LNAS: a clinically applicable deep-learning system for mediastinal enlarged lymph nodes segmentation and station mapping without regard to the pathogenesis using unenhanced CT images

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Abstract

Background

The accurate identification and evaluation of lymph nodes by CT images is of great significance for disease diagnosis, treatment, and prognosis.

Purpose

To assess the lymph nodes’ segmentation, size, and station by artificial intelligence (AI) for unenhanced chest CT images and evaluate its value in clinical scenarios.

Material and methods

This retrospective study proposed an end-to-end Lymph Nodes Analysis System (LNAS) consisting of three models: the Lymph Node Segmentation model (LNS), the Mediastinal Organ Segmentation model (MOS), and the Lymph Node Station Registration model (LNR). We selected a healthy chest CT image as the template image and annotated 14 lymph node station masks according to the IASLC to build the lymph node station mapping template. The exact contours and stations of the lymph nodes were annotated by two junior radiologists and reviewed by a senior radiologist. Patients aged 18 and above, who had undergone unenhanced chest CT and had at least one suspicious enlarged mediastinal lymph node in imaging reports, were included. Exclusions were patients who had thoracic surgeries in the past 2 weeks or artifacts on CT images affecting lymph node observation by radiologists. The system was trained on 6725 consecutive chest CTs that from Tianjin Medical University General Hospital, among which 6249 patients had suspicious enlarged mediastinal lymph nodes. A total of 519 consecutive chest CTs from Qilu Hospital of Shandong University (Qingdao) were used for external validation. The gold standard for each CT was determined by two radiologists and reviewed by one senior radiologist.

Results

The patient-level sensitivity of the LNAS system reached of 93.94% and 92.89% in internal and external test dataset, respectively. And the lesion-level sensitivity (recall) reached 89.48% and 85.97% in internal and external test dataset. For man–machine comparison, AI significantly apparently shortened the average reading time (p < 0.001) and had better lesion-level and patient-level sensitivities.

Conclusion

AI improved the sensitivity lymph node segmentation by radiologists with an advantage in reading time.

LNAS:一种适用于临床的深度学习系统,利用未增强 CT 图像,在不考虑发病机制的情况下,对纵隔肿大淋巴结进行分割并绘制站位图
摘要 背景 通过 CT 图像准确识别和评估淋巴结对疾病诊断、治疗和预后具有重要意义。 目的 通过人工智能(AI)评估未增强胸部 CT 图像的淋巴结分割、大小和站位,并评估其在临床应用中的价值。 材料和方法 这项回顾性研究提出了一种端到端的淋巴结分析系统(LNAS),该系统由三个模型组成:淋巴结分割模型(LNS)、纵隔器官分割模型(MOS)和淋巴结站位注册模型(LNR)。我们选择了一张健康的胸部 CT 图像作为模板图像,并根据 IASLC 标注了 14 个淋巴结位点掩膜,从而建立了淋巴结位点映射模板。淋巴结的准确轮廓和站位由两名初级放射科医生标注,并由一名高级放射科医生审核。研究对象包括年龄在18岁及以上、接受过非增强胸部CT检查,且影像报告中至少有一个可疑纵隔淋巴结肿大的患者。不包括在过去两周内进行过胸部手术或 CT 图像上有影响放射科医生观察淋巴结的伪影的患者。该系统对天津医科大学总医院的 6725 例连续胸部 CT 进行了训练,其中 6249 例患者有可疑的纵隔淋巴结肿大。山东大学齐鲁医院(青岛)的 519 例连续胸部 CT 图像被用于外部验证。每张 CT 的金标准由两名放射科医生确定,并由一名资深放射科医生审核。 结果 在内部和外部测试数据集中,LNAS 系统的患者级灵敏度分别达到 93.94% 和 92.89%。在内部和外部测试数据集中,病灶级灵敏度(召回率)分别达到 89.48% 和 85.97%。在人机对比中,人工智能明显缩短了平均读取时间(p <0.001),并具有更好的病灶级和患者级灵敏度。 结论 人工智能提高了放射科医生对淋巴结分割的灵敏度,并在阅读时间方面具有优势。
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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