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Deep Learning-Based Recognition of Different Thyroid Cancer Categories Using Whole Frozen-Slide Images. | LitMetric

Deep Learning-Based Recognition of Different Thyroid Cancer Categories Using Whole Frozen-Slide Images.

Front Bioeng Biotechnol

Department of Pathology, National Cancer Center/National Clinical Research Center for Cancer / Cancer Hospital, Chinese Academy of Medical Sciences and Peking Union Medical College, Beijing, China.

Published: July 2022

AI Article Synopsis

  • The study addresses the misdiagnosis of rare thyroid lesions, which can negatively impact treatment choices, by using a deep learning approach to classify these lesions accurately.
  • An empirical decision tree based on a patch-based UNet model was developed and tested on 1,374 whole-slide images of thyroid lesions, achieving a high area under the curve (AUC) for rare types but showed a higher recognition error for these compared to benign and malignant categories.
  • The proposed framework not only recommends that pathologists re-evaluate rare lesions but also demonstrates performance comparable to pathologists for benign and malignant classifications, potentially increasing work efficiency in pathology.

Article Abstract

The pathological rare category of thyroid is a type of lesion with a low incidence rate and is easily misdiagnosed in clinical practice, which directly affects a patient's treatment decision. However, it has not been adequately investigated to recognize the rare, benign, and malignant categories of thyroid using the deep learning method and recommend the rare to pathologists. We present an empirical decision tree based on the binary classification results of the patch-based UNet model to predict rare categories and recommend annotated lesion areas to be rereviewed by pathologists. Applying this framework to 1,374 whole-slide images (WSIs) of frozen sections from thyroid lesions, we obtained an area under a curve of 0.946 and 0.986 for the test datasets with and without WSIs, respectively, of rare types. However, the recognition error rate for the rare categories was significantly higher than that for the benign and malignant categories ( < 0.00001). For rare WSIs, the addition of the empirical decision tree obtained a recall rate and precision of 0.882 and 0.498, respectively; the rare types (only 33.4% of all WSIs) were further recommended to be rereviewed by pathologists. Additionally, we demonstrated that the performance of our framework was comparable to that of pathologists in clinical practice for the predicted benign and malignant sections. Our study provides a baseline for the recommendation of the uncertain predicted rare category to pathologists, offering potential feasibility for the improvement of pathologists' work efficiency.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9298848PMC
http://dx.doi.org/10.3389/fbioe.2022.857377DOI Listing

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