AI Article Synopsis

  • Automatic Gleason grading for prostate cancer histopathology is essential for accurate diagnosis and treatment, but variations in tissue preparation can hinder accuracy across different institutions.
  • The authors propose using unsupervised domain adaptation, allowing the transfer of knowledge from a trained model without needing labeled target images, which enhances the model's performance across different histopathology slides.
  • Their method, validated on two prostate cancer datasets, demonstrates significant improvement in predicting Gleason scores compared to standard models, thanks to adversarial training and a Siamese architecture designed to maintain consistency in feature space.

Article Abstract

Automatic and accurate Gleason grading of histopathology tissue slides is crucial for prostate cancer diagnosis, treatment, and prognosis. Usually, histopathology tissue slides from different institutions show heterogeneous appearances because of different tissue preparation and staining procedures, thus the predictable model learned from one domain may not be applicable to a new domain directly. Here we propose to adopt unsupervised domain adaptation to transfer the discriminative knowledge obtained from the source domain to the target domain with-out requiring labeling of images at the target domain. The adaptation is achieved through adversarial training to find an invariant feature space along with the proposed Siamese architecture on the target domain to add a regularization that is appropriate for the whole-slide images. We validate the method on two prostate cancer datasets and obtain significant classification improvement of Gleason scores as compared with the baseline models.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC6241308PMC
http://dx.doi.org/10.1007/978-3-030-00934-2_23DOI Listing

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