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Data and Knowledge Co-driving for Cancer Subtype Classification on Multi-Scale Histopathological Slides

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arxiv 2304.09314 v1 pith:2QIUUUD7 submitted 2023-04-18 cs.CV

Data and Knowledge Co-driving for Cancer Subtype Classification on Multi-Scale Histopathological Slides

classification cs.CV
keywords histopathologicalknowledgecancerdatadiagnosissubtypeclassificationco-driving
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Artificial intelligence-enabled histopathological data analysis has become a valuable assistant to the pathologist. However, existing models lack representation and inference abilities compared with those of pathologists, especially in cancer subtype diagnosis, which is unconvincing in clinical practice. For instance, pathologists typically observe the lesions of a slide from global to local, and then can give a diagnosis based on their knowledge and experience. In this paper, we propose a Data and Knowledge Co-driving (D&K) model to replicate the process of cancer subtype classification on a histopathological slide like a pathologist. Specifically, in the data-driven module, the bagging mechanism in ensemble learning is leveraged to integrate the histological features from various bags extracted by the embedding representation unit. Furthermore, a knowledge-driven module is established based on the Gestalt principle in psychology to build the three-dimensional (3D) expert knowledge space and map histological features into this space for metric. Then, the diagnosis can be made according to the Euclidean distance between them. Extensive experimental results on both public and in-house datasets demonstrate that the D&K model has a high performance and credible results compared with the state-of-the-art methods for diagnosing histopathological subtypes. Code: https://github.com/Dennis-YB/Data-and-Knowledge-Co-driving-for-Cancer-Subtypes-Classification

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