 
			ISSN: 2736-6588
Department of Robotics and Mechatronics, Daegu Gyeongbuk Institute of Science and Technology, Daegu, Korea
 Research Article   
								
																Deep Learning for Microsatellite Instability Prediction in Colorectal Cancer: Impact of Clinicopathologic Variables on Model Performance 
																Author(s): Meejeong Kim, Philip Chikontwe, Heounjeong Go, Jae Hoon Jeong, Su-Jin Shin, Sang Hyun Park* and Soo Jeong Nam*             
								
																
						 Background: Microsatellite Instability (MSI) is a clinically significant subtype in colorectal cancer. Despite the
  promising performance of deep learning techniques in digital pathology for clinical diagnosis, the impact of
  clinicopathologic factors on the performance of these models has been largely overlooked.
Methodology: Using a total of 931 colorectal cancer Whole Slide Images (WSIs), we developed and verified a deep
  learning algorithm and analyzed the WSI-level MSI probability and clinicopathologic variables.
Results: In both internal and external cohorts, our deep learning model achieved an Area Under the Receiver
  Operating Curve (AUROC) of 0.901 and 0.908, respectively. The presence of a mucinous or a signet ring cell
  carcinoma component enhanced the model’s ability to predict MSI (HR=19.73.. View More»
						  
																DOI:
								10.35248/2736-6588.23.6.276