Advances in the application of artificial intelligence for pulmonary function assessment based on chest imaging in thoracic surgery
10.3760/cma.j.cn112139-20250309-00116
- VernacularTitle:人工智能基于胸部影像评估肺功能的应用进展:胸外科视角
- Author:
Linchong HUANG
1
;
Hengrui LIANG
1
;
Yu JIANG
1
;
Yuechun LIN
1
;
Jianxing HE
1
Author Information
1. 广州医科大学附属第一医院胸外科,广州 510120
- Publication Type:Journal Article
- Keywords:
Artificial intelligence;
Thoracic surgery;
Pulmonary function assessment;
Chest imaging
- From:
Chinese Journal of Surgery
2025;63(11):1009-1015
- CountryChina
- Language:Chinese
-
Abstract:
In recent years, lung function assessment has attracted increasing attention in the perioperative management of thoracic surgery. However, traditional pulmonary function testing methods remain limited in clinical practice due to high equipment requirements and complex procedures. With the rapid development of artificial intelligence (AI) technology, lung function assessment based on multimodal chest imaging (such as X-rays, CT, and MRI) has become a new research focus. Through deep learning algorithms, AI models can accurately extract imaging features of patients and have made significant progress in quantitative analysis of pulmonary ventilation, evaluation of diffusion capacity, measurement of lung volumes, and prediction of lung function decline. Previous studies have demonstrated that AI models perform well in predicting key indicators such as forced expiratory volume in one second, diffusing capacity for carbon monoxide, and total lung capacity. Despite these promising prospects, challenges remain in clinical translation, including insufficient data standardization, limited model interpretability, and the lack of prediction models for postoperative complications. In the future, greater emphasis should be placed on multicenter collaboration, the construction of high-quality databases, the promotion of multimodal data integration, and clinical validation to further enhance the application value of AI technology in precision decision-making for thoracic surgery.