Mixed reality infrastructure based on deep learning medical image segmentation and 3D visualization for bone tumors using DCU-Net.

IF 3.4 2区 医学 Q2 Medicine Journal of Bone Oncology Pub Date : 2024-12-12 eCollection Date: 2025-02-01 DOI:10.1016/j.jbo.2024.100654
Kun Wang, Yong Han, Yuguang Ye, Yusi Chen, Daxin Zhu, Yifeng Huang, Ying Huang, Yijie Chen, Jianshe Shi, Bijiao Ding, Jianlong Huang
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Abstract

Objective: Segmenting and reconstructing 3D models of bone tumors from 2D image data is of great significance for assisting disease diagnosis and treatment. However, due to the low distinguishability of tumors and surrounding tissues in images, existing methods lack accuracy and stability. This study proposes a U-Net model based on double dimensionality reduction and channel attention gating mechanism, namely the DCU-Net model for oncological image segmentation. After realizing automatic segmentation and 3D reconstruction of osteosarcoma by optimizing feature extraction and improving target space clustering capabilities, we built a mixed reality (MR) infrastructure and explored the application prospects of the infrastructure combining deep learning-based medical image segmentation and mixed reality in the diagnosis and treatment of bone tumors.

Methods: We conducted experiments using a hospital dataset for bone tumor segmentation, used the optimized DCU-Net and 3D reconstruction technology to generate bone tumor models, and used set similarity (DSC), recall (R), precision (P), and 3D vertex distance error (VDE) to evaluate segmentation performance and 3D reconstruction effects. Then, two surgeons conducted clinical examination experiments on patients using two different methods, viewing 2D images and virtual reality infrastructure, and used the Likert scale (LS) to compare the effectiveness of surgical plans of the two methods.

Results: The DSC, R and P values of the model introduced in this paper all exceed 90%, which has significant advantages compared with methods such as U-Net and Attention-Uet. Furthermore, LS showed that clinicians in the DCU-Net-based MR group had better spatial awareness of tumor preoperative planning.

Conclusion: The deep learning DCU-Net algorithm model can improve the performance of tumor CT image segmentation, and the reconstructed fine model can better reflect the actual situation of individual tumors; the MR system constructed based on this model enhances clinicians' understanding of tumor morphology and spatial relationships. The MR system based on deep learning and three-dimensional visualization technology has great potential in the diagnosis and treatment of bone tumors, and is expected to promote clinical practice and improve efficacy.

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基于深度学习的混合现实基础设施及基于DCU-Net的骨肿瘤医学图像分割和三维可视化。
目的:从二维图像数据中分割重建骨肿瘤三维模型对辅助疾病诊断和治疗具有重要意义。然而,由于肿瘤和周围组织在图像上的可辨别性较低,现有的方法缺乏准确性和稳定性。本研究提出了一种基于二维降维和通道注意门控机制的U-Net模型,即肿瘤图像分割的DCU-Net模型。通过优化特征提取和提高目标空间聚类能力,实现骨肉瘤的自动分割和三维重建后,我们构建了混合现实(MR)基础设施,并探索了基于深度学习的医学图像分割与混合现实相结合的基础设施在骨肿瘤诊疗中的应用前景。方法:利用医院骨肿瘤分割数据集进行实验,利用优化后的DCU-Net和三维重建技术生成骨肿瘤模型,并利用集合相似度(DSC)、召回率(R)、精度(P)和三维顶点距离误差(VDE)评价骨肿瘤分割性能和三维重建效果。随后,两名外科医生分别采用观看2D图像和虚拟现实基础设施两种不同的方法对患者进行临床检查实验,并采用李克特量表(Likert scale, LS)比较两种方法手术方案的有效性。结果:本文引入的模型的DSC、R、P值均超过90%,与U-Net、Attention-Uet等方法相比具有显著优势。此外,LS显示基于dcu - net的MR组临床医生对肿瘤术前计划有更好的空间意识。结论:深度学习DCU-Net算法模型能提高肿瘤CT图像分割的性能,重构的精细模型能更好地反映单个肿瘤的实际情况;基于该模型构建的MR系统增强了临床医生对肿瘤形态和空间关系的理解。基于深度学习和三维可视化技术的MR系统在骨肿瘤的诊断和治疗中具有很大的潜力,有望促进临床实践和提高疗效。
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
CiteScore
7.20
自引率
2.90%
发文量
50
审稿时长
34 days
期刊介绍: The Journal of Bone Oncology is a peer-reviewed international journal aimed at presenting basic, translational and clinical high-quality research related to bone and cancer. As the first journal dedicated to cancer induced bone diseases, JBO welcomes original research articles, review articles, editorials and opinion pieces. Case reports will only be considered in exceptional circumstances and only when accompanied by a comprehensive review of the subject. The areas covered by the journal include: Bone metastases (pathophysiology, epidemiology, diagnostics, clinical features, prevention, treatment) Preclinical models of metastasis Bone microenvironment in cancer (stem cell, bone cell and cancer interactions) Bone targeted therapy (pharmacology, therapeutic targets, drug development, clinical trials, side-effects, outcome research, health economics) Cancer treatment induced bone loss (epidemiology, pathophysiology, prevention and management) Bone imaging (clinical and animal, skeletal interventional radiology) Bone biomarkers (clinical and translational applications) Radiotherapy and radio-isotopes Skeletal complications Bone pain (mechanisms and management) Orthopaedic cancer surgery Primary bone tumours Clinical guidelines Multidisciplinary care Keywords: bisphosphonate, bone, breast cancer, cancer, CTIBL, denosumab, metastasis, myeloma, osteoblast, osteoclast, osteooncology, osteo-oncology, prostate cancer, skeleton, tumour.
期刊最新文献
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