4.6 Article

Interpretable tumor differentiation grade and microsatellite instability recognition in gastric cancer using deep learning

Journal

LABORATORY INVESTIGATION
Volume 102, Issue 6, Pages 641-649

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1038/s41374-022-00742-6

Keywords

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Funding

  1. National Key Research and Development Program of China [2018YFC0910700]
  2. Major Program of National Natural Science Foundation of China [91959205]

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The study demonstrates the use of a deep learning system to achieve intelligent tumor differentiation grading and microsatellite instability status recognition in gastric cancer. The system shows high accuracy and interpretability, making it a promising tool for artificial intelligence healthcare.
Gastric cancer possesses great histological and molecular diversity, which creates obstacles for rapid and efficient diagnoses. Classic diagnoses either depend on the pathologist's judgment, which relies heavily on subjective experience, or time-consuming molecular assays for subtype diagnosis. Here, we present a deep learning (DL) system to achieve interpretable tumor differentiation grade and microsatellite instability (MSI) recognition in gastric cancer directly using hematoxylin-eosin (HE) staining whole-slide images (WSIs). WSIs from 467 patients were divided into three cohorts: the training cohort with 348 annotated WSIs, the testing cohort with 88 annotated WSIs, and the integration testing cohort with 31 original WSIs without tumor contour annotation. First, the DL models comprehensibly achieved tumor differentiation recognition with an F1 values of 0.8615 and 0.8977 for poorly differentiated adenocarcinoma (PDA) and well-differentiated adenocarcinoma (WDA) classes. Its ability to extract pathological features about the glandular structure formation, which is the key to distinguishing between PDA and WDA, increased the interpretability of the DL models. Second, the DL models achieved MSI status recognition with a patient-level accuracy of 86.36% directly from HE-stained WSIs in the testing cohort. Finally, the integrated end-to-end system achieved patient-level MSI recognition from original HE staining WSIs with an accuracy of 83.87% in the integration testing cohort with no tumor contour annotation. The proposed system, therefore, demonstrated high accuracy and interpretability, which can potentially promote the implementation of artificial intelligence healthcare. Gastric cancer possesses great histological and molecular diversity, which creates obstacles for rapid and efficient diagnoses. To overcome the limitations of the classic diagnostic procedure in gastric cancer, the authors established a deep learning system to achieve intelligent tumor differentiation grading and microsatellite instability status recognition using hematoxylin-eosin stained whole slide images from 467 patients. They used the convolutional neural network visualization to demonstrate the key pathological features learned by the system to increase system interpretability.

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