Accurate segmentation of tissue in histopathological images can be very beneficial for defining regions of interest (ROI) for streamline of diagnostic and prognostic tasks. Still, adapting to different domains is essential for histopathology image analysis, as the visual characteristics of tissues can vary significantly across datasets. Yet, acquiring sufficient annotated data in the medical domain is cumbersome and time-consuming. The labeling effort can be significantly reduced by leveraging active learning, which enables the selective annotation of the most informative samples. Our proposed method allows for fine-tuning a pre-trained deep neural network using a small set of labeled data from the target domain, while also actively selecting the most informative samples to label next. We demonstrate that our approach performs with significantly fewer labeled samples compared to traditional supervised learning approaches for similar F1-scores, using barely a 59\% of the training set. We also investigate the distribution of class balance to establish annotation guidelines.
翻译:生理病理图象中的组织准确分解对于确定感兴趣的区域(ROI)以简化诊断和预测任务非常有益。不过,适应不同的领域对于组织病理图象分析至关重要,因为组织的视觉特征在各数据集之间差别很大。然而,在医疗领域获得足够的附加说明的数据既繁琐又费时。通过利用积极学习,可以大大减少标签工作,从而能够有选择地批注最丰富的样本。我们提议的方法允许利用目标域的少量标签数据对预先训练的深神经网络进行微调,同时积极选择下一个标签最丰富的样本。我们证明,我们的方法与传统的F1核心的有监督的学习方法相比,用很少的59 %,我们使用培训集来研究班级平衡的分布情况,以建立批注准则。</s>