AI Article Synopsis

  • Prostate cancer (PCa) is a complex disease requiring better risk assessment methods beyond current models, which often lead to inconsistent grading, particularly with Gleason scores.
  • This study introduces a deep learning model that utilizes histopathology images alongside clinical data to improve risk stratification for treatment-naïve PCa patients undergoing radical prostatectomy.
  • Results show that this machine learning approach outperformed traditional models, accurately reclassifying risk levels for a notable percentage of patients, and could potentially enhance treatment planning with further validation.

Article Abstract

Purpose: Prostate cancer (PCa) represents a highly heterogeneous disease that requires tools to assess oncologic risk and guide patient management and treatment planning. Current models are based on various clinical and pathologic parameters including Gleason grading, which suffers from a high interobserver variability. In this study, we determine whether objective machine learning (ML)-driven histopathology image analysis would aid us in better risk stratification of PCa.

Materials And Methods: We propose a deep learning, histopathology image-based risk stratification model that combines clinicopathologic data along with hematoxylin and eosin- and Ki-67-stained histopathology images. We train and test our model, using a five-fold cross-validation strategy, on a data set from 502 treatment-naïve PCa patients who underwent radical prostatectomy (RP) between 2000 and 2012.

Results: We used the concordance index as a measure to evaluate the performance of various risk stratification models. Our risk stratification model on the basis of convolutional neural networks demonstrated superior performance compared with Gleason grading and the Cancer of the Prostate Risk Assessment Post-Surgical risk stratification models. Using our model, 3.9% of the low-risk patients were correctly reclassified to be high-risk and 21.3% of the high-risk patients were correctly reclassified as low-risk.

Conclusion: These findings highlight the importance of ML as an objective tool for histopathology image assessment and patient risk stratification. With further validation on large cohorts, the digital pathology risk classification we propose may be helpful in guiding administration of adjuvant therapy including radiotherapy after RP.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11371114PMC
http://dx.doi.org/10.1200/CCI.23.00184DOI Listing

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