A multicenter clinical AI system study for detection and diagnosis of focal liver lesions.
Hanning YingXiaoqing LiuMin ZhangYiyue RenShihui ZhenXiaojie WangBo LiuPeng HuLian DuanMingzhi CaiMing JiangXiang-Dong ChengXiang-Yang GongHaitao JiangJianshuai JiangJianjun ZhengKelei ZhuWei ZhouBaochun LuHongkun ZhouYiyu ShenJinlin DuMingliang YingQiang HongJingang MoJianfeng LiGuanxiong YeShizheng ZhangHongjie HuJihong SunHui LiuYiming LiXingxin XuHuiping BaiShuxin WangXin ChengXiaoyin XuLong JiaoRisheng YuWan Yee LauYizhou YuXiujun CaiPublished in: Nature communications (2024)
Early and accurate diagnosis of focal liver lesions is crucial for effective treatment and prognosis. We developed and validated a fully automated diagnostic system named Liver Artificial Intelligence Diagnosis System (LiAIDS) based on a diverse sample of 12,610 patients from 18 hospitals, both retrospectively and prospectively. In this study, LiAIDS achieved an F1-score of 0.940 for benign and 0.692 for malignant lesions, outperforming junior radiologists (benign: 0.830-0.890, malignant: 0.230-0.360) and being on par with senior radiologists (benign: 0.920-0.950, malignant: 0.550-0.650). Furthermore, with the assistance of LiAIDS, the diagnostic accuracy of all radiologists improved. For benign and malignant lesions, junior radiologists' F1-scores improved to 0.936-0.946 and 0.667-0.680 respectively, while seniors improved to 0.950-0.961 and 0.679-0.753. Additionally, in a triage study of 13,192 consecutive patients, LiAIDS automatically classified 76.46% of patients as low risk with a high NPV of 99.0%. The evidence suggests that LiAIDS can serve as a routine diagnostic tool and enhance the diagnostic capabilities of radiologists for liver lesions.