Introduction: To evaluate the value of artificial intelligence (AI)-assisted software in the diagnosis of lung nodules using a combination of low-dose computed tomography (LDCT) and high-resolution computed tomography (HRCT).
Method: A total of 113 patients with pulmonary nodules were screened using LDCT. For nodules with the largest diameters, an HRCT local-target scanning program (combined scanning scheme) and a conventional-dose CT scanning scheme were also performed. Lung nodules were subjectively assessed for image signs and compared by size and malignancy rate measured by AI-assisted software. The nodules were divided into improved visibility and identical visibility groups based on differences in the number of signs identified through the two schemes.
Results: The nodule volume and malignancy probability for subsolid nodules significantly differed between the improved and identical visibility groups. For the combined scanning protocol, we observed significant between-group differences in subsolid nodule malignancy rates.
Conclusion: Under the operation and decision of AI, the combined scanning scheme may be beneficial for screening high-risk populations.
Keywords: artificial intelligence-assisted diagnosis; low-dose radiation; pulmonary nodules; spiral computed tomography; target scan.
Copyright © 2022 Lv, Li, Liu, Zhang, Luo, Ren, Gao, Ma, Liang, Yang, Song, Gao, Gao, Jiang and Li.