AI Article Synopsis

  • The study investigates the use of a deep-learning classifier for categorizing desmoplastic reaction (DR) in oesophageal squamous cell carcinoma (ESCC), aiming to improve the subjectivity of current semiquantitative evaluations.
  • A total of 222 ESCC cases were analyzed, with a classifier trained on 31 digitized slides, achieving a high accuracy with a Dice coefficient score of 0.81 during testing.
  • The results indicate that the deep-learning classifier for DR classification offers superior prognostic significance for disease-specific survival compared to manual classifications and traditional pathological factors like tumour depth and lymph node status.

Article Abstract

Aims: Desmoplastic reaction (DR) categorisation has been shown to be a promising prognostic factor in oesophageal squamous cell carcinoma (ESCC). The usual DR evaluation is performed using semiquantitative scores, which can be subjective. This study aimed to investigate whether a deep-learning classifier could be used for DR classification. We further assessed the prognostic significance of the deep-learning classifier and compared it to that of manual DR reporting and other pathological factors currently used in the clinic.

Methods And Results: From 222 surgically resected ESCC cases, 31 randomly selected haematoxylin-eosin-digitised whole slides of patients with immature DR were used to train and develop a deep-learning classifier. The classifier was trained for 89 370 iterations. The accuracy of the deep-learning classifier was assessed to 30 unseen cases, and the results revealed a Dice coefficient score of 0.81. For survival analysis, the classifier was then applied to the entire cohort of patients, which was split into a training (n = 156) and a test (n = 66) cohort. The automated DR classification had a higher prognostic significance for disease-specific survival than the manually classified DR in both the training and test cohorts. In addition, the automated DR classification outperformed the prognostic accuracy of the gold-standard factors of tumour depth and lymph node metastasis.

Conclusions: This study demonstrated that DR can be objectively and quantitatively assessed in ESCC using a deep-learning classifier and that automatically classed DR has a higher prognostic significance than manual DR and other features currently used in the clinic.

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Source
http://dx.doi.org/10.1111/his.14708DOI Listing

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