Background: To investigate the performance of radiologists in characterizing and diagnosing hepatic lesions with and without the assistance of deep learning-based artificial intelligence (AI). Methods: This retrospective study included 83 nodules/masses from 69 patients who underwent dynamic contrast-enhanced CT of the liver. Image assessments were conducted by 20 radiologists. grouped according to their level of experience (10 senior and 10 junior). Each radiologist determined the probability of eight characteristics based on enhancement patterns and the diagnosis with and without AI attached to the SYNAPSE SAI viewer (FUJIFILM Corporation, Minato-ku, Japan). The reference standard for comparison was established as follows: final diagnoses were based on pathology for 39 lesions and expert imaging consensus for the remainder, while image characteristics for all lesions were determined by expert imaging consensus. Areas under the receiver operating characteristic curves (AUCs) were analyzed using the multireader multicase method. Results: Using AI significantly improved the overall AUCs for both the characterization and the diagnosis of liver lesions. Improvement was suggested for specific items, including the characterization of enhancement, nonperipheral washout, and delayed enhancement, and the diagnosis of hepatocellular carcinoma. The utilization of AI system also suggested potential improvements in the AUCs for image characterization in both the senior and junior groups. Conclusions: Using AI improved the radiologists’ performance in characterizing and diagnosing hepatic lesions. In terms of their capacity to assess imaging characteristics, improvements were observed regardless of their level of experience.
Tsuboyama et al. (Wed,) studied this question.