Anomaly detection in computational pathology aims to identify rare and scarce anomalies where disease-related data are often limited or missing. Existing anomaly detection methods, primarily designed for industrial settings, face limitations in pathology due to computational constraints, diverse tissue structures, and lack of interpretability. To address these challenges, we propose Ano-NAViLa, a Normal and Abnormal pathology knowledge-augmented Vision-Language model for Anomaly detection in pathology images. Ano-NAViLa is built on a pre-trained vision-language model with a lightweight trainable MLP. By incorporating both normal and abnormal pathology knowledge, Ano-NAViLa enhances accuracy and robustness to variability in pathology images and provides interpretability through image-text associations. Evaluated on two lymph node datasets from different organs, Ano-NAViLa achieves the state-of-the-art performance in anomaly detection and localization, outperforming competing models.
翻译:计算病理学中的异常检测旨在识别罕见且稀缺的异常情况,其中疾病相关数据往往有限或缺失。现有的异常检测方法主要针对工业场景设计,在病理学应用中面临计算资源限制、组织结构多样性以及可解释性缺乏等局限。为应对这些挑战,我们提出Ano-NAViLa——一种基于正常与异常病理知识增强的视觉语言模型,用于病理图像异常检测。Ano-NAViLa基于预训练的视觉语言模型构建,配备轻量级可训练多层感知机。通过融合正常与异常病理知识,该模型提升了病理图像变异下的检测精度与鲁棒性,并通过图文关联机制提供可解释性。在两个不同器官的淋巴结数据集上的评估表明,Ano-NAViLa在异常检测与定位任务中达到最先进的性能,显著优于现有模型。