a linearly decreasing strategy (W1), inertia weight with a nonlinear coefficient decreasing strategy (W2), and inertia weight with a logarithmic strategy (W3) were different strategies used to vary the inertia weight for feature optimization in PSO. These selected features were further optimized using the principal component analysis (PCA) method to further reducing the dimensionality and removing the noise and improve the performance and efficiency of subsequent algorithms. Support vector machine (SVM), light gradient boosting (LGB), and extreme gradient boosting (XGB) machine learning classification algorithms were utilized for the classification of images into different tumor regions using optimized features. The proposed method was also tested on institute test data (ITD) for a total of 30 patient images.

Results: For OTD test dataset, the classification accuracy of SVM was 0.989, for the LGB model (LGBM) was 0.992, and for the XGB model (XGBM) was 0.994, using the varying inertia weight-PSO optimization method and the classification accuracy of SVM was 0.996 for the LGBM was 0.998, and for the XGBM was 0.994, using PSO and PCA-a hybrid optimization technique. For ITD test dataset, the classification accuracy of SVM was 0.994 for the LGBM was 0.993, and for the XGBM was 0.997, using the hybrid optimization technique.

Conclusion: The results suggest that the proposed method can be used to classify a brain tumor as used in this study to classify the tumor region into three groups: Peritumoral edema, enhancing-core, and necrotic tumor core. This was done by extracting the different features of the tumor, such as its shape, grey level, gray-level co-occurrence matrix, etc., and then choosing the best features using hybrid optimal feature selection techniques. This was done without much human expertise and in much less time than it would take a person.

基于机器学习的脑肿瘤区域分类精度的混合特征优化技术分析和基于研究所测试数据的进一步评估。
目的:本研究旨在从磁共振成像(MRI)图像中获取最佳脑肿瘤特征,并根据肿瘤区域的三组特征进行分类:材料与方法:本研究的数据集来自多模态脑肿瘤分割挑战赛。共使用了 599 项脑核磁共振成像研究,均为神经影像信息技术倡议格式。数据集分为训练、验证和测试子集在线测试数据集(OTD)。数据集包括四种类型的磁共振成像序列,它们被组合在一起,并使用对比度受限的自适应直方图均衡方法进行强度归一化处理。为了提取放射组学特征,我们使用了基于 python- 的 pyRadiomics 库。特征优化采用了不同惯性权重的粒子群优化(PSO)方法。线性递减策略的惯性权重(W1)、非线性系数递减策略的惯性权重(W2)和对数策略的惯性权重(W3)是在 PSO 中改变惯性权重进行特征优化的不同策略。这些选定的特征通过主成分分析(PCA)方法进一步优化,以进一步降低维度和去除噪声,提高后续算法的性能和效率。利用支持向量机(SVM)、轻梯度提升(LGB)和极端梯度提升(XGB)机器学习分类算法,使用优化的特征将图像分类为不同的肿瘤区域。该方法还在研究所测试数据(ITD)上进行了测试,共测试了 30 张患者图像:对于 OTD 测试数据集,使用不同惯性权重-PSO 优化方法,SVM 的分类准确率为 0.989,LGB 模型(LGBM)的分类准确率为 0.992,XGB 模型(XGBM)的分类准确率为 0.994;使用 PSO 和 PCA 混合优化技术,SVM 的分类准确率为 0.996,LGBM 的分类准确率为 0.998,XGBM 的分类准确率为 0.994。对于 ITD 测试数据集,使用混合优化技术,SVM 的分类准确率为 0.994,LGBM 的分类准确率为 0.993,XGBM 的分类准确率为 0.997:结果表明,所提出的方法可用于对脑肿瘤进行分类,正如本研究中将肿瘤区域分为三组一样:瘤周水肿、增强核心和坏死肿瘤核心。具体做法是提取肿瘤的不同特征,如形状、灰度级、灰度级共生矩阵等,然后使用混合最优特征选择技术选择最佳特征。这项工作不需要太多的人类专业知识,所需的时间也比人要短得多。
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来源期刊
Journal of Medical Physics
Journal of Medical Physics RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING-
CiteScore
1.10
自引率
11.10%
发文量
55
审稿时长
30 weeks
期刊介绍: JOURNAL OF MEDICAL PHYSICS is the official journal of Association of Medical Physicists of India (AMPI). The association has been bringing out a quarterly publication since 1976. Till the end of 1993, it was known as Medical Physics Bulletin, which then became Journal of Medical Physics. The main objective of the Journal is to serve as a vehicle of communication to highlight all aspects of the practice of medical radiation physics. The areas covered include all aspects of the application of radiation physics to biological sciences, radiotherapy, radiodiagnosis, nuclear medicine, dosimetry and radiation protection. Papers / manuscripts dealing with the aspects of physics related to cancer therapy / radiobiology also fall within the scope of the journal.
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