AI Article Synopsis

  • The study focuses on Crohn's-like lymphoid reaction (CLR) in colon cancer, which represents an immune response marked by lymphocyte aggregation around tumors, but lacks a standardized evaluation method.
  • A deep learning model was developed to automatically quantify CLR density from HE-stained whole-slide images; this method was tested with training and validation cohorts to assess its prognostic value for overall survival (OS).
  • Results indicated that higher CLR density was linked to improved OS, making it an independent prognostic factor, and integrating CLR density in existing risk models enhanced prognostic accuracy, highlighting its potential clinical use.

Article Abstract

Background: The Crohn's-like lymphoid reaction (CLR) is manifested as peritumoral lymphocytes aggregation in colon cancer, which is a major component of the host immune response to cancer. However, the lack of a unified and objective CLR evaluation standard limits its clinical application. We, therefore, developed a deep learning model for the fully automated CLR density quantification on routine hematoxylin and eosin (HE)-stained whole-slide images (WSIs) and further investigated its prognostic validity for patient stratification.

Methods: The CLR density was calculated by using a deep learning method on HE-stained WSIs. A training (N = 279) and a validation (N = 194) cohorts were used to evaluate the prognostic value of CLR density for overall survival (OS).

Result: The fully automated quantified CLR density was an independent prognostic factor, with high CLR density associated with increased OS in the discovery (HR 0.58, 95% CI 0.38-0.89, P = 0.012) and validation cohort (0.45, 0.23-0.88, 0.020). Integrating CLR density into a Cox model with other risk factors showed improved prognostic capability.

Conclusion: We developed a new immune indicator (CLR density) quantified by a deep learning method to evaluate the lymphocytes aggregation in colon cancer. The CLR density was demonstrated its predictive value for OS in two independent cohorts. This approach allows for the objective and standardized quantification while reducing pathologists' workload. Therefore, this fully automated standardized method of CLR evaluation had potential clinical value.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10992499PMC
http://dx.doi.org/10.1007/s00262-021-03079-zDOI Listing

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