Diagnostic artificial intelligence model predicts lymph node status in non-small cell lung cancer using simplified examination

被引:1
作者
Yoshimura, Ryuichi [1 ]
Endo, Yoshitaka [2 ]
Akashi, Takuya [3 ]
Deguchi, Hiroyuki [1 ]
Tomoyasu, Makoto [1 ]
Shigeeda, Wataru [1 ]
Kaneko, Yuka [1 ]
Saito, Hajime [1 ]
机构
[1] Iwate Med Univ, Sch Med, Dept Thorac Surg, 2-1-1,Idaidori, Yahaba, Iwate 0283695, Japan
[2] Iwate Univ, Supercomp & Informat Sci Ctr, Morioka, Iwate, Japan
[3] Okayama Univ, Fac Environm Life Nat Sci & Technol, Okayama, Japan
关键词
Lung cancer; lymph node; metastasis; artificial intelligence (AI); COMPUTED-TOMOGRAPHY; RISK-FACTORS; METASTASIS; SUPERIOR; IA;
D O I
10.21037/jtd-24-1067
中图分类号
R56 [呼吸系及胸部疾病];
学科分类号
摘要
Background: Artificial intelligence (AI) technology was introduced in medical data area and applied disease prediction models. This study aimed to establish an AI model for predicting lymph node metastasis based on simple medical examinations in patients with non-small cell lung cancer (NSCLC). Methods: We retrospectively analyzed 988 patients with NSCLC who underwent radical pulmonary resection with mediastinal lymph node dissection between January 2011 and October 2022. We collected total tumor size, solid tumor size and consolidation-to-tumor ratio, obtainable from medical interview, blood tests and plain computed tomography (CT) of the chest. All patients were randomly classified into a training set (n=790) and a validation set (n=198). Six algorithms including Support Vector Classification (SVC), and multilayer perceptron (MLP) were created to decide the lymph node metastasis. Results: The GB model showed the best diagnostic performance, with 80.0% accuracy, 95.6% specificity and an area under the curve (AUC) of 0.75. Conclusions: An AI model showed high specificity and accuracy for predicting lymph node metastasis. These models have potential to categorize suitable surgical procedures for NSCLC patients without needing contrast-enhanced CT or positron emission tomography.
引用
收藏
页码:7320 / 7328
页数:9
相关论文
共 29 条
[1]   Meta-analysis of positron emission tomographic and computed tomographic imaging in detecting mediastinal lymph node metastases in nonsmall cell lung cancer [J].
Birim, Ö ;
Kappetein, AP ;
Stijnen, T ;
Bogers, AJJC .
ANNALS OF THORACIC SURGERY, 2005, 79 (01) :375-382
[2]  
Brierley JD, 2016, TNM CLASSIFICATION M
[3]   Predictive Factors for Node Metastasis in Patients With Clinical Stage I Non-Small Cell Lung Cancer [J].
Cho, Sukki ;
Song, In Hag ;
Yang, Hee Chul ;
Kim, Kwhanmien ;
Jheon, Sanghoon .
ANNALS OF THORACIC SURGERY, 2013, 96 (01) :239-245
[4]   Poor correspondence between clinical and pathologic staging in stage 1 non-small cell lung cancer: results from CALGB 9761, a prospective trial [J].
D'Cunha, J ;
Herndon, JE ;
Herzan, DL ;
Patterson, GA ;
Kohman, LJ ;
Harpole, DH ;
Kernstine, KH ;
Kern, JA ;
Green, MR ;
Maddaus, MA ;
Kratzke, RA .
LUNG CANCER, 2005, 48 (02) :241-246
[5]   LASSO-based machine learning models for the prediction of central lymph node metastasis in clinically negative patients with papillary thyroid carcinoma [J].
Feng, Jia-Wei ;
Ye, Jing ;
Qi, Gao-Feng ;
Hong, Li-Zhao ;
Wang, Fei ;
Liu, Sheng-Yong ;
Jiang, Yong .
FRONTIERS IN ENDOCRINOLOGY, 2022, 13
[6]   Application of an Interpretable Machine Learning Model to Predict Lymph Node Metastasis in Patients with Laryngeal Carcinoma [J].
Feng, Menglong ;
Zhang, Juhong ;
Zhou, Xiaoqing ;
Mo, Hailan ;
Jia, Lifeng ;
Zhang, Chanyuan ;
Hu, Yaqin ;
Yuan, Wei .
JOURNAL OF ONCOLOGY, 2022, 2022
[7]   A Prediction Model to Optimize Invasive Mediastinal Staging Procedures for Non-small Cell Lung Cancer in Patients With a Radiologically Normal Mediastinum The Quebec Prediction Model [J].
Guinde, Julien ;
Bourdages-Pageau, Etienne ;
Collin-Castonguay, Marie-May ;
Laflamme, Laurie ;
Levesque-Laplante, Alexandra ;
Marcoux, Sabrina ;
Roy, Pascalin ;
Ugalde, Paula Antonia ;
Lacasse, Yves ;
Fortin, Marc .
CHEST, 2021, 160 (06) :2283-2292
[8]   Clinical Prognosis of Superior Versus Basal Segment Stage I Non-Small Cell Lung Cancer [J].
Handa, Yoshinori ;
Tsutani, Yasuhiro ;
Tsubokawa, Norifumi ;
Misumi, Keizo ;
Hanaki, Hideaki ;
Miyata, Yoshihiro ;
Okada, Morihito .
ANNALS OF THORACIC SURGERY, 2017, 104 (06) :1896-1901
[9]   THE MEANING AND USE OF THE AREA UNDER A RECEIVER OPERATING CHARACTERISTIC (ROC) CURVE [J].
HANLEY, JA ;
MCNEIL, BJ .
RADIOLOGY, 1982, 143 (01) :29-36
[10]  
Henschke CI, 2006, NEW ENGL J MED, V355, P1763, DOI 10.1056/NEJMoa060476