Publication | Open Access
Tumor–Stroma Ratio in Colorectal Cancer—Comparison between Human Estimation and Automated Assessment
17
Citations
27
References
2023
Year
Convolutional Neural NetworkEngineeringMachine LearningDigital PathologyPathologyImage AnalysisCancer DetectionSurgical PathologyAutomated AssessmentRadiation OncologyCancer ResearchTissue SegmentationRadiologyHuman EstimationMedicineColorectal CancerTumor–stroma RatioDeep LearningMedical Image ComputingTumor MicroenvironmentTumor-stroma RatioComputer VisionRadiomicsSegmentation QualityRelated Segmentation TasksOncologyMedical Image AnalysisImage Segmentation
The tumor-stroma ratio (TSR) has been repeatedly shown to be a prognostic factor for survival prediction of different cancer types. However, an objective and reliable determination of the tumor-stroma ratio remains challenging. We present an easily adaptable deep learning model for accurately segmenting tumor regions in hematoxylin and eosin (H&E)-stained whole slide images (WSIs) of colon cancer patients into five distinct classes (tumor, stroma, necrosis, mucus, and background). The tumor-stroma ratio can be determined in the presence of necrotic or mucinous areas. We employ a few-shot model, eventually aiming for the easy adaptability of our approach to related segmentation tasks or other primaries, and compare the results to a well-established state-of-the art approach (U-Net). Both models achieve similar results with an overall accuracy of 86.5% and 86.7%, respectively, indicating that the adaptability does not lead to a significant decrease in accuracy. Moreover, we comprehensively compare with TSR estimates of human observers and examine in detail discrepancies and inter-rater reliability. Adding a second survey for segmentation quality on top of a first survey for TSR estimation, we found that TSR estimations of human observers are not as reliable a ground truth as previously thought.
| Year | Citations | |
|---|---|---|
Page 1
Page 1