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使用三维焦点全卷积神经网络对增强 CT 上的颈部淋巴结进行自动定位和分割。

Automated localization and segmentation of cervical lymph nodes on contrast-enhanced CT using a 3D foveal fully convolutional neural network.

机构信息

Institute of Diagnostic and Interventional Radiology, Faculty of Medicine and University Hospital Cologne, University of Cologne, Cologne, Germany.

Philips Research, Hamburg, Germany.

出版信息

Eur Radiol Exp. 2023 Jul 28;7(1):45. doi: 10.1186/s41747-023-00360-x.

Abstract

BACKGROUND

In the management of cancer patients, determination of TNM status is essential for treatment decision-making and therefore closely linked to clinical outcome and survival. Here, we developed a tool for automatic three-dimensional (3D) localization and segmentation of cervical lymph nodes (LNs) on contrast-enhanced computed tomography (CECT) examinations.

METHODS

In this IRB-approved retrospective single-center study, 187 CECT examinations of the head and neck region from patients with various primary diseases were collected from our local database, and 3656 LNs (19.5 ± 14.9 LNs/CECT, mean ± standard deviation) with a short-axis diameter (SAD) ≥ 5 mm were segmented manually by expert physicians. With these data, we trained an independent fully convolutional neural network based on 3D foveal patches. Testing was performed on 30 independent CECTs with 925 segmented LNs with an SAD ≥ 5 mm.

RESULTS

In total, 4,581 LNs were segmented in 217 CECTs. The model achieved an average localization rate (LR), i.e., percentage of localized LNs/CECT, of 78.0% in the validation dataset. In the test dataset, average LR was 81.1% with a mean Dice coefficient of 0.71. For enlarged LNs with a SAD ≥ 10 mm, LR was 96.2%. In the test dataset, the false-positive rate was 2.4 LNs/CECT.

CONCLUSIONS

Our trained AI model demonstrated a good overall performance in the consistent automatic localization and 3D segmentation of physiological and metastatic cervical LNs with a SAD ≥ 5 mm on CECTs. This could aid clinical localization and automatic 3D segmentation, which can benefit clinical care and radiomics research.

RELEVANCE STATEMENT

Our AI model is a time-saving tool for 3D segmentation of cervical lymph nodes on contrast-enhanced CT scans and serves as a solid base for N staging in clinical practice and further radiomics research.

KEY POINTS

• Determination of N status in TNM staging is essential for therapy planning in oncology. • Segmenting cervical lymph nodes manually is highly time-consuming in clinical practice. • Our model provides a robust, automated 3D segmentation of cervical lymph nodes. • It achieves a high accuracy for localization especially of enlarged lymph nodes. • These segmentations should assist clinical care and radiomics research.

摘要

背景

在癌症患者的管理中,确定 TNM 分期对于治疗决策至关重要,因此与临床结果和生存密切相关。在这里,我们开发了一种用于自动三维(3D)定位和分割颈部淋巴结(LN)的工具,该工具基于对比增强计算机断层扫描(CECT)检查。

方法

本研究为经机构审查委员会批准的回顾性单中心研究,从我们的本地数据库中收集了来自各种原发性疾病患者的 187 例头颈部 CECT 检查,由专家医生手动对短轴直径(SAD)≥5mm 的 3656 个 LN(19.5±14.9 个/LN,均值±标准差)进行分割。使用这些数据,我们基于 3D 焦斑斑块训练了一个独立的全卷积神经网络。在 30 例具有 925 个 SAD≥5mm 分割 LN 的独立 CECT 上进行了测试。

结果

总共在 217 例 CECT 中分割了 4581 个 LN。在验证数据集上,该模型的平均定位率(LR),即定位的 LN/CECT 的百分比为 78.0%。在测试数据集上,平均 LR 为 81.1%,平均 Dice 系数为 0.71。对于 SAD≥10mm 的肿大 LN,LR 为 96.2%。在测试数据集上,假阳性率为每 CECT 2.4 个 LN。

结论

我们训练的人工智能模型在 CECT 上对具有 SAD≥5mm 的生理和转移性颈部 LN 的一致自动定位和 3D 分割方面表现出良好的整体性能。这可以辅助临床定位和自动 3D 分割,从而有益于临床护理和放射组学研究。

重要性声明

我们的 AI 模型是 CECT 上颈部淋巴结 3D 分割的省时工具,为临床实践中的 N 分期和进一步的放射组学研究提供了坚实的基础。

关键点

• TNM 分期中 N 分期的确定对于肿瘤学中的治疗计划至关重要。• 在临床实践中,手动分割颈部淋巴结非常耗时。• 我们的模型提供了一种强大的、自动化的颈部淋巴结 3D 分割方法。• 它在定位方面,尤其是在肿大的淋巴结方面,具有很高的准确性。• 这些分割应有助于临床护理和放射组学研究。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9ad2/10382409/72232f801ccc/41747_2023_360_Fig1_HTML.jpg

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