Research on the Application of Lung Ground- Glass Nodule Screening Based on Gene Methylation Combined with Spiral CT and AI Recognition System in Teaching Practice
Download PDF
$currentUrl="http://$_SERVER[HTTP_HOST]$_SERVER[REQUEST_URI]"

Keywords

Gene methylation
Spiral CT
Lung ground-glass nodule
AI recognition system
Teaching practice

DOI

10.26689/otd.v3i1.9949

Submitted : 2025-03-04
Accepted : 2025-03-19
Published : 2025-04-03

Abstract

The application of gene methylation combined with spiral CT in the screening of lung ground-glass nodules (GGN) and the integration of AI recognition systems represent cutting-edge advancements in medical technology. This study explores the practical application of these techniques in teaching settings, aiming to enhance students’ understanding and proficiency in modern medical imaging and diagnosis. By incorporating these methods into educational curricula, we seek to assess their effectiveness in improving diagnostic accuracy, efficiency, and overall student engagement. The findings of this research have implications for enhancing medical education, particularly in the field of radiology and imaging sciences, ultimately leading to improved patient care and outcomes.

References

Liang D, Zhou J, Zeng M, et al., 2024, Predictive Value of AI-Based CT Quantitative Analysis for Invasiveness of Atypical Ground-Glass Nodule Lung Adenocarcinoma Under 20 mm. Journal of Clinical Radiology, 43(1): 57–62.

Yin X, Zhang J, Li W, et al., 2022, The Value of CT Features in Predicting the Invasiveness of Early Lung Adenocarcinoma With Ground-Glass Nodules. Chinese Journal of CT and MRI, 20(11): 74–77.

Wang Q, Peng W, Wang R, et al., 2024, Diagnostic Value of CT Features and Enhanced Quantitative Analysis in Predicting the Invasiveness of Pulmonary Ground-Glass Nodules. Journal of Medical Imaging, 34(4): 33–37 + 48.

Zhang D, Chen Y, Mo Q, et al., 2023, The Value of a Combined Model Based on Clinical and Radiomic Features in Predicting the Invasiveness of Ground-Glass Nodule Lung Adenocarcinoma. Medical and Health Equipment, 44(12): 51–57.

Li M, Cao C, Chen Y, et al., 2024, Expert Consensus on Innovative Diagnosis and Treatment Guidelines for Multiple Ground-Glass Nodules in the Lungs With Integrated Chinese and Western Medicine (2023 Edition). Oncology, 1–12.

Liu G, Mao X, Xie X, et al., 2023, Diagnostic Study of Multimodal Artificial Intelligence Models for Benign and Malignant Pulmonary Ground-Glass Nodules. Journal of Practical Radiology, 39(6): 904–907.

Zhou X, Zhang B, Duan L, 2022, Study on the Value of Applying CBS Teaching Mode in Pneumoconiosis Teaching. China Health Industry, 19(18): 149–152.

Du D, Jin M, Wang Y, et al., 2023, The Value of CT Features in Predicting the Invasiveness and Degree of Invasion of Pure Ground-Glass Nodules in Lung Tumors Based on the New Classification of Lung Tumors in 2021. Chinese Journal of CT and MRI, 21(7): 52–55.

Gao L, Zhang J, Gu H, et al., 2022, The Value of CT Features in Predicting the Invasiveness and Degree of Invasion of Pure Ground-Glass Nodules in Lung Tumors Based on the New Classification of Lung Tumors in 2021. Chinese Journal of Radiology, 56(6): 616–622.

Ji Y, Luo L, Wang J, 2023, Application Value and Influencing Factors of CT Scanning in Differentiating Benign and Malignant Ground-Glass-Like Nodules in Lungs. World Journal of Complex Medicine, 9(4): 95–97 + 101.

Liu B, Zhang Y, Su L, et al., 2022, Study on Predicting the Invasion of Non-Small Cell Lung Cancer by Ground-Glass Nodules. Chinese Journal of New Clinical Medicine, 15(3): 202–206.

Wang Q, Wu J, 2022, Evolution Pattern and Risk Factors of Pure Ground-Glass Nodules in Lungs Based on Long-Term CT Follow-Up. Radiologic Practice, 37(3): 398–401.

Liu X, Liu W, Zhao Y, et al., 2023, Application of Case-Based Problem-Driven Teaching Method in Online and Offline Mixed Teaching Mode of Medical Imaging. Clinical Medical Research and Practice, 8(25): 190–194.

Li H, Yan X, Li J, et al., 2024, Application of Three-Dimensional Reconstruction and Finite Element Technology in Imaging Teaching for Orthopedic Residents. Journal of Medical Research, 53(4): 196–198 + 114.

Zhang L, 2023, Publication of “Medical Imaging Experiment Tutorial”: Exploration and Practice of Teaching Reform in Medical Imaging Experiments. Journal of Interventional Radiology, 32(2): 205.