Objectives: to propose a fully-automatic computer-aided diagnosis (CAD) solution for liver lesion characterization, with uncertainty estimation. Methods: we enrolled 400 patients who had either liver resection or a biopsy and was diagnosed with either hepatocellular carcinoma (HCC), intrahepatic cholangiocarcinoma, or secondary metastasis, from 2006 to 2019. Each patient was scanned with T1WI, T2WI, T1WI venous phase (T2WI-V), T1WI arterial phase (T1WI-A), and DWI MRI sequences. We propose a fully-automatic deep CAD pipeline that localizes lesions from 3D MRI studies using key-slice parsing and provides a confidence measure for its diagnoses. We evaluate using five-fold cross validation and compare performance against three radiologists, including a senior hepatology radiologist, a junior hepatology radiologist and an abdominal radiologist. Results: the proposed CAD solution achieves a mean F1 score of 0.62, outperforming the abdominal radiologist (0.47), matching the junior hepatology radiologist (0.61), and underperforming the senior hepatology radiologist (0.68). The CAD system can informatively assess its diagnostic confidence, i.e., when only evaluating on the 70% most confident cases the mean f1 score and sensitivity at 80% specificity for HCC vs. others are boosted from 0.62 to 0.71 and 0.84 to 0.92, respectively. Conclusion: the proposed fully-automatic CAD solution can provide good diagnostic performance with informative confidence assessments in finding and discriminating liver lesions from MRI studies.
翻译:方法:从2006年至2019年,我们注册了400名病人,这些病人有肝脏切除或生物切片,并被诊断为肝细胞癌(HCC)、内心血管癌(Cholangicarcidema),或二次转移。我们用T1WI、T2WI、T1WI血清血清反应(T2WI-V)、T1WI肝脏敏感度(T1WI-A),T1WI肝脏变异性(T1WI-A)和DWI MRI序列。我们建议采用全自动的CAD管道,将3D MRI研究的损伤与肝细胞细胞细胞癌(HCC)切除,内心血管细胞癌(HC)或二次转移。我们用五倍的交叉验证和比较了三名放射科医生的性能,包括一名高级肝炎放射科放射科放射科放射科医生、一名初级肝科放射科放射科医生和一位腹部放射科放射科医生。结果:拟议CADAD解决方案从一个0.62级的肝脏诊断评估结果,比,从80个肝肝肝脏和心脏诊断分析结果,从80的血压(HDADADRDRI), 和40级分析。