18FDG-PET/CT对肺癌胸部分期的影响:人工智能对相关肺结节检测的影响

IF 2 4区 医学 Q3 ENGINEERING, BIOMEDICAL
Mariem Trabelsi, Hamida Romdhane, Dorra Ben-Sellem
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引用次数: 0

摘要

本研究的重点是根据第9版TNM肺癌分类(2024),在3D 18FDG-PET/CT图像中对某些胸部肺癌分期进行自动化分类。通过利用先进的分割和分类技术,我们的目标是提高区分T4(肺结节)胸椎M0和M1a(肺结节)分期的准确性。使用pulmonary Toolkit对肺叶进行精确分割,可以识别肿瘤位置和其他恶性结节,确保可靠地区分同侧和对侧扩散。采用改进的ResNet-50模型对分割后的区域进行分类。性能评价表明,该模型达到了较高的精度。不变班的召回率为93%,F1得分为91%。M1a(肺结节)分类表现良好,F1得分为94%,尽管召回率略低,为91%。对于T4(肺结节)胸部M0,该模型表现出平衡的性能,F1评分为87%。总体准确率为87%,表明该分类模型具有鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Thoracic staging of lung cancers by 18FDG-PET/CT: impact of artificial intelligence on the detection of associated pulmonary nodules.

This study focuses on automating the classification of certain thoracic lung cancer stages in 3D 18FDG-PET/CT images according to the 9th Edition of the TNM Classification for Lung Cancer (2024). By leveraging advanced segmentation and classification techniques, we aim to enhance the accuracy of distinguishing between T4 (pulmonary nodules) Thoracic M0 and M1a (pulmonary nodules) stages. Precise segmentation of pulmonary lobes using the Pulmonary Toolkit enables the identification of tumor locations and additional malignant nodules, ensuring reliable differentiation between ipsilateral and contralateral spread. A modified ResNet-50 model is employed to classify the segmented regions. The performance evaluation shows that the model achieves high accuracy. The unchanged class has the best recall 93% and an excellent F1 score 91%. The M1a (pulmonary nodules) class performs well with an F1 score of 94%, though recall is slightly lower 91%. For T4 (pulmonary nodules) Thoracic M0, the model shows balanced performance with an F1 score of 87%. The overall accuracy is 87%, indicating a robust classification model.

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来源期刊
CiteScore
8.40
自引率
4.50%
发文量
110
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