The prediction of pancreatic ductal adenocarcinoma therapy response is a clinically challenging and important task in this high-mortality tumour entity. The training of neural networks able to tackle this challenge is impeded by a lack of large datasets and the difficult anatomical localisation of the pancreas. Here, we propose a hybrid deep neural network pipeline to predict tumour response to initial chemotherapy which is based on the Response Evaluation Criteria in Solid Tumors (RECIST) score, a standardised method for cancer response evaluation by clinicians as well as tumour markers, and clinical evaluation of the patients. We leverage a combination of representation transfer from segmentation to classification, as well as localisation and representation learning. Our approach yields a remarkably data-efficient method able to predict treatment response with a ROC-AUC of 63.7% using only 477 datasets in total.
翻译:对这一高死亡率肿瘤实体来说,预测胰腺肾上腺素疗法反应是一项具有临床挑战性和重要的任务。能够应对这一挑战的神经网络的培训由于缺乏大型数据集和胰腺难以解剖的本地化而受阻。在这里,我们建议采用一种混合的深心神经网络管道,以预测肿瘤对初步化疗的反应,该管道以固体肿瘤评分反应评价标准为基础,这是临床医生癌症反应评价的标准方法,也是肿瘤标记和病人临床评估的标准方法。我们利用从分解到分类以及地方化和代表学习的混合代表方式。我们的方法产生了一种非常有效的数据效率方法,能够预测治疗反应,而ROC-AUC为63.7%,总共只使用477个数据集。