We present a system for anomaly detection in histopathological images. In histology, normal samples are usually abundant, whereas anomalous (pathological) cases are scarce or not available. Under such settings, one-class classifiers trained on healthy data can detect out-of-distribution anomalous samples. Such approaches combined with pre-trained Convolutional Neural Network (CNN) representations of images were previously employed for anomaly detection (AD). However, pre-trained off-the-shelf CNN representations may not be sensitive to abnormal conditions in tissues, while natural variations of healthy tissue may result in distant representations. To adapt representations to relevant details in healthy tissue we propose training a CNN on an auxiliary task that discriminates healthy tissue of different species, organs, and staining reagents. Almost no additional labeling workload is required, since healthy samples come automatically with aforementioned labels. During training we enforce compact image representations with a center-loss term, which further improves representations for AD. The proposed system outperforms established AD methods on a published dataset of liver anomalies. Moreover, it provided comparable results to conventional methods specifically tailored for quantification of liver anomalies. We show that our approach can be used for toxicity assessment of candidate drugs at early development stages and thereby may reduce expensive late-stage drug attrition.
翻译:在组织学中,正常样本通常丰富,而异常(病理)病例则稀少或不可用。在这种环境下,受过健康数据培训的一等分类人员可以检测分配外异常样本。这些方法与事先训练的神经神经神经网络图像展示相结合,以前曾用来检测异常现象。然而,经过事先训练的现成CNN演示可能不会对组织中的异常状况敏感,而健康组织中的自然变异可能会造成遥远的外表征。为了调整健康组织中的相关细节,我们提议对有线电视新闻网进行关于歧视不同物种、器官和染色剂健康组织的辅助任务的培训。由于健康样品自动附上上述标签,几乎不需要额外加标签工作量。在培训中,我们用中心损失术语进行压缩图像展示,进一步改善对AD的表述。拟议系统在公布肝脏异常数据集中建立了自动调整方法。此外,为了适应健康组织中的有关细节,我们建议对专门为确定肝脏异常值而设计的常规方法提供可比的结果,因此,可用于对肝脏异常度的早期发育期评估。我们可能选择了用于肝脏异常的先进性。