转移性椎骨的零射击分割:Meta's Segment Anything Model 2及影响学习自由分割的因素分析

IF 3 2区 医学 Q2 CLINICAL NEUROLOGY
Rushmin Khazanchi, Sachin Govind, Rishi Jain, Rebecca Du, Nader S Dahdaleh, Christopher S Ahuja, Najib El Tecle
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引用次数: 0

摘要

目的:准确的椎体分割是脊柱转移诊断和后续治疗的影像学分析管道的重要步骤。考虑到这些转移瘤的放射异质性,对其进行分割尤其具有挑战性。传统的椎骨分割方法包括人工复习或深度学习;然而,人工审查是耗时的,并且存在互解释器可靠性问题,而深度学习需要构建大型数据集。生成式人工智能的兴起,尤其是像Meta的任意分割模型2 (SAM 2)这样的工具,有望在没有预训练(零拍摄)的情况下快速生成任何图像的分割。本研究的作者旨在评估sam2对转移性椎骨的分割能力。方法:使用来自The Cancer Imaging Archive的一组公开可用的脊柱CT扫描,包括患者性别、BMI、椎体位置、转移灶类型(溶解性、成形性或混合性)和原发癌症类型。由神经放射学家导出的每个椎体的Ground-truth分割从数据集中进一步提取。然后,在没有任何训练数据的情况下,SAM 2对每个椎体切片进行分割,所有这些分割都使用Dice相似系数(DSC)与金标准分割进行比较。使用标准统计技术评估临床亚组间的相对表现差异。结果:提取了55例患者的影像学资料,779例独特的胸腰椎,其中167例有转移性肿瘤累及。在这些椎骨中,sam2的平均体积DSC为0.833±0.053。SAM 2在胸椎的表现明显差于腰椎,女性患者相对于男性患者,肥胖患者相对于非肥胖患者。结论:这些结果表明,像sam2这样的通用分割模型可以在没有预训练的情况下提供合理的椎体分割精度,其效果与之前发表的训练模型相当。未来的研究应包括针对椎体位置和患者身体习性的脊柱分割模型的优化,以及成像质量方法的变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Zero-shot segmentation of spinal vertebrae with metastatic lesions: an analysis of Meta's Segment Anything Model 2 and factors affecting learning free segmentation.

Objective: Accurate vertebral segmentation is an important step in imaging analysis pipelines for diagnosis and subsequent treatment of spinal metastases. Segmenting these metastases is especially challenging given their radiological heterogeneity. Conventional approaches for segmenting vertebrae have included manual review or deep learning; however, manual review is time-intensive with interrater reliability issues, while deep learning requires large datasets to build. The rise of generative AI, notably tools such as Meta's Segment Anything Model 2 (SAM 2), holds promise in its ability to rapidly generate segmentations of any image without pretraining (zero-shot). The authors of this study aimed to assess the ability of SAM 2 to segment vertebrae with metastases.

Methods: A publicly available set of spinal CT scans from The Cancer Imaging Archive was used, which included patient sex, BMI, vertebral locations, types of metastatic lesion (lytic, blastic, or mixed), and primary cancer type. Ground-truth segmentations for each vertebra, derived by neuroradiologists, were further extracted from the dataset. SAM 2 then produced segmentations for each vertebral slice without any training data, all of which were compared to gold standard segmentations using the Dice similarity coefficient (DSC). Relative performance differences were assessed across clinical subgroups using standard statistical techniques.

Results: Imaging data were extracted for 55 patients and 779 unique thoracolumbar vertebrae, 167 of which had metastatic tumor involvement. Across these vertebrae, SAM 2 had a mean volumetric DSC of 0.833 ± 0.053. SAM 2 performed significantly worse on thoracic vertebrae relative to lumbar vertebrae, female patients relative to male patients, and obese patients relative to non-obese patients.

Conclusions: These results demonstrate that general-purpose segmentation models like SAM 2 can provide reasonable vertebral segmentation accuracy with no pretraining, with efficacy comparable to previously published trained models. Future research should include optimizations of spine segmentation models for vertebral location and patient body habitus, as well as for variations in imaging quality approaches.

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来源期刊
Neurosurgical focus
Neurosurgical focus CLINICAL NEUROLOGY-SURGERY
CiteScore
6.30
自引率
0.00%
发文量
261
审稿时长
3 months
期刊介绍: Information not localized
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