Lumbar Spinal Stenosis Detection from Sagittal and Axial MR Images using Hybrid of Deep Kronecker Network and SpinalNet.

IF 2.6 3区 医学 Q2 CLINICAL NEUROLOGY
A Beulah
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引用次数: 0

Abstract

Purpose: The main purpose of this research is to develop an automated and accurate method for detecting Lumbar Spinal Stenosis (LSS) using both sagittal and axial MRI images. The study addresses the challenge of differentiating LSS from similar conditions such as herniated disks, aiming to facilitate quick diagnosis with less dependence on expert interpretation.

Method: This research proposes a Hybrid Deep Kronecker Spinal Network (DKN_Spinal) for LSS detection using sagittal and axial Magnetic Resonance Imaging (MRI) images. Here, the input sagittal and axial images are fed for the pre-processing, which is done by bias field correction. Then, the stenosis region segmentation is carried out by Fuzzy Local Information C-Means (FLICM) method. After that, the LSS is detected for both the segmented images by DKN_Spinal, which is the combination of Deep Kronecker Network (DKN) and SpinalNet. Furthermore, the classification of lumbar spine conditions in sagittal and axial images is performed, categorizing them as mild, moderate, or severe. Finally, the majority voting is carried out for both the categorized phases, which is then classified as mild, moderate, or severe based on the training loss.

Results: The proposed DKN_Spinal model demonstrated superior performance, achieving an accuracy of 92.1%, True Positive Rate (TPR) of 92.2%, and True Negative Rate (TNR) of 92.9%.

Conclusion: The proposed method achieves high diagnostic accuracy and effectively classifies spinal conditions into mild, moderate, or severe, providing detailed insights that support appropriate treatment planning and reduce the need for extensive expert involvement.

基于深度Kronecker网络和SpinalNet的矢状和轴向MR图像腰椎管狭窄检测。
目的:本研究的主要目的是开发一种自动化和准确的方法来检测腰椎管狭窄症(LSS),同时使用矢状和轴向MRI图像。该研究解决了将LSS与椎间盘突出等类似疾病区分开来的挑战,旨在促进快速诊断,减少对专家解释的依赖。方法:本研究提出了一种混合深度Kronecker脊柱网络(DKN_Spinal),用于矢状和轴向磁共振成像(MRI)图像的LSS检测。在这里,输入的矢状和轴向图像被馈送进行预处理,预处理是通过偏置场校正完成的。然后,采用模糊局部信息c均值(FLICM)方法对狭窄区域进行分割;然后,使用深度Kronecker网络(Deep Kronecker Network, DKN)和SpinalNet相结合的DKN_Spinal对两幅分割后的图像进行LSS检测。此外,在矢状位和轴位图像中对腰椎状况进行分类,将其分为轻度、中度和重度。最后,对两个分类阶段进行多数投票,然后根据训练损失将其分类为轻度、中度或严重。结果:DKN_Spinal模型的准确率为92.1%,真阳性率(TPR)为92.2%,真阴性率(TNR)为92.9%。结论:提出的方法具有较高的诊断准确性,并有效地将脊柱疾病分为轻度、中度和重度,提供详细的见解,支持适当的治疗计划,减少对广泛专家参与的需要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
European Spine Journal
European Spine Journal 医学-临床神经学
CiteScore
4.80
自引率
10.70%
发文量
373
审稿时长
2-4 weeks
期刊介绍: "European Spine Journal" is a publication founded in response to the increasing trend toward specialization in spinal surgery and spinal pathology in general. The Journal is devoted to all spine related disciplines, including functional and surgical anatomy of the spine, biomechanics and pathophysiology, diagnostic procedures, and neurology, surgery and outcomes. The aim of "European Spine Journal" is to support the further development of highly innovative spine treatments including but not restricted to surgery and to provide an integrated and balanced view of diagnostic, research and treatment procedures as well as outcomes that will enhance effective collaboration among specialists worldwide. The “European Spine Journal” also participates in education by means of videos, interactive meetings and the endorsement of educative efforts. Official publication of EUROSPINE, The Spine Society of Europe
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