Fully automated segmentation and volumetric measurement of ocular adnexal lymphoma by deep learning-based self-configuring nnU-net on multi-sequence MRI: a multi-center study.

IF 2.4 3区 医学 Q2 CLINICAL NEUROLOGY
Neuroradiology Pub Date : 2024-10-01 Epub Date: 2024-07-17 DOI:10.1007/s00234-024-03429-5
Guorong Wang, Bingbing Yang, Xiaoxia Qu, Jian Guo, Yongheng Luo, Xiaoquan Xu, Feiyun Wu, Xiaoxue Fan, Yang Hou, Song Tian, Sicong Huang, Junfang Xian
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引用次数: 0

Abstract

Purpose: To evaluate nnU-net's performance in automatically segmenting and volumetrically measuring ocular adnexal lymphoma (OAL) on multi-sequence MRI.

Methods: We collected T1-weighted (T1), T2-weighted and T1-weighted contrast-enhanced images with/without fat saturation (T2_FS/T2_nFS, T1c_FS/T1c_nFS) of OAL from four institutions. Two radiologists manually annotated lesions as the ground truth using ITK-SNAP. A deep learning framework, nnU-net, was developed and trained using two models. Model 1 was trained on T1, T2, and T1c, while Model 2 was trained exclusively on T1 and T2. A 5-fold cross-validation was utilized in the training process. Segmentation performance was evaluated using the Dice similarity coefficient (DSC), sensitivity, and positive prediction value (PPV). Volumetric assessment was performed using Bland-Altman plots and Lin's concordance correlation coefficient (CCC).

Results: A total of 147 patients from one center were selected as training set and 33 patients from three centers were regarded as test set. For both Model 1 and 2, nnU-net demonstrated outstanding segmentation performance on T2_FS with DSC of 0.80-0.82, PPV of 84.5-86.1%, and sensitivity of 77.6-81.2%, respectively. Model 2 failed to detect 19 cases of T1c, whereas the DSC, PPV, and sensitivity for T1_nFS were 0.59, 91.2%, and 51.4%, respectively. Bland-Altman plots revealed minor tumor volume differences with 0.22-1.24 cm3 between nnU-net prediction and ground truth on T2_FS. The CCC were 0.96 and 0.93 in Model 1 and 2 for T2_FS images, respectively.

Conclusion: The nnU-net offered excellent performance in automated segmentation and volumetric assessment in MRI of OAL, particularly on T2_FS images.

Abstract Image

基于深度学习的自配置 nnU-net 在多序列 MRI 上对眼部附件淋巴瘤进行全自动分割和体积测量:一项多中心研究。
目的:评估 nnU-net 在多序列磁共振成像(MRI)上自动分割和测量眼附件淋巴瘤(OAL)体积的性能:我们从四家机构收集了 OAL 的 T1 加权 (T1)、T2 加权和带/不带脂肪饱和度的 T1 加权对比增强图像(T2_FS/T2_nFS、T1c_FS/T1c_nFS)。两名放射科医生使用 ITK-SNAP 人工标注病灶作为基本事实。开发了深度学习框架 nnU-net,并使用两个模型进行训练。模型 1 在 T1、T2 和 T1c 上进行训练,而模型 2 只在 T1 和 T2 上进行训练。在训练过程中使用了 5 倍交叉验证。使用骰子相似系数(DSC)、灵敏度和正预测值(PPV)对分割性能进行评估。使用Bland-Altman图和Lin's concordance correlation coefficient (CCC)进行容积评估:一个中心共选取 147 名患者作为训练集,三个中心共选取 33 名患者作为测试集。在模型 1 和模型 2 中,nnU-net 对 T2_FS 的分割表现出色,DSC 为 0.80-0.82,PPV 为 84.5-86.1%,灵敏度为 77.6-81.2%。模型 2 未能检测到 19 例 T1c,而 T1_nFS 的 DSC、PPV 和灵敏度分别为 0.59、91.2% 和 51.4%。Bland-Altman 图显示,在 T2_FS 上,nnU 网预测与地面实况之间的肿瘤体积差异很小,仅为 0.22-1.24 立方厘米。在 T2_FS 图像中,模型 1 和模型 2 的 CCC 分别为 0.96 和 0.93:nnU 网在 OAL 核磁共振成像的自动分割和容积评估中表现出色,尤其是在 T2_FS 图像上。
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来源期刊
Neuroradiology
Neuroradiology 医学-核医学
CiteScore
5.30
自引率
3.60%
发文量
214
审稿时长
4-8 weeks
期刊介绍: Neuroradiology aims to provide state-of-the-art medical and scientific information in the fields of Neuroradiology, Neurosciences, Neurology, Psychiatry, Neurosurgery, and related medical specialities. Neuroradiology as the official Journal of the European Society of Neuroradiology receives submissions from all parts of the world and publishes peer-reviewed original research, comprehensive reviews, educational papers, opinion papers, and short reports on exceptional clinical observations and new technical developments in the field of Neuroimaging and Neurointervention. The journal has subsections for Diagnostic and Interventional Neuroradiology, Advanced Neuroimaging, Paediatric Neuroradiology, Head-Neck-ENT Radiology, Spine Neuroradiology, and for submissions from Japan. Neuroradiology aims to provide new knowledge about and insights into the function and pathology of the human nervous system that may help to better diagnose and treat nervous system diseases. Neuroradiology is a member of the Committee on Publication Ethics (COPE) and follows the COPE core practices. Neuroradiology prefers articles that are free of bias, self-critical regarding limitations, transparent and clear in describing study participants, methods, and statistics, and short in presenting results. Before peer-review all submissions are automatically checked by iThenticate to assess for potential overlap in prior publication.
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