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1. 上海交通大学附属胸科医院放疗科,上海 200030
2. 上海交通大学生物医学工程学院,上海 200240
[ "傅圆圆(ORCID:0000-0001-5373-9528),博士研究生在读 E-mail: 781593153@qq.com" ]
傅小龙(ORCID:0000-0001-8127-3884),博士,主任医师、教授,上海市胸科医院放疗科主任 E-mail: xlfu1964@hotmail.com
收稿:2021-10-08,
修回:2022-01-02,
纸质出版:2022-04-30
移动端阅览
傅圆圆, 侯润萍, 傅小龙. 基于胸部CT预测早期非小细胞肺癌淋巴道或血道转移风险的研究进展[J]. 中国癌症杂志, 2022,32(4):343-350.
Yuanyuan FU, Runping HOU, Xiaolong FU. Research progress in predicting the risk of lymphatic or hematologic metastasis based on chest CT in early non-small cell lung cancer[J]. China Oncology, 2022, 32(4): 343-350.
傅圆圆, 侯润萍, 傅小龙. 基于胸部CT预测早期非小细胞肺癌淋巴道或血道转移风险的研究进展[J]. 中国癌症杂志, 2022,32(4):343-350. DOI: 10.19401/j.cnki.1007-3639.2022.04.007.
Yuanyuan FU, Runping HOU, Xiaolong FU. Research progress in predicting the risk of lymphatic or hematologic metastasis based on chest CT in early non-small cell lung cancer[J]. China Oncology, 2022, 32(4): 343-350. DOI: 10.19401/j.cnki.1007-3639.2022.04.007.
非小细胞肺癌(non-small cell lung cancer
NSCLC)占肺癌的80%~85%
是严重危害人类健康的恶性肿瘤之一。早期NSCLC治疗以手术切除或立体定向放疗等为主
确诊时是否存在淋巴道转移将会影响到局部治疗方法选择
局部治疗完成后是否还存在淋巴道和血道转移风险将成为辅助治疗精准决策的依据。如何预测NSCLC的淋巴道或血道转移风险
仍是一个难题。随着肿瘤发生、发展的演进及治疗的可塑性
肿瘤在时间、空间上生物学特性的异质性严重影响临床诊断、治疗及预后预测的精准性。正是受限于肿瘤的异质性
目前作为金标准的侵入性活检难以反映肿瘤生物学特性的全貌。基于医学图像的肿瘤生物学特性识别方法经历了从人工肉眼定性分析到手动提取影像学特征利用高级统计方法建模
再到影像组学和深度学习模型的发展
使精准高效的医学影像学分析成为可能。本文基于胸部CT影像
从影像组学和深度学习角度综述了影响早期NSCLC治疗决策的重要影响因素
聚焦于淋巴道和血道转移风险预测的研究进展。
Non-small cell lung cancer (NSCLC) accounts for 80%-85% of lung cancer and is one of the malignant tumors that seriously endanger human health. Treatment of early NSCLC is based on surgical excision or stereotactic body radiation therapy. Whether there is regional lymphatic metastasis when diagnosis is confirmed will affect the choice of local treatment
and whether there is still a risk of lymphatic and hematologic metastasis after the completion of local therapy will be the basis for accurate decision of adjuvant therapy. How to predict the risk of lymphatic or hematologic metastasis of NSCLC remains a challenge. With the development of tumor and the plasticity of treatment
heterogeneity of biological characteristics of tumors in time and space seriously affects the accuracy of clinical diagnosis
treatment and prognostic prediction. Due to the heterogeneity of tumor
it is difficult for invasive biopsy to show the full picture of tumor biological characteristics as a gold standard
which promotes clinical attention to non-invasive methods
such as medical images
to identify biological features. The method to identify tumor biological features based on medical images experiences from the qualitative analysis of artificial visuals to the modeling of advanced statistical methods for manual extraction of imaging features
and then to the application of radiomics and deep learning models
which provide new possibilities for accurate and efficient medical imaging analysis. Based on chest computed tomography (CT) imaging
this paper summarized the progress of research on the prediction of risk of lymphatic and hematologic metastasis
an important factor affecting early NSCLC treatment decision-making.
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