利用优化分割和统一分类模型在三维核磁共振成像图像中进行多变量脑肿瘤检测

IF 2.1 4区 医学 Q3 HEALTH CARE SCIENCES & SERVICES
V. Anitha
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引用次数: 0

摘要

目的和目标 脑肿瘤的三维磁共振成像(3D-MRI)分析是收集诊断和疾病治疗计划所需信息的重要工具。然而,在脑肿瘤分割过程中,由于初始轮廓点提取不当和组织强度分布重叠,现有技术在识别肿瘤位置和扩展肿瘤区域时存在分割误差。 因此,我们提出了一种新颖的双步优化金字塔分割网(Duo-step optimised Pyramidal SegNet),其中的多尺度对比度卷积注意模块可提高对比度,并使用双步织针优化(Duo-step Darning needle optimisation)根据肿瘤位置和肿瘤扩展提取肿瘤边缘,从而设置初始轮廓点,并利用辅助索贝尔边缘算子从所有二维核磁共振成像切片中提取肿瘤区域的金字塔水平集分割,而不会出现组织强度分布重叠的情况,从而有效地将分割误差降至最低。此外,在根据肿瘤类型对分割后的肿瘤区域进行分类时,由于忽略了对上下文和对称特征的提取,多变量脑肿瘤的不规则平面体积和低交互一致性降低了检测率。因此,我们提出了三维脑部统一 NN,其中自适应多层深度统一编码器模块通过测量观察区域和对侧区域的差异来提取三维上下文和对称特征,并通过增强稀疏分类交叉熵损失计算对多元脑肿瘤进行分类,从而实现高检测率。 结果与结论 BraTS2020 和脑肿瘤检测 2020 数据集的结果表明,所提出的模型优于现有技术,精确度分别为 97%、97.5%,召回率分别为 99%、97.8%,准确率分别为 95.7%、98.4%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multivariate Brain Tumor Detection in 3D-MRI Images Using Optimised Segmentation and Unified Classification Model

Aims and Objectives

3D Magnetic Resonance Imaging (3D-MRI) analysis of brain tumours is an important tool for gathering information needed for diagnosis and disease therapy planning. However, during the brain tumor segmentation process existing techniques have segmentation error while identifying tumor location and extended tumor regions due to improper extraction of initial contour points and overlapping tissue intensity distributions.

Methods

Hence a novel Duo-step optimised Pyramidal SegNet has been proposed in which multiscale contrast convolutional attention module improve contrast and the tumor edge has been extracted based on location and tumor extension using Duo-step darning needle optimisation that set initial contour points and pyramidal level set segmentation with ancillary Sobel edge operator extract the tumour region from all 2D MRI image slices without having overlapped tissue intensity distributions thereby effectively minimises segmentation error. Furthermore, during the classification of segmented tumor region based on its type, irregular planimetric volume and low interrater concordance of multivariate brain tumors reduce the detection rate due to neglecting the extraction of contextual and symmetric features. Hence 3D brain Unified NN has been proposed in which adaptive multi-layer deep unified encoder module extract 3D contextual and symmetric features by measuring the difference from the observed region and contralateral region and the multivariate brain tumors are classified with boosted Sparse Categorical Cross entropy loss calculation to demonstrate high detection rate.

Results and Conclusion

The results obtained for the BraTS2020 and Brain Tumor Detection 2020 data sets showed that the proposed model outperforms existing techniques with excellent precision of 97%, 97.5%, recall of 99%, 97.8%, and accuracy of 95.7%, 98.4%, respectively.

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来源期刊
CiteScore
4.80
自引率
4.20%
发文量
143
审稿时长
3-8 weeks
期刊介绍: The Journal of Evaluation in Clinical Practice aims to promote the evaluation and development of clinical practice across medicine, nursing and the allied health professions. All aspects of health services research and public health policy analysis and debate are of interest to the Journal whether studied from a population-based or individual patient-centred perspective. Of particular interest to the Journal are submissions on all aspects of clinical effectiveness and efficiency including evidence-based medicine, clinical practice guidelines, clinical decision making, clinical services organisation, implementation and delivery, health economic evaluation, health process and outcome measurement and new or improved methods (conceptual and statistical) for systematic inquiry into clinical practice. Papers may take a classical quantitative or qualitative approach to investigation (or may utilise both techniques) or may take the form of learned essays, structured/systematic reviews and critiques.
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