Identifying cirrhosis is key to correctly assess the health of the liver. However, the gold standard diagnosis of the cirrhosis needs a medical intervention to obtain the histological confirmation, e.g. the METAVIR score, as the radiological presentation can be equivocal. In this work, we propose to leverage transfer learning from large datasets annotated by radiologists, which we consider as a weak annotation, to predict the histological score available on a small annex dataset. To this end, we propose to compare different pretraining methods, namely weakly-supervised and self-supervised ones, to improve the prediction of the cirrhosis. Finally, we introduce a loss function combining both supervised and self-supervised frameworks for pretraining. This method outperforms the baseline classification of the METAVIR score, reaching an AUC of 0.84 and a balanced accuracy of 0.75, compared to 0.77 and 0.72 for a baseline classifier.
翻译:确定肝硬化是正确评估肝脏健康的关键。然而,对肝硬化的金质标准诊断需要医疗干预,才能获得病理学确认,例如METAVIR评分,因为辐射说明可能不准确。在这项工作中,我们提议利用放射学家附加说明的大型数据集的转移学习(我们认为这是一个微弱的注解)来预测小附件数据集上现有的病理学评分。为此,我们提议比较不同的培训前方法,即薄弱的监控和自我监督的方法,以改进对肝硬化的预测。最后,我们引入了一种将受监管和自我监督的训练前框架相结合的损失函数。这种方法比METAVIR评分的基准分类(达到0.84AUC,达到0.75的均衡精度,而基线分类为0.77和0.72)。